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R be a convex function. Suppose that f(il) C / . Then i f o / e L ' f f l , ^ ; ! ) and it holds (2.39) In particular, when /x(fi) — 1, i.e. when fi is a probability measure, we have
o at zero. This result is known as "weak equals strong" in semigroup theory. Our proof will be a sketch of the very polished proof of this result in K.-J. Engel and R. Nagel [97], p.40, and it covers a much more general situation. We need some preparation. Let X be a Banach space. Then it is known that the weak closure of a convex set equals its strong closure, compare W. Rudin [307], Theorem 3.12. Further, a result of M. Krein and V. Smulian states that the closed convex hull conv K of a weakly compact set K C X is weakly compact, compare N. Dunford and J.T. Schwartz [91], p.434. Finally, as it is proved in K.-J. Engel and R. Nagel [97], Proposition 1.5.3, a semigroup (Tt)t>0 on a Banach space is strongly continuous if and only if there exist S > 0 and M > 1, and a dense subset Y (£)>£ ^ ^™> a n < i m addition by i > 1 — (2n)% o is indeed a convolution semigroup of probability measures on R". Obviously we have (3.207) fc=0 \ \L + \X\ > aX I ' then we arrive at the weighted Besov space B* q (W1 ;(1 + |-| 2 )^). The following theorem is due to R. Schilling [316] and [320]. 0 define the open set F £ : = ( x e 5 ; inf d{x,y) < e\ , FeC. <• 0, it follows that for every k £N /•llvlloo 0, /• /-llvlloo lim sup / yd^fc < lim / ^(f k—>oo •/ oo V 0. The general case follows now fc—>oo 0. C. We will prove that iv) implies convergence in the Prohorov metric provided that 5 is separable. For e > 0 let (Ek)ken be a partition of 5 into Borel sets Ek with diam(jBfe) < | . Further let N be the smallest n G No such that A*(U™=i Ej) > 1 — | , and let 5 be the (finite) collection of all open sets of type (Ujej -^j) 2 1 where / C { 1 , . . . , N}. Since the collection Q is finite we can find &o such that G £ Q and all A: > Aro it holds K G ) < fik(G) + | . 0 and by the positive maximum principle applied to —qf(x,D) and ?(•) — tp(A) we find that {A# 0. The clue in the proof of Theorem 4.2.1 is now to find a good approximation of A$ by Levy-type operators on R^ with bounded Levy kernels and then apply Propositions 4.2.3 and 4.2.5. For this a result on measurable selections is required which is essentially due to K. Kuratowski and C. Ryll-Nardzenski [240] which we state here (without proof) in a convenient form taken from St. Ethier and Th. Kurtz [98], Appendix 10, see also C. J. Himmelberg [147], Theorem 3.5. Definition 4.2.8. Let (f2, A) be a measurable space and (5, d) be a complete, separable metric space. For x £ Cl let r x c S. A measurable selection of (r x )zeft i s a measurable function / : Q, —> S such that f(x) € Tx for every x £ fl. (As usual, on 5 we take the Borel cr-field.) Theorem 4.2.9. Let (Cl,A) be a measurable space and (S,d) be a complete, separable metric space. Suppose that for x £ Q, a closed subset Tx c S is given and that for every closed set C C S the set {x £ £1; Tx D C ^ 0 } belongs to A, i. e. is measurable. Then for k 6 N there exists fk'.H^S S such that fk is measurable, fk {x) £ Tx for every x £ f2 and Tx is the closure of the sequence (fk(x))kEN. 0 w e have G R(k - A*)} ? 0 . 0 ; Ppf t _ = X t ) = 1}. This is a dense subset in [0, oo), compare Lemma 4.2.12 below, and due to the right continuity of paths we may assume that s j , . . . ,SM,^i,*2 G The distributions (-X"Sl,... ,XSM,Xtl,Xt2)(Pk) converge weakly to Tp. and since Pk solves the martingale problem for (XSl,.-.,XSM,Xtx,Xt2)(P), Ak we find 0. Jo 0 and J R 0 sufficiently small the vector-valued Priedrichs mollification of u by u£(t) := / -ip(t-—^)u(s)ds, 0 p(ji) for R > 0. For e > 0 and T > 0 given, the tightness of (/Xfc)fceN yields for R sufficiently large that o t = limEx (- f (-q(x,D)u)(Xs)ds) t->0 \t Jo J = Ex(-q(x,D)u(X0)) = -q(x,D)u(x). —* v(Xt) is Px-a,.s. a cadlag function then this follows also for u. In virtue of Lemma 5.2.25 we need to prove that v is a-excessive. By Jensen's inequality we find using in a first step L°°(R ) that satisfies \\Tu\\oo < j|«||ooB. An integral operator T : Lp(Rn) -> Lp(Rn), 1 < p << oo, is positivity preserving if and only if its kernel function n is A^"' (g> A'™) -almost everywhere non-negative. C. Let T : Lp(Rn) -* X, X £ {Cb(Rn),Bb{Rn),L°°(Rn),LP(Rn)} be a linear positivity preserving operator. Then T is bounded. Proof. Part A follows as in [115], p.49, compare also Theorem II.3.5.1 and Corollary II.3.5.2. Part B is straightforward, compare also Lemma 1.2.3.13. C. o on Bb([0, oo) x R") by ((T t ®Tt)tt)(s,i):= Ju{s + t,y)pt{x,y)dy 0 and ip(x0) > 0 for some x0 G M.n, the function OO 0 and since (Tt)t>o is transient it follows that r o, \>0, be as in Theorem 6.5.16. In addition assume either A > 0, or that (Tt)t>o is transient and that Tt has a density pt(x,y) > 0 for all t > 0, x,y € R n . Then (M n ,E(T t , x ) t>0 ), \>0, is a balayage space. Proof. Since MAI¥> := u A ,/ is linear. For this let / i , / 2 G Ha(G) such that /1 ^ / 2 but 7/1 = 7/2 = WA(G) is the orthogonal projection. D In order to understand our next step, i.e. describing the process on the boundary, we first briefly recollect the classical case in M2. More precisely we (ni a) te),ni Q) wo), V.V- e i? Q ^(aG).
for all t £ [0,8]
66
Chapter 3 Feller Processes
and limTiu = u
for all u &Y.
t|0
Theorem 3.2.18. Let (Tt)t>0 be a semigroup on a Banach space (X,\\-\\x). The strong continuity of (Tt)t>o(at 0) is equivalent to its weak continuity (at 0), i. e. the continuity of the mapping tv-Ku',
(3.64)
Ttu >
for all u G X and u>' G X*.
Proof. Of course we need only to prove that the weak continuity implies the strong continuity. By the uniform boundedness principle we may deduce from (3.64) that (T t ) t > 0 is pointwise and hence uniformly bounded on compact intervals I C M.+ . Therefore, by the remarks made preceeding the proof we need to show that Y := {ueX; is dense in (X, \\-\\x). ur : X* -> K (or C)
lim ||Tfu - u\\x = 0} For this, take u £ X and r > 0 and define ur on X* by
1 fr < w', ur > := - / < w', Tsu > ds, w' e X*. t Jo
Clearly, ur is bounded and linear, hence ur € X**. Since the set {Tsu; s G [0, r]} is the continuous image of [0, r] when taking in X the weak topology, it follows that this set is weakly compact. Now we apply the Krein-Smulian theorem stated above to deduce that conv {Tsu;s G [0,r]} is also weakly compact. Further note that ur is the limit of Riemann sums with respect to the weak-*-topology a(X**,X*) on X*. Hence it follows that ur G conv {Tsu; s € [0,r]}. Having in mind the definition of ur it is clear that Z :— {ur ; r > 0 and u G X}
3.2 Semigroups of Kernels, Transition Functions and Canonical Processes
67
is weakly dense in X. But for ur G Z we find llTttir-UrHjr 1 ft+r 1 /"r sup - / < w', Tsu > ds / < w', Tsu > ds |M| X .<1 r It r JO ( 1 ft+T 1 /"* l\ < sup - / <w' , Tsu >ds + < w' , Tsu > ds\ \\w\\x.
=
^
0<s
where \\-\\x x a s usual denotes the operator norm. The above estimate implies ||Tiu r — Urllx -^ 0 as i —» 0, hence Z CY, which yields that Y is weakly and therefore strongly dense (see again the remarks made above) and the theorem • is proved. Corollary 3.2.19. For a Feller semigroup (Tt)t>o with kernels (pt)t>o being all Markovian (3.62) holds. Finally we give a criterion for a (semigroup of) (sub-)Markovian kernel(s) in order that the corresponding (semigroup of) operator (s) maps bounded measurable functions into continuous functions. For this it is worth to recall some results for convolution operators. In Lemma 1.4.8.19 together with Lemma 1.4.8.20 it was shown that for u H-> U * \i to map J5b(K") into C&(IRn) it is necessary and sufficient that fi admits a density with respect to the Lebesgue measure A^™). Thus when longing for semigroups (Pt)t>o associated with sub-Markovian kernels (pt)t>o having the property that each pt maps Bb(E) into Cb(E) it is reasonable to assume that each pt(x,dy) has a density with respect to a fixed, i.e. t and x independent, reference measure. We will denote such a density by pt(x,y), in fact we will use the notations pt{x,dy),pt(x, (x,y) as well as p pt(x,A) if no confusion is possible. Suppose that on (E, B) a Borel measure \i is given and assume that Pt(x,dy)
=pt(x,y)ij,(dy)
and hence Pt is given by (Ptu)(x) = J
u(y)pt(x,y)fj,(dy).
68
Chapter 3 Feller Processes
Our problem is to find conditions on pt(x, y) which imply that Pt maps Bb(Mn) into Cb(M.n). Clearly, Lemma 1.2.3.22 gives an option if the constants x >-* c are integrable with respect to /z. But already in the case E = M.n,B = B^ and /J, = \(n^ this does not hold. We suppose that E is a locally compact metric space with Borel cr-field B. Further, the reference measure JJ, is assumed to be a regular Borel measure on B. In this case fi(C) < oo for every compact set C C E, and CQ{E) C Ll{E; /J.) is dense with respect to the norm ||-|| L i. Now we are in a position to prove a useful condition for a (Feller) semigroup to be a strong Feller semigroup. Lemma 3.2.20. Let E be a locally compact metric space with Borel a-field B and let \x be a regular Borel measure on B with full support. Further let (Pt)t>o be a semigroup of sub-Markovian kernels from {E,B) into itself and assume that the corresponding semigroup (Pt)t>o maps CQ(E) into Cb(E), i.e. Tt : Co(E) —> Cb(E) for each t > 0. / / in addition each kernel pt(x,dy) has a density with respect to n, i.e. Pt(x, dy) = pt(x, y)n(dy),
(3.65)
satisfying the estimate Pt{x,y)
,0
(3.66)
and if
lim
sup Pt(z,fl£(6>))=0
(3.67)
fl-+oox6Bs(x0)
holds for each fixed 5 > 0 where £o £ E is a fixed point, then the semigroup (Pt)t>o maps Bb(E) into Cb{E). Proof. The fact that TtBb{E) C Bb(E) is trivial. Fix t0 > 0 and u G Bb{E). We want to prove that for each XQ £ E the function
zi-> (Ttou)(x) := / u{y)pto(x,y)fi{dy) is continuous at XQ. For e > 0 and 5 > 0 choose R > 0 such that sup p t o (x, BCR(£O)) < 4 x€B6(x0) lMlco
3.2 Semigroups of Kernels, Transition Functions and Canonical Processes
69
and take R > 0 such that Bc~(x0) C B%(£0). Next define
U£(y) := XBaMivMy). It follows that \Ttau(x)-Ttou(x)\ = I u{y)Pto{x,y)iJ,(dy) - I u{y)pto{x0,y)fj,(dy) ^ / uii(y)Pto(x,y)n(dy) - / + IMIoo(Pto(z,-B|(zo))
u^(y)pto(xo,y)n(dy)
+pto(x0,Bc~(x0)).
For a; G Bs(x0) it follows by (3.67) that \Hoo(Pto(x,Bc~(x0))+Pt0(xo,Bcn(x0)) h\L(Pto(x,BcR(Z0))+pto(xo,BcR(Z0)))
<
Next we prove that x^
I
un(y)pt(x,y)n(dy)
is continuous. Since uR 6 L^EjS,//) and CQ{E) is dense in Ll{E,B,ii) we may approximate uR by a sequence (
IJ
^
- /
\uR.(y) -
< cto I \ujiiy) -
70
Chapter 3 Feller Processes
i.e. x H-> /
uR{y)pto(x,y)ii(dy)
is the uniform limit of continuous functions and therefore continuous. Thus, if s > 0 is given, we may find 6 > 0 such that / u^{y)ptQ(x,y)n{dy)
- I uR(y)pto(xo,y)lJ.(dy)
< |
for all x € B$(xo) implying the lemma.
•
Remark 3.2.21. A. We adapted the proof of Lemma 3.2.20 from the proof of a similar result of W. Hoh [155], Theorem 8.9, and we will come more closer to his results later on. B. The condition (3.66) should be seen in the light of the considerations in Section II.3.6, especially formula (II.3.436). Thus in many situations we are interested if condition (3.66) is fulfilled. Let us explore the meaning of (3.62) for the corresponding canonical process ((Xt)t>o, Px)xeEProm the construction it is clear that (3.68)
PZt(dy)=Pt(x,dy)
and therefore if ((Xt)t>0, Px) E is related to a Feller semigroup (Xt)t>o by then for all u e C^E) Tt = Pt\Cx{E), \Pt+,u[x) - Ptu(x)\ = \Pt(Psu(x)
- u(x))\ -» 0 as s -* 0,
i.e. P £ t ^ —> Pxt vaguely (and when all pt(x,A) weakly) as s —> 0. But we are longing for more, namely for \imPx{\Xt+s-Xt\>£}
s—0
are Markovian kernels even
= 0,
(3.69)
that is the stochastic continuity of the process. For t = 0we have indeed Px{\Xt - x\ > e] =
{TsXBHx))(x)=Ps{x,Bce(x))
and (3.62) implies (3.69). In order to prove the general case we need a deeper understanding of the process ({Xt)t>o,Px)xeE-
3.3 A First Encounter with Sample Paths and Cadlag-Functions
71
The stochastic continuity of the process will play a major role when studying path properties, i.e. (3.69) is not just a further nice property, it will become critical. In preparing further continuity results for processes we supply an additional result for Feller semigroups, compare for example K. L. Chung [75], p.49. Lemma 3.2.22. Let (Tt)t>o be a Feller semigroup on C0O(E), where E is a locally compact metric space. Then the mapping (x, t, u) H-> Ttu(x) is continuous from E xR+ x C^E) into R. Proof. Let t £ K+, s > 0, x, y € E and tt,v£ C^E). It follows that \Tt+su(x) - Ttv{y)\ < \Tt+su(x) - Tt+Su(v)\ + \Tt+su(y) - Ttu(y)\ + \Ttu(y) - Ttv(y)\. Now, for x —> y it follows that Tt+Su(x) —> Tt+Su(y). Further, since Tt+tu{v) - Ttu(y) = Tt(Tsu{y) - u{y)) and \\Tt\\ < oo we conclude that Tt+Su(y) —* Ttu(y) as s —» 0. Finally, observe \Ttu(y)-Ttv(y)\<\\Tt\\\\u-v\\oo implying that Ttu(y) —* Ttv(y) as u —> v in Coo(E). The standard modification • for the case s < 0 but £ + s > 0 yields now the lemma.
3.3
A First Encounter with Sample Paths and Cadlag-Functions
Let (Q,A,P, (Xt)t>o) be a stochastic process with Polish state space (E,B). For each u> 6 Q, we can consider the mapping X.(u) : M+ -> £ t«Xt(u)
(3.70)
which is called a path or sample path of the process. If (fi, A, P, (Xt)t>o) is the canonical process associated with a semigroup of Markovian kernels and D, = i?!0-00) and Xt(w) = w(£), then P is a probability measure on the space of all mappings from [0, oo) to E and every such a mapping is a path of the canonical process, i.e. P is a probability measure on the
72
Chapter 3 Feller Processes
space of all sample paths! However, the examples of stochastic processes arising in modelling suggest that the paths of a given interesting process are typically more specific: Brownian motion should have at least continuous paths, the paths of a Poisson process should be piecewise constant with positive jumps, etc Thus we should expect that P is concentrated on a certain subset of _g[o,oo) determined by the process. In fact, we shall aim to find a subset of fit0-00) such that the typical path of (X t ) t > 0 belongs P—almost surely to this subset. In a next step we even might be interested to substitute Cl = E^0'00^ for given process by the set of all typical paths. However the finite dimensional distributions of a given process should not change after such a substitution. This leads us to some important definitions. Definition 3.3.1. A. Let (il, A, P, (Xt)t>0) and (Q',A',P', (Xt')t>o) be two stochastic processes with the same state space (E, B) and the same family of finite dimensional distributions. Then we call (Xt)t>o a version of (X't)t>oB. Suppose that (Q, A, P, (Xt)t>o) and (ft, A, P, (lt)t>o) a r e two stochastic processes with state space (E,B). If for all t > 0 P(Xt = Yt) = l
(3.71)
holds the we call (Xt)t>o a modification of (Yt)t>oC. Two processes (Cl, A, P, (Xt)t>o) and (ft, A, P, (Yt)t>o) with state space (E, B) are called indistinguishable if there is a P-null-set N C fi such that Xt(u>) = Yt(u>) holds for all ui e Nc and all t > 0. If (Xt)t>o is a stochastic process with Polish state space (E, B) then we may ask whether a path of (Xt)t>o has certain regularity properties, i.e. t —> Xt(uj) could be continuous, or right continuous, have left limits, be of bounded variation etc. Of course we are interested in the case where almost all paths of a given process have such a property. Definition 3.3.2. Let (Xt)t>o be a stochastic process with Polish space as state space. A. The process (X t )t>o is called (almost surely) continuous if its paths are (almost surely) continuous. B. The process (Xt)t>o is called (almost surely) right continuous if (almost surely) its paths are right continuous. C. We call (Xt)t>o a cadlag process if almost surely all paths of (Xt)t>o are continuous from the right and have limits from the left. As a first result let us prove
3.3 A First Encounter with Sample Paths and Cadlag-Functions
73
Theorem 3.3.3. Let (ft, A, P, (Xt)t>o) and (ft, A, P, (Yt)t>0) be modifications of each other and suppose that they are both almost surely right continuous. Then they are indistinguishable. Proof. Let jVx be a null set such that on N^ the paths of (Xt)t>o are right continuous and let Ny be a null set such that on NY the paths of (Yt)t>0 are right continuous. Put Nt := {u> £ ft; Xt(u) ^ Yt(uj)} and set N = UteQ+ ^*By assumption N is a null-set and so is M := Nx U Ny U N. Thus it holds Xt{w) = Yt{w) for all t G Q+ and w G Mc. For t G [0, oo) n Q c take a sequence (*n)n£N, tn G Q+, such that tn [ t. Since for w G Mc we have Xtn{ui) = Ytri(cu) for all n G N the right continuity yields Xt{w) = lim Xtn(w) = lim Ytn(w) n—KX>
n—»oo
=Yt(u)
for these u> and the theorem is proved.
•
It will turn out that all the processes we are interested in are cadlag processes. Therefore we need to investigate the space of all cadlag functions in detail. For our purposes it is sufficient to restrict ourselves to the case E = K n . We start with Definition 3.3.4. A function u : [0, oo) —> Mn is called a cadlag function if for all to G [0, oo) the function is continuous from the right and has for all to G (0, oo) left limits. The space of all cadlag functions is denoted by D n ([0,oo)). Lemma 3.3.5. Let u : [0, oo) —> W1 be a function for which
u(t+) := limu(s),t > 0, and u(t—) := limu(s),i > 0, sit
sTt
exist. Then there exists a countable set T C (0, oo) such that for all t G F c it holds u(t-) = u(t) = u(t+). Further, for each finite T > 0 the set F n D [0, T] is finite where
Tn := {t G (0, oo); maxflu(t-) - u{t)\, \u{t-) - u{t+)\, \u{t) - u(t+)\) > i } . Proof. Since F = \Jn&n Tn it is sufficient to prove that F n D [0, T] is for each T > 0 finite. Suppose that F n n [0,T] has a limit point t. Then either u(t+) or u(t—) would not exist implying the finiteness of F n n [0, T]. O
74
Chapter 3 Feller Processes
Lemma 3.3.6. Let I C [0, oo) be a dense set and u : I —» Mn be a function. Suppose that for each t > 0 (3.72)
v(t) :=limu(t) sit s€/
exists. Then v is on [0, oo) continuous from the right. If for each t > 0
v~(t) :=limu(s)
(3.73)
sit s€l
exists then v~ is continuous from the left on (0, oo). If for all t > 0 both v and v~ exist then it holds v~(t) = v(t—). Proof. Suppose that (3.72) exists for all t > 0. Fix to > 0 and given e > 0 then there exists 6 > 0 such that
\v(t0) - u(r)\ <e for all r Gill (t0, t0 + S) and therefore \v(t0) - v(s)\ = lim \v(t0) - u(r)\ < e r[s rel
for all s G (to, t0+ 5) and the right continuity of v is proved. The left continuity of v~ is proved analogously. To see the last statement, recall that \v~(to) — v(to—)\ = |limu(s) - lim (limu(r))| r€/
sel
= | lim u(s) - lim(limu(r))| sfto sel
sTto rls sei rei
=0 since for s £ I we have u(s) — limu(r).
•
rei
Definition 3.3.7. A. A function u : [0,oo) —> M" is said to have a jump discontinuity at t 0 £ [0, oo) if u(t—) and u(t+) exist and u(t+) ^ u ( i - ) . B. We say that u : [0, oo) —> R" has no discontinuity of second kind in [Ti, T2] C [0,00) if for all t € [Ti,T 2 ] the function u has right limits and for all t £ ( T i , ^ ] its
3.3 A First Encounter with Sample Paths and Cadlag-Functions
75
left limits exist. C. The function u : [0, oo) —> M™ is said to have at least m G NU {oo} e-oscillations, e > 0, in [Ti,T2\ C [0,oo) if there are points
Ti
< ...
such that
|u(t f c _i)-«(t f c )|>e
(3.74)
holds for k — 1,... , m. Lemma 3.3.8. A function u : [0, oo) —> R has no discontinuities of second kind in [Ti,T2] C [0,oo) if and only if for every e > 0 the number of its e-oscillations is finite on [T\,T2\Proof. Suppose first that the number of e-oscillations in [7\, T2] is infinite for some e > 0. Then there exists to 6 P i , T2] and a sequence ( i ^ e N j tv G p i , T2], > e. This implies such that either tv j. to or tv j to and \u{tv — u(tv-i)\ that either u(t0—) or u(to+) will not exist. Conversely, suppose without loss of generality that u(to-),to € (Ti,!^] does not exist. Then there exists a sequence (tv)u&i,tv ] to,tu G [Ti,T2] such that sup |u(tM) — u(tv)\ > e implying that there are infinitely many e-oscillations.
•
Corollary 3.3.9. Let u € Dn([0,00]). Then on every compact interval I C [0,00) the function is bounded, i.e. \u(t)\ < M for all t S / , and u has at most finitely many jump discontinuities with jumps larger than e > 0. In particular u has at most countable many jump discontinuities of size larger than e > 0 on [0,oo). From now on we denote typical elements of D n ([0,oo)) by u> since later on D n ([0,00)) will become the probability space we consider the stochastic processes on we are going to construct. On J9 n ([0,oo)) we need a topology. The cr-field generated by this topology should make all projections Xt : Ai([0,00)) —> W1 , w —> Xt(u>) — u>(t) measurable, but in addition it should be a separable (preferable metric) topology since measure theoretical considerations require to involve only countable many operations. Such a topology was introduced by A. V. Skorohod [334], see also [335]. Let us try to understand what we should require from such a topology. First of all, limits of cadlag functions should be cadlag functions. Thus locally (at least) the convergence should be of uniform type. However, even intuitively,
76
Chapter 3 Feller Processes
the sup-norm will not satisfy our requirements. For this consider the following example. Let u := X[o,2)c £ -Di ([0, oo)) and have a look at the two sequences Uv = X[o,2+i)c a n ( i ^i2' = X[o,2-i)c e ^i([0,oo)). For large v both, Jp and wl should be seen to be "near" to w. But clearly for all v we have sup \cj(t) - 4^(t)\ = sup \w(t)-tjW(t)\ = l. te[l,3]
t€[l,3]
But if we run u>l and wj, with different velocities than w, i.e. if we consider t ^ uP (riP(t)) and t >-> wi 2 ) (^ 2 ) (t)) where ^ ( i ) = ^ t and ffc (t) = gyHi^i respectively, then we have in fact o> = u>£, o ?^,' = w j oi/i and as f —> oo we find that rj\}'(t) —> £ as well as r]l2'(t) —»t. Of course, when w has several jump discontinuities or wi,^ is a more general cadlag function we can not find a time change as above. But the example shows us a way how to construct an appropriate metric: For wi,o»2 S -Dn([0,oo)) consider locally the s u p - n o r m of \u>i(t) — w2{r]{t))\ where \r](t) — t\ is small. (Since elements of D n ([0,oo)) are in general unbounded, it should be in addition helpful to make the metric finite by taking a sup with 1 — but this is technical only.) A Skorohod metric on Dn(j0,oo)) is constructed along this line by following the presentation St. Ethier and Th. Kurtz [98]. We say that r) : [0, oo) -> [0,oo) belongs to the class L if rj is a strictly increasing surjective Lipschitz continuous function such that
|M|L:= sup l o g ^ - f 0 s>t>0
(3.75)
S—t
holds. Since r\ is a Lipschitz function rj'(t) exists almost everywhere, hence ||rj|| L is indeed finite. In addition for // e L it follows that 77(0) = 0, lim r](t) = 00 t->o and ||T7||L = H??"1!^- For wi,w 2 £ £>n([0,00)) and rj e L we set g(u!i,iO2,ri,u)
: = s u p | w i ( £ A w ) — u2(r)(t) Au)\ A l , i t > 0,
(3.76)
t>o and define
(
(
f°°
\\
dD(cJi,uj2) := inf max | M | L , / e u£»(u;i,ct;2,?7,u)du . (3.77) r)GL V V Jo )} In order to prove that do is a metric we need some preparations. For two sequences (u;^)i/eN and (w£2)),,eN in Dn([0,00)) it holds lim <1D{UV ,Uv ) = 0 V—>OO
3.3 A First Encounter with Sample Paths and Cadlag-Functions
77
if and only if there exists a sequence (rju)U£N, "HV € L, such that lim \\rjv \\L = 0, and for all e > 0 and uo > 0
V—>OO
lim A ( 1 ' { n e [ 0 , « ( ) ] ; J ( 4 1 ) 1 u ( 3 » ^ , U ) > 6 } = 0
(3.78)
holds which follows just from (3.76) and (3.77). In addition, since for rj e L esssupi > O\r/(t) - 1| < 1 - e^"*- < \\r)\\L,
(3.79)
we deduce from lim | M | L = 0
(3.80)
V—>OO
that for all T > 0 lim sup \qv{t)-t\
i/-»ooO
=0.
(3.81)
Now we may prove Lemma 3.3.10. By dp a metric, called the Skorohod metric, is given on Dn([0,oo)). Proof. For wi,o;2 £ ^ ( [ 0 , oo)) it follows that for all rj € L and u > 0 sup |u;i(£ A M ) - u>2 (??(£) A u)\ A 1 t>o = sup|u;i(77~1(t) A M ) - W 2 (^ A u)| A 1, t>o i.e. Q{uj\,uj2,r],u) = ^ ( w i , ^ , ^ 1 , ? * ) which together with \\r)\\L — \\f]~1\iiL implies that dD{w\,wi) = di?(w2,wi). Next suppose that 2- Thus we have proved that dD(wi,ui2) = 0 implies u>i = u>2, clearly u>\ = 0J2 implies that do{^1,1^2) = 0. Finally we prove the triangle inequality for do- For this let Wi,a>2,
78
Chapter 3 Feller Processes
u > 0. It follows that sup|wi(t Au) - wz{r)2{m{t)) A 1 ")| A l t>o < sup \u>i(t A u) — a>2(?7i(£) A M)| A 1 t>o + sup IW2 (»7i (*) A u) - w 3 (% (m (*)) A u) I A 1 t>o
v
C3 8 2 ) •
;
= sup \w\(t AM) - W2(»7i(t) AM)| A 1 t>o + sup |a>2(i A u ) - w3(r?2(i) A M)| A 1, t>o i.e. e(wi,w3,772O77i,M) < e(wi,u;2,»7i. u ) + e(w2,W3,»72,")-
However % ° ^?i € i and
U^oTnll^lML + hilL
(3.83)
and we obtain dp(^1,^3) < dr>(wi, W2) + d(tJ2-u>3) proving the lemma.
D
Definition 3.3.11. The topology induced on 2?n([0,00)) by do is called the Skorohod topology and (D n ([0,00)),dp) is called the Skorohod space. Theorem 3.3.12. The Skorohod space (Z)n([0, 00), dp) is a complete separable metric space and its topology is weaker than the locally uniform topology. Moreover the projections Xt : Dn(j0,00)) —> K " , u >-> X t (w) = w(i) are measurable with respect to the Borel a-field A — Aon on D n ([0,oo)).
This theorem as important as it is for our purposes has a rather lengthy, technical proof which is for example provided in St. Ethier and Th. Kurtz [98], Chapter 3, but this proof gives almost no new insights. Therefore we omit the proof and refer to [98]. In [206] J. Jacod and A. Shiryaev discussed in a long Chapter, Chapter VI, the Skorohod topology (with a slightly different but equivalent definition of do) and provided all proofs. After stating the main theorem they made the following comments: "... we strongly advise the reader to skip the proof, which sheds very little light on the significance of this topology." However, we want to provide two criterions for convergence in £>n([0,00)) once again taken from [98].
3.3 A First Encounter with Sample Paths and Cadlag-Functions Proposition 3.3.13. Let ( W ^ ) ^ M LJ G -Dn([0, oo)). Equivalent to
79
be a sequence in J9 n ([0,oo)) and
lim dD{ujv,w) = 0
(3.84)
I/—>OO
is t/ie existence of a sequence (fji/Ji/gm,^ € L, such that lim ||r?v||L = 0 and lim p{ujv,uj,r)v,u) = 0 /or aH u G Cu,
(3.85)
where Cu denotes the points of continuity of UJ . Proof. The sufficiency of (3.85) for (3.84) to hold is a consequence of Corollary 3.3.9. Now suppose that (3.84) holds and let u G Cu. Prom (3.78) we deduce that there is a sequence (77,,),,6N,??I/ G L, and (u^gp^Uj, £ (u, oo) such that lim H^ll^ = 0 and V—>OO
lim sup \wv(t A Uv) - oj(rjv(t) A u)\ A 1 = 0.
v—»oo t > 0
(3.86)
Observe that sup \jJv(f A u) — oj(r\v(f) A u)\ A 1 t>o < sup \wv{t A u) — cj(r]v(t A u) A uv)\ A 1 t>o + sup \u)(r)v(t A u) A uu) - u{r]u{t) A u)| A 1 t>o
< sup \wv{t Auv) — u(r]u(t) Auv)\ A 1 0
(3.87)
M<S<77^(«)Vli
V(
sup
|w(t/v(u)-«,,)-w(s)|M)
for each i^ e N. Note that the second term in the last estimate is obtained by considering the two cases t < u and t > u separately. But now (3.86) and = 0. • (3.81) and the continuity of w at u yield lim p^v,^,^^) v—too
Proposition 3.3.14. Let (iv,,),,^ be a sequence in Dn(j0,oo)) UJ G .D n ([0,oo)). Then {uJu)uen converges to UJ, i.e. lim dD{uv,u) V —»OO
= 0,
and (3.88)
80
Chapter 3 Feller Processes
if and only if there is a sequence (r)v)veH, r\v G L, such that lim ||7?^||L = 0 and lim sup \uv{t) - u(r]u(t))\ = 0.
v—»oo
(3.89)
u—>ooO
Proof. If (3.88) holds then there exists a sequence (rfv)v^,r]v £ £, and a sequence (uv)V£n, "»- G (0, oo) such that lim \\r}v 11^ = 0 and p(uju, u), r}u, uv) —> 0 K—>0O
as v —> oo. In particular it follows that
lim sup \u}v{t A uv) — uj{r}u{t) A uv)\ = 0.
(3.90)
V—>CXD t > 0
Given T > 0, we find for v sufficiently large that uv > TVrjv{T) and therefore (3.90) implies the second statement of (3.89). Conversely, if (3.89) holds then by (3.87) for every point u € Cu it follows that lim sup \uv{t A M ) - u}(Vv(t) A u)\ A 1 = 0
v—>oo t > 0
for u,, > ??y(w) Vu,i/eN, which implies (3.88).
(3.91)
•
Remark 3.3.15. Note that (3.90) tells that at points of continuity of LJ the sequences converging to u> in Dn(j0, oo)) converge also pointwise. It is not difficult to see that the results we proved for cadlag functions CJ : [0, oo) —> W1 will hold when W1 is substituted by a suitable metric space E, compare [98]. In particular we may take the one-point-compactification R^ ofM". When discussing in Chapter 4 the martingale problem for pseudo-differential operators with negative definite symbols we have to continue our discussion of (.Dn([0,oo)),dp)- Especially we will examine compact subsets and weak convergence of measures on Aon the Borel cr-field generated by P n ([0, oo)). But before, we want to show that the paths of the canonical process associated with a Feller semigroup are almost surely cadlag paths. For this we need a deeper understanding of these processes, especially we have to discuss the Markov property.
3.4
Markov Processes and Feller Processes
We want to study how the semigroup property of a semigroup of (sub-) Markovian kernels is reflected in properties of the corresponding canonical
3.4 Markov Processes and Feller Processes
81
process. For the following however we do not need to work with a canonical process, thus we start with a stochastic process (Xt)t>o on a probability space (SI, A, P) with an arbitrary (sometimes Polish) state space (E, B). In addition we assume that a filtration (Tt)t>o in A is given and that (Xt)t>o is adapted. Definition 3.4.1. Let (Xt)t>o be a stochastic process on (Cl,A, P) with state space (E,B) and suppose that [Xt)t>o is adapted to the filtration (Tt)t>o- We call (Xt)t>o a Markov process with respect to (J~t)t>o if P(Xt e B\Ta) = P(Xt e B\Xa) P-a.s.
(3.92)
for all 0 < s < t and all B e B . Remark 3.4.2. A. Property (3.92) is often called the elementary Markov property. B. Obviously (3.92) is equivalent to E(X{Xt{»)£B}\fs) = E(x{Xt(.U)€B}W(Xl)) [= E(x{xtlu)eB}\Xt)}.
(3.93)
{
To proceed further we need Lemma 3.4.3. Let {Xt)t>o be a stochastic process as in Definition 3.4.1. Then (Xt)t>o is a Markov process with respect to the canonical filtration i^rt)t>o if and only if for every B e B and any finite choice of numbers 0 < s\ < ... < sn < t we have P(Xt e B\a(XSl,.. .,XSn)) = P(Xt e B\XSn).
(3.94)
Proof. Suppose that (Xt)t>0 has the elementary Markov property with respect to (J^)t>o. For B e B and 0 < si < ... < sn < t we find P(Xt e B\F°Sn) = P(Xt e B\XSn) P-a.s. or with A := {u> € H; Xt{u) e B} we have E(XA\^n)
= E(XA\XSJ
P-z.s.
Further it follows that E{E(XA\^n)\o-(XSl,...,XsJ)
=
E{E(XA\XSn)\a(XSl,...,Xan)) (3.95)
82
Chapter 3 Feller Processes
and using the properties of conditional expectations we arrive at E(E(XA\^n)HXSl,..
.,XaJ)
= E(XA\
,...,
XaJ)
as well as E(E(XA\X.J\*(XSI,...,X.J)=E(XA\X.J
which yields P(Xt G
B\
. .,X.J)
= P(Xt G B\XSn),
(3.96)
i.e. (3.94). Conversely suppose that (3.94) holds. We have to prove that P(Xt G B\T°S) = P(Xt G B\X.) P-a.s. for all B G B and 0 < s < t. This is equivalent to show that a version Y of P(Xt G B\XS) is also a version of P(Xt G B\T°S). Clearly F is cr(Xs) measurable, hence ^ - m e a s u r a b l e and therefore we have to prove that / YAP = P({Xt EB}DQ)
(3.97)
JQ
holds for all Q G J*. Prom (3.94) it follows that (3.97) holds for all Q G cr{XSl,..., XSn) with any choice of (finitely many) 0 < s\ < ... < sn. The family £ of all these sets forms a D-stable generator of J7® and fi G £. We may interpret (3.97) as an equality of finite measures on A which on £ coincide, i.e. they have to coincide on cr(£) = J7® which proves the second part • of the lemma. Now we can prove that canonical processes have the elementary Markov property. be a stochastic process with Polish Theorem 3.4.4. Let (Q,A,P^,(Xt)t>o) state space (E, B) and finite dimensional distributions deriving from a normal semigroup of Markovian kernels {pt(','))t>0 o,nd initial distribution /i. Then (Xt)t>o is a Markov process with respect to the canonical filtration {^)t>oIn addition for B G B and 0 < s < t P(Xt G B\7?) = Pt-s{Xs,B) holds where pt~s(Xs,B) LJ^Pt_s(Xs(uj),B).
P-a.s.
(3.98)
is the random variable (3.99)
3.4 Markov Processes and Feller Processes
83
Proof. Clearly, pt-a(Xa,B) is always cr(Xs )-measurable, hence it is J^-measurable. Therefore it remains to prove that for all Q e f s ° / pt-s(XsH,B)dP = P({Xt sB}nQ)
(3.100)
JQ
holds. As in Lemma 3.4.3 it is sufficient to prove (3.100) for the fl-stable generator consisting of all Q € a(XSl,... ,XSn),0 < s\ < ... < sn < s. In addition, by Lemma 3.4.3, we only have to prove P{Xt
€ B\a(XSl,...,XSn))=
Pt.Sn(XSn,B)
P-a.s.
(3.101)
for 0 < S\ < ... < sn < t, s = sn. Once (3.101) is proved we arrive at P{Xt€B\X,n)=pt-,JX.n,B) and further for 0 < s < t P(Xt£B\J*)=pt_s(Xs,B), i.e. the elementary Markov property. Since the random variable Y := Pt-sn (XSn, B) is cr(XSl,..., XSn)-measurable we have to show / YdP - P({Xt £B}DQ)
(3.102)
JQ
for Q £ a(XSl,... ,XSn). Without loss of generality we may take Q = {XSl G J3i} n . . . n {XSn e Bn} where Bj G B since these sets form a Pi-stable generator of cr(XSl,..., XSn). Now we find
I YdP = J{XQY)dP = J
XB^XI)
= J{XB, oXSl)--•••
(XBn o XSn)YdP
XBn(xn)pt-3n{xn,B)Pj{dx),
where J = {s\,..., sn} and dx = d ( x l 5 . . . , xn). Here Pj is the joint distribution of the random variables XSl,..., XSn. Now we use the fact that the finite dimensional distributions of the process originate from a Markovian semigroup
84
Chapter 3 Feller Processes
of kernels, i.e. we find /
YdP
JQ
= / • • • / XBI (ZI) ••• Xs n (x n )p t - Sri {xn,B)pSn-Sn^1
(z n _i, dxn)
•••Psi(xo,dxi)n(dxo) = 11 J JBX =PH{BI
••• I
pt-Srl{xn,B)---pSl(xQ,dxi)n(dx0)
JBn x...xB
n
xB),
where H = { s j , . . . ,sn,t} and P# denotes the joint distribution of XS1,..., XSn, Xt. But the special structure of Q yields finally PH{BX x...xBnxB)
= P{XSl G B i , . . . , X , B = P({xt
€Bn,XteB)
eB}nQ)
proving the theorem.
D Corollary 3.4.5. Every canonical process constructed by starting with a Feller semigroup (T t ) t > 0 on Coo(Mn) and a given initial distribution fi e Mi(M.n) is a Markov process with respect to the canonical filtration. Proof. If all operators Tt are conservative, i.e. Til = 1, then nothing is to prove since the associated family of kernels are Markovian kernels. In the sub-Markovian case we first have to consider the canonical process with state space (R^, /?£) and then recall the definition of the extension of Tt to Sfc(R^), • compare Section 1.4.8. The next step is to consider instead of one (canonical) process associated with a semigroup of Markovian kernels and an initial distribution p. the family of all processes (Q,A,PX, (Xt)t>o)xeE, Px = PEx, compare (3.59). Lemma 3.4.6. Let (Cl,A, Px, (Xt)t>o) xeE be the family of canonical processes an ^ associated with the normal Markovian semigroup of kernels (pt(-,m))t>0 initial distributions £x,x G E, where (E,B) is the Polish state space. Then a Markov kernel from (E, B) to (fl, A) is given by (x,A)>-+ PX(A).
(3.103)
3.4 Markov Processes and Feller Processes
85
Proof. By construction A H-> PX(A) is for each x £ E a probability measure on fi. On the other hand, for 0 < ty < ... < tn and B\.... Bn G B we have P I (I tl eB 1 ,...,\eB n ) = / • • • / Ptn-tn-1{Xn-l,fan)---PtAx,&x) JB!
JBn
P
= ti ((• • " Ptn-1-tn^2{Ptn-tn^1XBn)XBn_1)
• • • XB1){x),
proving the measurability of x >—> Px(Xt1 £ B,..., Xtn £ Bn) which however is sufficient to get the measurability of x H-> PX(A) for all A 6 A by the construction of A. • Note that the kernel (x, A) — i > PX{A) allows us to define an operator on x Bb(n) b y F M fY(w)P (duj). Let us return to the family (fl,A, Px, (Xt)t>o)x€E of canonical processes. We have x Pt(x,B)=P (XteB)
(3.104)
and therefore by Theorem 3.4.4 Px(Xs+t € B\J*) = pt(X.,B) Px-a.s. for s,t > 0,x e E and B € B. If we denote by PX"(A), variable
(3.105) A £ A, the random
OJ^PX'^\A),
note Xa{w) e E, by (3.104) and (3.105) we arrive at Px(Xa+teB\J*)=Px-{XteB)
Px-a.s.
(3.106)
and in addition PX(XO = x) = l.
(3.107)
For the following general definitions we make us free from the assumption of dealing with canonical processes. Definition 3.4.7. Let (E,B) be a measurable space. We call a universal Markov process with state space (E,B) if (Sl,A,Px, (Xt)t>o)xeE the following conditions hold:
86
Chapter 3 Feller Processes i) (£l,A,Px,(Xt)t>o) space (E,B);
is for each x € E a stochastic process with state
ii) for every A £ A the function x i-> PX(A) is S-measurable; iii) PX(XO = x) = l for all x G E; iv) for all s, t > 0, x G £ and B G B it holds P x ( X s + t G B | ^ J ) = Px°(Xt
e S ) P x -a.s.
(3.108)
The last property, i.e. (3.108) is called the universal Markov property with respect to the canonical filtration. Remark 3.4.8. A. It is clear that if (p., A, Px, (Xt)t>o)xeE is a universal x Markov process then for each x € E the process (Q, A, P , (Xt)t>o) ls a Markov process with respect to the canonical filtration {J~t)t>o, i-e. Px(Xt G B\J*) = Px(Xt G B\Xt) Px-a.s. for t > s. Indeed we have Px'(Xt
G B) = Px(Xs+t
and since PXs(Xt Px'{Xt
G B\T°S) = £ * ( X B o X s + t | J ^ ) P ' - a . s ,
G -B) is
EB)= Ex(Px'(Xt x
E {E (XBoXs+t\^)\Xs)
= = =
G B)\XS) x
x
E (XBoXs+t\Xs) x
P (Xs+t<EB\Xs)
implying Px{Xs+t
G B\J*) = Px(Xs+t
G B|X,).
B. Of course we may replace in Definition 3.4.7 the canonical nitration {J^)t>o by any filtration {Ft)t>o provided J^ C Tt, i.e. (Xt)t>o is adapted to (.F)t>oIn this case we write {Xt,ft)t>o, or (il,A,Px, (Xt)t>o, (^t)t>o) x€E Summing up, we have proved
3.4 Markov Processes and Feller Processes
87
Theorem 3.4.9. Let (pt)t>o be a normal semigroup of Markovian kernels on a Polish state space (E,B). Then there exists a universal Markov process (Q,,A,PX, (Xt)t>o)xeE with state space (E,B) such that for all t > 0,x G E and B e B we have Pt(x,B)
= Px(XteB).
(3.109)
Note that (3.109) is equivalent to (PtXB)(x)=Ex(XB°Xt) and by the standard procedure we arrive at (Ptu)(x)=E*(uoXt)
(3.110)
for all u £ Bb(E). Corollary 3.4.10. Let {Tt)t>o be a conservative Feller semigroup on Coo(Kn). Then the family of canonical processes (il, A, Px, (Xt)t>o)xeWLn form a universal Markov process. For a general Feller semigroup a universal Markov process is obtained by (Q,A,Px,(Xt)t>o)xem.^In case of Corollary 3.4.10 it follows from (3.110) for u G Coo(M") (Ttu)(x) = Ex{uoXt).
(3.111)
Thus we have a simple, natural relation between a Feller semigroup and its associated universal Markov process. Remark 3.4.11. It is possible to prove that every universal Markov process originates from a Markovian semigroup of kernels, compare H. Bauer [30], §42. But this part of the general theory is of little interest for us and therefore we omit any further discussion. Our next more ambitious aim is to construct cadlag modifications of certain canonical processes. This requires some preparations which are partly also needed in different context. Let (E, B) be a measurable space and T C B a sub-cr-field. By B(E, T) we denote the space of all J--measurable functions on E, but as before we write B(E) for B(E,B). The proof of the following lemma is partly taken from K. L. Chung [75].
88
Chapter 3 Feller Processes
Lemma 3.4.12. Let (Q,A,Px,{Xt)t>o,(Tt)t>o)xSE be a universal Markov process with locally compact Polish state space (E,B). The Markov property Px(Xs+t
E B\FS) = Px°{Xt G B) Px-a.s.
(3.112)
is equivalent to each of the following conditions: E»{Y\Tt) = E"(Y\Xt)
for allY G Bb(E,a(Xs,s
e [t,oo)));
for all u G Bb(E) and s > t;
E»(u(Xs)\ft)
= E»(u{Xs)\Xt)
E^{u{Xs)\Tt)
= E"(u(JC s )|X t ) /or oil u e C o (£) ond s > t.
(3.113) (3.114)
and (3.115)
ifere E^ denotes the expectation with respect to P^jfi being any initial distribution. Proof. Since for every u S Bb(E),u > 0, there is a sequence (•uJ/),,eN, uv G Co(E) and u,, > 0, which increases pointwise to u, i.e. uu \ u as u —> oo, (3.114) follows from (3.115) first for u > 0 by monotone convergence, and for general u by considering the decomposition u = u+ — u~. Next we will prove that (3.114) implies (3.113). Let Y:=Ul(XSl)---Ul/(XsJ
(3.116)
where t < Si < . . . < sv and Uj G Bb(E), 1 < j < v. For v = 1 the statement (3.113) is just (3.114). Now suppose that (3.114) implies (3.113) if Y is of form (3.116) for some v - 1. It follows for v G N that
E»(j[Uj(XSi)\Ft)
.3 = 1
J=l
Now,
^K(X S J|^_J = ^K(x s j|x ai/ _j = 5 ( ^ - J
3.4 Markov Processes and Feller Processes
89
for some g e Bb(E), compare Definition 2.5.12, and we may consider instead of uv-\ the function (u^_i • g)(X3v_1). The induction hypothesis implies now
-2
=E"(j[ui(Xtj){uv-l-9){Xtv_1)\Ft) 1/-2
=^(II
^AX.i){uv.x-g){Xtv_1)\Xt)
=^(^(f[ Uj (X s ,)|^ s _ 1 )|X t ) =E'i(j[uj(XSj)\Xt). J=I
Thus we have proved that (3.114) implies (3.113) for all Y of type (3.116), v e N. Now taking Uj = XB, we conclude by using a monotone class argument that (3.113) holds for all XA,A e a(Xs,s G [*,oo)). From this we deduce first by using monotone approximation that (3.113) holds for all e [t, oo)) and then by decomposing u = u+ - u~ it u > 0, u e B(E,a(Xs,s follows that (3.114) implies (3.113). Thus the equivalence of (3.113), (3.114) and (3.115) is established. Now taking in (3.114) the characteristic function XB ,B £ B, we arrive at the elementary Markov property P»(Xa
e B\Ft)
= P"{XS
g B\Xt)
,t<s,
for every inital distribution \i which in our case implies (3.112) by Theorem 3.4.4 and its consequences.
•
Definition 3.4.13. Let ((Xt)t>0, Px, (^Ft)t>o)xeE be a universal Markov process with corresponding semigroup of operators (Pt)t>o- Further let u : E —> M. be a measurable function, u > 0. For a > 0 we call u a-supermedian with respect to (Xt)t>o if e~atPtu < u
(3.117)
90
Chapter 3 Feller Processes
holds for all t > 0. If u is a-supermedian and u = lime-at Ptu,
(3.118)
UO
then u is called a-excessive with respect to (Xt)t>0. Lemma 3.4.14. Let u be a-supermedian with respect to the universal Markov process ((Xt)t>a,Px,{Jrt)t>o)xeE and suppose that for each t > 0 the random variable u(Xt) is integrable with respect to every measure Px. Then (e~atu{Xt),!Ft)t>Q is a supermartingale. Proof. We use the Markov property in the form (3.112) (in its obvious extension to integrable functions) to find for s > 0, t > 0 that u(Xs) > e-atP?u{Xs) = =
e-atEx°(u{Xt))
e-atE»(u(X3+t)\Fs),
or e-asu(Xs) >
E^(e-^s+^u{Xs+t)\Ts)
proving the lemma.
•
With every strongly continuous contraction semigroup (Tt)t>o on a Banach space X we associate its resolvent, compare Section 1.4.1, by
Rxu= f Jo
e-XtTtudt=(\-A)-1.
Now, if (Pt)t>o is the semigroup of operators associated with a universal Markov process with state space (E,8) and if u e P>b(E), then Uxu:= f Jo
e-XtPtudt,X>0,
makes sense. In addition the resolvent equation Ux-Ull = ((Ji- \)VXU» holds and we have
(3.119)
3.4 Markov Processes and Feller Processes
91
for u € Bb(E). Moreover, if E — R n and (•Pt|coo(Kn))t>0 *s a Feller semigroup {Tt)t>o, then J/A|COO(R") = ^ A , where (J?A)A>O denotes the resolvent associated with (Tt)t>o. It is convenient to call the family (U\)\>0 the family of X-potential operators associated with the process {Xt)t>obe a universal Markov Proposition 3.4.15. Let ({Xt)t>Q,Px,{Jrt)t>o)xeE process, a > 0, and u e Bb(E),u > 0. Then Uau is a-excessive with respect to (Xt)t>o and {z~atUau(Xt),Tt)t>Q is a supermartingale. Proof. First we observe that
e-atPt(Uau) = e-at
[Xe-asPt+suds
Jo e-asPsuds<
/ e-asPsuds = Uau, Jo
thus Uau is a-supermedian and since />OO
OO
/
e- Q S wds= / Jo
e-asPsuds,
it follows that Uau is a-excessive. Finally, since Uau is bounded we may apply Lemma 3.4.14 to Uau instead of u to find that (e" Qt f/ Q u,^ r t)t>o is a supermartingale. • (Ft)t>o)xpE Definition 3.4.16. A universal Markov process ((Xt)t>o,Px, with locally compact Polish state space (E,B) is called a Feller process if (Tt)t>o,Tt := Pt\c^{E) is a Feller semigroup. In order to prove that Feller processes admit cadlag-modifications we need Lemma 3.4.17. Let (D,,A, P) be a probability space and let (E,B) be a locally compact Polish space. Two random variables X,Y : Q —> E are almost surely equal if and only if E(u{X)v(Y))
= E{u{X)v{X))
(3.120)
holds for all u, v S Cb(E). Proof. Clearly, X = Y a.e. implies (3.120). Now, suppose that (3.120) holds. By a monotone class argument we derive that E(u(X, Y)) = E(u(X, X))
(3.121)
92
Chapter 3 Feller Processes
holds for all UJ G B(E x E),w > 0. Since X{{x,y)eExE;x^y} Borel function on E x E we find
is a non-negative
P(X ^Y) = P(X ^ X) = 0 and the lemma is proved.
•
Remark 3.4.18. Clearly, the above lemma remains valid if Cb(E) is substituted by Coo(E). Now we can prove Theorem 3.4.19. A Feller process ((Xt)t>o,Px)x£Rn tion.
has a cddldg modifica-
The proof of Theorem 3.4.19 requires two results on supermartingales, Theorem 2.6.9 and Theorem 2.6.11, which we recollect here for convenience. The first theorem states that if (Xt)t>o is a supermartingale on (p., A, P, (^rt)t>o) then for almost all w G O the following two limits exist
lim Xr{w),t > 0 and lim Xr(u),t > 0. rtt
rit
rGQ+
r€Q+
The second theorem states that a right-continuous supermartingale has almost surely cadlg paths. Now, following D. Revuz and M. Yor [299] we give the Proof of Theorem 3.4.19. Let {UV)VQ^,UV € Coo(R™) and uv > 0, be a sequence which separates points, i.e. for x,y £ Rn,x ^ y, there exists VQ such thatu t , 0 (x) 7^ uUa(y). Since foru G Coo(Rn) wehaveC/ Q u = Rau it follows that for v G N the family (aUauu)a>o converges uniformly to uu as a —> oo, hence H := {Uauv;a G N and v e N} is a countable set of functions in Coo(Rn) which also separates points. Using the fact that {e~atUauv)t>o is a supermartingale with respect to (JFt)t>o and all Px as well as all P^ — j Pxfi(dx), the first result mentioned above, i.e. Theorem 2.6.9, yields that for every h G H the limits lim h(Xr(cj)) exist almost surely. Since H separates points rit r£Q+
it follows that for all w G Q\Af, P(M) = 0, P = P M for some initial distribution .122) Xt{w) := lim Xr{w) rit re®+
(3
3.4 Markov Processes and Feller Processes
93
exists. For u> £ Af we just define
Xt{uj) := 0 for t > 0. For u, v e Coo(Rn) we find for any initial distribution pt using the Markov property
E»{u{Xt)v{Xt)) = lim E»{u{Xt)v{Xs)) sit
SGQ+
= lim E»(u{Xt)Ex*{v{Xs-t))) seQ +
- lim E»(u{Xt){T3_tv){Xt)) sit
seQ+
= E»(u{Xt)v{Xt)), where we used that lim ||Ts_tw — v ^ = 0 since (Tt)t>o is a Feller semigroup. Thus Lemma 3.4.17 implies for each t that Xt = Xt a.s. Since (Xt)t>o is right continuous we have constructed a right continuous modification of (Xt)t>o- It follows further from the second theorem mentioned above, i.e. Theorem 2.6.11, that for every h G H the process (h(Xt))t>Q has almost surely cadlag paths because it is a right continuous supermartingale. Again we may use the fact that H separates points to conclude that (Xt)t>o has almost surely cadlag paths, i.e. we have constructed a cadlag modification of (Xt)t>o• Corollary 3.4.20. Let (Xt)t>0 be the canonical universal Markov process with respect to the canonicalfiltrationassociated with a (conservative) Feller semigroup (Tt)t>0,Tt : Coo(R") -+ Coo(Kn). Then it admits a cadlag modification. Remark 3.4.21. Using Remark 2.6.2.C and Theorem 2.6.13 we may also deduce that Corollary 3.4.20 holds for the nitrations (Jf+)t>o as well as the augmentation of (J^+)t>oRemark 3.4.22. A very detailed, clear and complete proof that every Feller process admits a cadlag modification with respect to a complete and right continuous nitration is given in the forthcoming book [323] of R. Schilling. We may give Corollary 3.4.20 a different, very important interpretation. Let (Tt)t>o be (for simplicity) a conservative Feller semigroup on Coo(Rn).
94
Chapter 3 Feller Processes
Further let fi be an initial distribution. The Kolmogorov construction yields a canonical process ((R")[o>°°), (BW)[o,oo) )PM) (Xt)t>o), where Xt{w) = w(t) is a projection. Since this process has a cadlag modification we might try to prove that P M |p n gives a probability measure on Z?nn(jB(n))[0>o°). The problem is that in general T>n is not measurable. Definition 3.4.23. Let (E,B) be a Polish space and {Pj)j^u(i) be a projective family of probability measures over E. We call a set Q. C E1 essential with respect to {Pj)j£U(i) if there exists a stochastic process with state space E, parameter set / , finite-dimensional distributions (Pj)jsn(i) a n d path-set Q. The next theorem due to J. L. Doob [88] gives a characterization of essential sets. Our formulation is taken from H. Bauer [30] where the reader may also find a proof. Theorem 3.4.24. Let E be a Polish space and [PJ)J^H(I) be a protective family over E. Denote by P the protective limit of {Pj)jen(i) and ^he outer measure determined by P is denoted by P*. Then a set Cl C E1 is essential with respect to (Pj)jeH(i) if and onMi if P*{h) = 1. Proof. See [30], p.328.
(3.123) •
Note that (the proof of) Theorem 3.4.24 yields that
(fi, n n B1, P, (Xt)t>o), P(fi n Q) = P(Q), is an equivalent process to the canonical process {E1 ,BI, P, (Xt)t>o) • Thus we find that to a given (conservative) Feller semigroup on Coo(K") there exists a process equivalent to the associated canonical process given by
(vn,vnn(Bny,P,(xt)t>0), in fact we may replace I ^ n ^ " ) 7 by a{Xt,t £ [0,oo)). This process leads again to a universal Markov process, in fact a Feller process, and all considerations made so far do hold (essentially) also for this process. Thus, determining a universal Markov process associated with a Feller semigroup (T t ) t >o on Coo(Rn) can be reformulated:
3.4 Markov Processes and Feller Processes
95
On the measurable space (Vn,Vn n (S(n))[°>°°)) find probability measures P ,x£Rn, such that for u G Coo(Kn) x
Ex{u(Xt))=(Ttu)(x) holds. We will come back to these considerations when discussing the martingale problem for pseudo-differential operators with negative definite symbols, see Chapter 4. Finally in this section we will prove that Feller processes are stochastically continuous. The proof of the following theorem is taken from K. L. Chung [75]. Theorem 3.4.25. Every Feller process ((Xt)t>o, Px)x€&n continuous, i.e.
is stochastically (3.124)
\imP(\Xs~Xt\>e)=0.
s->t
Proof. Take u,v € Coo(R") and for t, r > 0 we find using as before the Markov property E»{u(Xt)v(Xt+r) = E»(u(Xt)Ex*{v(Xr))) =
E»(u(Xt)(Trv)(Xt)).
Again, the fact that (T t ) t >o is a Feller semigroup implies for r J. 0 that lim E» (u(Xt)v{Xt+r)) = E" (u(Xt)v{Xt)).
(3.125)
rlO
As in the proof of Lemma 3.4.17 we may extend (3.125) to hold for all LO G C o o (M n x]R"), i.e. (3.126)
WmE»(uj{XuXt+r)) =E(w(Xt,Xt)) r|0
for all u) G Coo(M" x l " ) . Taking now for w a sequence approximating the function (x, y) H-> \X — y\, then (3.126) implies the L1 -convergence of Xt+r to Xt, hence the stochastic convergence. Next let t > 0 and 0 < r < t. For each x G M" it follows with u, v as above that Ex(u(Xt_r)v(Xt))
=
Ex(u(Xt_r)EXt-r(v(Xr)))
= Ex{u(Xt-r){Trv){Xt-r))
= Tt-r(uTrv)(x).
96
Chapter 3 Feller Processes
Now, as r —> 0 it follows that
lim Tt-T{uTvv){x)
= Tt{uv){x) = Ex
(u(Xt)v(Xt)),
thus lim Ex(u(Xt-r)v(Xt))
r—>0
=
Ex(u(Xt)v(Xt))
and with the same argument as before we arrive first at lim Ex(cj{Xt-r,Xt))
1—>0
= Ex(uj{Xt,Xt))
, w £ C ^ R " x Rn),
and then we get lim E*(w(Xt-r,Xt))
r—»0
= E"(u>(Xt,Xt))
(3.127)
for all w G Coo(K" xR"). Thus we find that X t _ r -> X t stochastically implying the theorem. • Remark 3.4.26. The reader might have noticed that in some of the results in this section we need to assume that the underlying Feller semigroup is conservative. But all results continue to hold for an arbitrary Feller semigroup when passing from the state space M"(or E) to the state space R^(or E&).
3.5
The Shift Operator and the Strong Markov Property
Let (p., A, Px, (Xt)t>o, (^7t)t>o) eKn De a universal Markov process. We want to give a different formulation (and interpretation) of the Markov property. Assume for a moment that the process under consideration is a canonical process, i.e. Q, = (K")!0'00). Then w € f i i s a mapping w : [0, oo) -> Mn and for each s > 0 we may consider the new mapping UJS : [0, oo) —> K", t H-> w{t + s). Since the random variables Xt are the projections Xt : £1 —> R n ,t >—> u(t) we find Xt+s(Lj) = w(t + s)=Xt(ujs),
(3.128)
i.e. shifting the argument of w by s is compatible with a shift of the "time" parameter by s. Back in the general case we give
3.5 The Shift Operator and the Strong Markov Property
97
Definition 3.5.1. Let (Q,A, Px, (Xt)t>o, (^)t>o)xeRn be a universal Markov process with state space (M.n,B^). A family 6S : Cl —> Q,s > 0 of measurable transformations is called a family of shift operators (with respect to the process (Xt)t>o) if for all w G ft and s, t > 0 it holds (3.129)
Xt+,(w)=Xt(0t(u>)).
Thus in case of a canonical process a shift operator is given by (3.128), but (3.128) yields also an example of a shift operator in case of the cadlag modification of a canonical Feller process with state space K n . This follows from the choice of the a-field AonT>n. Let (6s)s>o be a family of shift operators with respect to (Xt)t>o- From (3.129) we derive for r, s, t > 0 Xt+s+r(cj)
= Xt+s{6T{u))
=
Xt{0.(Or(w)))
as well as Xt+s+r{u) =
Xt(9s+r(v))
which gives 6s+t = 8so6r
for all r, s > 0.
(3.130)
P r o p o s i t i o n 3.5.2. Let (9s)s>o be a family of shift operators with respect to the universal Markov process (Q,,A,Px,(Xt)t>o,(^'t)t>o)xeRnThen the (universal) Markov property Px(Xs+t
G B\TS) = Px°(Xt
G B)
= Px(Xt+seB\Xs)=pt(Xs,B)
Px-a.s.,B£B(n\
(3 131) V ' '
is equivalent to P^iej^F)^)
= ^(B-^F^Xs)
Px-a.s.
,F&A.
(3.132)
Proof. The sets of all F such that (3.132) holds form a n-stable Dynkin system and therefore it is sufficient to prove (3.132) for cylinder sets of the form F = {u G fi;-Xto(w) G Bo,.. .,Xtn(w)
G Bn}
where 0 = t 0 < *i < • • • < tm and Bt G B ( n ) . In this case (3.132) reads as Px(Xs€B0,...,Xs+tmeBm\fs) = P*(XS G Bo,...,
Xs+tm G Bm\Xs)
Px-a.s.
(3 133)
'
98
Chapter 3 Feller Processes
We are going to prove (3.133) by induction. For m — 0 nothing is to prove. Suppose (3.133) holds for m - 1. Then for all ip G B b (M n m ) we have almost surely
Ex(
(3.134)
Now, (3.131) implies that PX(XS £ Bo,... ,Xs+tm_1 G Bm-i,Xs+tm =
EX(X{Xs£B0,...,X3+tm_1£Bm-1}PX(Xs+tm
G
Bm\Ts)
€ 5m|Xs+tm_1)|/'s).
(3.135)
By Lemma 2.5.14 there exists a measurable function g : R n —> [0,1] such that P*(X J + t r a G B
m
|X,
K
J = 5 ( X s + t m _ J P*-a.s.
Taking (p(x0,... , x m _ i ) = XB 0 (^O) • • • • • X f l m - i ^ m - O s K - i ) . w e m a Y a PP!y (3.134) to substitute in the last line of (3.135) J-a by <J(XS) which shows that (3.131) implies (3.132). The converse is trivial, compare (3.133). • Recall that for any filtration (Jri)t>o we have defined J 7 ^ = a{Tt,t > 0). Proposition 3.5.3. Let (n,A,Px,(Xt)t>o,(^t)t>o), x G K n , be a universal Markov process and fi an initial distribution. Moreover let Z be a J^-measurable bounded random variable. Then x i-> EX(Z) is measurable and
E>1{Z)= f Ex(Z)n{&x)
(3.136)
holds. Proof. This follows immediately from (3.51) and (3.54), resp., together with the required measurability properties. • Now we may reformulate the universal Markov property. Theorem 3.5.4. Let (fl,A,Px, (Xt)t>o, (^t)t>o) xeRn be a universal Markov process, (0s)s>o a family of shift operators with respect to (Xt)t>o, and Z any T^-measurable non-negative or bounded random variable. For every initial distribution /J, and all t > 0 E'l{Zo9t\J^) holds P^-a.s.
= EXt(Z)
(3.137)
3.5 The Shift Operator and the Strong Markov Property
99
Remark 3.5.5. If Z = X{xseB},B G B(n\ then (3.137) implies (3.131), i.e. (3.137) is equivalent to the universal Markov property. Proof of Theorem 3.5.4. By the definition of the conditional expectation we have to prove for every ^-measurable non-negative or bounded random variable the equality E" ((Z o 9t)Y) = E* (EXt (Z)Y).
(3.138)
Now, as argued several times before, it is sufficient to prove (3.138) for all random variables Y of the form Y = Ylj=i fj(Xtj), where fj is a positive Borel measurable function and tj < t, and Z is of the form Z = YliLi 9i(^u) with gi being positive and Borel measurable, £j < t. This however can be reduced as done repeatedly before to a statement for the transition functions • and the theorem is proved. Our next aim is to extend the Markov property to stopping times. For this we give Definition 3.5.6. Let (Q, A, PM) be a probability space with nitration (Tt)t>o and (Xt)t>o an adapted stochastic process with state space (M.n,Bn). Further let fi be a probability measure on (Rn,Bn). We call (Q, A, P*, {Xt)t>0, (Tt)t>o) a strong Markov process (with initial distribution /i) if i) for all B e B^ (3.139)
P»{X0 eB) = n(B), ii) for all (^)-stopping time a and alH > 0, B G S ( n ) P»{Xa+t e B\Fa+) = P»{Xa+t G B\XO)
(3.140)
holds P^-a.s. on {a < oo}. Recall, compare (2.135), that ?„+ := {A£A;AD{a
£ Tt+ for allt > 0}.
(3.141)
Next we generalize the concept of a strong Markov process to that of a universal strong Markov process: Definition 3.5.7. We (^,A,Px,(Xt)t>o,(J7t)t>o)xeRn strong Markov process if
call
a family of stochastic processes with state space (Rn,B(-n)) a universal
100
Chapter 3 Feller Processes
i) for all B G A the mapping x i-> PX{B) is universal measurable; ii) for all i 6 K " w e have PX{XO = x) = 1; iii) for all x G R n , i > 0, £ G B ( n ) and every ^-stopping time cr it follows P ^ + t G B|J>+) = P*(XCT+t G B\Xa) Px-&.s. on a < oo. (3.142) Remark 3.5.8. Since non-negative constants are stopping times, it is clear that every universal strong Markov process is also a universal Markov process. However the converse is not true. Remark 3.5.9. It is now an advanced exercise in measure theory to prove several equivalent conditions to (3.142). For example we have Px{Xa+t
G B\F.+) = (PtXB)(X
(3.143)
or Ex(u(Xa+t)\Ta+)
= (Ptu){Xa)
(3.144)
where these equalities hold P x -a.s. on {a < oo}. In addition, if a family of shift operators (#5)s>o exists on Q then we may define flff:{ff
Oa(u))(t) = ds(u)(t) on {cr = s}.
(3.145)
In particular, for cr(u>) < oo we find Xa{u)+t(u>)
(3.146)
= Xt(0a(u>)).
Now it is possible to prove as an extension of (3.137) E^{Zo9(r\^l7+)
= EX"{Z)
P M -a.s. on {a < oo}
(3.147)
for every ^"oo-measurable, non-negative or bounded random variable Z. For proofs of these statements we refer to K. L. Chung [75] or D. Revuz and M. Yor [299], some material is also contained in I. Karatzas and St. Shreve [216]. Let (fl, A, Px, (Xt)t>o, (Ft)t>o) be the cadlag modification of a given Feller process. For a probability measure [i on B^ we denote by T^ the completion of T^ with respect to P M , where P»{A) =
fPx{A)fi{dx).
3.5 The Shift Operator and the Strong Markov Property
101
Further, (^T)t>o is the filtration obtained by adding to each T® the PM-nullsets .A/"" of .F&, i.e. J* = a(J*>,M"). Finally we put
^i:=n^r
and
(3-148)
^oc-fi^
where the intersections are taken over all probability measures fx on B^n\ Elements of T^ &re called universally measurable sets. Theorem 3.5.10. The filtrations (Ft)t>o and (^t)t>o o,re complete and rightcontinuous, i.e. they satisfy the usual conditionsProof. Both nitrations are complete by construction and the right-continuity of (J~t)t>o will imply the right-continuity of (!Ft)t>o- Thus it is sufficient to prove for every J^-measurable, non-negative random variable Z that E^{Z\flt) = E»(Z\F?+)
P"-a.s.
(3.149)
holds. As before we may reduce this to random variables of the form z =Y17=ifj(xtj) where ft e C^QR") and h < t2 < . . . < tm,m G N. Moreover, for every t we have PM-a.s.
E»(Z\f?) = E»{Z\F°). Now, for t e K take /c e N such that tk-i < t < ife. Then for /i sufficiently large we find fc-i
£?"(^|^+fc) = I I fi(*tt)gh{Xt+h)
^-a-s.
where 9h(x) = I Ptk-t-h(x,dxk)fk(xk) •••
Ptk+1-tk(xk,dxk+i)fk+1(xk+1)
Ptm-tm-i(xm-i,dxm)fm{xm).
Here pt(a;, A) denotes of course the transition function of the Feller process (Xt)t>o under consideration. Since (Xt)t>0 is right-continuous, Xt+h tends to X t for h —> 0 and therefore we find by Proposition 2.6.12, JB"(Z|^+)=limJB"(Z|^;h)
fc-i
102
Chapter 3 Feller Processes
which proves the theorem.
•
Of course, we now want to consider (Xt)t>o as a stochastic process adapted to the nitration (Ft)t>o and (Jrt)t>o> respectively, and this causes some measurability problems. We follow in our presentation mainly the monograph [299] of D. Revuz and M. Yor. We assume that (Xt)t>o admits a family of shift operators (#s)s>oLemma 3.5.11. Let Z be a bounded T^-measurable random variable. Then x H-» EX{Z) is universal measurable and we have
E»(Z) = jE*(Z)n(dx). Proof. For every probability measure fi on B^ we find two .T^-measurable random variables Z\ and Z2 such that Z\ < Z < Z2 and E^(Z2 - Z\) = 0 and therefore EX{Z1) < EX{Z)
<EX{Z2)
for every x G K™. Since x H-> Ex{Zi),i = 1,2, is S(n)-6(^-measurable and
J(EX(Z2) - E^Z^^dx)
= E»{Z2 - Zx) = 0
it follows that x — i > EX(Z) is B^-B^the lemma is proved.
measurable and since [i was arbitrary •
Lemma 3.5.12. A. For every t > 0 the random variable Xt is Tt- B^measurable. B. For every t > 0 and h > 0 we have 0^l{Tt) C Ft+h, in particular 0s is measurable. Proof. Part A follows from [299], Proposition 0.3.2. Further we know that Oh is ^-^Y^-measurable and the assertion will follow from [299], Proposition 0.3.2. if for every initial distribution v there is an initial distribution /U such that 6h{Pv) = PM. For this define fx := Xh(Pv) and use the Markov property in the form of (3.137) to find for A £ F^ that
Pv{6h &A) = EV{EX*{XA)) = JpY(A)v(dy) which proves the lemma.
= P»(A) •
3.5 The Shift Operator and the Strong Markov Property
103
Now we can prove that (Xt)t>o is also a universal Markov process with respect to the new filtration (ft)t>oTheorem 3.5.13. Let (Xt)t>o be a Feller process with respect to (.Fto)t>o and state space (lRn, B^). Then for every Too -measurable non-negative or bounded random variable Z, every t > 0 and every initial distribution /z E"(Z o 9t\Tt) = EXt(Z)
P^-a.s.
(3.150)
on {Xt < oo}. In particular ((Xt)t>o, {F)t>o) is a universal Markov process. Proof. (Compare D. Revuz and M. Yor [299]/ Note that {Xt < oo} denotes the set { w e f i ^ i f w J ^ K ^ I 1 1 } , i.e. for a conservative Feller semigroup {Xt < oo} — £1 for t < oo. From Lemma 3.5.11 and Lemma 3.5.12 it follows that u> — i > EXt^(Z) is always .Ft-measurable and it remains to prove for all A&Tt = E»(XAEXt(Z)).
E»(XAZo6t)
(3.151)
Without loss of generality let Z be bounded. The definition of .Foo implies the existence of an J 7 ^- measurable random variable Z' such that and P ^ r ) = 0 with v = XtiPi1). It follows that {Z ^ Z1} C r , T G ^ 1 {Z o 6t + Z o 6t} C ^ - ^ r ) and P'1(9t1(T)) = PV(T) = 0. Now the Markov property with respect to {^t)t>o yields
P^r1?))
= E»{Ex>{xr)) = j PY{T)u{Ay) = P»(T),
and since E'1(EXt(-)) E"(EXt{\Z
= Ev{-) we find
- Z'\)) = EV{\Z - Z'\) = 0,
or EXt(Z) = EXt(Z'), P^-a.s. Thus we may substitute in (3.151) Z by Z' and then we may use the Markov property with respect to (Ff)t>o• Let r be a ^-stopping time, (Jrt)t>o as in (3.148). On {r = oo} we define XT = A e M^.Then XT is j'v-measurable. For the shift operator we set 0T{w) = et(u)
for
T(W) = t
(3.152)
T(W) = oo,
(3.153)
and eT{w) = A
for
where A G ft denotes the path t i-> A G M^. With these definitions we find Xto0T = XT+t and therefore 0 " 1 (.?£,) C o{XT+t ;t>0).
104
Chapter 3 Feller Processes
Theorem 3.5.14. Let ((Xt)t>o, (^rt)t>o) be the cadlag modification of a Feller process with state space (M n ,S ( n ) ) and the filtration is constructed as in (3.148). Then for every Too-measurable, non-negative or bounded random variable Z, every Tt- stopping time r and every initial distribution \x it holds = EX*(Z)
E»{ZoOT\fT)
P»-a.s. on {XT + oo},
(3.154)
i.e. since {Tt)t>o is right continuous, ((Xt)t>o, (^t)t>o) is a universal strong Markov process. Proof. Suppose r takes its values only in a countable set D. Then it follows
o eT\TT) = J2 x{r=d}X{xd^A}^(z
X{XT*A}E»(Z
o od\rd)
deD
Y,X{r=d}X{Xd¥:A}EX*{Z)
=
deD where we used Theorem 3.5.13, i.e. the fact that ((Xt)t>o, (Tt)t>o) is a universal Markov process. Hence, in this special case (3.154) holds. To prove the general case define by [2 n r] + 1 Tn-=V—^ , neN, a sequence of ^-stopping times having values in a countable set and which decreases to T. For fi G Coo(Mn), / , > 0, i = 1,..., k and t\ < ... < tk we put g{x) = j pti(z,dzi)/i(zi) / Pt2-ti(a:i,da;2)/(a;2) •••J
Ptk-t^{xk-i,dxk)f{xk).
Since (Xt)t>o is a Feller process we have g £ Coc(Mn) and g > 0, and due to the construction k
£"(n/iW°^i^)=^»)3= 1
The right-continuity of the paths and Proposition 2.6.12 yields now by a monotone class argument the assertion for all Z > 0, Z being .F^-measurable. It remains to show (3.154) for all Z > 0 which are .Foo-measurable. If we substitute P» by P»
~ ^
[A)
_ p»(An{xTn}) ~
P»(XT ^ A)
'
3.5 The Shift Operator and the Strong Markov Property
105
then the conditional expectations with respect to J-T are the same for P M and P» and we may therefore assume XT ^ A a.s. We now write once again P^ instead of P». Let v(A) = P»(XT e A), i.e. v — X T (P M ). By the definition of J7^ there are two T%^-measurable random variables Z' and Z" such that Z1 < Z < Z" and PV(Z" - Z' > 0) = 0. The first part of the proof yields P»{Z" oeT-Z'o9T>0)
= E^ (Ex- (Z" - Z' > 0)) = 0.
Since /x was arbitrary we derive that Z o 9T is ^"oo-measurable, hence E»(Z o 6T\FT) is well defined and it follows that E^iZ' o 9T\TT) = Ex- (Z) = E*(Z" o 6T\fT) proving the theorem.
n The main lines of the above proof had been once again borrowed from D. Revuz and M. Yor [299]. In Chapter 6 we will relate potential theoretical considerations to probabilistic ones. It is convenient to add already here some preparatory material. We start with Blumenthal's 0-1-law. Theorem 3.5.15. Let (Xt)t>o be the cadlag modification of a Feller process with respect to a right-continuous and complete filtration (Jrt)t>o o/nd state space ( R n , S ( n ) ) . For x G R™ and V € T%x it holds either PX(T) = 0 or PX{T) = 1. Proof. If T G cr(Xo), then PX(T) = 0 or PX{T) - 1 since PX{XO = x) = 1. But FQX — o-(Xo,Af€x) proving the theorem. • Corollary 3.5.16. / / r is an {T^*)-stopping PX(T = 0) = 1 or PX(T > 0) = 1. Now let i C I
n
time then it holds either
be a set. We define
aA •= inf{t > 0 ; Xt £ A}
(3.155)
aA := inf{t > 0 ; Xt e A}
(3.156)
and
106
Chapter 3 Feller Processes
where (Xt)t>o ls as in Theorem 3.5.15. We call DA the entry time of (Xt)t>o into A and TA is called the (first) hitting time of (X t ) t >o of the set A. As usual we use the convention inf 0 = +oo. For s > 0 we find s + aAo0a
= s + inf{t > 0 ; Xt+S e A} = inf{t > s ; Xt e A},
hence (3.157)
s + &Ao0s = &A on {&A > s}, and further we have \im(s + &Ao6s)
(3.158)
= <JA-
By analogous arguments we find t + aAo0t=aA
(3.159)
on {aA > t}.
It holds Theorem 3.5.17. Let A S B^n\
Then &A and a A are J-t-stopping times.
For a proof we refer to D. Revuz and M. Yor [299], p.90, but compare also Section 5.2, especially Theorem 5.2.15. Proposition 3.5.18. Let (Xt)t>o be as in Theorem 3.5.15 and for x £ K" set ox := inf{t > 0; Xt 7^ x}. Then there exists a = a{x) £ [0, oo] such that Px{ax>t)=e~at
(3.160)
Proof. By definition ax is the first hitting time of the Borel set {x}° hence it is an (.F^-stopping time. Further, by (3.158) we have on {ax > t} the equality ox — t + ax o 6t • Thus we find Px(ax =
>t + s)= PX{{(TX >t}D{ax>t
+ a})
x
E (X{ax>t}X{*x>s}°9t)
and the Markov property yields Px(ax
>t + s)=
Ex(X{ax>t}EXt(x{ax>s}),
where we used that Xt ^ A on {ax > t}. In fact, on {ax > i) we have Xt = x almost surely and therefore Px{ax
>t + s)= Px{o-X > t)Px(ax
> s).
The continuity of s t—> Px(crx > s) implies now the proposition.
•
3.5 The Shift Operator and the Strong Markov Property
107
With arguments similar to those used in the proof of Theorem 3.5.14 one shows, compare [299], p.98, Lemma 3.5.19. For every t > 0 and every Tt-stopping time r a Tt-stopping time is given by r + t and in addition ^~1(^rt) C TT+t holds. We use Lemma 3.5.19 in order to prove Lemma 3.5.20. For two Tt-stopping times a and r a further Tt-stopping time is given by a + r o Qa. Proof. Since (Tt)t>o is right-continuous it is sufficient to prove that for every * > 0 it holds {ex + T O Ba < t} £ Tt. Since {a + T o 6a < t} = (J {a < t - q} n {r o 6a < q} qSQ
and since by Lemma 3.5.19 we have {T o6a < q} £ F^+q the lemma is proved once we observe that
{a < t - q} n {r o 6a < q} = {a + q < t} ("1 {r o 9a < q}. D If for example r = TA = inf {i > 0; Xt £ A} and cr = TB = inf {t > 0; Xt G B} then TA + TB ° 8TA is the first time the process hits the set B after it has hit the set A. Let T be a ^-stopping time. We associate with T the kernel
Pr{x,A)=E?{XA°XT) and for a non-negative Borel function u we define PTu(x):=Ex(u(XT)).
(3.161)
Proposition 3.5.21. A. For two Tt-stopping times a and r we have PaoPT
= Pa+ro9a.
(3.162)
B. If T is an (Ft)-stopping time, then Yt := XT+t is again a universal Markov process with respect to the new filtration (!FT+t)t>o and it has the same transition function as (Xt)t>o-
108
Chapter 3 Feller Processes
Proof. A. Take u e B(Rn), u > 0, to find P
Ex(Ex'(u(XT)))
and the strong Markov property gives Pa(PTu)(x) = E*{X{XB^}E?(U{XT) =E*(x{x^A}u(XT)o6<7).
o ea\Ta))
However, u(XT) o 6a = u(Xa+TOga) and u(XT) o 9a = 0 for {Xa = A}, and part A is proved. B. Let u > 0 be a Borel function on Kn and let fi be any initial distribution. First we find on {XT+t ^ A} E"(u(X T+t+ ,)|:F T+t ) - E»{u{Xs) o eT+t\TT+t) =
Psu(XT+t),
and by our definition this equality extends to {XT+t = ^ } proving part B.
•
Remark 3.5.22. Note that if (Xt)t>o is a canonical process then (Yi)t>o of Proposition 3.5.21.B is in general not a canonical version of (Xt)t>o-
3.6
The Martingale Problem for Feller Processes: First Remarks
Given a (conservative) Feller semigroup (Tt)t>o o n Coo^") with generator (A,D(A)). In this section we will first associate certain martingales with (A,D(A)) using the Feller process (Xt)t>o corresponding to (Tt)t>o- Then we will take a converse point of view: We will try to construct the process (Xt)t>o associating a family of martingales to (^4, D(A)), i.e. by solving the martingale problem. We need some auxiliary results and for simplicity we restrict all of our considerations to processes with state space (R n ,B^ n '). Definition 3.6.1. Let (il,A,P,(Xt)t>o) be a stochastic process with state space (K n ,S' n ') and {Ft)t>o be a filtration in A. We call (Xt)t>o progressively •measurable with respect to (Pt)t>o if for all t > 0 the mapping X.(-) : [0,t] xQ^Rn (t,w)^X t (w) is B^([0,t]) ® Tt-B^cesses are adapted.
measurable. Clearly, progressively measurable pro-
3.6 The Martingale Problem for Feller Processes
109
Of importance is now Proposition 3.6.2. Let (Xt)t>o be a right-continuous stochastic process adapted to the filtration (J7t)t>o- Then (Xt)t>0 is progressively measurable with respect to (^t)t>oProof. For t > Q,v > l,k = 0 , 1 , . . . , 2 " - 1, and 0 < s < t we define for fc*
It follows that (S,LJ) •-> X{SV)(UJ),0 < s < t,w € ft, is BW([0,t]) ® Ft-B(n) -measurable. Since {Xt)t>o is right-continuous it follows for (s,w) 6 [0,i] x ft that lim X^u){w) = X s (w) implying the 5 (1 '([0,t]) ® J^-'B(™)-measurability of the limit mapping X(-).
D
Corollary 3.6.3. Let (Tt)t>o be a (conservative) Feller semigroup on Coo(Mn). Let cadlag modification of the associated Feller process is progressively measurable with respect to the canonical filtration {T^)t>o as well as to each of the filtration (T^)t>o and (^rt)f>o from (3.148). Corollary 3.6.4. Let (Xt)t>o be a stochastic process with state space (M", B^) which is progressively measurable with respect to the filtration (!Ft)t>o and let Then (u(Xt))t>0 is (!Ft)t>a progressively measurable and in u e Bb(Rn). addition (/ 0 u(Xs)ds)t>0 is {Tt)t>o-adapted. Proof. The first statement is trivial, the second one follows by approximating the integral. • A central observation is now Theorem 3.6.5. Let {Tt)t>o be a (conservative) Feller semigroup on Coo(Mn) with generator (A,D{A)). Further let ((Xt)t>o,(^t)t>o) be a cadlag modification of the associated Feller process. For every u G D(A) and every initial distribution p. Ml := u(Xt) - u(X0) - [ {Au)(Xs)ds, ./o
t > 0,
(3.163)
110
Chapter 3 Feller Processes
is an (J-f)t>o martingale with respect to PM. In particular, ifu is ^4-harmonic, i.e. Au = 0, then (u(Xt))t>o is an {J-^)t>o martingale with respect to P^. Proof. Since for u G D(A) we have Au € Coo(R™) and since (-Xt)t>0 is progressively measurable the integral in (3.163) is well denned. Moreover we find for u < s < t Ei*(M?\J*)
= E"(u(Xt) - u(X0) - y V«)(*r)dr|J?) = u(Xs) - u(X0) -
[S(Au)(Xr)dr Jo
+ E»(u(Xt) - u(Xs) - J
(Au)(Xr)dr\J*)
= Ms" + E» (u{Xt) - u(Xs) - J (^«)(X r )dr|^). Thus we have to prove that E»(u(Xt) - u{Xs) - j (Au)(Xr)dr|J?) = 0. The Markov property yields E»(u(Xt) - u(X.) - J
(Au)(Xr)dr\J*)
= Ex» (u(Xt_s) - u(X0) - J
(Au)(Xr)dr),
but for every y G R" and u G D(A) we have E» (u(Xt_s) - u(X0) - J
\Au)(Xr)dr)
pt — S
= Tt-,u(y) - u(y) - / Jo
TT{Au){x)dr - 0
by Lemma 1.4.1.14.C proving the theorem.
•
Remark 3.6.6. Note that nothing will change in the above proof if {!F^)t>o is substituted by any filtration (^t)t>o turning (Xt)t>o into a Markov process (with cadlag paths).
3.6 The Martingale Problem for Feller Processes
111
It is noteworth that we may use martingales in order to characterize elements in D(A). Proposition 3.6.7. Suppose that (Xt)t>o is as in Theorem 3.6.5 and suppose that toue Coo(Rn) there exists g G Coo(Mn) such that
(u(Xt) - u(X0) - f g(Xr)dr) j
\
/t>o
0
is a (Tt)t>o martingale with respect to every Px,x G W1. Then u G D(A) and Au = g. Proof. For x £ Rn we have Ttu(x) - u(x) = f Tsg(x)ds Jo and therefore sup -(Ttu(x) - u(x)) - g{x)
x€R n
l
1 /"*
= sup - / (Tsg(x) - g{x))ds x€R" I JO
< -1 f \\T,g - ffl^ ds —» 0 Jo
as t —* 0
proving the proposition.
•
Remark 3.6.8. Note that the last results allow us to extend the definition of a generator of a Feller semigroup: We may call u G B(Rn) to belong to De(A), the extended domain of A, if there exists g G B(Rn) such that almost surely /„* \g(Xr)\dr < oo for t > 0, and (u(Xt) - u(X0) - / \ Jo
g(Xs)ds) >t>0
is a right-continuous (or cadlag) (^rt)t>o-martingale with respect to every ,x t K . Our aim is to use the expression M" in (3.163) in order to construct "many" martingales, sufficiently many to recover the Feller process associated with the Feller semigroup generated by (A, D(A)). Given a generator
112
Chapter 3 Feller Processes
(A,D(A)) of a (conservative) Feller semigroup (Tt)t>o on CooQR"). The process which we want to construct out of the martingales (M")t>o should be a Hence it will have a cadlag Feller process (fl,A,Px,(Xt)t>o,(^t)t>o)xeRnmodification. Therefore we may try to reduce the problem by assuming that fi = £>n([0, oo)) equipped with the Skorohod topology and the associated Borel-cr-field A = Avn which makes the projections Xt : r>n([0,oo)) —> M™, LJ i-> w{t) measurable, compare Theorem 3.3.12. As filtration we may start with the canonical filtration. Now we face two problems: 1. For a given initial distribution \x on B^ find a probability measure P^ on (T>n([0, oo)), Avn) such that under P^ a martingale (M") t > 0 is given on (T>n([0, oo)), Az>n, PM) for every u e -D(^4) (or u out of a "nice" subset oiD(A)). 2. Use the family of martingales constructed in this manner, i.e. the measures PM, in order to obtain a Feller process, more precisely, try to prove that ((Xt)t>o, Px)xeRn is a Feller process. Let us give some precise definitions. Definition 3.6.9. Let A : D(A) -> Bb(E.n) , D(A) C Bb(Rn), be a linear operator. A probability measure P on 2?n([0,oo)) is called a solution to the T>n-martingale problem for the operator [A, D(A)) if for every u G D(A) (Mnt>o := (u(Xt) - ( (Au)(Xs)ds) \ Jo ' t>o
(3.164)
is a martingale on (P n ([0,oo)),^r» n ,P, (^)t>o)- We call the Pn-martingale problem well posed if for every initial distribution /x £ M\ (R™) there is a unique solution PM to the Pn-martingale problem for (A,D(A)) which satisfies (XO)PM
= M,
(3-165)
i.e. /x is the initial distribution of the process (Xt)t>o defined on (X» n ([0 l oo)) > ^ B ,P"). Let us make explicite that by (M^)t>o a martingale under P is given, i.e. we have for u € D(A) and s
P-a.s.
(3.166)
3.6 The Martingale Problem for Feller Processes
113
where E stands for the (conditional) expectation with respect to P. Clearly (3.166) is equivalent to m
m
E(M? H hv{X.v)) = E(M? I ] KiXsS)
(3-167)
or
0 = E((u(Xt) - u{Xs) - / (Au)(Xr)dr) JJ hv(X.u)) m
= E((u(Xt) - u(Xs)) J ] hv{X,S)
(3-168)
E((Au)(Xr)l[hu(XSL,))dr for all m G N, 0 < si < ... < sm < s
i \B) —
pl^F)
'
(3.169)
•
(3 170)
and M
2 {
' "=
E(XFE(XB
\Xr))
PT(F)
-
With Yt := Xr+t it follows that
if (r0 e r) = P?(Y0 e r) = P"(xr G T\F).
(3.171)
114
Chapter 3 Feller Processes
Furthermore, for 0 < h < t2 < • • • < tm < tm+1,u G D(A) and hv £ Bb(Rn), v = 1 , . . . , m, we define
r,(Y.) := (u(Ytm+1) - u(YtJ - / By (3.168) we have E(rj(Xr+.)\J^)
MMy,) =
(Au)(yr)dr) ]\ K(YU).
(3.172)
= 0 implying
(3.I73)
EiM^ml,0
and (3.147) implying that (Yt)t>o is a solution for the Dn-martingale problem for [A, D(A)) on (X> n ([0,oo)),Ai,^,(J?)t>o) and on (2?n([0,oo)), An,P%, (J$)t>o). By the uniqueness assumption we find for all u € D(A) and t > 0 El(u{Yt))=E2(u{Yt)), or E{XFE{u{XT+t)\J*)) = E(xF^(«(^r+t)|X r )).
(3.175)
But F, P(^) > 0, was arbitrary, thus we arrive at E(u(Xr+t)\f?)
= E(u(Xr+t)\Xr)
P"-a.s.
(3.176)
which proves the theorem. • We will need some extensions of the results of Theorem 3.6.10, but these we will discuss a bit later. Let us indicate how to get existence results. Suppose that for a given kernel fi(x, dx) on K n x B^ a bounded operator is given by A : Coo(Rn) -> Coo(R") u i-> Au(x) — I (u(y) - u(x))fi(x, dy)
(3.177)
which extends onto Bb(Rn). As a bounded operator, A generates a strongly continuous semigroup (T t ) t > 0 on Coo(Kn) • Since for u(x0) = supw(a;) > 0 it follows that Au(x0) = /
(u(y)-u(x0))fi(xo,dy)<0,
3.7 Levy Processes and Translation Invariant Feller Semigroups
115
i.e. A satisfies the positive maximum principle, we conclude that (Tt)t>o is a Feller semigroup. Hence the £>n-martingale problem for A is solvable, compare Theorem 3.6.5. If now (A, D(A)) is any (densely defined) operator on Coo(Mn) satisfying the positive maximum principle, we may try, having in mind the structure result for such operators, i.e. Courrege's theorem, Theorem 1.4.5.21, to approximate in some sence A by a sequence of operators of type (3.177). Then we will get a sequence of corresponding probability measures on (Pn([0, oo)), Aj)n) and there might be hope that this sequence converges to a solution to the Pn-martingale problem for A. We will come back to all these problems, but now it is time to discuss classes of examples.
3.7
Levy Processes and Translation Invariant Feller Semigroups
To understand the importance of Levy processes for our theory let us recall some basic ideas from the theory of second order elliptic differential operators and the associated (elliptic) diffusion processes. The proto-type of all second order elliptic differential operators is the Laplacian — A n — — X^=i J^? with symbol a(-A)(x,£) — |£|2. A second order differential operator
L(x,D):=-Y,aki(x)——-+J2bj(x) ax
k,l=l
kOXi
+ c(x)
j = 1
is called elliptic if its principal symbol <rpr (L(x, D)) (x, £) = satisfies the ellipticity condition apr{x,0
J2l,i=iakl(x)^i
> Ao(z)|£|2 , Xo(x) > 0.
(3.178)
Let us restrict our considerations to uniformly elliptic operators with bounded coefficients. Then we find Ao|£|2 < apr(L(x,D))(x,0
< X1\^\2
(3.179)
for all l e i * and ^ £ l " with 0 < Ao, Ai € R. If we don't want to use the principal symbol, but the full symbol n
n
k,i=i
j=i
116
Chapter 3 Feller Processes
then we may consider instead of (3.179) Ao|C|2 < a(L(x,D))(x,£) < X^]2
(3.180)
for all x £ R™ and all £ € -Bg(O), where g > 0 is sufficiently large. Thus we compare the symbol of a second order elliptic differential operator with the symbol of the Laplacian, and typical results for L(x,D) are thought to be related to analogous results for the Laplacian. An example for this philosophy are the Aronson estimates, compare II.2.442. These estimates have of course the interpretation as estimates for the transition functions of the diffusion (Xt)t>o associated with L(x,D), i.e. they give information on the finite-dimensional distributions of (Xt)t>o by comparing them with those of Brownian motion. Hence they provide us with almost all what we really want to know about (Xt)t>oThe theory of pseudo-differential operators q(x,D) with negative definite symbols q(x, £) as developed in Volume II often relies on the estimates
W(0
(3-181)
which are supposed to hold for all x £ M",£ G Bg(Q),g > 0 large. Therefore the stochastic process associated with the operator —t})(D) should have for the process generated by —q(x, D) the same role as Brownian motion for elliptic diffusions, i.e. diffusion processes generated by second order elliptic differential operators. As we will see later in this paragraph the above philosophy is not working as smoothly as we have just indicated. This is best seen by discussing examples. Therefore, partly this section serves also to provide concrete examples for case studies. The processes associated with a continuous negative definite function are Levy processes which we are going to introduce in this section. Let ip : R™ - > C b e a continuous negative definite function and suppose for simplicity that V'(O) = 0, i.e. the constant in the Levy-Khinchin representation of ip vanishes, compare Theorem 1.3.7.7. By (nt)t>o we denote the corresponding convolution semigroup, i.e. we have
faiS) = (27r)-^e-t^).
(3.182)
According to Example 3.2.7 by pt(x,B):=fit(B-x)
(3.183)
3.7 Levy Processes and Translation Invariant Feller Semigroups
117
we obtain a semigroup of Markovian kernels and by Example 1.4.13 the family (Tt)t>0 define on Coo(»") by Ttu{x) = f u(x- y)iH(dy)
(3.184)
JUL"
is a (conservative) Feller semigroup. Thus we may associate with ip a (universal) Feller process (fi, A, Px, (Xt)t>o, (Ft)t>o)xeRn where the filtration is rightcontinuous and complete. Moreover almost surely all paths X.(tj) : [0, oo) —> M.n can be assumed to be cadlag. In addition for every initial distribution /i £ Mi(R n ), the Markov process ((Xt)t>o, -PM) is stochastically continuous, P" = fP*IM(dx). We want to explore some properties of the processes ((Xt)t>o, PM) and for this we need a few definitions. Definition 3.7.1. Let ((Xt)t>o,Pfl) be a stochastic process with state space (M n ,$("'). A. We say that (Xt)t>o has independent increments if for all 0 < s < t the random variable Xt — Xs is independent of Ts. B. The process (Xt)t>o is said to have stationary increments if for all 0 < s < t it follows that (3-185)
PZt-x.=P£t..-
Theorem 3.7.2. The process ({Xt)t>o,P^) constructed from the Feller process associated with the continuous negative definite junction ijj and the initial distribution /J, has stationary and independent increments. Proof. Denote by (/j,t)t>o the convolution semigroup of probability measures associated with ip by (3.182). First we prove p
xt-x3
= IH-, for 0 < s < t,
(3.186)
which will imply that the increments of ((X t ) t > 0 ,P M ) are stationary. Note that for t = s we have Xt-Xt ~ ^0 -
£
0,
i.e. in this case (3.186) holds. Thus suppose that s < t and put Y := Xs ® Xt, so Y is the product (mapping) of Xs and Xt, and further set q : W1 x W1 —> M™, (^1)^2) — • > %2 — x\. With these definitions we have pM
_ pM
118
Chapter 3 Feller Processes
For Q := q~x{B), B £ B^n\ we find P»{Xt -XseB)
= P"( g o Y e B) = P»(Y e Q)
and the construction of PM yields with (3.183) P^iXt - Xa G B) = / / /
XQ(xi,X2)pt-s{xi,dx2)ps(x,dx1)fj,(dx)
= ///
Xx1+B{x2)pt-s(xi,dx2)ps{x,dx1)fi(dx)
=
pt-s{xi,xi
+ B)ps(x,dxi)[i(dx)
=IH-.(B) JPs(x,Rn)fi(dx)
= fit-s(B),
where we used that Pt-.(x1,x1+B)=Pt-.(0,B)
= txt-s{B)
holds as well as the fact that ps(x,Wl) = 1 and fx is a probability measure. Thus (3.186) is shown for s < t and therefore the stationarity of the increments. Next we prove that the increments are independent. For this take to = 0
are independent. According to Theorem 3.1.4 we have to show that for Z = Yo <8> Y1 (2>... ® Ym m DM _ / O \ pM
3=0
holds, i.e. for Bo,...,
Bm e B^ we shall prove m
Pg(B0 x...xBm)
= H P% (Bj). j=0
(3.187)
3.7 Levy Processes and Translation Invariant Feller Semigroups
119
With Xt_1 = 0 we find using the transformation theorem
Pg(B0 x...xBm)
=J
XB0*...xBmdP$0^9Ym o (y 0 ® • • • ® Ym)dP"
= JxB0x...xBm . m J
j=o 771
/
j=0
From the construction of P M we find for P/J
t
,, the joint distribution of
and « e B t ( ( i " ) m + 1 ) that
Xt0,...,Xtm,
/ u{x0, x i , . . . , x m )P{ to> ... )tm }(d(x 0 , • • . , z m ) ) = / • • • / u ( i 0 , a;o + x i , . . . , x0 + ... + xm)fitm-tm-i
(dxm)...
x /xt2_tl(da;2)Mt1-to(da;i)At(da;o) implying with /xto = /J.O = e0
/
m
TT
f
t m }(d(a;o,...,a; m )) = / X B o ( ^ ) J I x B j f e -Zj-i)-P{t 0 = / / • • • XBoiX-x + X0)YlxBj(Xj)lJ,trn-tm-1{dxm) • • • Uti-toidX!) JJ x
J
j=1
^to(dx0)n{dx-1),
and further m
P^(Bo x ... x Bm) = /x(B0) I ]
IH.-U.ABJ).
Now, P^(5 (3.186) yields 0 x ... x^.^ABj) Bm) = M(5O)=I P^(Bj), ] Fv|, ( S J)-or m
(3-188)
120
Chapter 3 Feller Processes
Finally we have to observe that YQ = Xt0 = XQ and that
PP0(B0) = jPo(x,B0)Kdx)
= fi(B0)
which together with (3.188) implies (3.187) and therefore the theorem.
•
Having Theorem 3.7.2 in mind we give Definition 3.7.3. A stochastic process (Ci,A,P, (Xt)t>0, (Tt)t>o) with state space (R n ,S' n ') is called Levy process (or process with stationary and independent increments) if i) (Xt)t>o is .^-adapted; ii) (Xt)t>o has independent increments; iii) (Xt)t>o has stationary increments; iv) (Xt)t>o is stochastically continuous; Corollary 3.7.4. The process ((Xt)t>o,PM) constructed from the Feller process associated with the continuous negative definite function tp and the initial distribution fi is a Levy process. Let [(Xt)t>o, P) be a Levy process with state space (Mn, B^). By stochastic continuity it follows that Pxt —> Pxs vaguely as t —* s, i.e. for all u e C0(Mn) we have / u dPxt
—> / u dPXs
as t —> s.
Therefore Pxt-x0 converges vaguely to Px.-xQ as t —> s. Thus for a given Levy process with state space (M.n,B^) a family of probability measures (Mt)t>o o n &^ is denned by Hf-=Pxt-x0,
(3-189)
and this family is vaguely continuous, i.e. /xt —» ns vaguely as t —> s. In addition we have Mo = Pxo-Xo = ^o = £o,
(3-190)
3.7 Levy Processes and Translation Invariant Feller Semigroups
121
and lim^t = £0 (vague limit). (3.191) t-»o Further, since Xs+t — Xt and Xt — XQ are independent random variables we find, compare Theorem 2.4.11. Ma+t = Pxs+t-X0
= Pxs+t-Xt+Xt-XQ
= Pxa+t-Xt * Pxt-X0
and the stationarity of the increments yields Px3+t-xt
= Pxs-x0
= Ms,
and we arrive at (3.192)
Hs+t = ns*Ht for all t, s > 0. Hence we have proved
Corollary 3.7.5. Let (Xt)t>o be a Levy process with state space (M",S' n ^). Then the family (Pxt-xo)t>o is a convolution semigroup on Rn. The next theorem identifies a given Levy process with the (canonical) process generated by the convolution semigroup (/Ut)t>o,Att = Pxt-x0Theorem 3.7.6. Let (fi,«4, P, (Xt)t>o, {Ft)t>o) be a Levy process with state space (]Rn,Z?(n)) and denote by (/Ut)t>0)Mt = Pxt-xQ the corresponding convolution semigroup. Then the finite dimensional distributions of (Xt)t>o coincide with those of the canonical process (Xt)t>o associated with (/J.t)t>o o,nd the initial distribution /x := Px0, i.e. (Xt)t>o and (Xt)t>o are versions of each others. Proof. Let to = 0 < t\ < ... < tm and denote by Qto,...,tm the joint distribution of the random variables Xto,.. .,Xtm. Further let T : ( R " ) m + 1 -> (K n ) m + 1 be the mapping T(xo,..., xm) = (XQ, X0 - xi,..., xm - xm-i). For a Borel measurable function u : ( R " ) m + 1 —> [0, oo] it follows now
y udQto,...,*™ = Juo (Xt0 ® ... ® Xtm) dP
= fuoT-1oT{Xt0®...®Xtm)&P =
JuoT-\Xt0,Xtl-Xt0,...,Xtm-Xtm_1)dP
122
Chapter 3 Feller Processes
where r is the joint distribution of t h e increments Xto, Xtl —Xto,..., Since r = /j,
Xtm
-tm-i-
/ udQt O i ..., t m = / • • • / u(a; 0) a;o + a ; i , . . . , x o + a;i + • • • + z m ) x
lHm-tm-i
( d a ; m ) . . . /z tl (dzi)/i(d:ro).
On t h e other h a n d we have
/ u d P £ o ] t m } = / • • • / u ( a ; _ i + x 0 , . . . , a;_i + a;0 + ... + x m ) x
^^-tm-iidxm)...
fito(dx0)fJ.(dx-1)
= / • • • / u(a;_i,a;_i + x i , . . . , a ; _ i + x i + . . . + z m ) x
fJ'tm-tm-i (daj m )... / i t l (da;i)/i(da;_i)
where Pf^ t , is defined accordingly to (3.44), compare also Corollary 3.2.12, and the last line follows since fio = /xto = eo- Thus we have proved for all u as above
/«d&o tm =
JudP{totm}
implying Pxt0®...®xtm = ?{t0
(3.193)
tmY
In order to establish the theorem we still have to consider the case For this take B € (B^)m and t0 = 0. By (3.193) we 0
... x
XR"XB(XO,XO
tm} (R"
x B)
+ xi,... ,x0 + xi + ... + xm)
(J>tm-tm-i(dXm)..-HtAdxi)lJ-(dxo)
= / • • • / XB(XO,XO + xi,... ,x0 + xi... + xm) x IMm-tm-i(dxm)
•••
fJ,tl(^xi)n(dx0)
=K t^w proving the theorem.
•
3.7 Levy Processes and Translation Invariant Feller Semigroups
123
In the following, when discussing Levy processes we also assume that they have cadlag paths (almost surely) and if necessary we assume that the underlying nitration is right-continuous and complete. This is of course best justified by our previous results on Feller processes and Theorem 3.7.2 and Theorem 3.7.6. Let (Xt)t>o be a Levy process with state space (M.n,B^) and associated convolution semigroup (nt)t>o,^t '•= Pxt-Xo- We know that (/J.t)t>o is completely characterized by a continuous negative definite function ip : M" —• C , ip(0) = 0, since we assume the process to be conservative. We are longing for a probabilistic interpretation of I/J and start with Definition 3.7.7. Let Y be a n-dimensional random variable on the probability space (Q,A,P). Its characteristic function Ay : Rn —> C is denned by Ay(O := E(eiY<).
(3.194)
Denoting as usual by Py the distribution of Y under P, the transformation theorem yields
M 0 = fe^xPY(dx),
(3.195)
i.e. XY(O = (27r)*(iV)A(O =
(2TT^F-1(PY)(O,
(3.196)
and therefore Ay shares the properties of Fourier transforms of probability measures. In particular, Ay is a positive definite function on R" bounded by 1. Remark 3.7.8. Of course it would be more straightforward to define Ay as the Fourier transform of PY but we would run into some trouble with different definitions of the Fourier transform in probability theory and analysis. Now, let (Xt)t>o be a Levy process with state space (M n ,S (n) ) and denote by (Mt)t>o the convolution semigroup \it := Pxt-x0- Each random variable Xt — XQ> has a characteristic function and we find using (1.3.112), i.e.
MZ) = (2*)-*e-*«\
124
Chapter 3 Feller Processes
that
= f eix^t(dx)
=
(2TT)-S/I(-0
= e- t t / ) ( - ? ) =
e'*^.
The continuous negative definite function i[i is called the characteristic exponent of the Levy process (Xt)t>o- On the other hand, the continuous negative definite function ip is the negative symbol of the pseudo differential operator generating the Feller semigroup associated with (/xt)t>o> i-e-
-i/>(D)u(x) := -(27r)t f extends from
CQ°(R")
e te -«V(O^)d^
to the generator of the Feller semigroup
Ttu(x)= f u(x-y)lH(dy) = (2w)-i f ete*e-^«>u(£)d£Definition 3.7.9. Let (Xt)t>0 be Levy process with state space (M™,S'™') and corresponding convolution semigroup {/J.t)t>o,^t = Pxt-x0, We call the continuous negative definite function ip ]ut(O = (2n)~^e~t^'^. the symbol of the Levy process (Xt)t>oRemark 3.7.10. Due to the tradition of different definitions of the Fourier transformation we have to distinguish for a given Levy process - the symbol of its generator which is —ip; - the characteristic exponent which is ip. - the symbol which is ip. In order to avoid confusions we will use in the following the notion symbol of the process and almost never that of the characteristic exponent. Every continuous negative definite function ij) has a Levy-Khintchin representation, compare Theorem 1.3.7.7 and (1.3.184),
V(0 =c + i(d-Q + q(0 + /
( l - e-te>« - 7 ^ 4 ) «/(<**),
^R"\{0} V
l
+ \x\ J
where the Levy measure v satisfies / ( | x | 2 A l)^(d:r) < oo. We call (c,d,q,v) the Levy quadruple characterising ip, and if V'(O) — 0> i-e- c = 0, then we
3.7 Levy Processes and Translation Invariant Feller Semigroups
125
call (d, q, v) the Levy triple characterising ip. Let us remind the reader on Remark 1.3.7.10: in the Levy triple (or quadruple) of ip the items d and u are not independent of each other and they depend on the choice of the cut-off function in the Levy-Khinchin formula. If (Xt)t>o is a Levy process associated with the negative definite function tj) the term Levy quadruple or triple is also attached to {Xt)t>oUsing the calculation done in discussing Example 1.4.1.12. we find a probabilistic expression for ifi V(0 = - l i m ^ -1(3.197) t-»o t Let (Xt)t>o be a Levy process with state space (IRn, £?("') and symbol tp. Further let / be a Bernstein function. We know that / o ip is once again a continuous negative definite function. Hence it is the symbol of a Levy We call (X/) t > 0 the Levy process process (X{)t>o with state space (E.n,B^). subordinate to {Xt)t>o by the Bernstein function / , or equivalently by the corresponding convolution semigroup (r]t)t>o, compare Theorem 1.3.9.7. We are longing for a probabilistic interpretation of (X/) t > 0 . For this we need to discuss more carefully paths properties and path-wise decompositions for Levy processes, see Section 3.8, which requires some knowledge of certain special classes of Levy processes. The remaining part of this section is therefore (and because of some reasons already mentioned above) devoted to examples of Levy processes. We start our investigation of special Levy processes with the Poisson process. Clearly, there are a plenty of ways to introduce the Poisson process and there is a universe of literature about the Poisson process. We have chosen a way which gives emphasis to the point important for our purpose namely to understand the role of the symbol when studying the process. The Poisson semigroup on M with jumps of size A > 0 and intensity v > 0 is given, compare Table 1.3.9.19, by M* = Z ^ e fc=0
jfei
6xk
'
( 3 - 198 )
and the corresponding negative definite function ip is given by V>(0 = 1/(1 - e " a ? ) -
(3.199)
By our general theory we know that there exists a Feller process associated with (/Zi)t>o and we may work with its cadlag version as well as with a complete
126
Chapter 3 Feller Processes
and right-continuous nitration. This process we call the Poisson process with intensity v and jumps of size A. Thus the Poisson process has stationary and independent increments and is stochastically continuous. We want to give a different characterization of the Poisson process and need some preparations. Let (fi, A, P) be a probability space and (7t)t>o be a filtration in A which is complete and right-continuous. In addition let (Tk)k>o be a strictly increasing sequence of non-negative random times, Tfc : fi —> [0, oo] with To = 0 almost surely, i.e. we have Tfc(w) < Tfc+i(a>) almost surely. Definition 3.7.11. We call the stochastic process (Nt)t>o denned on (fi, A, P) by Nt(u) := J2 AX{t>rfc(w)}, A > 0,
(3.200)
fc>i
the counting process associated with the sequence (Tk)ken and A. With T(w) := sup Tfc (u) < oo being the explosion time of (Nt)t>o we define [TfcH.oo) := {{t,u);Nt(u>) > k}, [Tk(u),Tk+1(u;)) := {(t,u);Nt(w) = k}
(3.201) (3.202)
and [T(w), oo) := {(t,w); Nt(u>) = oo}.
(3.203)
If T = oo almost surely we call (Nt)t>o a counting process without explosion. The increments of (iVt)t>o are given by Nt-Ns
= ^2\X{3
and Nt~^Na counts the numbers of random times falling into (s,i\. Thus v — E{ *~^ t - 1 ) gives the expected number of jumps in a time interval of length 1. It is easy to see that a counting process (Nt)t>o is adapted to a filtration (J7t)t>o if and only if the defining sequence of random times (Tk)ken0 is adapted. Now we can prove T h e o r e m 3.7.12. The Poisson process (Xt)t>o with symbol given by (3.199) (and therefore the characteristic exponent is ijj(£) = v(l — e%x^)) and with initial
3.7 Levy Processes and Translation Invariant Feller Semigroups
127
distribution e0 is a counting process without explosion and jumps of size A. In addition it holds E{Xt) = Xvt, V(Xt) = X2vt.
(3.204)
Proof. Since (3.204) follows from (3.198) we need to establish the path properties of (Xt)t>o which we already assume to be a cadlag process. Prom (3.198) we find that P(Xt = Xk) = ^ e " " * and therefore for every countable set Q C [0, oo) it follows that P(Xt e AN0; t G Q) = 1. Thus, if Q is dense in [0, oo) the cadlag property implies that almost surely (Xt)t>o takes only values in ANo- In addition, since Pxt+s-xt = Pxs and since Xs > 0 a.s., it follows that the paths of (Xt)t>o are almost surely nondecreasing functions. Hence we have established that {Xt)t>o has (a version with) values in ANo and only positive jumps. It remains to prove that almost surely these jumps have the size A > 0 and that there are only finitely many jumps in finite time. As usual we denote by Xt- the left limit of Xt. We are going to show that P ( sup (Xt - Xt-) < A) = 1. 0
For the cadlag version of any Levy process we have always P(\Xt - Xt.\ > 0) = 0 for all t > 0, i.e. there are almost surely no fixed jumps. Thus for t G Q+ we first observe that P(Xt - Xt- > 0) = 0 and it follows that sup (Xt — Xt-) = lim
0
max (Xk_ — Xk^x) a.s., m m
irnooKKm
and further P( max ( I , - Xk-i)
< A) = P(Xx. < \)m = e~» (l + -)m -» 1
as m —» oo which proves the theorem.
•
128
Chapter 3 Feller Processes For (Xt)t>o as in Theorem 3.7.12 the following times are stopping times To
= 0 , n := inf{i > 0 ; Xt - Xt- = A},
Tfc+i := inf{£ > Tfe ; Xt - Xt- = A} and we have
fc>l For smooth functions, for example u € <S(R), we may calculate the generator and find of the Feller semigroup (Tt)t>0 , Ttu{x) = Ex(u(Xt)), Au(x) =
-(2TT)-5
I eixt{v{l
= v(u(x — A) -
- e - iAf ))i2(C)dC
(3.205)
u(x)),
i.e. A is a difference operator. Our next aim is to find an analog to a Poisson process when the state space is R n . It turns out that the first idea to consider instead of (3.199) the continuous negative definite function
1>(£) = v(l - e- iA '«), A e (R+)n,Z e Rn, is not very successful. Instead we suggest to consider a convolution semigroup (nt)t>o on R™ satisfying MO = (27r)-t e -"'( 1 -( 2 -) t v(«))
(3.206)
where v > 0 and
3.7 Levy Processes and Translation Invariant Feller Semigroups
129
Recall Theorem 2.4.11 which together with the convolution theorem yields that for independent random variables Y j , . . . , Ym we have
(PYl+...+Ym)A =
((2^)mPYl.....Pym.
Thus we may interpret ((2?r) ?<£>(£)) as the Fourier transform of the distribution of the sum Sk = Y\ 4- ... + Yk of independent random variables with the same distribution, namely a. Now, let (Yi)ieN be independent random variables on some probability space (fl,A,P) with the same distribution a and let us suppose that c({0}) = 0. We set Sk := Ylt=o ^ where YQ = 0. Further let {Nt)t>o be a Poisson process with intensity v and jumps of size 1 defined on (fi, A, P) and independent of ODieN- Consider the process (3.208)
Xt = SNt. For B € B^
the independence of (Yj)/eN and (Nt)t>o yields oo
P(Xt €B) = P(SNt € B) = Y; P(Nt = k)P(Sk G B) k=0
which gives
k=0
Thus we arrive at Theorem 3.7.13. Let (Yi)iG^ be a sequence of independent random variables with values in 1™ defined on the probability space (Cl, A, P) with identical distribution a,
130
^
Chapter 3 Feller Processes
It is easy to determine the Levy-Khinchine formula for the continuous negative definite function
£_>,,(l-(27r)MO). In fact, since we have 1/(1 - ( 2 T T ) M O ) = v(v(Rn) - (27r)*(Fa)(O) = / (I - e-™*)v
(l-e-ix<)ua{dx),
=[
n
JU \{0}
where we used for the last line that cr({0}) = 0, it follows with 1 + \x 2 l 2 /x(da:) := va(dx), \x compare (1.3.183), that ^(l-(27r)^(O) =i(d • 0 + f kn\{0}\
=**•*)+[ JK"\{O}
(l- e~ix< -
lX
''*•' W ( d a : ) l + \x\2) K '
(3.209)
l
V
(l-e-<-^) -±^^x), l + | a ; / \x\ 2
2
where i/ij . , . f Xj 1 + |x| 2 ^—7:(T(Ax) = I f-pr—;—p3—H(dx). 2 7H-\{0} i + M A"\{o> i + M 2 l^l2
, /" d,- = /
When we denote by (X\3 )t>o the j t h coordinate process and by yfe component of 1^, a straightforward calculation yields E(X^) and
=
(2n)ntu^=0
the j t h
3.7 Levy Processes and Translation Invariant Feller Semigroups provided &
£=0
131
exists. In this case we find
E{X{ts)) = tuE{Y^)
= t f xjt/
note that ua is the Levy measure associated with the continuous negative definite function v(l - (2w)%ip(-). The process (X[ )t>o changes only by jumps X\3 — X\_ which are distributed by prj (a), i.e. the image of a under jrrj, and the expected number of jumps in a unit interval is v. Thus we have here a first indication that the Levy measure contains information on the structure, more precisely, on the jumps, of the paths of a Levy process. We will return to this point in Section 3.8. Let (Tt)t>o be the operator semigroup, say on Coo(]Rn), associated with the compound Poisson process discussed in Theorem 3.7.13. For its generator A we find on S(Rn) -Au(x) = (2TT)-? / eixiv(l = (2TT)-2
/
eixt f
r
JM"\{O}
or Au(x)
(1 - e-iv*)vo(dy)u(Z) d£
= (27r)-*/" f. JK"\{0} 7R"
= /
(2TT)I
elxS{l-e-iyS)u{t)dZv(T{dy)
{u{x) - u(x - y)) v{dy),
= / (u(x -y)JR"\{0}
u(x)) i/a(dy)
(3.210)
which for a(dy) = £\{dy) reduces to (3.205). The compound Poisson process has the interpretation of a time-changed process: From (Sk)k>i we pass to (Xt)t>o = (<5Vt)t>o- We will now turn to a new interpretation of subordination in the sense of Bochner, compare 1.3.9 and 1.4.3, in the context of Levy processes and time-changed processes. For this let (rjt)t>o be a convolution semigroup on R with supp r\t C [0, oo) for all t > 0. We denote by / the corresponding Bernstein function, see Theorem 1.3.9.7, i.e. f}t(y) = (27r)-ie-*^i»>
132
Chapter 3 Feller Processes
or
where C denotes the Laplace transform. Denote the cadlag version of the Levy process associated with (rjt)t>o and which is starting at 0 G M by (5t)t>o- It follows for t > s > 0 that P(St -SseA)
= P(St-t eA) = TH-a(A)
implying that (St)t>o is an almost surely increasing process obtaining its values only in [0, oo). Conversely, if (St)t>o is a Levy process with almost surely increasing paths starting at 0 G K, then we find for the corresponding convolution semigroup (rjt)t>o on K that Tfc((-oo,0)) = P(St G (-oo,0)) = 0, i.e. supp rjt C [0,oo). Definition 3.7.15. A Levy process with state space M and almost surely increasing paths starting at 0 G K is called a subordinator. Next let {Xt)t>o be a Levy process with state space R" associated with the convolution semigroup (/it)t>o a n d the continuous negative definite function V> : K n -» C, i.e.
ft(fl = (2W)-*c-**tt). In addition let us assume that (St)t>o and (X t )t>o are defined on the same probability space and that they are independent. Definition 3.7.16. Let (Xt)t>o and (<St)t>o t"e a s above. The stochastic process Yt{w) := XSt{u){v)
(3-211)
is said to be the process obtained from (Xt)t>o by subordination with respect to (St)t>o, or shortly the subordinate process. L e m m a 3.7.17. Let (Yt)t>o be the process subordinate to (Xt)t>o by (St)t>oThen it holds P(Yt G B) = [ Hs(B)rit(ds). Jo+
(3.212)
3.7 Levy Processes and Translation Invariant Feller Semigroups
133
Proof. The independence of (X t ) t >o and (St)t>o implies P(Yt GB)= P(XSt G B) /•oo
= /
Jo
P(XS e B\St = s)ds
= I™ P(XS £ B)r)t(ds) Jo = [ Jo
n.(B)TH(d3).
n
From Proposition 1.3.9.10 or more easily from Remark 1.3.9.11 we find from (3.212) that
(3.213)
P(Yt€B)=rf(B), i.e. we have
Theorem 3.7.18. Let (Xt)t>o and (St)t>o be as in Definition 3.7.16. The subordinate process (Yt)t>o is a Levy process corresponding to the convolution semigroup (fJ-{)t>o- The generator of the corresponding Feller or Lp-subMarkovian semigroup restricted to S(R") is given by Au(x) = - ( 2 T T ) - * /
e te «/(tf(O)«(Od£.
(3.214)
compare 1.4-3 or 11.2.9. Remark 3.7.19. Let {St)t>o be a subordinator with associated Bernstein function / , ,oo
(1 - e-xs)v{ds)
(3.215) ./o and let (Xt)t>o be a Levy process with state space R" associated with the convolution semigroup (fit)t>o , Mt(£) = (2ir)~^e~t^\ The Levy measure of the continuous negative definite function / o ip is given by f(x)=a + bx+
/•OO
af =b(i+ / ntv{dt) (3.216) Jo where /J, is the Levy measure associated with tjj and the integral is understood in a vague sense (compare Remark 1.3.9.11). For a proof of this result we refer to Chr. Berg and G. Forst [35], p.175, or K. Sato [310], p.l98ff.
134
Chapter 3
Feller Processes
We want to discuss one class of subordinate Levy processes in more detail, namely certain subordinate Brownian motions. By definition Brownian motion is the Markov process associated with the Brownian semigroup, i.e. the convolution semigroup associated with the continuous negative definite function £ l~^ l£|2- If wefixthe initial distribution we obtain a Levy process. The corresponding continuous negative definite function is of course again the function £ H~> l£|2> £ € ^™- The subordinate processes we are interested in are those subordinate to Brownian motion which do not have a killing or a diffusion part, i.e. according to Theorem 1.3.9.26 the continuous negative definite function associated with such a process is of the form 1>(t)= [
n
JR \{0}
(I - cos(y • O)m(\y\2)dy
(3.217)
where m(r) = [ e" r V(ds) Jo+ and v is a measure on (0,oo) such that J^s~^u(ds) < oo and 1 fx s~%~ v(ds) < oo. The corresponding Bernstein function / is then given by /(r) = /"°°(1 - e- rs )(47r S )t$(^)(d s ),
(3.218)
where ${v) is the image measure of v with respect to the mapping SH->$(S) = -L.
If (Tt)t>o denotes the operator semigroup on CooQR") or Lp(Mn) associated with such a Levy process we find on 5(R") for its generator A -Au(x) = (2TT)-? /
eix«V(O«(Od£
= (2TT)-* /
efa« /
= (2TT)-» /
(f
f = /
u(x + y) + u(x-y)\
VR"\{0}
( \u{x) V
(1 - cos(y • 0)m(\y\2) dy u{£) d£ efa«(l - cos(y • O)u(O^) m(\y\2)dy 0
I
L
. 2> )m(\yY)dy,
J
3.7 Levy Processes and Translation Invariant Feller Semigroups
135
or, using the symmetry of m(|-| 2 ),
Au(x) = /
n
(u(x + y) - u(x))m(\y\2)dy.
JR \{0}
In case where {r]f)t>o is the one-sided stable semigroup of order a € (0,1) we find
(3.219) i.e. ( j
~
Trfr(l-a)
r «+f
-^^a+f-
Thus on 5(M") we find
The corresponding stochastic processes are called symmetric stable processes (of order a). For a = \, i.e. £ H-> |£|, the corresponding process is of course the Cauchy process (Xt)t>o- Most important for us is the observation that the Cauchy process has no expectation since S(l*,l)=r(^)/i>w'W2)!ifldI
=
oo.
(3.220,
The Cauchy process is the Levy process with symbol £ i-> |£|. We are going to discuss now in detail a one-dimensional Levy process, the Meixner process, < Ai holds for some having a symbol £ i-> V ' M ( 0 such that A0 < 1+ |^jS| 0 < Ao < Ai, but which has many different properties than the Cauchy process, for example it has finite expectation. Thus already in the realm of Levy processes partly our philosophy that processes with comparable symbols have comparable properties break down, while of course other parts of this philosophy work very well, compare for example the following Proposition 3.7.21. In the following discussion of the Meixner process we rely mostly on the paper [52] by B. Bottcher and our joint paper [54]. However we emphasize that the original sources are B. Grigelionis' paper [131], W. Schoutens [325] and W. Schoutens and J. Teugels [326].
136
Chapter 3 Feller Processes
Definition 3.7.20. A real-valued Levy process with symbol
Vv*,a,b(0 = - i m £ + 2 6 ( l o g c o s h ( ° * ~ l b J - l o g c o s f - J J , £ e R, (3.221) where m e t , 5 > 0,a > 0 and — IT < b < •n is called a Meixner process. A Meixner process (X™1 'a' ) t > 0 has a density with respect to the Lebesgue measure A ^ given by (3.222) and for its finite expectation we find E(Xm,5,a,bj
= aSt t a n
I
+ mt)
(3.223)
and its variance is given by Var(X--) . ^
^
.
(3.224)
Further we find ReVw,a,&(0 = <^log(cosh(^) - sin 2 (^)) - 25 log cos (^) and
Im ipm,s,a,b(O = -m^ + 25arctan^-tanf-Jtanh^-r-JJ. Moreover it follows that
ReW<W>(£)>yl£l
(3-225)
for £ G R, |C| > ^ , as well as for some c0 > 0 |Im VmAa,6(01 < CO (1 + R e VmAa,b(0) , £ G »•
(3-226)
In addition it follows that |V- m Aa,6(0l
(3.227)
3.7 Levy Processes and Translation Invariant Feller Semigroups
137
implying with suitable constants 0 < Ao < Ai that Ao
<
l
+ -
(3228)
holds. Hence (X(m' '"' )t>o has a symbol comparable with the symbol of the Cauchy process, but (Xtm'(5'a'b)t>o has a finite expectation contrary to the Cauchy process. Therefore it does not make sense to try to get a pointwise comparison of corresponding transition functions: we will lose the integrability in case of the Meixner process! As a direct consequence of (3.226) and (3.227) we find by an application of Example 1.3.7.32 Proposition 3.7.21. The Meixner process (X™'S'a'b)t>o is associated with the non-symmetric Dirichlet form given on S(M.n) by
(3-229)
£(u,v) = [ 1>m,s,a,b(£)v(£)W)#-
Its domain D{£) is the classical Sobolev space H?(M.), hence (£,D(£)) is regular, and on //^(R) we have
£(u, v) =d f ^P-v(x)dx + \f JR
$ (u(x) - u(y)) (v(x) - v(y))
&X
I JR JR
Seb^)
, ,
•; r7-IMEVI (x — y)smh K a '
ydx
(3.230)
Remark 3.7.22. A. Prom (3.228) we derived that D{£) = H*(R) and in fact we have that £\(u, v) = £(u, v) + (u, v)0 is on H* (R) equivalent to the Dirichlet form (£C,H*(R)) associated with the Cauchy process in the sense that Xo£i(u,u) < £i{u,u) < \i£i(u,u) holds for all u G H* (W). Hence here our philosophy works very fine. B. We refer to 1.4.7, especially pp 417-18, where we discussed a representation of the drift part in (3.230) on ifi(R) with the help of fractional derivative, compare also [198].
138
Chapter 3 Feller Processes
Remark 3.7.23. A further Levy process of considerable interest, see 0 . Barndorff-Nielsen [22] and 0 . Barndorff-Nielsen and S. Levendorskii [25], is the normal inverse Gaussian process which has the symbol "0NIG(O
= -«m£ + 5(^a? ~(b + iO2 - Va2 - 62),£ e R,
(3.231)
where 0 < \b) < a, 5 > 0 and m £ R. Again as in the case of ipm,6,a,b the symbol V'NIG is comparable with the symbol of the Cauchy process but it has a finite expectation. Moreover its transition function has the density Pt{x)
=
£ ew^+Kx-mt)
V
V
^ t >)t
(3 232)
where
which differs much from (3.222). Thus we face the situation that |£|~V>NiG(£)~tfw,«,6(0
(3.233)
but one should not long for a pointwise comparison of the corresponding transition densities. Our final example of a Levy process is the most important Markov process of all — Brownian motion. As already mentioned the n-dimensional Brownian motion is the Levy process with symbol |£|2,£ £ M.n. Instead of listening some of the many known properties of Brownian motion or to give credit to its importance by quoting some results, we refer to A. N. Borodin's and P. Salminen's "Handbook of Brownian Motion" [51]. Within our considerations Brownian motion is an outsider: it has continuous paths and its analysis is related to an elliptic differential operator, i.e. to a local operator, namely the Laplacian. Again, we do not intend to make a lot of remarks to the interplay of second order elliptic differential operators and diffusion processes, here are just three references: R. Bass [27], L. C. G. Rogers and D. Williams [301]-[302], and D. Stroock and S. Varadhan [351]. However we want to supply a nice short proof due to R. Schilling [312] of the fact that Brownian motion has almost surely continuous paths using as assumption that it is already known that Brownian motion is a cadlag process. The latter fact follows indeed from our previous considerations.
3.7 Levy Processes and Translation Invariant Feller Semigroups
139
In the following let (Xt)t>o be a stochastic process on some probability space (fi, A, P) with state space (E™, B^). In addition we assume that it has almost surely cadlag paths, i.e. there exists a set M € A such that P(Af) = 0 and for all w £ Afc the mapping t *—> Xt(oj) is a cadlag function. For a partition II = {to,ti,... / C [0, oo) and (3 > 0 we define
,tk},to
< £i < . . . < £ & , of an interval
k
var^((X t ) t >o,/,n)( W ) = ^T\Xtj(uj) - Xti_x{u>)f.
(3.234)
Further we set J{t,u>) := Xt{uj) - Xt-{u)
:= Xt{uj) - limX s (w),
(3.235)
i.e. J(t,u) gives the size of a jump of the path s H-> XS(UJ) at time t. Let ( I I ^ g N , 11^ = {*o J*I '•••>*j(i/)}i ^ e a sequence of partitions of / . If II,, C Uu+i and if the meshes, mesh(IIy) := max (t^ — tj2\), of the par\<3
titions tend to zero as v —> oo, then we say that the sequence of partitions (IIJ / )^ € N becomes dense in I. Lemma 3.7.24. Let {Xt)t>o be a cadlag process with state space (M",S^"^) as above. For allT > 0 and for any sequence of partitions of[0,T] which becomes dense in [0, T], we have for almost all w 6 Q. Y \J{t,w)f t
< liminf var /3 ((X t )t>o, [0,T\,Hv){u). "-*°°
(3.236)
Proof. A cadlag function is bounded on bounded intervals and the number of jumps on [0, T] with size larger than e > 0 is finite, compare Section 3.3. Thus for w € Q,\Af,P(Af) = 0, there exists only a finite number N = N(u) = NT,e{u>) of jumps of 11-> Xt{u>) larger than e, i.e. \J(t,u/)\ > e. These jumps occur at (random) times T\{UJ) < ... < TJV(W). Fix w e fi\A/" and choose i/ such large that Tj{u>) is contained in the interval (im]_ 1 ,im]] or
140
Chapter 3 Feller Processes
[ O , ^ ] . Now it follows that
V
| J(t, uj)f = V liminf X&) (LJ) - X&) (UJ) < lim V XM - XW) 1/-.00 r—f
Xm
i
tm
< liminf var / j((Jf t ) t >o,
i-i
[0,T\,Uv).
Since the right-hand side is independent of e, the lemma follows as e —> 0.
•
Theorem 3.7.25. Let (Xt)t>0 be a cddldg process with state space (M.n,B^) as above. In addition assume that E(\Xt - Xsf)
< co|t - s\1+a
(3.237)
holds for all s,t > 0 and some constants a,/3,co > 0. Then almost all sample paths 11—> Xt(u>) are continuous. Proof. Let T > 0 be fixed an choose a sequence of partitions (Tl^)uS^, !!„ = {t^,... ,t|rj)}, of [0,T] that becomes dense. Applying Lemma 3.7.24 and Fatou's lemma we find
E(y2\J(t,-f) t
< sfliminfvar^((Xt)t>o,[O,r],nv)) "-00
< liminf £(vai7j(pr t )t>o, [0,T],n y ))
l{v)
^coliminfVl^-^
1+
< coliminf^eshCn,))" VftJ^ - &\) < coTliminf^esh^))11 = 0. V—»OO
3.8 A Summary of Some Path Properties of Levy Processes
141
Thus for T > 0 exists AfT e A, P{MT) = 0, such that for w e U\AfT the path t >-> Xt(w) has no jumps in [0,T]. Therefore, if {Tk)ke® is a sequence, Tfc > Tfe-i > 0, such that lim Tk — oo, we find for the set No = WkLi-^n k—»oo
that P(A/o) = 0 and for w € N§ the path 11-> X4(w) is continuous.
D
Now we can prove Corollary 3.7.26. An n-dimensional Brownian motion (Xt)t>o has almost surely continuous paths. Proof. The result will follow from Theorem 3.7.25 once we have proved £(|Xt-Xs|4)
(3.238)
But for 0 < s < t we have
[ |x|4Pxt-xs(dx)
E(\Xt~Xs\4)=
- / \x\4PXt_a(dx)
= f MVt-s(dz) =
1
f
(47r(i-s)) J^
=,
(t
" s)2 .(t-^k-^d,
(47T(t - S))
=
C l
2
•/
2
| t - S| ,
and the corollary is proved.
3.8
| a ,(2
w I n \x\Ae~'^r^dx 2
•
A Summary of Some Path Properties of Levy Processes
The analysis of the sample paths of a stochastic process is one of the core subjects in the field, and a lot of results are known for Levy processes. Our main interest in this monograph is to deduce from a certain comparison of a negative definite symbol q(x,£) with a fixed continuous negative definite function ip a comparison of properties of the process (-X't)t>o having q(x, £) as
142
Chapter 3 Feller Processes
its symbol (see (1.03)) with properties of the Levy process (Yt)t>o associated with ip. Since there are several good monographs and surveys dealing with paths properties of Levy processes we decided not to rework these results in detail, but to give a summarizing discussion, pointing out the concepts and results but not providing all proofs. Certainly we will give very precise references. Our topic is the Levy-Ito decomposition of the sample paths of a Levy process. This will give us also a deeper probabilistic understanding of the Levy-Khinchin formula, compare 1.3.7, especially Theorem 1.3.7.7. We follow in our presentation the monograph of K. Sato [310], but refer also to the notes. We need a few conventions to start with: We set No := No U {oo} = N U {0} U {co}, and we say that a random variable X is Poisson distributed with mean 0 (with mean +oo) if X = 0 almost surely (if X = +oo almost surely). Definition 3.8.1. Let (£l°,A°,P°) be a fixed probability space and (S,5,
G S, is a Poisson-distributed random variable with mean
ii) if Bi,... ,Bk S <S are mutually disjoint, then the random variables iV(Bi)(.),..., N{Bk){-) are independent; iii) for every w g 0° a measure on S is given by N(-)(w) : 5 ^ I
+
,BM
N(B)(LJ).
If {N(B); B 6 S} is a Poisson random measure we use often the notation N(B,w) instead of N(B)(u), and consequently we will write N(dx,uj) for N(dx)(u)). The existence of a Poisson random measure is granted by the following proposition, compare K. Sato [310], Proposition 19.4, for a proof. Proposition 3.8.2. For any cr-finite measure space (S,5,cr) there exists on some probability space (fi°,.4 0 ,P 0 ) a Poisson random measure on £ with intensity measure a.
3.8 A Summary of Some Path Properties of Levy Processes
143
Further we have, following K. Sato [310], Proposition 19.5, Proposition 3.8.3. Let (E, <S, a) be a finite measure space and {N{B); B £ <S} be a Poisson random measure with intensity measure a and underlying probability space (Q,°,A°,P0). For a measurable function u : £ —» R" we define the mapping Y : ft0 -> Rn by (3.239)
Y(w) := [ u(x)N(dx,u). JT.
Then Y is a random variable, i.e. it is measurable, and we have i) the random variable Y is compound Poisson distributed with characteristic function Ay : K™ —> C given by A y (O=exp(/ 1 ( e i «^-l)a(da ; ) N ) )f
{
= exp (j yt-x _ l)au(dx)\ ,
(3-240)
where au is the image measure of a under u; ii) ifue
L2(E,a) then E(\Y\2) < oo and E{Y)=
(3.241)
f u(x)a{dx)
as well as Var(r) = E(\Y - E{Y)\2) = f \u(x)\2a(dx); Hi) for mutually disjoint sets B\,..., Yi{w):=
f u(x)N(dx,u;),l
B\. £ S the random variables =
l,...,k,
JBi
are independent. For 0 < f l < f c < o o w e write AO)b := A(a, b] := {x € Kn; a < \x\ < b} and AaiOO := A(a,oo) := {x e l ° ; a < |a:| < oo},
(3.242)
144
Chapter 3 Feller Processes
which yields A0,oo = K n \{0}. In addition we set H := (0,oo) x R"\{0} = (0,oo) x A0]OO. The Borel cr-field of H is denoted by B(H); a typical point h G H has components s and x, i.e. h = (s,x). If Q is a mesasure on B{H) we write for the corresponding integrals
f f(h)g(dh)= f
J(0,oo)xA 0 ] 0 0
JH
f(s,x)g(d(s,x)).
Following K. Sato [310], p.120, we state now Theorem 3.8.4 (Levy-Ito-Decomposition). Let (Xi)t>o be a Levy process on the probability space (fl, A, P) with state space M n and Levy triple (Q, d, v). On B(H) we define the measure v by v((0, t]xB) = tu(B) , B G B(n).
(3.243)
Further let QQ C fl,P(flo) = 1, be a set such that for all a; G f2o the paths t H-» Xt(uj) are cddlag functions. For C G B(H) we define (3.244) Then it holds i) by {J{C); C G B(H)} a Poisson random measure with intensity measure v is given, ii) for some set fii C £l,P{Vl{) — 1, we may define for all LJ G fii and t G [0, oo)
X}(u>) := lim / {xJ(d(s,x),w) -oy ( o,*]x A ( e ,i) + /
J(0,t]xA(l,oo)
-
xv(d(s,x))} (3>245)
xJ(d(s,x),Lj)
and the limit is uniform with respect to t on bounded intervals. Furthermore (Xt)t>Q is a Levy process with state space M.n and Levy triple (0,0,1/)/
3.8 A Summary of Some Path Properties of Levy Processes
145
Hi) for u> € Qi we define X?{LJ)
:= Xt(w) -
X](LO)
(3.246)
and there exists a set 0.2 C fi, P{0.2) = I, such that for all w £ f22 the path t i-> X?(UJ) are continuous. The process (X?)t>o is a Levy process with state space Rn and Levy triple (Q, d, 0); iv) the two processes (Xf)t>o and (X^)t>o are independent. Thus we have decomposed the Levy process (Xt)t>o into the sum of two independent processes (X})t>o and (Xf)t>o '•
(3.247)
Xt = Xl + X},
where one process is a pure jump process and the other has continuous paths. Remark 3.8.5. A. A proof of Theorem 3.8.4 is given in K. Sato [310], §20. B. Since the Levy triple (Q,,d,v) is in general not unique, compare Remark 3.7.10, the decomposition (3.247) is not unique either. But of course, once (Q, d, v) is fixed, then it is unique with respect to this Levy triple. Definition 3.8.6. A. Let (Xt)t>o be a Levy process with state space R™ and decomposition (3.247). We call (X^)t>o its jump part (with respect to the given Levy triple (Q,d, v)) and (X?)t>o its continuous part (with respect to the given Levy triple (Q, d,v)). B. The limit lim /
e-»0 7(0,t]xA(e,l]
{xJ(d(s,x),w) - xV(d(s,x))}
is called the compensated sum of jumps. If the Levy measure v of the process (Xt)t>o satisfies the additional condition r .<1|a;|j/(da;) < 00, then we may decompose (Xt)t>o a bit differently and will have a unique decomposition into jump and continuous part. Again we quote K. Sato [310], p.121. Theorem 3.8.7. Suppose that {Xt)t>o is a Levy process with state space R n and for its Levy measure v we assume
/ J\x\
IzKdz) < 00.
(3.248)
146
Chapter 3 Feller Processes
Further let ^ i and J{B,w) be defined as in Theorem 3.8.4. Then there exists a set fl3 c fii,P(fi3) = 1 such that X?{u)=
I
xJ(d(s,x),uj)
(3.249)
is defined for all t > 0 and {Xf)t>o is a Levy process with state space Mn and characteristic exponent f (e-ix^
(3.250)
- l)u(dx).
In addition for ui £ $72 n O3, JI2 as in Theorem 3.8.4, the process
Xfa) := Xt(w) - X?(u) has continuous paths, i.e. t *—» X^(w) is continuous for to E fiinf)3. Moreover the two processes (Xf)t>o and (Xt4)t>o are independent.
3.9
The Symbol of a Feller Process
When we combine Example 3.2.8 with the considerations preceeding Corollary 3.2.13, see p. 59-60, we find that every Feller semigroup (T"t)t>o on Coo(]R") gives rise to a Feller process {{Xt)t>o, Px)xemri• (In c a s e of non-conservative semigroups we have first to work in the one-point compactification of M.n.) The relation between (T t ) t > 0 and ((Xt)t>o, Px)xem. is of course given by Ex{u{Xt))=Ttu{x).
(3.251)
In 1.4.4.5 we studied the structure of generators of Feller semigroups and in 1.4.4.8 we had a closer look to extended Feller semigroups. We were led to the fact that generators of Feller semigroups are under some reasonable assumptions on their domains and their mapping properties extensions of pseudodifferential operators with negative definite symbols, i.e. the generators are completely characterized by their symbols. More precisely, if (Tt)t>o has an extension (f t ) t > 0 to 5 6 (M n ;E) mapping Bb(Rn;R) into C 6 (R";R); i.e. if (Tt)t>o is a strong Feller semigroup, compare Definition 1.4.8.6, then we have proved in Volume I, p. 444, that ftu(x) = (2TT)-* /
efa«At(a;,Ou(Od£
( 3 - 252 )
3.9 The Symbol of a Feller Process
147
holds on CQ 0 , where \t(x,Z) = e-ixtTt(ei(-'V)(x),
(3.253)
i.e. Tt has a representation as a pseudo-differential operator. Now, having in mind that Tt is obtained from Tt by using the kernel representation we first note that (3.251) extends to Ex(u{Xt)) = Ttu{x)
(3.254)
for all u S C&(Rn;R) or even £ b (R";R). Combining now (3.253) with (3.254) it follows that Xt(x,O=Ex(e^Xt-^<).
(3.255)
Thus in the case under consideration the symbol of Tt or Tt can be expressed in pure probabilistic terms. If ((Xt)t>o,Px)xGRn is a Levy process (lt)t>o associated with the convolution semigroup (/it)t>o, then it follows from the fact that the increments are stationary that \t(x,£) is independent of a;: \t(x,€) = Ex{ei{Yt~x^<) = E°(eiYtS) = (27r)-*/I(-O=e~ t * ( " € ) where tp is the continuous negative definite function associated with (/i*)t>o, i.e. Mt>o(0 = (27r)-*e-**«>. Thus the symbol of Tt is expressed by the characteristic exponent of the corresponding Levy process. (The reader may have noticed that in this discussion our presentation suffers from the fact that the Fourier transform is defined in the theory of stochastic processes usually by Ex(etXt'*) whereas we used always the definition u(£) = (2?r)~? JRn e~lx^u(x)dx for functions and its extension to measures and distributions.) ^Let us return to the general case. Following further 1.4.4.8 we find for (A,D(A)), the Cb-extension of (A,D(A)), where (A,D(A)) is the generator of (T t ) t > 0 , that on C£°(Rn) it holds
Au(x) = -(27r)-t / e^qfaduffidt,
(3.256)
148
Chapter 3 Feller Processes
where q(x,O = -e-ix^A(e^^)(x),
(3.257)
and, compare Volume I, p.445, e-^A(e<-'^)(x)
= lim t-*o
)[X)
- ^
.
t
Taking once again (3.254) into account we finally arrive at q{x, 0 = - lim — ^ t-*o
t
(3.258)
'—=•
which is (0.3). Hence q(x, £) is also completely expressed in probabilistic terms. Clearly, for a Levy process (Yt)t>0 we have q ( x , 0 = VKOi i-e- w e obtain its symbol in the sense of Definition 3.7.9, or equivalently, ip(~0 1S * n e characteristic exponent of the Levy process. This leads to a nice interpretation for q(x,£): If we fixed x G M™ then £ t-> q(x, £) is the symbol of a Levy process, thus at each point x G R™ we may associate with ((-^t)t>o,-P ;c ) xe ] Rn a Levy process (Y^)t>o, and "moving" from xi to X2 does mean to "visit" at each point on the way connecting xi and X2 a Levy process. Most interesting is of course what happens when we "move" along a path of (Xt)t>o- In [347] and [348] D. Stroock has followed a similar idea which he refers to K. Ito. We want to emphasize a different aspect and start with a definition which is now well justified: Definition 3.9.1. Let ((Xt)t>o, Px)xeRn q(x, 0 := - lim ^ t->o
be a Markov process. If the limit (3.259)
> t
exists, it is called the symbol of ((Xt)t>o,
Px)x£Rn•
Remark 3.9.2. A. In case of larger classes of strong Feller processes as well as for all Levy processes we have seen that the symbol of the process equals the symbol of —A, A being the generator of the corresponding operator semigroup. B. Suppose for a moment that (Xt)t>o is conservative. Then is a positive definite function with
3.9 The Symbol of a Feller Process
149
is negative definite. Hence the pointwise limit (3.259) must be a negative definite function for x fixed. In case that (X t ) t >o is not conservative we note that ip(x, 0) < 1 and it follows that
-fEx(ei{Xt~xH)
- l) = -(Ex(e«Xt-xH)
-
is again a negative definite function with respect to £ for x being fixed. Now let ((Xt)t>o, Px)xe^n be a Feller process (or more generally a Markov process) with symbol q(x,£). Suppose we want to study (Xt)t>o after it has started in xo € K™ for a short time only. If (Ytx°)t>o is the Levy process with symbol V>(£) = (zo,£) we shall expect that ((X t ) t >o,.P Xo ) and (Ytx°)t>0 near the starting point XQ € Mn have quite similar behavior. If in addition there exists a fixed continuous negative definite function ip such that for all x € R n the function £ — i > q(x,£) behaves "essentially" as the function £ i-» ip(£), then nas properties analogous to (Yt)t>o we should expect that ((Xt)t>o, Px)x€Rn the Levy process with symbol I/J. In order to get some flavour for results of such type we will briefly discuss two of them following our survey [199] with R. Schilling. The following results are due to him and we refer to his papers [311], [316] and [318], and to his forthcoming monograph [323]. Let tjj : R" —> C be a continuous negative definite function and define the Blumenthal-Getoor upper index by P := /3(V») := inf (A > 0 ; lim sup ^ ^ - = o\.
(3.260)
A result which is classical by now and due to R. Blumenthal and R. Getoor [45] states for the Levy process (Yi)t>o with symbol ip that dimH{Yt{u>); t G E] < 0dimHE
a.s.
(3.261)
where dim^f(C) is the Hausdorff dimension of a set C and E C [0,oo) is an analytic set, compare Definition II.3.1.1. Now let (A,D(A)) be a generator of a Feller process ((X t ) t >o, Px) R n such that C^°(K n ;K) C D{A) and ^|co~(K";K) = -q(x,D) is a pseudo-differential operator such that sup |q(a:,£)| < c(l + |£| 2 ) and that the sector condition xeMn
|Im q(x, 01 < K Re q(x, 0 holds for all x . ^ e l " . Define
{
sup A > 0; lim sup l«l-oo
sup|g(j/,|£|j7)| BL
-r7rx I£|A
> = 0 S. I
(3.262)
150
Chapter 3 Feller Processes
Then for every analytic set E c [0, oo) din^{X t (u); t € E} < (sup (/%,))dim H £
(3.263)
ySffi"
holds Px-almost surely for all x € Kn. In particular, if sup|g(z,OI
(3.264)
holds, then it follows that sup (/^) < /?(V)
(3.265)
y£Rn
and therefore we have dinif^XtH; t € E} < P(ip)dimHE.
(3.266)
Although (3.263) is the more sharp and general result, in estimate (3.266) we encounter in explicit form our general philosophy: (3.263) compares the symbols-(3.266) compares properties of the processes. Remark 3.9.3. We have taken the formulation (3.266) from [199], but it was originally proved in [315], the version given here follows from [315] in combination with results in [316]. The second result we want to discuss identifies paths of ((Xt)t>o, as elements of certain Besov spaces. For this we also need the index
{
sup^ sup |g(?/, |f|7?)| A > 0; lim sup > e R " l > ' 1 ^ , .
Px)xeRn
"j = 0\ .
(3.267)
We remind the reader to the definition of the Besov spaces S* g(M") as given in 1.3.11. We need now two extensions: We say that a function u belongs to B*;^oc(]Rn) if for every
3.9 The Symbol of a Feller Process
151
Theorem 3.9.4. Let ((Xt)t>o,Px)x€Un be a Feller process (or more generally a Markov process) and for the generator (A, D(A)) of the corresponding semigroup assume that CQ°(M.";R) C D(A) and /l|c~(K";K) = ~q(x,D). Further assume that \q{x,£)\ < c(l -f VKO) and Vm
a^:=
sup{p,/?^}.
Then we have Px -almost surely (t ~ Xtvo(w)) G ^ , , ( R ; (1 + * 2 )- f ) /or so^
+ ^; (3.268)
0C
(i ^ X tvo (o0) G ^;!, (K) /or s a ^ < 1;
(3.269)
(t ^ Xty0(uj)) G s|,i'° c (R) /or p > sup {/3^}.
(3.270)
Moreover, if sp > 1 , p G (0, oo] or sp = 1,^ < 1, i/ien we /tawe P x almost surely that (t ^ Jftv0(w)) ^ B^,{OC(K). Remark 3.9.5. We stated this result in its most precise form. When we have however upper bounds for sup {/%>}, for example sup {Z?^} < /?(V)) for a fixed y€R"
yeWL"
continuous negative definite ip, then we obtain once again results of the type: comparison of symbols leads to comparable properties of the processes. In [191] we gave a lot of constructions of Feller semigroups generated by pseudo-differential operators. In most cases we posed conditions on a negative definite symbol q(x, £) by using a fixed continuous negative definite function tp. — Only when considering in II.2.10 operators of variable order of differentiability the condition were different. Thus the two results discussed above, many of those described in [199], and most of the results in R. Schilling's monograph [323] will apply to the (Feller) processes associated with the Feller semigroups constructed in [191].
152
3.10
Chapter 3 Feller Processes
Notes to Chapter 3
The construction of the canonical process is of course quite standard and our main source is H. Bauer [30] which we use in some sense indirectly since Section 3.1 and later sections are partly translations of our lecture notes [180]. The same remark applies to Section 3.2 and in both sections the reader will not encounter some unexpected material with exception of our discussion of the continuity of the transition function, Theorem 3.2.17-Lemma 3.2.21, compare also the references given in that part of Section 3.2. Section 3.3 starts with a discussion of versions and modifications of a given process and soon turns to cadlag functions. In our presentation we mixed several sources (as we did in [180], partly our template for this section). The basic properties of cadlag functions are proved by following essentially St. Ethier and Th. Kurtz [98], and this is also the main source for our discussion of the Skorohod space. Clearly, one has to mention here A. V. Skorohod's original paper [334], his monograph [335], the monographs of I. I. Gihman and A. V. Skorohod [121]-[123], as well as P. Billingsley [38], J. Jacod and A. N. Shiryaev [206], D. Revuz and M. Yor [299], and the classics of K. R. Parthasarathy [284]. We also benefit much from W. Hoh [155]. The Markov property is discussed in Section 3.4 and once again H. Bauer [30] is the source with K. L. Chung [74] and [75] being helpful. The proof that Feller semigroups lead to canonical processes admitting a cadlag modification is borrowed from D. Revuz and M. Yor [299], results on stochastic continuity are taken from K. L. Chung [75]. The discussion of the shift operator and the strong Markov property is once again influenced by H. Bauer [30], K. L. Chung [75] and D. Revuz and M. Yor [299] with some additional input of I. Karatzas and S. Shreve [216]. In some sense Section 3.1-3.5 is a type of advanced crash-course on stochastic processes and should be well-known to probabilists. Therefore we may also refer to the monographs mentioned above and in the beginning of Section 2.6 and 2.7 for further references. The martingale problem is discussed in much more detail in Chapter 4 and we add remarks to Section 3.6 in the Notes to Chapter 4. It is possible to read Section 3.7 as a paragraph providing examples to the theory discussed before. But for us this section is more central. The whole approach to Markov processes by studying pseudo-differential operators relies on the model given by Levy processes and we present the subject mainly under this point of view. As modern standard references we mention the monograph J. Bertoin [37] and K. Sato [310], and of course the classics of S. Bochner
3.10 Notes to Chapter 3
153
[47] and P. Levy [244]-[245] and the more hidden work of K. ltd [174]-[176]. Further let us mention the surveys of S. J. Taylor [357], B. Fristedt [107], and N. Bingham [40], as well as the most recent monograph of D. Applebaum [21]. The Levy-Khinchin formula which we derived in Volume I by considering convolution semigroups was proved first by P. Levy [243] and A. Khinchin [219] by probabilistic methods. P. Levy and especially S. Bochner emphasized the role of Fourier analysis in the study of Levy processes and made already much use of the characteristic exponent of a Levy process as did many of their followers. The characteristic exponent has an interpretation in the frame of pseudo-differential operators: it is essentially the symbol of the generator of the corresponding Feller semigroup. "Essentially" refers to the fact that traditionally different normalizations of the Fourier transform are used in probability theory and analysis. Since in our general theory we start with a symbol or equivalently with a pseudo-differential operator, our approach to Levy processes is to start with a characteristic exponent and then to explore the corresponding process. First we discuss the Poisson process and we borrowed much from Ph. Protter [292], as we did later on when investigating the compound Poisson process. An additional source was K. Sato [310]. K. Sato [310] and Chr. Berg and G. Forst [35] were used in our discussion of subordination, but partly we used of course Section 1.3.9. The Cauchy process is treated as an example of a subordinate process. We spent some time in discussing the Meixner process using results from B. Grigelonis [131], W. Schoutens and J. Teugels [326] as well as B. Bottcher [52]. There are three reasons for this: recent interest in financial mathematics, see W. Schoutens [325] (and [326] again), recent results on developing a Malliavin-type calculus for the Meixner and related processes, compare E. Lytvynov [248] and [249], and further it serves as a (counter-)example to the idea that q(x, £) ~ 4>(0 will imply that the corresponding processes have comparable properties. Since diffusions are not so much in our interest, we mention Brownian motion only briefly. However we give a nice proof due to R. Schilling [312] that Brownian motion has almost surely continuous paths using the a priori knowledge that the paths are almost surely cadlag. Our rather "analytic" approach to Levy processes is in some sense not very suitable for pathwise considerations or an analysis on path spaces. In Section 3.8 we give following once again K. Sato [310] the Levy-Ito decomposition of the paths of a Levy process and we refer to [310] for comments on this central and important topic. So far there are three types of results which I would quote to justify an approach to jump-type processes by using pseudo-differential op-
154
Chapter 3 Feller Processes
erators: 1. The fact that we can construct processes, starting by giving a symbol. This was outlined in [178] and [179] with large classes of non-trivial examples in [181] and [182] as well as in [185], and this part of the theory owes most to W. Hoh's work on the martingale problem [150]-[153] as well as to his symbolic calculus [154] and [156], see also his habilitation thesis [155] and Chapter II.2 as well as Chapter 4. 2. Establishing path properties of processes by using the symbol with lasting contributions due to R. Schilling [311], [313]-[316], [320] and [322]. A reminiscene: When I suggested to use pseudo-differential operators to study Markov processes, for the first time in [178], some probabilists reacted a bit hostile (as some of them often do when a bit more analysis is involved) and asked what is gained for probability theory by this approach. Bearing in mind the work of R. M. Blumenthal and R. K. Getoor [43]-[44], J. Hawkes [140]-[141], P. W. Millar [271], W. E. Pruitt [293] and [294], and S. J. Taylor [357] on Levy processes, I suggested to R. Schilling for his thesis [311] to try to extend some of these results to Markov processes generated by a pseudo-differential operator by substituting the characteristic exponent of a Levy process by the symbol of the pseudo-differential operator, hence the process, under consideration. 3. It is possible to recover the symbol of the generator in pure probabilistic terms. This was first outlined in [189] and considerably extended by R. Schilling in [318] and [321], see also E. Popescu [288]. It is of great interest to relate this fact to D. Stroock's [347] and [348] latest approach to K. Ito's ideas [174]-[176]. In Section 3.9 we deal with the third item and first we discuss the central formula
q(x,0 = - lim —^ 1 . t-»o t Then we discuss some path properties of processes which could be characterized by their symbol. These results are mainly due to R. Schilling (see item 2), in special cases Z. Ciesielski, G. Kerkyacharian and B. Roynette [77], B. Roynette [304] and [305], as well as V. Herren [145] gave related contributions.
3.10 Notes to Chapter 3
155
It is of some historical interest that (to my best knowledge) the results of R. Schilling [320] are the first non-trivial example outside pure analysis for the need to consider weighted Besov spaces with p < 1, compare D. Haroske and H. Triebel [137]-[138] and H. Triebel [359]-[362]. Since R. Schilling is preparing a monograph [323] dealing with these and related results, we only give a brief discussion of some of his results. A more recent survey on these and related topics is Y. Xiao [372].
Chapter 4
The Martingale Problem In this chapter we discuss the X>n-martingale problem for pseudo-differential operators with negative definite symbols. For this we need a deeper understanding of probability measures on the Skorohod space and consequently Section 4.1 is devoted to this issue. We discuss first probability measures on general metric spaces. After having studied the Prohorov metric we prove Prohorov's theorem on the tightness of families of probability measures. This result is then applied to the Skorohod space. In particular the importance of the compact containment condition is investigated. In Section 4.2 we derive existence results for the Pn-martingale problem for some classes of pseudo-differential operators. The main result states that if q(x, £) is uniformly bounded with respect to x and satisfies q(x, 0) = 0 for all x, then we get always a solution to the •Dn-martingale problem for —q(x,D). However, in order to obtain a Markov process we need well-posedness and in Section 4.3 we discuss a uniqueness criterion for the martingale problem. We proceed in two steps. We first give a general result and then reduce this to a criterion for a given pseudodifferential operator. Essentially we must solve a backward "heat equation" to get uniqueness. After having investigated a localization procedure in Section 4.4, in Section 4.5 we prove the well-posedness of the Dn-martingale problem for a large class of pseudo-differential operators. This result, Theorem 4.5.12, is due to W. Hoh and a cornerstone of the whole theory. In the final section of this chapter, Section 4.6, we give sufficient conditions in order that the Markov process associated with a pseudo-differential operator by the martingale problem is a Feller process.
158
4.1
Chapter 4 The Martingale Problem
Probability Measures on P n ([0, oo))
As pointed out in the introduction to this chapter and in Section 3.6 in order to handle the martingale problem for pseudo-differential operators we need to study families of probability measures on the complete, separable metric space Vn ([0, oo)). Therefore, in this section we will first study families of probability measures on complete separable metric spaces and then we will have a closer look at probability measures on 2? n ([0,oo)). In our presentation we follow the monograph [98] of St. Ethier and Th. Kurtz, sometimes we use the remarks in W. Hoh [150] and [155]. In the following let (S,d) be a metric space and denote by M\(S) the probability measures on 5. As usual in case of a metric (or topological) space the underlying cr-field is always the Borel-
y€F
(4.1)
J
We introduce the Prohorov metric p on M^S)
by
p(P, Q) := inf{e > 0 ; P(F) < Q(FE) for all F e C}. Proposition 4.1.1. The Prohorov metric p is a metric.
(4.2)
4.1 Probability Measures on Vn ([0, oo)) Proof. We prove first that for P,Q £ Ml(S) P(F) < Q(Fa) + 0
159 and a,0 > 0 the inequality
for all F € C
(4.3)
for all F&C.
(4.4)
implies Q{F) < P{Fa) + 0
For this take first Fi <E C and let F 2 := S\F?. Fi C 5\F 2 a . Therefore by (4.3) with F = F2
It follows that F2 G C and
P(F?) = 1 - P(F2) > 1 - Q(F?) > 1 - Q{F?) -0>
Q(Fi) - 0,
(4.5)
and we get (4.4) with F — i"\. Now we can easily check that p is a metric: The symmetry of p is now trivial, i.e. p(P,Q) = p(Q,P) holds for all P,Q € M j ( 5 ) . Further, p(P,Q) = 0 implies P(F) = Q(F) for all F e C, hence for all F € a(C) = B(S), i.e. P = Q. Since P = Q implies trivially that p(P, Q) = 0 we have proved that p(P, Q) = 0 if and only if P = Q. In order to see the triangle inequality take P,Q,R£ Ml{S) such that p(P,Q) < 6 and p(Q,R) < e. Then it follows for all F G C that P(F) < Q{FS) + 6< Q(F*) + 5 < R{W)£) + 6 + e s+£
< R(F
(4.6)
) + 6 + e,
i.e. p(P, R) < 6 + e implying the triangle inequality for p.
•
Without proof we state Theorem 4.1.2. If the metric space (S,d) is separable then (A4l(S),p) is separable, and if in addition (S,d) is complete, then (Ml(S),p) is complete. For a proof we refer to St. Ethier and Th. Kurtz [98], p. 101. We want to investigate the relationship between convergence in the Prohorov metric with weak convergence of measures. Theorem 4.1.3. Let (S,d) be a metric space and let (Mfc)fceN, Mfc € Further let fj, <=Ml(S). A. Convergence o/(/Ufc)feeN to fi in p implies weak convergence, i.e. lim /o(/Xfc,/z) = 0
k—*oo
Ml(S).
implies for all
B. The following statements are equivalent
k—*oo J
J
160
Chapter 4 The Martingale Problem
1- (Atfc)fc6N converges weakly to fi; 2.
lim j ¥>d/ifc = / (pd/j, for all ip G
k—>oo
CU(S);
3. lim sup Hk(C) < /z(C)
/or aH closed sets C C 5 ;
^. liminf/ifc(f^) > M^O
/or a// open seis U C -S;
k—»oo
fe—>oo
5. lim /ifc(A) = /x(A) fc—>oo
for A € 5 ( 5 ) witt P(dA) = 0.
C. If (S, d) is separable then weak convergence implies convergence in the Prohorov metric p. Proof. A complete proof of Theorem 4.1.3 is given by St. Ethier and Th. Kurtz in [98], p.108-110. We will prove here only part A and part C using part B. A. For k € N let ek := p(fJ-k,v) + p With ip € Cb(S),
/ /•llvlloo
< /
/x({9>0 £fc )d* + ^IMIoo,
where we used the notation (4.1). Thus we find for all
fc—>oo
=y
7o
/•llvlloo
> tek)dt /•
M({V > t})dt = j tpdfi,
implying also limsup [(\\ip\\oo +
J
(4-7)
as well as limsup / (|M|oo -
^
(4.8)
4.1 Probability Measures on T>n ([0, oo))
161
From (4.7) we derive for tp > 0 0 < limsup / (pdfik < / yd/it fc->oo J
J
and (4.8) gives liminf / ?d/Xfc > / fdjj,, 7 fc-»oo i hence liminf / (pdfik = / pd/j, and further 0 < limsup /
it—»oo J
i.e. lim yd/Zfc = / ^ d / x for
by decomposing
For every closed subset C c 5 w e put Co := \JiEj ;l<j
0},
and note then Co5 e Q, and further we find for all k > k0 MC)<MCOS) + | ko proving part C.
D
162
Chapter 4 The Martingale Problem Now we introduce the concept of tightness.
Definition 4.1.4. Let (S, d) be a metric space. A. A measure P G Ml(S) is said to be tight if for each e > 0 there exists K C S, K compact, such that P(K) >l-e holds. B. A family V C Ai\{S) is called tight if for each e > 0 there exists a compact set K c S such that inf P{K) > 1 - e Pev
(4.9)
holds. As a first result we note L e m m a 4.1.5. For a complete, separable metric space (S, d) every P G M.\{S) is tight. Proof. Let (xk)ken be a dense sequence in S and take P G .M£(5). For e > 0 given choose Nv £ N, v G N, such that for v G N P(\jBh{xk))>\-^
(4.10)
fc=i
holds. The closure K of fl^N Ufc=i B\(xk) is compact and further
P(jir)>i-f;i7 = i- e .
• In the proof of Lemma 4.1.5 we used already the fact in a complete metric space a closed subset K is compact if and only if it is totally bounded in the sense that for every e > 0 there are finitely many open balls with radius e whose union contains K, compare W. Rudin [307], p.369. With these preparations we can now prove Prohorov's theorem. Theorem 4.1.6. For a complete and separable metric space (5, d) and a subset V C M-l(S) the following are equivalent: 1. V is tight;
4.1 Probability Measures on Vn([0, oo))
163
2. for every e > 0 there exists a compact set K C S such that
inf P(Ke) > 1 - e Per where Ke is defined according to (4.1); 3. V is relatively compact in
(4.11)
(Ml(S),p).
Proof. Obviously i) implies ii). Next we prove that ii) implies iii). The closure of V is complete since by Theorem 4.1.2 the space {M\{S),p) is complete. Thus it is sufficient to prove that V is totally bounded. For this, given 6 > 0 we have to construct a finite set Q C Ail(S) such that P C{Q; p(P, Q) <5 for some P £ Q}. Let 0 < e < § and K C S be a compact set such that (4.11) holds. Since K is compact there exist finitely many points xi,.. •, xn € K such that Ke C \J"=1
P>2£{XJ).
Fix
XQ
€ S and m > j ,
and denote by Q the family of all P G Ail(S) of the form (4.12) 3=0
where 0 < kj < m and 5^?=o ^j kj := [mQiEj)} for j = l,...,m,
=
Now, for a given Q £ V set
m-
with E, = B2e{xj)\[Jizl
B2£(xi)
and set
further k0 := m - £)" = ifc^.With P as in (4.12) it follows that
U
Q(F)
y^
B2e(Xj))+e
K(^fe))l |
n
|c
(4-13)
Fns 2 e (x 3 )^0
< P ( F 2 e ) +2e for all closed sets F C S such that p(P, Q) < 2e < 5. Finally we prove that iii) implies i). The set V is relatively compact, hence totally bounded and therefore given e > 0 there exists for n e N a finite subset Qn C Ml(S) such for some P G Qn}. By Lemma 4.1.5 for n € N that V C {Q; p(P, Q) < ^ we may choose a compact set Kn C S such that P(Kn) > 1 — ^hr for all P G Qn- Now, for Q G P given, we find for n G N a measure P n G Q n such that
g ^ ^ * 1 ) > Pn(Kn) - JL- > i _ JL.
(4.14)
164
Chapter 4 The Martingale Problem
Taking K to be the closure of Hn>i ^ » " + 1 ** follows that K is compact and oo
Q(A-)>l-52|- = l - e
(4.15)
n=l
proving i). D Without proof, compare [98], p.105, we state Corollary 4.1.7. Let (S,d) be an arbitrary metric space and let V C IfV is tight, then V is relatively compact.
M\{S).
In order to characterise the relatively compact subsets of Vn ([0, oo)) let us recall some notations from Section 3.3. For r\ : [0, oo) —> [0, oo) belonging to the class L, compare p. 76, let | M | L = sup l o g ^ " ^
(4.16)
and for w\,u)2 € 2?n([0, oo)) we introduced p(u>i, u>2,r],u) := sup|a>i(i Aw) — u>2(r](t) A u ) | A 1, u > 0, t>o
(4-17)
as well as dD(ui,L02) := inf (max(||»7||i , / r,£L^
e~up(ui,uJ2,ri,u)du)).
JO
(4.18) '
By Theorem 3.3.12 we know that the Skorohod space (P n ([0,co)),d£)) is a complete separable metric space, compare also [98], Theorem 3.5.6. Thus the Skorohod space is covered by Theorem 4.1.6. Let w G P n ([0, oo)) be a step function and define so(w) - 0,
(4.19)
sk{u) = inf{t > s fc _i(w); u(t) ^ w ( t - ) }
(4.20)
if Sfc_i(a>) < oo, and Sfc(w) = oo if Sfc_i(w) = oo. Lemma 4.1.8. Lei <5 > 0 and for F C R" compact define A(T,6) to consist of all step functions u> £ 23n([0, oo)) such that u(t) £ F for t > 0 and Sfc(w) - Sfc_i(w) > ^ /or eac/i k £ N /or w/jic/i Sfc_i(u>) < oo. Tfte closure of A(T,S) is compact in P n ([0,oo)).
4.1 Probability Measures on X>n([0,oo))
165
Proof. We need to prove that every sequence in A(T, 6) has a convergent subsequence. Given a sequence (wn)neN> vn € A(T,S), by a diagonalization argument we may obtain a subsequence (wm)TOgN such that for k € No we have either &) Sk(uJm) < °° for each m,
lim Sfe(w) = tk £ [0, oo] exists, and 771—>0O
lim w m (s fc (w m )) = : ak exists, m—•oo
or b) Sk{wm) = oo for all m. Now, since Sfc(u>m) — Sfc_i(o3m) > <5 for each /c > 1 and m for which s t - i ( w m ) < oo it follows that (wm)TOGN converges tow £ D n ([0, oo)) proving the lemma.
•
The classical Arzela-Ascoli theorem and its generalization to L p -spaces by A.N. Kolmogorov requires a type of uniform equi-continuity condition. In order to formulate a compactness result for £>n([0,oo)) we introduce a generalized modulus of continuity for u 6 P n ([0,oo)). Fix UJ <E X>n([0,oo)), 6 > 0 and T > 0. By Z(S,T) we denote all finite partitions 0 = t0 < ti < ... < tm < T < tm+i with m G N and inf (tj+1 - tj) > S. j=0,...,m
We define w'(w,5,T):=
inf
Z(6,T)
sup
s,t€[tjttj + l) j=Oy...,m (t0 tm+1)eZ(s,T)
|w(s) - w{t)\.
(4.21)
It is clear that <5 — i > W'{UJ,8,T) and T \-^> w'(ui,5,T) are non-decreasing functions, and an application of the triangle inequality yields v/(w1,S,T)
sup
0
U(t) - w2(*)|.
L e m m a 4.1.9. A. The function 6 — i > w'(w,6,T) holds limti/(w,<J,T) = O.
(4.22)
is right continuous and it
(4.23)
166
Chapter 4 The Martingale Problem
B. Let (u)n)neN be a sequence in 2? n ([0,oo)) and u> £ X>n([0,oo)) such that lim do(wn,Lj) — 0. Then for every 5 > 0, T > 0 and e > 0 we have
n—*oo
limsupu/(w n ,£,T) < w'(u>,6,T + e).
(4.24)
n—>oo
C. The mapping w — t > w'(u>,8,T) is Borel measurable. Proof. A. If Z(S, T) is admissible in (4.21) then for suitable 5' > 5 the partition Z{8', T) is admissible too which yields the right continuity of 8 t—> W'(LV, 5,T). Further, define T^ = 0 and for k <= N
T? = T?(«) := inf{i > r^-a ; |u;(t) - 0,(^)1 > 1 } if
T£!_1
< oo, and
T^
= oo if r ^ j ^ = oo. If now
0<J<min{rf+1-rf ; r f
(»?n)n€N, »7n € X, Such t h a t lim
sup
\rjn(t)
—t\=0,
n—too 0
compare also (3.81), and lim
sup
n-»oo 0
\wn(t)-u;(Tjn(t))\=O.
Now, with ujn(t) := w(rjn(t)) and <5n := sup (rjn(t + S) - rj n (t)) we find by o
,S,T)
n—»oo
< lim sup w' (w, 5 n , r]n (T)) "-*00 < lim sup w'{u, 8n\/8,T + e)
(4.25)
n—*oo
= w'(w,8,T + e) for all e > 0. C. First we claim that w ^
w'(u,8,T+)
is upper semicontinuous, hence
4.1 Probability Measures on Vn ([0, oo))
167
measurable. TH->
Indeed we have from part B and by the monotonicity of W'{W,6,T) that w'(w,6,T+) = luaw'((jJ,6,T + e).
But for every w £ T>n([0, oo)) and e > 0 sufficiently small it holds w'(u, 6, T) = lim w' (w, 6, (T - e)+) proving part C.
n
Theorem 4.1.10. For A C P n ([0,oo)) to be relatively compact it is necessary and sufficient that the following two conditions hold: 1. For every t £ + there exists a compact set Tt C W such that u)(t) £ Tt for all LJ £ A. 2. For every T > 0 limsupw'(w,(5,r) = 0
(5-+0u/SA
(4.26)
holds. Remark 4.1.11. A. It is actually necessary that condition i) holds for every T > 0, i.e. for T > 0 must exist a compact set TT C K™ such that w(t) £ TT for 0 < t < T and all u £ A, compare [98], Problem 16 on p. 152. B. Since we are mainly interested in the sufficieny of condition i) and ii) we do not provide a proof that these conditions are necessary. For this we refer to St. Ethier and Th. Kurtz [98], p.123-124. Proof (of the sufficiency of i) and ii)). Let A satisfy i) and ii) and let / £ N. We may choose <5; £ (0,1) such that supw'(u>,Shl)<-,
(4.27)
and we may further choose mi £ N, m; > 2, such that ^ - < Si. For T (() := U £ o I ) m ' r ^ L we denote by At = A(T^,6i)
as in Lemma 4.1.8
the family of all step functions u> £ T>n([0,oo)) such that uj(t) £ F^ and
168
Chapter 4 The Martingale Problem
Sfc(w) — Sfc_i(w) > 5 for each k £ N for which Sk-i(w) < oo, Sfc being defined by (4.19), (4.20) and Sfc(w) = oo if Sfc_i(o;) = oo. For w e i w e may find a partition 0 = i 0 < h < • • • < <»-i < Z < U < I + 1 < ti+i = oo with min (tj — tj-i) > Si such that max
sup
i<j<«*,te[tj_i,t3)
2 |w(s) - w(<)| < y '
(4.28)
holds. Next we define u>' £ Ai by W'W = W
(M±1)
,ti
It follows that sup \w'(t) - w(t)| < I and further 0
r°°
dD(Lj',uj)< /
Jo 2 ,
e~usup(\u;'(tAu)-uj(tAu)\Al)du
t>o 3
( 4 2 9 )
For every / it follows that A C Aj, hence A C D/eN A' • ^ o w t n e compactness of each A/, compare Lemma 4.1.8, entails that A is totally bounded, hence it is relatively compact.
•
We want apply Theorem 4.1.10 to certain solutions of the P n -martingale problem, compare Definition 3.6.9. More precisely, for a certain (infinite) parameter set 7, for each a € I a probability measure Pa on £>n([0, oo)) will be given and we want to know whether the family (Pa)aei is tight or relatively compact. Note that each probability measure Pa determines a stochastic process with state space R n by considering the projection Xt : X>n([0, oo)) —> R", u> >-> u(t), as random variables. Theorem 4.1.12. Let (Pa)a£i, Pa £ Mf(Vn([0,oo))) be a family of probability measures. This family is tight if and only if the following two conditions hold: 1. (Compact containment condition) For every TJ > 0 and T > 0 there exists a compact set KT,V C Mn such that inf Pa({LJ
e Vn([0, oo)); w(i) £ KTit, for allO
4.1 Probability Measures on Vn ([0, oo))
169
2. For every r) > 0 and T > 0 there exists 5 > 0 such that supPa({veVn([0,o6));w\tJ,6,T)>ri}) v
aei
(4.31)
'
Remark 4.1.13. Note that (4.30) is equivalent to sup Pa ({u e Vn ([0, oo)); w(t) $ KT,V for some 0 < t < T}) < rj. (4.32) Proof. The necessity follows from Theorem 3.3.12, Theorem 4.1.6 and Theorem 4.1.10. Now, let £ > 0 and let T & N such that e~T < §. We choose 5 > 0 such that (4.30) holds with rj = f. For m > j put if := U ^ ^ e 2 - i - 2 , J - anc ^ note that inf P Q ( { w ( - ) £Ki;j
= 0,.. .,mT})
>1- J .
(4.33)
With the notation of Lemma 4.1.8 put vl := yl(r,<5) and observe that A has a compact closure. For UJ € T>n([0, oo)) such that W'(UJ,S,T) < f and ^ ) 6 J f f , j = 0 , . . . , mT, we choose 0 = to < *i < • • • < *m-i < ^ < tm such that min (tj — tj-i) > 5 and l<j<m
max
sup
l<J
|w(s) — w(t)| < —.
(4.34)
4
Now select y^ £ if such that |w(^) — yj| < | , j = 0 , . . . , m T , and define S ( t ) =
W i H i
.*i-i<*<*i.J = l
m-1
(435)
We find LJ e A and sup |w(t)—5(£)| < f implying that do(u;,a;) < f + e~ T < 0
£
e, i.e. u) G A . Therefore we get inf Pa({u(t)
G A£}) > 1-e and an application
of Theorem 3.3.12 and Theorem 4.1.6 yields the result.
•
We will use later on a further criterion for relatively compact sets in Vn([0,oo)) which again is taken from [98]. Let us first fix some notations. For x,y £Rn we p u t q(x,y)
:= \x-y\Al
a n d for (3 > 0 we write q&(x,y) for
(| a; - y\ A I)' 3 . Since in the following results conditional expectations will be used we will now use the projections Xt on P n ([0,oo)), Xt(uj) = u>(t), which
170
Chapter 4 The Martingale Problem
we will interpret as random variables. Further, if Pa is a probability measure on D n ([0, oo)) the expectation with respect to Pa is denoted by Ea. In the following on P n ([0,oo)) we will consider the canonical nitration {J^)t>o and by S0(T) we denote the family of all discrete (^"°)-stopping times bounded by T. Theorem 4.1.14. Let (Pa)aei be a family of probability measures on P n ([0,oo)). Equivalent to the relative compactness of (Pa)a€l ? s each of the following conditions: 1. For every T > 0 there exists p > 0 and a family of measurable mappings IS • £>n([0, oo)) —> [0, oo), 0 < 8 < 1, such that limsup£; a (7 ( 5) = 0,
(4.36)
i5-*0ae/
as well as Ea(q0(Xt+u,Xt)q0{Xt,Xt-v)\f?) Pa-a.s.,
< Ea{ls\T°t)
(4.37)
and further
lim sup£ a (/(X t ,X 0 )) = 0.
(4.38)
t—>ooa€l
2. For every T > 0 there exists S > 0 such that Ca{8):=
sup
sup £ " ( sup g^(X T + U ) X T )^(X T ,X T _,,))
rGSo(T) 0<«<<5
(4.39) (4.39)
0
is defined for 0 < S < 1 and all a £ I and satisfies lim sup CQ (£) = 0 . c5-»0 ael
(4.40)
In addition (4.38) is supposed to hold. The proof of this result requires some technical preparations which are worked out in detail in St. Ethier and Th. Kurtz [98], Sections 3.6-3.9, and for this reason we do not repeat the proof here. The next two results, the compactness results we will finally use, are in principle again from [98], namely Lemma 3.9.1 and Theorem 3.9.4. But we will take them in the formulation of W. Hoh [155], Lemma 3.9 and Theorem 3.10.
4.1 Probability Measures on Vn ([0, oo))
171
Theorem 4.1.15. Let {Pa)aei, Pa G M^(T>n([0,oo))), fulfill the compact containment condition, see Theorem 4.1.12, part i). Further let D C Cb(M.n) be a subspace dense with respect to uniform convergence on compact sets. For f G C(,(Mn) consider the real-valued cadlag process (/(^t)) t > 0 and denote by Pf,a G A^i"(£>i([0, oo))) the image measure of Pa induced by f. If for every f G D the family (Pf,a)aei is tight in Mf(Vn([0,oo))) then (Pa)aei is tight. Proof. We first show that if (P/ jQ ) a6 j is for all / 6 D tight, then (P/, Q ) Qe j is for all / G C&(IRn) tight. Given / G Ci(lRn) choose a sequence (fn)n€M, fn G D, such that (/n)neN converges uniformly on compact sets to / . For T > 0 and e > 0 by the compact containment condition there exist compact sets KT,e C Kn such that M r , £ := {u> G X»n([0, oo)) ; w{t) G # ? > for all 0 < t < T + 1} satisfies for all a G / Pa(Mr,e)>l-|.
(4.41)
For u sufficiently large it holds sup \f{x) — fn(x)\
< | and therefore, by
x£KT,c
(4.22), we get for these n and 0 < S < 1 sufficiently small Pf,a{{w'(;6,T) > e}) = Pa{{w'(f(X.),6,T) > e}) < Pa({w'(f(X.),8,T) > E} n MT,e) + Pa{Mle) sup \f(Xt)-fn(Xt)\>}nMTie)
<Pa{{w'(fn(X.),6,T) + 2
0
£
<Pa{{W'(fn(X.),S,T)> -})
+ £6
+~
= -P/n,a(M-,«,T)>|}) + | < e , where we used in the last step the tightness of (P/ n , Q ) a e / and Theorem 4.1.12 part ii). It follows that (Pf,a)aei also satisfies condition ii) of Theorem 4.1.12 and of course it fulfills the compact containment condition. Thus by Theorem 4.1.12 the family (P/, Q ) a € /, / G Cb(Rn) is tight. We apply the latter result now to the bounded and continuous function x H-» \x — z\ A 1 where z G Mn is fixed, and we will prove the tightness of (Pa)aei by using Theorem 4.1.14 with j3 = 2. For this let e > 0, T > 0 and KT,E , MT,E be as above. By compactness there are points z\,..., z^c G KT,E
172
Chapter 4 The Martingale Problem
such that the open balls BE{zi) cover Kx,e- Therefore, for y G KT,E there exists i e { 1 , . . . , NE} such that q(x, V) < q{x, zj + q(y, Zi) < \q{x, zt) - q(y, Zi)\ + 2e holds for all x e R™. Thus for 0 < t < T, 0 < <5 < 1 and 0 < u < S, 0 < v < 6At we find q2(Xt+u,Xt)q2(Xt,Xt_v) <
max
<
q(Xt+u,Xt)q(Xt,Xt-v)
{\q{Xt+v.,Zi)-q(Xt,Zi)\\q(Xt,Zi)-q(Xt-v,Zi)\}
i=l,...,Nc
+ 4(e + e2) + XM^C <
(4.42)
max w'{q(X.,Zi),26,T+l)Al
t=l,...,JV e
+ 4(e + e2)+XMi
= ls, where we used the fact that w'(-,25,T + 1) is calculated by taking only into account the oscillation of the path on intervals of length not smaller than 25. Note that at least one of the intervals [t — v, t) or [t, t + u) is completely contained in such intervals and therefore (4.37) holds with 7,5 as above. Given r\ > 0 we fix e > 0 and therefore iVe such that
holds. By Theorem 4.1.14 and 6 > 0 sufficiently small it follows that
supSQ(W'(g(X,^).2^r+l)Al) < -Jr for i = 1 , . . . , Ne. Now (4.41) and (4.42) yields supEa(l6)
(4.43)
a€l
implying (4.36) since r\ > 0 was arbitrary. By the definition of w' for 0 < t < T and e > 0 we find that q2(Xt, XQ) < q(Xt, XQ) < max \q{Xu i=l,...,Nc
<
Zi)
max w'(q(X.,Zi),t,T)+2£ i=l,...,Ns
- q(X0, zt)\ + 2e + XM$.
+ XM%c-
4.1 Probability Measures on Vn ([0, oo))
173
Arguing as above with Theorem 4.1.14 and (4.41) we finally arrive at
lira sup Ea{q2{XuX0))
t->0a£7
thus (4.38) holds implying that (Pa)aei is tight.
=0, •
In Section 3.6 we discussed already some idesa related to the X>n-martingale problem. In particular we have shown that if the X>n-martingale problem for (A,D(A)), (A,D(A)) being an operator in Coo(Kn), is well-posed, then we may associate a Markov process ((Xt)t>o,PM) with (A,D(A)) and a given initial distribution fi. In order to prove that for certain operators the T>nmartingale problem is indeed well-posed we will need the following tightness result, compare St. Ethier and Th. Kurtz [98], Theorem 3.9.4, which we take once again from W. Hoh [155], Theorem 3.10. Theorem 4.1.16. Let D C Cb(M.n) be a subalgebra being dense with respect to uniform convergence on compact sets. Further let (^(Aa,D)s)aeI be a family of linear operators in C^IR") such that sup||A Q /|| 0 0
(4.44)
holds for all f G D. If for each a £ I the measure Pa £ M^(T>n([0,oo))) is a solution to the Vn-martingale problem for Aa and if (Pa)aei satisfies the compact containment condition, Theorem 4.1.12 i), then (Pa)aei is tight. Proof. By Lemma 4.1.15 it is sufficient to check that for all f £ D the process {f (Xt)) t>0 S^ve r ^ se to a tight family of distributions (P/ !Q ,) ag / in Ml(T>i([0,oo))). We introduce the notation Xf : £>i([0,oo)) -> R for the canonical projection Xt : 2?n([0,oo)) —> Kn when n = 1, and further we put Jf := a(Xf ; s < t) and TM = a(Xf ; t > 0). For / £ Cb(Rn) we consider the induced mapping / : Vn ([0, oo)) —> V\ ([0, co)) , W H / O W , which is T- J * as well as Ji-^f-measurable and P/, a is the image of Pa under / . Now we will use Theorem 4.1.14 to prove the tightness of (P/ >Q ) a£ /. Since (Pa)a&i satisfies the compact containment condition and / is bounded it follows that (Pf,a)aei also satisfies this condition. We want to verify (4.36)-(4.38) in Theorem 4.1.14. For this take T > 0 and 0 < 5 < 1. For every A £ Ff, 0
174
Chapter 4 The Martingale Problem
and 0 < u < 6 we have
/ (Xf+U - X?)2dP/>Q = / JA
(Xf+U o / - Xf o f)dPa
Jf~1(A)
= / (/(**+„) - /(X t )) 2 dP Q Jf'HA)
= f
Ep°{(f(Xt+u) -
(4.45)
f{Xt)f\Tt)APa.
Jf-HA) Using the fact that Pa is a solution for the Pn-martingale problem for Aa and that f,f2 S D we find further PQ-a.s. that
Ep°((f(Xt+n)-f(Xt))2\rt) = Ep" {f(Xt+u) - f{Xt)\Tt) - 2f{Xt)Ep° (f(Xt+u) - f(Xt)\Ft)
a
t+U
pt+U
Aa{f){Xs)ds\Ft) - 2f(Xt)Ep" [J^
Aaf(Xs)ds\Ft)
< S\\Aa(f)U + 2||/||oo SWA.fU < CfS, (4.46) where Cf is independent of a. Thus by (4.45) we arrive at EP'-» ((Xf+U - Xf)2|J?) < CfS which yields (4.36)-(4.38) for (Xf)t>0 with (3 = 2 and 7,5 = cfS. Thus by O Theorem 4.1.14 it follows that (P/, Q ) a 6 / is tight for all / G D. Remark 4.1.17. There is no problem to state and prove Theorem 4.1.16 when M.n is substituted by a suitable metric space. In particular W& will do, compare [98].
4.2
Existence Results for the P n -Martingale Problem for some Pseudo-Differential Operators
The purpose of this section is to establish the existence of a solution to the Pn-martingale problem when A is a certain pseudo-differential operator. For this let us recall Definition II.2.3.1: A function q : Rn x Kn —> C is called a continuous negative definite symbol if q is a continuous function and for each x G W1 the function q(x, •) : W1 —> C is negative definite. As usual
4.2 Existence Results for the ©n-Martingale Problem
175
we associate with a continuous negative definite symbol the pseudo-differential operator q(x,D) defined on C£°(R") by q{x,D)u{x) = {2ir)-i [
efa-««(a;,O«(O^.
(4-47)
The main result of this section is Theorem 4.2.1 (W. Hoh). Let q : Rn x M" -> C be a continuous negative definite symbol such that q(x, 0) = 0 for all i £ R " and \q(x,Z)\ < co(l + lei2),
x G Kn and £ € Rn,
(4.48)
where CQ is independent of x and £. Tftera for all initial distributions y. e ,M£(Rn) f/iene exists a solution to the Vn-martingale problem for —q(x, D). Remark 4.2.2. Note that (4.48) has the interpretation that the "coefficients" of q(x, D) are uniformly bounded. This condition is also sufficient to guarantee that q(x,D) maps Cfi°(Rn) into C6(K"). Indeed, the continuity of x — t > q(x, D)u{x) is clear since x H-» q(a;, ^) is assumed to be continuous and u G 5(M"). The boundedness of q(x, D)u follows from \q(x,D)u(x)\ = (27r)-*| /
ete-«g(i,$)G(^)de
176
Chapter 4 The Martingale Problem
from the pseudo-differential operator representation of — q(x, D) to its LevyKhinchin representation. We start our preparations by discussing the solvability of the martingale problem for operators of type Ku{x) = X f
(u{y) - u{x))n{x, dy), A > 0,
(4.49)
where fi(x, Ay) is a kernel on R n x B^ such that /x(x,M") < 1, i.e. each measure n(x,-) is a sub-probability measure. If necessary passing from K n to R^ and substituting JU(X, dy) by fi(x, dy) + (1 - [i(x, {A})e{dy) we may assume for simplicity that n(x, •) is always a probability measure. The operator if is a bounded oeprator on Bf,(Mn) which satisfies the positive maximum principle. Further it generates on Bb(M.n) a strongly continuous semigroup by oo
Ttu:=etK = J2^(tKyU.
(4.50)
Introducing the operator
Tu(x) = I u(y)[i(x,dy) and noting that u{x) = f u(x)fi(x, dy) we find that K
= A(r - id),
and therefore (4.50) becomes
TtU = f y A t ^ - P .
(4.51)
From (4.51) it is also clear that Tt is positivity preserving. Comparing K with the operator (3.212) it should be possible to associate with K or (Tt)t>o a Markov process which has a certain similarity to a compound Poisson process, see Definition 3.7.14. A detailed existence proof of such a process is given in St. Ethier and Th. Kurtz [98], p. 163-164, we just describe briefly the construction. Let (Nt)t>o be a standard Poission process with parameter A > 0 and let (ll)ieNo be an Rn-valued independent Markov chain with initial distribution /xo and transition probability /j,(x, dy), i.e. P(YQ 6 A) = Ho{A) and
P(Yk+1£A\Y0,...,Yk)
= fi(Yk,A).
4.2 Existence Results for the Vn-Martingale Problem
177
We define the process {Zt)t>o by (4.52)
Zt:=YNt.
As proved in [98], {Zt)t>o is a Markov process with initial distribution /i 0 , and it holds for all u G Bb(Rn) and s,t>0 a.s.
E(u{Zt+s)\F?)=Tsu{Zt)
(4.53)
where {^Ff)t>o is the canonical filtration for (Zt)t>o- In particular, (Zt)t>o is associated with (Tt)t>o in the usual way, i.e. Ttu(x) = E{u(Zt)) for all u G Bb(Rn).
Now we claim
Proposition 4.2.3. Let K with domain Bb(M.n) be defined by (4.49). Then for every initial distribution JJLQ £ Ail(M.n) there is a solution to the martingale problem for K. Remark 4.2.4. As indicated before, instead of W1 we may work on R^, in fact the whole argument works for every suitable metric space. Proof of Proposition 4.2.3. (compare W.Hoh [155]J. By construction the process (Zt)t>o has cadlag paths and Pz0 = (J.Q- We prove that for u £ BbQ&n) an (Jrtz)-martingale is given by
(u(Zt) - [ (Ku)(Zs)ds) v
./o
(4.54)
.
/ t>a
This will imply that the distribution of (Zt)t>o on the path space, i.e. the distribution of Z : Q —> D n ([0, oo)), W H ^ H Zt(u)), is a solution to the martingale problem. Using properties of the strongly continuous semigroup (Tt)t>o, compare especially Lemma 1.4.1.14, we find for 0 < ii < t2 and u G Bb(Rn)
E(u{Zt2) - J
= Tt2-tMZtl)-
I* Ts-ti{Ku){Ztl)ds ~
[\Ku)(Zs)ds
^ Jo
' Ts(Ku)(Ztl)ds
[\Ku)(Zs)ds
[\Ku)(Zs)ds
a.s.
= Tt2-tlu(Ztl)= u(Ztl)-
*(Ku)(Zs)ds\ftf)
Jo
Jti
Jo
-
Jo
178
Chapter 4 The Martingale Problem
and the proposition is proved.
•
We do need also a pertubation result which we take from St. Ethier and Th. Kurtz [98], Proposition 4.10.2, p.256, in the formulation of W. Hoh [155]. For the more involved proof we refer to [74]. As usual we formulate the result for K n but we will use it later on in more general situations. Proposition 4.2.5. Let A be a linear operator on Bt.(M.n) such that the martingale problem for A is for every initial distribution solvable. Further let K be given by (4.49). Then the martingale problem for A + K is also for all initial distributions solvable. Proposition 4.2.6. Let •& £ 5(M"), 0 < d < 1,tf(0)= 1, be an even function and let q : K™ x R" —> C be a continuous negative definite symbol with LevyKhinchin representation n
n
fc,J=i
i=i
+/
(4.55)
(l-e-**- T ^| 5 W,dy),
VR"\{O}V
i + lJ/r^ an
where a,ki = aik '• ^™ ~* K d bj : M.n —> M are continuous functions and £fei=i aki(%)€k£i > 0. Further, for x £ R™\{0} fixed the Levy kernel fj,(x,dy) satisfies
I
TXTi2^ a: ' dj ') <00 -
7K"\{O} i + \y\
We define q?(x,0 = (2*)-* [ {q{x,S + TJ)-q(x,rj))d(Ti)dri
(4.56)
and qt(x,t)
= (2n)-1
[ {q(x,Q-q(x,Z
+ Ti) + q(x,Ti))d(Ti)dri.
(4.57)
Then qf, q^ : W1 ~x M.n ^> C are continuous negative definite symbols and it holds
q(x,t) = qt(x,O + qt(x,Z)
(4.58)
4.2 Existence Results for the Z?n-Martingale Problem
179
as well as n
n
fc,i=i
3=1
VR\{O} V
(4.59) -1- + 12/1
y
and
«2 (*, 0 = /
(1 - e" i y 4 ) (1 - (y)) M(i, dy),
(4.60)
where bj(x) = - / K n V{0} (l - ^(yJJiqfjj^M^.dy).
Proo/. First note that for a; € K, K C Mn compact, we have |g(a;,f)| < C^r(1 + |^|2) implying that the integrals in (4.56) and (4.57) exist and define continuous functions leading to the decomposition (4.58) of q(x, £) — note that
(2TT)-*
/
6{r,)dr, = F~1{d){0) = -d(0) = l.
Once we have proved (4.59) and (4.60) it is obvious that qf and q$ are continuous negative definite symbols. Using a Taylor expansion, compare also the beginning of the proof of Theorem 1.3.7.7, we find
1 _ e-iy((+v) _ iV(^ + V) _(-,__ e-iyn _ iyi 1 + M2 V l + \y\2)
^ l ^ i i C i + lc + ^ + l ^ ^ T ^ d + lvl8)-
\
180
Chapter 4 The Martingale Problem
An application of Fubini's theorem yields now (2*)"*/ /
(l-e-^)-^+^
JR"\{O}JR^X
1 + 12/1'
>/R-\{O}
i + \y\
(4.61) Since 1 — •&(—y) vanishing at 0 of order 2 the second integral exists and we define
W =~ I
(4.62)
(l-&(-y))^^^x,dy).
V/K™\{0}
! + 12/1
Further observe for f = ( ^ , . . . , £ n ) £ K" and ?? = (771,..., r]n) £ K" that (27r)-t f ((Cfc + Tjfc)(6 + »7l)-»)fc»?l)^(rJ)d»J VR" = &&0(O) - t€fc(ft)(0) - i^i(d^)(0)
= Cfc6
where we used that grad$(0) = 0. In addition we find (2TT)-* / (fe- + r?,) - v^i^dr] = Zj0(O) = fr Thus it holds
JRn
f / " " (27r)"f / ( J2 aki(x)(tkti + VkVi) +iYJbj{x){£i •/Kn
fc,/=i n
n
- ^ akl{x)r]krji - iY^bjixjrij^ViriJdr) n
n
fc,/=i
j=i
+ rjj)
j=i
(4.63)
4.2 Existence Results for the Dn-Martingale Problem
181
Taking into account that tf(-ry) = 19(77), from (4.61), (4.62) and (4.63) we deduce finally (4.59) and (4.60).
•
Theorem 4.2.7. Let q : M™ x M™ —> C be a continuous negative definite symbol such that q(x, 0) = 0 and the Levy-Khinchin representation (4.55) holds. Further let d G C£°(R") be an even function such that 0 < i9 < 1 and i?(0) = 1. Decompose q{x,£) according to Proposition 4.2.6 as
(4.64)
q(x,Z) = qt(x,Z)+qi(x,O. Then -qf(x,D) maps C^°(M") into C0(Rn) operator of form -qt{x,D)u{x)
= f
(u(x -y)-
and -q$(x,D)
u(x))Jl(x,dy),
JE"\{0}
is a Levy-type
u
G CO°°(R"),
(4.65) where the Levy-kernel Jl(x, dy) satisfies ji(i,R"\{0})
(BeqNL(x,S))v(d£)
(4.66)
Here qNi,{x,€) denotes the non-polynomial part of q(x,£) and v is the finite measure defined by
compare the proof of Lemma 1.3.7.2. Proof. We know already that qf (x,£) is a continuous negative definite symbol and therefore qf(x,D)(p is for each cp € Co°(K") a continuous function. It remains to show that qf(x,D)
-qf(x,DMX) = f^Jv{x
- y) - „(*) + ±
-M^^.)miiM)
182
Chapter 4 The Martingale Problem
= / (p(x-y)d(y)[i(x,dy). JRn\{o] We use that supp $ is compact, which implies that supp
we find with Jl(x,dy) — (l — $(?/))/i(:r,ch/) the representation (4.65). Since 1 — •& is non-negative,bounded by 1, and vanishes of order 2 at the origin we get
and therefore we derive
Jl(x, R"\{0}) < a, f
7 X T ^ ( z , dy)
VR"\{O>
= c^ /
JR"
+ \y\
/
JRI\{O}
X
(1 - cos y • €)v{d£)(j.(x, dy)
JW-
ReqNL(x,£)i>(d£)
< oo,
proving the theorem.
•
We now extend the operator -qf(x,D), an operator acting on functions n defined on M. , to an operator Ad acting on functions defined on the onepoint-compactification R £ of E". Recall that u e Coo(Rn) can be extended to Cb{RX) = C ( R A ) b y defining u(A) = 0. Thus we may consider Coo(K n ), hence C£°(R n ) and 5(R"), as subspaces of C(R^). With q{x,$,) and & as in Theorem 4.2.7 we define on the Banach space (C(R^, ||.||oo) the operator A# by D(M)
•= W e C(Rl);
(ip(-) - ip(A)) e C0°°(Rn)}
(4.67)
and
A.rtX):=H<X>D)«*-«A»MM [0
>XGRn ,x = A.
(4.68)
4.2 Existence Results for the £>n-Martingale Problem
183
According to Theorem 4.2.7 the operator A$ maps D(A$) into Co(R"), hence into C0R2O which implies that we may consider (Ag,D(A#)) as an operator on C(R£). Note that D(A&) is dense in C(R£). Further the function XM£, i.e. the function x — i > 1 for all x £ M^, belongs to C(IR^). In fact this function belongs to D(A#) since XRJC 1 ) ~ X K ^ ( ^ ) = 0 for all a; £ K^. Hence ^4^XR^ is defined and gives for i g l " (AdXRl)(x) as well as (j4,9X]Rn)(A)
=
AoXKi = A»l = 0.
= -q?(x,D)(Q) = Q,
0, i.e. we have (4.69)
In addition, the operator (Atf,D(A$)^ satisfies the positive maximum principle. Indeed, since K^ is compact, ip obtains its supremum. Let tp(x0) = ma.xip(x) > 0. If x0 = A, then (A#(p)(x0) = 0, but for x0 £ Rn zeR£ it follows that max(<^(a;) -
184
Chapter 4 The Martingale Problem
In our application we will take as fi the set K^ with the Borel cr-field and as metric space Ml(M.%). Proposition 4.2.10. Let (A9,D(A^)) be as defined (4.67) and (4.68). There exists a sequence of kernels fik on R^ x S(M^),/ifc(a;,K^) = 1, such that for all tp G D(A#) and uniformly on R ^ it holds k /
(
> A#tp(x).
(4.70)
Proof, (compare W. Hoh [155],). Before going into details recall that we know already an approximation procedure for the generator of a strongly continuous semigroup by bounded operators: the Yosida approximation, see Theorem 1.4.1.29. Thus we would like to use the operators k(R$)kAtf, where (R$)k denotes the resolvent of A$ at k, and try to find an appropriate kernel representation for them. Since A$ satisfies the positive maximum principle on C(R^) it is dissipative, compare Lemma 1.4.5.2, hence k — A$, k 6 N, has a continuous inverse which is an operator in C(R^) but which need not necessarily be densely denned. On the range R(k — A$) of k - A# we define for x G R^ and k G N fixed the linear functional 1% by
Zg(v>) : = * ( * - 4 > ) - V ( * ) Since A$ is dissipative we find
Ufc(v)l < l|fe(*= - A*)-Vll«x, < HvllooFurther we have 1 = (k — A#)(^) G R(k — Ad), recall that A$l = 0, and therefore l%(l) = 1. In addition for
ZfcM = ^(IMIoo) + /£(¥>-IMIoo) >IM|oo-||(V-|M|oo)||oo>0.
Thus we find that 1% is a positive linear functional of norm 1 defined on R(k Atf) C C(W&). A variant of the Hahn-Banach theorem, compare Theorem 2.3.1, gives the existence of a (not necessarily unique) positive linear functional of norm 1 on C(R^) extending If.. According to the Riesz representation theorem there exists a probability measure /ijF £ AfJ(R^) such that for all
A*)
lUv) - /
^(yK(dy)
(4.7i)
4.2 Existence Results for the Z>n-Martingale Problem
185
holds. Clearly /ijF depends on the extension of 1%. Now, let
Ml := U G MlQBLl) ; l%(
The aim is to get for fixed A; G N a kernel ^(x, dy) on (R£ x S(R^) such that for each a; e M^ it holds /ife(a;, •) G M£. We want to apply the measurable selection theorem, Theorem 4.2.9, where fi = R^ equipped with the Borel
lim
m—>oo
lim k(k - Ao)~ V(z m )
m—»oo
'fcm(v) = lim /
m—>cx> 7 K "
p(y)Hm(dy) = /
JK
(p(y)noo{dy),
i.e. Hoo G Ml, proving that { i € l ^ ; M£ n C ^ 0 } is closed. Finally, for k G N we fix a kernel fik(x, dy) as above and for cp G D(A$) it follows that / = T. \ =-ll((k
K
= V(T) + T /
(A#ip)(y)nk{x,dy)
(At(p)(y)iik(x,dy)
K ,/Rn
(i4*v»)(i/)/ifc(a:, dy).
186
Chapter 4 The Martingale Problem
Since A$(p is bounded we find by our previous considerations that - / K
{A^ip)(y)/j,k(x,dy)
-> 0 uniformly on R £ ,
JR\
hence / v{y)^k{xAv) JRI
-*
uniformly on R^.
(4.72)
Since D(A$) is dense in C(R^) with respect to uniform convergence, we conclude that (4.72) holds for all ip G C(R£). Thus we get k
/ {f(y)-tP(x))fik(x,dy) JRI
=k
ip(y)nk{x,dy)-k(p(x) JR%
r
= /
A4(p(y)nk(x,dy)
which by (4.72) tends to A$ip as k —> CXD and the proposition is proved.
D
For the bounded operator A$ we can easily solve the martingale problem: Proposition 4.2.11. Let (Atf,D(A$)) be as in Proposition 4.2.10. Then for every initial distribution v £ . M ^ R ^ ) the Vn-martingale problem for A$ admits a solution P £ M.\^D^) Proof.(W. Hoh [155];. For k € N let Ak be denned by Ak
(4.73)
with the kernels /j,k(x, dy) as in Proposition 4.2.10. From Proposition 4.2.3 we deduce for every k €N and every initial distribution v that there is a solution to the martingale problem for Ak- Since Akip —> Pk € Ml(V^([0,oo))) A$ip as k —> oo uniformly for ip S £>(A^), it follows that sup ||j4fey||oo < ° ° feeN for all
4.2 Existence Results for the X>n-Martingale Problem
187
denote this subsequence once again by (Pk)keN- We want to prove that P solves the martingale problem for A$ and initial distribution v. First note that Xo : P K n ([0, oo)) —> W& is continuous implying that Pk o XQ- 1
k—»oo
> P o XQ- 1
in
Ml(K£)
which yields P o X " 1 = i/. It remains to check that
(Aw)(Xs)ds,t>0
Jo
is for all ip € D{A$) a martingale under P. This follows once we have proved that
/ ft2 ¥L \ Ep({v(Xt2) -
Ep« (Up(Xt2) -
Akip(Xs)ds) J ] hm(XSm))
= 0.
m=l
Jtl
The proposition is proved once we have shown that
a
t2
.
M
AW{Xs)ds J ] hm(XSm)) i
i
(4.74)
'
M
Atf^X.Jds JJ/i ro (X. m )J. 1
m=l
We know that (Afe<^)fcepj is uniformly bounded and converges uniformly to Atfip. Therefore we may interchange the order of integration in (4.74), i.e.
188
Chapter 4 The Martingale Problem
"E ft* = ft* E", and it remains to prove that M
M
m=l
m=l
lim Ep*{Akip{Xs) [ ] hm{Xs)) = Ep(AMXs) J ] M * O ) (4-75) fc
^°°
holds for all s £Tp. But the weak convergence of (Pfc)fceN yields P
M
M
P
lim £ *(A^(^) I ] M * O ) =E {AMXS) I ] M * O ) (4.76) and the uniform convergence of (Ak
lim Ep« ((At
fc
^°°
implying (4.75), hence the proposition.
(4.77)
m=l
•
Lemma 4.2.12. Let (Pk)k€N be a sequence of probability measures in Ail (2?n([0, oo))) which converges weakly to a probability measure P. Further put P(Xt- = Xt) = 1}. Tp:={t>0; Then T£ C [0,oo) is at most countable and for all t\,... ,tm £ Tp the finite-dimensional distributions (Xtl,... ,Xtrn)(Pk) converge weakly to (Xtl,...,Xtm)(P). Remark t o the proof. The convergence result is a bit more involved, a detailed argument is given in St. Ethier and Th. Kurtz [98], Theorem 3.7.8 on page 131. The statement that T£ is countable uses essentially Lemma 3.3.8, details are given in [98], Lemma 3.7.7. As final preparation for the proof of Theorem 4.2.1 we give Lemma 4.2.13. Let q : R" x R™ —» C be a continuous negative definite symbol satisfying (4.48) and q(x,0) — 0 for all x 6 W1. Then there exists a sequence (tpk)k€N, Vk G Co°(K"), such that both sequences {
4.2 Existence Results for the Pn-Martingale Problem
189
Proof. Take C £ i ( 0 ) and <^|B = 1. Now define
(l + \t\2)kn\
< c sup (1 + |£|2) f
(1 + |£|2)fc"|£(fc0|d£
kn\
|€|2fcn|fce|-(n+«d$
+ c" j
|^|-(n+1)d$,
where we used the fact that (p £ S(M.n) to get the estimate
l£(*OI<«-(n+3)
,l^l>i-
For k —» oo we arrive at sup |g(a;,D)pfe(a;)| < C, i.e. (g(a:,D)(/?fc)fceN is uniformly bounded. Now, for xo S K" fixed we find \q(x,D)
sup |g(a:o,OI /
<
sup \q(xo,O\ [ +c/
\q(xo,€)\kn\v(kQ\dS
f
kn\v(k£)\dti + c [ mtm
+ cf
(1 +|$| 2 )fc n |^(^)|dC kn\k$\~(n+Vd$
|^| 2 A; n |^r(" +3) d^
J|CI>i
< c ( sup 19(3:0,01 +-L(fc*-1) + _L), (4.78)
190
Chapter 4 The Martingale Problem
i.e. \q(x,D)tpk(x0)\
< c( sup \q(xo,S)\ + ^(k?
\(\<js
- 1) + - ^ ) .
k
k
(4.79)
'
Since q(xo,£) —•> 0 as £ —> 0 we deduce from (4.79) that q(x,D)
q(x,$)=qf(x,0+qi(x,0 according to Theorem 4.2.7 and denote by A$ the extension of —qf(x,D) : C0°°(R") -» C 0 (M n ) as given by (4.67), (4.68). By P e M\{V^([0, ([0, oo))) we denote a solution to the PR«-martingale problem for ^4^ with initial distribution ii e Ml(M.n) C Ml(W%.)- According to Proposition 4.2.11 such a solution exists. We prove next that almost surely the paths of this solution are in X>n([0,oo)), i.e. do not reach A in finite time. For this we define the (Ji+)-stopping times
rm := inf{t > 0 ; d(A,Xt) < ^ } ,m£Ff, where d is the metric on R^. For T > 0 define Zt := lim XTfnw,
Xs,
m—*oo
s > 0, denoting the projections on D^n ([0,oo)). It is sufficient to prove that for all T > 0 we have P{Zt e R n ) = 1. Take (ipk)keN as in Lemma 4.2.13 with the usual extension (p(A) = 0. We know that the sequences (pk)keN and (A^ipk)keN as functions on R^ are uniformly bounded and tend pointwise to XK" and 0, respectively, as k —> oo. Since the paths are right continuous we find that
~ Jo
a
A^k(Xs)ds)
sup (r m AT)
=
Ep(
(Awk)(Xs)ds)=Ep(
4.3 A Uniqueness Criterion for the Solvability of the Martingale Problem
191^
and as k —> oo we get
Ep{X^{Zt))
= Ep(XRn(X0))
= M(K") = 1,
thus we may assume that the martingale problem for A$ and /J, has a solution with paths in £>„([(), oo)), i.e. the Z>n-martingale problem for —qf(x,D) has a solution. According to (4.65) we have for ip € Co°(Rn) -qt(x,D)ip(x)= /
(ip(x + y)-(p(x))ji(x,dy)
= /
(
JI"\{0} JMn\{0}
and the Levy kernel /x consists of uniformly bounded measure since by (4.66) sup ||/Z(:r,-)|| < ci? SUP / zSR"
and further, by (4.48) we find
x€R JR"
sup f ReqNL(x,Qv(dt)
x€R" JRn
RegjvL(z,fMdf)>
n
< c [ (1 + |£|2)i/(d£) < oo. 7R"
Thus —qt{x, D) is a perturbation of —qf(x, D) in the sense of Proposition 4.2.5 implying that the T>n-martingale problem for —q(x, D) = —qf(x, D)—q$(x, D) is for every initial distribution solvable. • As pointed out in Theorem 3.6.10, we need to prove the well-posedness of the T>n-martingale problem for —q(x, D) in order to associate a unique Markov process with —q(x,D). Thus we have to establish the uniqueness for a solution of the X>n-martingale problem for —q(x, D). This is the topic of the next sections.
4.3
A Uniqueness Criterion for the Solvability of the Martingale Problem
In this section we discuss a general uniqueness criterion for the Pn-martingale problem, Proposition 4.3.1, and then we transform it into a criterion applicable to pseudo-differential operators, Theorem 4.3.2. As usual we work on £>n([0, oo)), but all arguments hold when R™ is substituted by a suitable metric space, in particular M^ is allowed. If P e
192
Chapter 4 The Martingale Problem
Ml(Z?n([0,oo))) and Xt : D n ([0,oo)) -> W1 is the projection Xt(u) = u(t), then P is determined by its finite dimensional distributions, i.e. by the family , for t\,..., tk S [0, oo). (Note that it is now more conveP o (Xt!,...,Xtk) nient to write (Xtx ,••••>Xtk) for the product mapping instead of (^) = 1 Xtj.) The following result is taken from W. Hoh [155] whose presentation relies on St. Ethier and Th. Kurtz [98], Theorem 4.42. Proposition 4.3.1. Let A : D(A) —> Bb(M.n) be a linear operator with D(A) C Cb(Rn). Suppose further that for all fi £ Ml(Rn) and all solutions Pi,P2 G A4l(T>n([0,oo))) to the martingale for A and n it holds P x o X^1 = P2 o Xf1
for all t > 0.
(4.80)
Then for every initial distribution there is at most one solution to the martingale problem for A. Proof. Let P, P' e M\ (•£>«([(), oo))) be solutions to the martingale problem for A both with the initial distribution v. In order to show P = P' it is sufficient £ Bf,(M.n) to prove that for all m £ N , all strictly positive functions fi,...,fm and all 0 < t\ < ti < ... < tm we have m
m
fc=l
k=l
Ep(j[fk(Xtk))=Ep'(j[fk(Xtk)).
(4.81)
We prove (4.81) by induction with respect to m. Note that the case m = 1 is just assumption (4.80). Assume that (4.81) holds for m e N and define the probability measures Pi,P2 £ A4l(T>n([0,oo))) by m
i
Pi(S) = Ep(xBoBtm) J ] fk(Xtk))/Ep(j[ fc=i
'
m
fk{Xtk))
(4.82)
fe=i
and m
I
P2(B) = Ep> ({XB oetm)Y[ fk(Xtk)) fc=i
m
Ep' (J[ fk{Xtk)\.
'
(4.83)
fe=i
Here B is a measurable subset of 2?n([0, oo)) and 9tm : P n ([0, oo)) —> Vn([0, oo)) is the measurable shift operator 0tm(oj)(t) — u(t + tm). Note that by our assumptions the denominators in (4.82) and (4.83) are equal. Since for
4.3 A Uniqueness Criterion for the Solvability of the Martingale Problem
193
C G S ( n ) the function xc = (1 + xc) - 1 is the difference of strictly positive functions belonging to B(,(Rn) we may apply (4.81) to find m
,
m
P1(X0 e C) = £p(xc(*tm) I I A ( * t j ) / £ P ( I I /*(x**)) fe=l
'
fc=l
771
i
171
- sp/ (xc^u) n / * M A p/ (n A(^*j) = P2(X0eC).
k=i
'
(4.84)
k=i
Moreover, for r G N, 0 < Sx < . . . < sr < sT+\ < sr+2, functions hi G Bb{M.n), I = 1 , . . . , r, and y? £ D(A) it follows that
^ P l ((
flhtist))
r+2+tm(A
(4.85)
Jsr+i+tm r
m
I
• n w x « + t j n /*(^*))
Ep{fk{xtk))=o
since 0 < t± < . . . < tm < si + tm < ... < sr + tm < sr+1 + tm < sT+2 + tm and P is a solution to the martingale problem for A. By the same reasoning we find
W M * S r + 2 ) - f(XSr+1) - r+\AV)(Xs)ds)f[hl(XSl))
= 0.
(4.86)
It follows that Pi and P^ are solutions to the martingale problem for A which by (4.84) have the same initial distribution .Using assumption (4.80) and (4.81) we get for all tm+1 = tm + t', t' > 0, and all fm+1 G Bb{Rn) m+l
EP(U
m
MXtk))=Epi(fm+1(Xt,))Ep(j[fk(Xtk))
fc=i fc=i
=
m
Ep>(fm+1(Xt,))Ep'(jlfk(Xtk)) k=i m+l
-Ep>(U
Mxtk))
fc=l
which is (4.81) for m replaced by m + 1 and the proposition is proved.
•
194
Chapter 4 The Martingale Problem
In order to formulate a uniqueness criterion to the martingale problem for a pseudo-differential operator q(x, D) let us recall some notions on function spaces. Let ip : Rn —> R be a continuous negative definite function and set as usual
\Hl,.=
I (l + iKO)*|S(£)|2d£
(4-87)
H^s(Rn)
= {ne S'(Rn);
(4.88)
and ||u||^, < co}.
We know that VKO > co|C|ro
(4.89)
for some c0 > 0 and r0 > 0 and all £ € R™, |£| > -R, will imply tfiM(Rn)
^ Coo(R") C Cb{Rn)
(4.90)
for all s > ^ , compare Theorem 1.3.10.12. For T > 0 fixed we denote by C([0, T]; ^ - " ( R " ) ) the space of all strongly continuous mappings u : [0, T) -> ff^' 5 (K") which is equipped with the norm sup ||u(i)||^ s a Banach space. 0
Further we need the space C 1 ([0, T]; H^'s(M.n)) which consists of all mappings it: [0, T] —> H^'s(W.n) which are strongly continuous and strongly continuously differentiable. The norm sup ||u||^,s + sup ||u'(t)||^, iS
0
0
turns C1 ([0, T]; # ^ s ( R n ) ) into a Banach space. Note that if (4.90) holds then we have a continuous embedding C([0,T];
tf^(R"))
-» C b ([0,r] x R").
(4.91)
Finally since C^°(R") C H^'s(Rn) we may consider C£°([0,T] x R") as a subspace of ^ ( [ O . T ] ; i/^> s (R n )), s is chosen such that (4.90) holds. Our aim is to prove Theorem 4.3.2 (W. Hoh [155]). Let q : R n x R " -> R 6e a continuous negative definite symbol and q(x, D) the corresponding pseudo-differential operator
4.3 A Uniqueness Criterion for the Solvability of the Martingale Problem
195
defined on C£°(R n ). Fix s0 such that (4.90) holds and assume that q{x,D) extends to a bounded operator q(x,D) : H^S0+2(Rn) If for allT>0 problem
-> H^'s°(Rn).
(4.92)
and for all ip € C 0 °°([0,r] x R") C ^ ( [ O . T ] ; #*••<> (R n )) the
u' - q(x, D)u = -ip
on [0,T),
u(T) = 0
(4.93) (4.94)
then has a unique solution u € C([0, T]; iJ^ s °+ 2 (R n )) n C 1 ([0, T]; H^'s°(Rn)) n for any initial distribution v £ Ail(M. ) there is at most one solution to the martingale problem for —q(x,D). Remark 4.3.3. In volume II we gave a lot of examples of pseudo-differential operators satisfying the assumption (4.92). The proof of Theorem 4.3.2 requires the following Lemma 4.3.4. Let q(x,D) and so be as in Theorem 4.3.2 and let P e A4l[T>n([0,oo))^ be a solution to the martingale problem for the operator Fix T > 0 and choose u e C([0,T] ; H*''0+2(Rn)) n (-q(x,D),CS°(Rn)). s ^ ( [ O . T ] ; tf^ °(IR™)). Then the process
Mt = M?:=u(t,Xt)-J
((^-s-q(x,D))u)(s,Xs)ds,0
(4.95)
is a P-martingale up to time T. Proof. Given
(4.96)
Next we want to show that it suffices to prove the lemma under the asFor u & C([0,T] ; #^ s ° +2 (]R™)) n sumption u G ^ ( [ O . T ] ; H^>So+2{Rn)). ^ ( [ O j T ] ; H^'So(Rn)) we construct an extension, again denoted by u, belongs DC1 {I; H^<s°(Rn)). (For example we may extend u by to C(I; H^'S0+2(Rn))
196
Chapter 4 The Martingale Problem
reflecting at the boundary points.) With tp £ CQ°(M),
(4.97)
where the integral is a Bochner integral. It is straight forward to see that for £->Owe have ue -> u in C([0, T] ; JT^°+ 2 (R n )) and ue^u
inC^ICT]; H^s°(Rn)).
Now (4.91) yields that for e -> 0 it holds ue - > « , « ; - > u', 9(1, £>)«e -» q(x, D)u
(4.98)
where the convergence is bounded and uniform and all functions are considered to be elements in C&([0,T] x R n ). Thus the martingale property in (4.96) is preserved under such an approximation. Now take u G C^fO.T]; #^ s ° + 2 (R n )) and note that v! = §-tu when u is considered as a function defined on [0,T] x R". For all 0 < tx < t2 < T and A £ T% we get Ep((u(t2,Xt2)-U(i1,Xtl))X^) = £; p ( ( « ( * 2 , ^ 2 ) - « ( * ! , X t 2 ) ) x ^ ) + ^ P ( ( ^ i , X t 2 ) - n ( i 1 , X t l ) ) X A ) . Since u{t{) e iJ^' So+2 (R n ), and taking into account that (4.96) is a martingale we find further Ep([u{h,Xt2)-u{h,XH))xA)
= EP(f2 As, Xt2 )dsXA) + Ep U \-q(x, D)u(t!, Xr)ArXA) = Ep(|*2 (A - q(x, D))u(s, Xs)dsxA) +
Ep([t2(u'(s,Xt2)-u'(s,Xs))dsXA
+ f *{{-q{x,D)u{tuXr) - (-q{x,D)u){r,Xr))drXA).
4.3 A Uniqueness Criterion for the Solvability of the Martingale Problem
197
Clearly, the lemma is proved when we can show that the second expectation vanishes. Using once again (4.96) we observe that EpU\u\s,Xt2)
- u'(s,Xs))dsXA) (4.99)
= Ep(£2(J2(-q(x,D)u')(s,Xr)dr)dsXA), while on the other hand Ep(f\(-q(x,D)u))(t,Xr)
- (-q(x,D)u)(r,Xr)drxA) (4.100)
= - Ep ( jf 2 (^
^(-q(x, D)u)(s, Xr)ds)drXA)
holds. Under our assumptions on u we have
q(x,D)u' = j-t{q(x,D)u), and since the iterated integrals in (4.99) and (4.100) are over the same domain • they are equal implying the lemma. Now we can give Proof of Theorem 4.3.2. For
Mt = u{t,Xt)- f Jo
{^--q(x,D))u(s,Xs)ds a s
is a P-martingale up to time T for any solution P to the martingale problem for — q(x, D) and initial distribution v. Therefore it follows that
J V1(s)Ep(
Ep(u(0,Xo))=E"(u(0,.)),
and the last expectation is uniquely determined by v. Since
198
Chapter 4 The Martingale Problem
s < T, is uniquely determined by v. But also ifi2 and T have been arbitrary and therefore we may conclude that the one-dimensional distributions PoXj1 are uniquely determined by v for s > 0 and do not depend on a particular choice of a solution to the martingale problem. Now the theorem follows from Proposition 4.3.1.
•
Theorem 4.3.2 tells us that whenever we can solve in a suitable function space a "backward heat equation" for a pseudo-differential operator with a continuous negative definite symbol then the martingale problem for this operator has at most one solution. Theorem 4.2.1 gives an easy criterion for the existence of a solution. Clearly the results in II.2.6 give examples for pseudodifferential operators where we can apply both theorems. However we do not really get new insights since in this situation we can already construct Feller semigroups, but, using a localization procedure to be discussed in the next section we can considerably improve the results of Theorem II.2.6.4.
4.4
A Localization Procedure
In Theorem II.2.6.4 it was proved that a pseudo-differential operator — q(x, D) = —qi(D) — q^{x, D) with a continuous negative definite symbol q(x, £) generates a Feller semigroup provided that the "coefficients" of q2(x, £) have only a small oscillation where smallness relates to the "ellipticity constant" of <7i(£)- But also smallness of the derivatives d"q2(x,£) upto a certain order \a\ < m was required which can be interpreted that for |£| large the coefficients of q(x, £) must become constant. This is quite a restrictive condition, but the advantage of Theorem II.2.6.4 compared with Theorem II.2.6.9 is that no smoothness of q{x,£) with respect to £ is required. It turns out that combining the results of Theorem II.2.6.4 with some martingale problem techniques yields a quite general existence result for Markov processes generated by a pseudo-differential operator. We will prove this result in the next section. In this section we will summarize some preparatory material. The main result in Section 4.5 will depend on a localization procedure which is discussed in detail by St. Ethier and Th. Kurtz [98], p. 216-221, and due to D. Stroock and S. Varadhan [350] who introduced it in case of diffusion operators. In our presentation we follow closely W. Hoh [155], see also [150], since this is most appropriate for our purposes. However we do not give proofs for the general results, for this we refer to [98].
4.4 A Localization Procedure
199
Let A : D(A) -> Bb(Rn) be a linear operator with domain D(A) C C b (R"). Further let P G M\(T>n([0,oo)) be a solution to the martingale problem for A and some initial distribution v. In particular
(4.101)
U{Xt) - [ A
is for all tp G D(A) a martingale with respect to (Ff)t>o under P. For an open set U C R™ we consider the (.Ft0)t>o-stopping time rt/ := inf | t > 0 ; (Xt $ U) or (t > 0 and Xf_ g 17)}.
(4.102)
The stopping time T\J is the /irsi contact time of the closed set Uc, i.e. the first time t such that the closure of the path LJ up to time t hits Uc. The proof that T[/ is indeed a stopping time is similar to the proof of Theorem 3.5.17 and uses the cadlag-structure of paths, for details see [98], Proposition 2.1.5. We may now apply optional stopping, see Section 2.6, to find that for all
(4.103)
(A^iXM /t>o
is an {T^)-martingale under P. Definition 4.4.1. A. In the situation described above we say that P £ A4l(pn([0,oo))) is a solution to the stopped martingale problem for A and U if (4.103) is for all ip G D(A) an (.^-martingale under P and P(Xt = XtAT for all t > 0) = 1.
(4.104)
B. If in addition for every initial distribution v there is a unique solution to the stopped martingale problem such that POXQ1=V,
(4.105)
then the stopped martingale is called well-posed. If we compare the original martingale problem for A and the stopped martingale problem for A and U we find that upto the stopping time TV there is no difference, but for t > Ty, in case of the stopped martingale problem the process is prescribed by (4.104). According to [98], Theorem 4.6.1, it holds. Theorem 4.4.2. The well-posedness of the martingale problem for A entails the well-posedness of the stopped martingale problem for A and U.
200
Chapter 4 The Martingale Problem
Most important for us is that a converse result holds: If the stopped martingale problem is well-posed for a family of open sets forming an open covering of M™, then the martingale problem for K n is well-posed provided it has a solution. More precisely we have T h e o r e m 4.4.3. Let (t/fc)fceN be an open covering o/R". Suppose that for all initial distributions v there exists a solution to the martingale problem for A (and M.n). If for all k G N the stopped martingale problem for A and Uk is well-posed then the martingale problem for A and M.n is well-posed too. Once again we refer to [98], Theorem 4.6.2, for a proof. Let us make explicit the procedure suggested by Theorem 4.4.3. Existence of a solution to the martingale problem for a pseudo-differential operator —q(x, D) with a continuous negative definite symbol is granted for a large class of symbols by Theorem 4.2.1. Using Theorem 4.4.3 we decompose this solution into solutions of stopped martingale problems. More precisely we use stopping times Tuk of type (4.102) where (Uk)ke.N is an open covering of M™. Next we (try to) prove that for each fceN the stopped martingale problem for —q(x, D) and Uk is well-posed, where qk(x,0 coincides with q(x,£) on Uk x K n . This we will achieve by applying Theorem 4.4.2. As a consequence the martingale problem for —q(x,D) is well-posed and gives rise to a Markov process. The exact formulation of this procedure is given in Theorem 4.4.4 (W. Hoh). For k G N let q,qk : Mn x E " -» 1 be continuous negative definite symbols, and suppose that the corresponding pseudodifferential operators q(x,D) and qk{x,D) mapC0Xi(M.n) into Cb(R"). Assume that for every initial distribution v the martingale problem for —q(x, D) has a solution. Moreover we assume that that there is an open covering (Uk)k£H of W1 such that for allkGN , x e Uk and £ e Mn
q(x, 0 = Qk(x, 0
(4.106)
holds. If for all k G N the martingale problem for —qk{x, D) is well-posed, then the martingale problem for -q(x, D) is well-posed too. Proof. For t < T\jk we have Xt G Uk and therefore
=
rtATuk
Jo
rt/\ruk
Jo
(-q(x,D)
{-qk(x,D)
4.5 On the Well-Posedness of the Martingale Problem
2(H
for all t > 0 and all
4.5
On the Well-Posedness of the Martingale Problem for a Class of Pseudo-Differential Operators
Let us recollect the ideas behind Theorem II.2.6.4 which gives the existence of a Feller semigroup generated by a pseudo-differential operator —q(x, D) with a continuous negative definite symbol q : R n x R" —> R which splits according to q(x,t)=Qi(O+12^,0-
(4-107)
The crucial assumption was that ^2^<m sup |<9f |(a;, £)| was small compared with Qi(0i when |£| is large. (We do write g|(:c,£) instead of q2(x, £) because in following qiix, £) will have a different meaning.) With such an assumption it was possible to verify all conditions of the Hille-Yosida-Ray theorem, Theorem 1.4.5.3. The more serious problem was to solve the equation q(x, D)u + Xu — f for some A > 0 and sufficiently many functions / . This was achieved by combining Hilbert space methods to obtain first a variational solution of this equation and regularity results. The smallness assumption mentioned above was needed to prove certain lower bounds for q(x,D). We want to combine similar ideas with the localization result of last section to prove the well-posedness of the martingale problem for -q(x,D). The construction of the symbols %(£,£) is a bit different than the decomposition (4.107) and therefore we have to modify some technical results used in the proof of Theorem II.2.6.9. We follow once again W. Hoh [155], but refer also to Section II.2.6, and the papers [182] and [185]. Let us fix a continuous negative definite function ip : K" —> R and assume
V(O>coie°
for all ICI > 1
(4.108)
202
Chapter 4 The Martingale Problem
with some ro > 0 and CQ > 0. Further let 5:R"xKn-4i
(4.109)
be a continuous negative definite symbol satisfying q(x, 0) = 0 for all x G R.
(4.110)
For M G N being the smallest integer such that (4-111)
M > (— V2) +n
suppose that x <—> q(x,£) is a C 2 M + 1 ~"-function satisfying for all /? G NQ, \/3\<2M+l-n
\d£q(x,f)\
(4.112)
In addition we assume the existence of a strictly positive function 7 : R n —> R with the property that q(x,t)>
7(1) (1 +V>(0)
(4-113)
holds for all a; € R™ and |^| > 1. Now we want to construct out of q(x, £) symbols which behave almost as those considered in Theorem II.2.6.4 but which will allow us to use the localization procedure of Section 4.4. For this fix xo 6 K n and take p G C§°(Rn) such that 0 < p < 1, p\Bl (0) = 1, suppp C fii(0) and for R > 0 define
( 4 - 114 )
P«(I)=P(£X2)We consider now QR(X,0
=pR(x)q(x,£) +
(l-pR(x))q(x0,Z)
= gfao, 0 + /»fl(a;) (g(a;, £) - q(xo,£)).
(4.115)
Clearly,
(4.116)
4.5 On the Well-Posedness of the Martingale Problem
203
which we will consider as a perturbation of q(x0, £). But unfortunately 92(x, 0 will in general not satisfy the assumptions of Theorem II.2.6.4 and for this reason we need to rework some of the auxiliary results involved in the existence proof for a Feller semigroup generated by —Qk{x, D). Let TV G N be the smallest integer such that (4.117)
N>(—V2), or M = N + n. By Taylor's formula we get
g(z,0=9(zo,0+
iX o)0
£ 0<|/3|<JV
^ (d^q)(xo^)
+ RN(x,O
(4.118)
with remainder RN(X,£)
= (N + 1) f\l-t)N
Yl
Jo
\0\ = N+l
{X
~*0)\d2q)(tx P
'
+ (l-t)xo,Odt. (4.119)
Combined with (4.115) this yields QR(X,0
0<|/3|
=«(a:o,o+ E 6/3(x)9/3(o+ 53 fofoo 0<|/3|
|/3|<JV+1
(4.120) where h(x)
= PR(x)^X
~p°^
9/9(0 = (^«) (io,O
,O<\0\
(4.121)
,0<| / 8|
(4.122)
and for |/3| = N + 1 9/3(x,O = ( ^ + l ) y ' ( l - i ) ; V P f l ( x ) ^ p ^ ( 5 ^ ) ( t e + ( l - i ) a ; o , O d i .
(4.123)
Note that bp and ^3 are depending on R and this dependence we have to take into account in the following.
204
Chapter 4 The Martingale Problem
L e m m a 4.5.1. For 0 < s < M — n there is a constant Ki(R) with lim Ki(R) = 0 and such that for all (3 € NJJ, |/?| = N + 1, and u € C£°(R71) ii R-+0
holds ||((l + ^(I>)) 4 ,? / s(a;,D)u|| o = l f 1 ( / J ) | H U i , + 1 .
(4.124)
Proo/. Since 2 + n < M, see (4.111), it follows for 0 < s < M - n that s — l | + l + n < M and an application of Theorem II.2.3.9 implies (4.124) provided we have \d2qp(x,Z)\ < $a(x)(l + V(0)
(4-125)
for a G NJ, |a| < M, and functions $ a G L ^ R " ) . For Ki{R) we will find
Ki(R) = cM,Bli> J2 ll*«|Ui
(4-126)
|a|<M
where CM,S,V i s determined similar to Kn,miS,v> i n (H.2.148). Using Leibniz' rule and (4.112) we get
< (7v + I) l ^ i - t)Nd;(pR(x)(x~*o)\dgq)(tx
+ (i - t)io,O) |dt
= (iv + i ) / ' 1 ( i - ^ E (a)dr"(pR^){jLZ^-)thl(d^Q)(tx
+ (1 - t)x0,o|d*
<{N + 1) jf'(l - t)» 53 Q l ^ - ^ ^ W ^ ^ J I ^ ' c t l + *«))«
Since |/? + 7| < N +1 + M = 2M + 1 - n, it follows that all derivatives needed in the above calculation exist. Therefore ,M$tt(x):=c^Mar(pfiW^)
(4.127)
4.5 On the Well-Posedness of the Martingale Problem
205
belongs to L^R") and (4.125) follows with (4.126). Next we will prove
lim sup /
<%-> (PR(x)
R->0 y
SU
P(E(T)/
h\<M^f^\dJ
~°;O)0) p \
which will imply the lemma by (4.126). Leibniz' rule yields
±
(X
V
n
\dx = 0
'\
A straightforward application of
BTW\&P)C^.) to K
I
JBR(X0)
x sup l ^ ^ ^ l ) x£BR(x0)
P-
W
^ SUP ( E ftV"l+fl / |^P(»)|d» |7|<M V J ^ V d /
x c
M
V Bl (0)
sup K x - i o ) ^ 7 - ^ ! ) ,
and it is sufficient to sum only over 7 — 8 < /? since otherwise d2~s{x — XQ)^ will vanish. Hence |/3 — (7 — S)\ = \j3\ — \~f\ + \S\ and therefore
sup/
ar>K0r)^^)dz
7
^
P-
SU
P ( E (lV*r.rf-"l+B /
|7|<M
V
J ^ \<5/
|^W|cte^ | -^ + l "
7Bi(0)
< c sup ir»+i^i-iTi - • 0 as i? -» 0 because n + \/3\ - \^\ > n + N + 1 - M = 1 by the choice of TV.
•
Next we need a commutator estimate involving 6/3, bp = PR(X)^X~Q°' , 0 < \P\ < N. Since bp is a smooth function with compact support we find for
all a 6 NJJ
|^(6p(x)^(0)| < l ^ ( z ) | c ( l + V(0),
(4-128)
206
Chapter 4 The Martingale Problem
where qp is as in (4.122). Further we have II^MOIILI
< C[R)
(4.129)
and therefore we find analogously to Theorem II.2.3.9 Lemma 4.5.2. Let s > 0 and 0 < |/?| < N. Then it holds \\[(l+i;(D)y,b0(-)q0(D)]u\\o
(4.130)
for a M u e C £ ° ( R n ) . Finally, we can restate the results for commutators involving the Friedrichs molhfier, compare Theorem II.2.3.16. There are no substantial changes in the proofs required. Lemma 4.5.3. A. Let 0 < s < M — n and e > 0 be given. Then there is a constant C(R) independent of e such that for all |/?| = TV + 1 and all u G C£° (R n ) \\[Js,qp(x,D)u\\^s
< C(R)\\uU,s+1
(4.131)
holds. B. Let s > 0 and let e > 0 be given. Then there is a constant C(R) independent of e such that for all 0 < \/3\ < N and for all u € Cg°(M.n) \\lJe,b0(-)qp(D)]u\\^s
< C(R)\\uU,s+1
(4.132)
holds. Our next aim is to solve the equation qR(x, D)u + Xu = f
(4.133)
in order to apply then the Hille-Yosida theorem and to get a semigroup generated by —qR.(x,D). However now we want to use this semigroup to solve the backward heat equation associated with —qn{x,D), see Theorem 4.3.2, and it turns out that it is more convenient to construct this semigroup as a semigroup on the Hilbert space H^'^W1), s suitable, and not on L2(Rn). The basic ideas are much the same as in the proof of Theorem II.2.6.4 but we have to use the newly derived commutator estimates and we have to take into account that the Hilbert space under consideration is H^'s(M.n). We start with
4.5 On the Well-Posedness of the Martingale Problem Lemma 4.5.4. A. Let s > 0 and 0 < |/3| < N. u € C£°(Rn)
207 Then it holds for all
||g(a:o,^)«IU,.
(4-134)
\\qp{D)u\\^s < c||u||^ + 2
(4-135)
and (4.136)
||&,j(-)
Then there is a constantK2(R) such that lim ^(-R) =
0 and for all |/?| = iV + 1 and a« w € C^°(ffi") ^ AoWs
H^fe D)u\\^s < /ir2(JR)||u||^i,+2.
(4.137)
Prw/. Clearly (4.134) and (4.135) follow as (II.2.145) in Proposition II.2.3.6. In order to see (4.136) we combine Lemma 4.5.2 with (4.135) to find \\be(.)q0(D)uU,s
< \\{l +
i;(D)y{b0(.)q0(D)u)\\o
f
< \\b0(.)q0(D)(l + ^(£>)) u||o + ||[(1 + iP(D))i,b0(-)q0(D)]u\\o
(4-138)
< c||&/9||OD||u||¥l,s+2 + C(R)\\u\\^,t+1 which proves (4.136). To prove part B, note that for \/3\ = N + 1 we find (as in the proof of Proposition II.2.3.11) for all u G C0°°(Mn) the estimate
Qe(x,D)u\\0
+ i}(D))iu\\o
< KR\\ (1 + i,(D))
f
u|U,2 +
+ \\[(l +
iP(D))i,q0(x,D)}u\\o
tf1(Ji)||u||,M+1
< (A-R + /JfiC^Z)) ||«||^,.+2 proving the lemma.
•
208
Chapter 4 The Martingale Problem
Having in mind the decomposition (4.115) we deduce from Lemma 4.5.4 that qR(x,D) maps H^-s+2(Rn) continuously into #^' S (R") for all 0 < s < M — n. As a next step we investigate the bilinear form associated with qR(x,D). For thisfixs0 > 2 such that (4.139) M -n > s0 > — 2r 0 holds. Note that this choice of so guarantees the embedding <^ Coo(]Rn). We are longing for a type of variational solutions to ff*'s"(ln) qk{x,D)u + Xu = f and for this we introduce for u, v £ Co°(R") the bilinear form BR(u,v)
(4.140)
= (qR(x,D)u,v)^sg.
This bilinear form is decomposed according to
BR(u,v) = B0R(u,v) + J2 B0^v)+ O<\0\
J2 B$(u,v)
(4.141)
\0\=N+1
where B*(u,v) := (qixo.Dfav)^, B${u,v)
:= {b0(-)qi3(D)u,v)^so
(4.142) ,0<\P\
(4.143)
,\(3\ = N+1.
(4.144)
and B>,«):=(^,i))v)^
Proposition 4.5.5. The bilinear form BR extends from CQ° (Rn) continuously Cg°(Mn) (or H^'So+1 {«"•)) it holds to H * ' ' » + 1 ( I n ) andforu,v£ \BR{u,v)\
< C r (fl)||«||^ i i o + i||«||^, s o + 1 .
(4.145) R
(The extended bilinear form will be denoted once again by B .) Proof. We estimate each term in (4.141) separately. Using the Cauchy-Schwarz inequality and Lemma 4.5.4 we get for u, v € Co°(K n ) \BR(u,v)\ = \((l+ij(D))^q(x0,D)u,(l
+ TP(D))S?v)o
= | ((1 + i>(D))e~^q(x0, D)u, (1 + V(£)) ^ ) J <
c\\q(x0,D)u\\^:So-x\\v\\$:So+i
< c\W\\ip,so+i\\v\y,so+i-
(4 . 146)
4.5 On the Well-Posedness of the Martingale Problem
209
Analogously, by Lemma 4.5.2 and Lemma 4.5.4 we obtain for 0 < \/3\ < N \B*(u, v)| = | ((1 + 1>{D)) ^bp(-)q0(D)u,
(l +
jj(D))^V)Q
<\(b0(.)q0(D)(l+i;(D))£Slflu,(l+ij(D))^v)o + |([(l + V( J D)) £ f l ^,6/ 3 (-)^P)K(l + V ' ( J D ) ) ^ ) o < cllb^Hoolliell^.'o+l ll«IU,.o+l
+C(R)\\uU,so\\vU,so+l
( < c||u||^,so+i||u||v-.so+i + C{R)||u|U,S0+iNk*,+i)
• (4.147)
Finally, for \(3\ = N + 1 we apply a further time Lemma 4.5.4 to find \B*(u,v)\ = |((1 + ^(D))^q0(x,D)u,
(l +
^{D))S^V)Q
< 115^(1, I > ) U | U , . 0 - I | | « I U , . 0 + I <
(4J48)
K2{R)\\uU,,o+i\\vU,ao+1.
But together (4.146), (4.147) and (4.148) prove the proposition.
•
Now using the function 7 from (4.113) we are going to prove a lower bound for BR, i.e. a Garding inequality. Theorem 4.5.6. For R > 0 sufficiently small there is a constant A = X(R) depending on R such that for all u € # ^ S o + 1 ( R n ) it holds BR(u,u)
> 2 ^ | | u | | 2 s o + 1 _ X(R)\\u\\lS0.
(4.149)
Proof. By (4.113) we can find c > 0 such that <7(zo,O > 7(*o)(1+>(£))-c holds. Therefore, as in the proof of (II.2.146) in Proposition II.2.3.6 we find B*(u, u) > 7(*o)||u|ft,.o+i - c\\u\\l>so. For e > 0 we get for 0 < |/3| < N using (4.147) \B*(u,u)\
< c||ft / j|| oo ||u||^, 0+1 +
c(R)\\u\\^S0+1\\vU,S0+1
^(cllb/jHoo + ^ I M I ^ o + i + c ^ e ) ! ^ , . , , ,
(4.150)
210
Chapter 4 The Martingale Problem
where we used the estimate ab < ea2 + c(e)b2 to handle the second term. Since Halloo =
{x PR(x)
sup
~*o)0
xEBR(x0)
->0
astf^O
(4.151)
P-
we can choose R and e sufficiently small such that
Y
\BR{u,u)\ < ^ | 2 ) | | u | | 2 s o + 1 +c(fl)||u||^ 0
(4.152)
0<\P\
holds. Further, with (4.148) we obtain
Y
\B${u,u)\<
\0\=N+1
Y
K
< ^ I M f t , . 0 + i (4-153)
2(R)\Hl,S0+1
\0\=N+1
provided -R is sufficiently small,recall lim K^^R) = 0 by Lemma 4.5.4.B. From (4.150), (4.152) and (4.153) we derive
BR(u,u)>B*(u,u)- Y
\B*(U'U)\~
O<|/3|<JV
E \p\=N+i
and the theorem follows.
KMI (4.154)
D
Theorem 4.5.7. Suppose that (4.108)-(4.113) hold, decompose q(x,£) according to (4.115) and take A > X(R), A(i?) and R as in Theorem 4.5.6. Then for every f G H^So(Rn) there is a unique u £ H^'S0+1(Rn) such that BR(u, v) + X(u, v)^, so = (/, v)^so
for
allveH^'
S0+l
(4.155)
n
(R ).
Proof. We need only apply the Lax-Milgram theorem, Theorem 1.2.7.41, to • the bilinear form (BR, H^'So+1(Rn). We want to prove that the element u G H^'So+1{Rn) belongs already to H^'So+2{Rn). For this we need
satisfying (4.155)
Proposition 4.5.8. Let q(x,£) be as in Theorem 4.5.6 and suppose that R > 0 is sufficiently small. Then there is a constant C{R) such that N k . 0 + 2 < C(R) (\\qR(x, D)uU,S0 + \\uU,S0) holds for all u G
H^'So+2(Rn).
(4.156)
4.5 On the Well-Posedness of the Martingale Problem
211
Proof. We proceed, in principle, as in the proof of Theorem II.2.3.13. By (4.113) we have \\q(x0,D)u\\lrSO > 7 ( z 0 ) 2 N k S o + 2 ~ c\\u\\liao.
(4.157)
Further, for 0 < \/3\ < N, by Lemma 4.5.4 and its proof, especially (4.138), and using the estimate \\u\\^tS2 < e||u||v>,s3 + c(e)||u|| v ,, si for u e H^'S3(M.n) and S\ < S2 < S3, we get \)b0(-)qp(D)uU,So = \\{l +
^(D))^(bp(.)q0(D)u)\\o
< c|]6^||oo||w|U,So+2 + C(-R)||u||^,so+ 1 <(c||6 i 9 ||oo+e)Nk.o+2 + Cr(/i)e)||u|U,.0) which yields for R and e sufficiently small, compare (4.151), that
£
||^(-)5M^HI^o< 2 ^lkll^o+2 + C(JR)||U|U,S0.
(4.158)
0<|/3|<JV
Further, Lemma 4.5.4.B gives for R > 0 sufficiently small
]T
\\q0(x,D)uh,so<
\0\=N+1
E
K2(R)\\uU,S0+2<^\\uU,So+2.
\P\=N+1
(4.159) Hence, from (4.157), (4.158) and (4.159) we deduce
\\qR(x,D)u\yiS0 >
WqixQ^^y^
0<|/3|
\0\=N+1
>2^ll«IU..o+2-C(iZ)||u|U,,o implying (4.156).
D
Finally we can prove Theorem 4.5.9. Let q(x,£) be a continuous negative definite symbol and assume (4.108)-(4.113). Further let R > 0 be sufficiently small and let X(R) be as in Theorem 4.5.6. Then for all f e tf^s°(]Rn) and all X > \{R) there is a unique solution u G H^'S0+2(Rn) of the equation qR{x,D)u
+ Xu = f.
(4.160)
212
Chapter 4 The Martingale Problem
Proof. We know by Theorem 4.5.7 that for R sufficiently small there is a unique solution u G H^'S0+1(Rn) to the problem BR(u,v) + X(u,v)^S0 = {g,v)^S0
iora\lveH^S0+1(Rn),
(4.161)
where g G H^'s° (W1). We take in (4.161) g = / and choose a sequence (uk)keN, uk G C£°(M n ), which converges in H^'s°+1(Rn) to u. For v G Cfi°(Rn) it follows that BR(uk,v) = (qnfaD^v)^
= (qR(x,D)uk,(l + iP(D))s°v)Q. (4.162)
By Lemma 4.5.4, as k —> oo, we find qR(x,D)uk implying that
—> qji(x,D)u
( 9 / e (x I £>)u,(l + V(I?))' o u) 0 = B f l (u,v) = ( / - A « , t ; ) ^ 0
= (/-A U ,(i+^(£')r o ) 0 .
in L 2 (M"),
(4.163)
Since (l + V(D))'°(Cg°(R n )) C L 2 (K") is dense, (4.163) yields inH^s°(Rn).
(qR(x,D) + X)u = f
We claim u G i7 i/l ' So+2 (]R"). Denoting as usual by Je, 0 < e < 1, the Friedrichs mollifier, compare Proposition II.2.3.15, we find that Je(u) G H^>So+2(Rn) and as e —> 0 we have J e (w) —• u in H^'3°(M.n). Hence (Je(u))0<6<1 is bounded in H^'So(Rn). Further, by Lemma 4.5.3 we obtain \\qR{x,D)Je{u)\\i>tS0 <\\qR(x,D)u\\il,S0+
< Je(qR{x,D)u)\\TptS0 Y,
+
\\[JE,qR(x,D)]u\\^So
We,b0{')Qp{D)]uU,to
O<\0\
< WfU,s0 + |A|||u||^ 0 + C(U)||u||, Mo+1 < oo, and the right hand side is independent of e, 0 < e < 1. Thus by Propowith a sition 4.5.8 it follows that (^e(«)) 0 < e < 1 is bounded in H^'So+2(Rn) bound independent of e which implies, compare Proposition II.2.3.15, that D u G H^'S0+2(Rn). Now we are in position to prove the well-posedness of the martingale problem for q(x,D). First we show
4.5 On the Well-Posedness of the Martingale Problem
213
Theorem 4.5.10. Suppose that (4.108)-(4.113) hold and let qR(x,£) be as in (4.115), XQ € M.n being fixed. Then there exists R > 0 such that the T>n(j0, oo))martingale problem for —qR(x,D) with domain C^(Rn) is well-posed. Proof. Let R > 0 be sufficiently small such that Theorem 4.5.6 and Proposition 4.5.8 hold. Then -qR(x,D) - X(R) with domain H^<So+2(Rn) is a densely denned operator on H^tS°(Rn) which by (4.149) is dissipative. Further, by Theorem 4.5.9, for all A > 0 the range of - (qR(x, D) + X(R)) - A is H^s° (Rn). Therefore by the Hille-Yosida theorem, Theorem 1.4.1.33, —qR(x,D) is the generator of a strongly continuous semigroup (St)t>o on H^'s°(Rn). Now we apply Lemma 4.5.11 below to deduce that for ip e ^ ( [ O ^ ] , ^ ' 8 0 ^ " ) ) u(t) := / Jt
(4.164)
S3-ttl>(s)ds
gives a solution u : [0,T] - • H^'s°+2(Rn),u backward heat equation u' -qk{x,D)u
= -ip
on[0,r)
G ^([O.T] ; ff^- So (R n )), of the (4.165)
and u{T) = 0.
(4.166)
Moreover, using that u is a solution to (4.165), (4.166) we find qR(x,D)u£C([0,T]; H^'^iR71)) and by (4.156) we deduce further that An application of Theorem 4.3.2 gives now the u G C([0,T] ; H^'so+2(Rn)). result.
•
Lemma 4.5.11. Let (A,D(A)) be a generator of a strongly continuous semigroup (St)t>o on a Banach space X. For f £ C([0,T]; X) define u{t) := f 5 s _ t /(s)ds. Jt
(4.167)
Then we have u' = Au + f and u(T) = 0. Proof. Clearly we have u(T) = 0. Differentiating (4.167) with respect to t and using that ^Stu = AStu for u € D(A) we obtain the lemma, compare also Lemma 1.4.1.14. •
214
Chapter 4 The Martingale Problem
Finally we have Theorem 4.5.12 (W. Hoh [155]). Let tp : R™ -> R be a continuous negative definite function satisfying (4.108) and take M as in (4.111). Further let q : R" x Mn —> R be a continuous negative definite symbol such that (4.110), (4.112) and (4.113) hold. Then the T>n-martingale problem for the operator —q(x,D) with domain Co°(R™) is well-posed. Proof. Taking in (4.112) as multiindex /? = 0 € NQ , we see that condition (4.48) in Theorem 4.2.1 is fulfilled, hence there is for every initial distribution always a solutin to the martingale problem for —q(x,D). Next, for every XQ £ Rn we define qii(x,£) according to (4.115). From (4.112) we may deduce further that q(x,D) as well as qii{x,D) map C£°(Rn) into C b (R n ). Now, we know that if R — R(xo) is sufficiently small the martingale problem for —qjt(x,D) is well-posed by Theorem 4.5.10. Next we choose a countable set of points (£ofc)fceN such that the ball B R ^ J ^ O O cover the whole space R n . Since on 2
Bn(Xek) (xok) we have q(x,£) — qn(x,£) we may combine Theorem 4.5.10 with • Theorem 4.4.4 and the theorem is proved. By the general theory, compare Section 3.6, we know that under the assumptions of Theorem 4.5.12 we can associate a Markov process with —q(x, D). In the next section we will investigate when this process is already a Feller process.
4.6
The Martingale Problem for Pseudo-Differential Operators and the Feller Property
Under the assumptions of Theorem 4.5.12 we know by Theorem 3.6.10 that —q(x,D) generates a Markov process. In fact, compare St. Ethier and Th. Kurtz [98], p. 184, we know that this process is in fact a strong Markov process. A precise formulation of this statement adapted to our situation is the following theorem, see W. Hoh [155]. Theorem 4.6.1. Let q(x,^) be a continuous negative definite symbol and suppose that the Vn-martingale problem for —q(x,D) is well-posed. Consider the process {(Xt)t>o,Px) with Px being the unique solution to the Vn-martingale problem for —q(x,D) with initial distribution ex, x G R™. Then the universal
4.6 The Martingale Problem and the Feller Property
215
process ((^t)t>Oi Px) mn 2S a universal strong Markov process with respect to the filtration (ff)t>o, i-e- for every Tt+-stopping time r and all t > 0 and u G Bb(M.n) we have Px-almost surely Ex{u(Xt+T)\FT+)
= Ex^ (u(Xt)) on {r < oo}.
(4.168)
Our aim is to find sufficient conditions which turn ((Xt)t>o,Px)xeRn m t o a Feller process. Of course according to our philosophy such conditions should be expressed in terms of the symbol q(x,£). In this section we will always assume besides q(x, 0) = 0 for all x G Kn,
(4.169)
| 9 ( x , 0 l < c 0 ( l + |e| 2 ),
(4.170)
and
the additional condition sup \q(x,£)\ - + 0 a s ^ 0 .
xGKn
(4-171)
Note that according to Theorem 4.2.1 condition (4.169) and (4.170) imply already the existence of a solution to the martingale problem for —q(x,D). The assumption (4.171) is an equicontinuity condition (with respect to x) at £ = 0. We prepare the proofs of our main results, Theorem 4.6.6 and Theorem 4.6.7, which are due to W. Hoh [155] with some auxiliary considerations. Lemma 4.6.2. Suppose that the continuous negative definite symbol q(x,£) satisfies (4.169)-(4.171). Further let (p € C£°(1R™) and put yR{x) := y?(f), R > 0. Then it holds lim sup \q(x,D)(pR(x)\=0.
R->oo zeR n
(4.172)
Proof. We may argue as in the proof of Lemma 4.2.13 with R replacing k and then we should note that by (4.171) it follows that sup \q{x,£)\ tends uniformly (with respect to x) to 0 as R tends to infinity. A major step to our final result is
D
216
Chapter 4 The Martingale Problem
Theorem 4.6.3 (W. Hoh). Let q(x,£) be a continuous negative definite symbol satisfying (4.169)-(4.171) and let (nk)k€N be a tight set of probability measures on M.n. Denote by Pk G M^(T)n([0, oo))) a solution to the martingale problem for —q(x, D) with initial distribution fik. Then the set (-Pfc)fceN is tight inMl(Vn([0,oo))). Proof. First note that by Theorem 4.2.1 we know that at least one solution P^ to the X>n-martingale problem for —q(x, D) and Hk exists. We want to apply Theorem 4.1.16 with I = N, (Aa,D) to be {-q{x,D),C^(M.n)) for all k € N, and of course (Pa)aei to be (Pk)ken- For this we have to prove the compact containment condition to hold for (Pfc)fceN, i.e. we have to show for all T > 0 and £ > 0 the existence of a compact set K c Mn such that snpPk(Xt £ K for some 0 < t < T) < e, fc£N
compare Theorem 4.1.12. We choose tp G C^°(M") such that 0 <
SUP({M
>f})
(4-173)
We define the .T^-stopping time r := inf{t > 0 ; \Xt\ > R}
(4.174)
and apply optional sampling, compare Section 2.6, to the right-continuous martingale VR{Xt)-
(4.175)
[ (-q(x,D)tpk)(X.)ds Jo
to find EPk (1 -
{-q(x,
Jo
= E* ( l - Vfl(Xo)) = _/"B (1 " VkWk
D)ipR(Xs)ds) (4.176) <|-
Further, applying Lemma 4.6.2 for R sufficiently large we have 8*p\q(x,D)
x6K"
•"
(4.177)
4.6 The Martingale Problem and the Feller Property
217
which implies
Pk( sup \Xt\ >R)< Pk(\XTAT\ > R) 0
<Ep«(l-ipR(XTAT))
<£-+Ep*(J
\{q(x,D)
which implies the compact containment condition and the theorem is proved.
•
Corollary 4.6.4. Let q{x,£) be a continuous negative definite symbol satisfying (4.169)-(4.171), and suppose that the martingale problem for —q(x,D) is well-posed. Denote by Px the unique solution to the martingale problem for —q(x,D) with initial distribution ex, x € M™. Then the mapping x \—> Px is a continuous mapping from M.n into Ail(M.n) where in A4l(M.n) the weak topology is taken. Proof. Let (xk)ken, xi, € Kn, be a sequence converging to x € Kn. It follows that the initial distributions fik := sk converge weakly to ek and form a tight subset. According to Theorem 4.6.3 the corresponding family {PXk)kGN i s a tight set in Ml(Vn([0,oo))), and has at least one accumulation point P G Ml(Vn([0,oo))). The projection XO : Vn([0,oo)) -> Kn is continuous and therefore the one-dimensional distributions PXk o XQ1 = P^ko = ek have Px0 as an accumulation point (when the weak topology is considered). Hence we have Px0 = ex. Now we may use the proof Proposition 4.2.11 (taking A$, Ak = —q(x,D)) to see that P is also a solution to the martingale problem for —q(x,D). The well-posedness implies now that the accumulation point P = Px is uniquely determined and therefore Pk£N converges weakly to Px proving the corollary. • Next we want to exclude that the process (Xt)t>o associated with — q(x, D) and an initial distribution has fixed discontinuities provided the martingale problem is well-posed. More precisely we have Proposition 4.6.5. Let q(x, £) be as in Corollary 4.6.4 and let P be a solution to the martingale problem for —q(x, D). Then for all x G M" and t > 0 P(Xt ^ XtJ) = 0,
(4.178)
218
Chapter 4 The Martingale Problem
i.e. (Xt)t>o has no fixed times of discontinuity. Proof. We choose a sequence (
f (MXt) - MX.))dP = f f {q(x,D)Vk)(Xr)drdP
JA
J A Js
< \s-t\
sup \q{x,D)tpk(x)\.
As s 1 1 it follows that f (M*t)
~
(4.179)
JA
holds for all A G .F^ and since so < t is arbitrary, also for all A G Tt- = a{Xs ; s < t}. Taking for A the set A = {ipk{Xt~) = 0} equation (4.179) gives for all k G N X{Wc(Xt)=i}
< /" J{
f J {ipk(Xt_)=Q}
which yields
P(Xt ? Xt.) = P(\JWk(Xt) = 1, ipk(Xt-) = 0}) = 0 fceN
and the proposition is proved.
D
Now we can prove a general result stating when the process associated with —q(x, D) via the martingale problem is in fact a Feller process. Theorem 4.6.6 (W. Hoh [155]). Let q(x,£) be a continuous negative definite symbol satisfying (4.169)-(4.171). Assume further that the martingale problem denotes the unifor (-q(x,D),C$°{m.n)) is well-posed. If ({Xt)t>o,Px)xe&n versal Markov process associated with —q(x, D) via the martingale problem then the corresponding semigroups Ttu(x) = Ex(u(Xt)), u G B(,(M"), is in fact a Feller semigroup on Coo(M") whose generator extends (—q(x, D),Co°(R n )). In particular it follows that q(x,D) maps C{?(M.n) into ^ ( l " ) .
4.6 The Martingale Problem and the Feller Property
219
Proof. Proposition 4.6.5 has the interpretation that for xQ £ M" the projection Xt is continuous at least at P x °-almost all points u) £ T>n([0, oo)). Therefore, if px _> px0 w e a k l V ) t h e n w e also h a v e t hat P f t = PxoXf1 -> PXo oXf1 = P£° weakly which yields for u £ Cb(Rn) that Ttu(x) = Epx°x^\u)
-> Epx°oX^(u)
= Ttu(a;o)
as x -» z 0 ,
i.e. Tt maps C 6 (K n ) into C6(Mn). Next take C Bi(0), and put VXO,R{X) = v f ^ 1 1 ) - Xo eMn, R> 0. By Lemma 4.6.2 and its proof we find that s\ip\q(x,D)
as R -> oo
(4.180)
uniformly with respect to xo- Thus with p(R):=
sup sup |g(a:,i5)¥?I0,fl(a:)|
rc o eR n x6K"
(4.181)
we have lim p(R) = 0. fi-»oo
Therefore, for any ip e Co°(Rn) and a;0 ^ supp^ we find with R = dist (a;o,supp^)) > 0 that \Tttl;(x0)\ = | ^ ^ ( V ( ^ t ) ) | < HVllocP 1 0 ^ G supp<^) <||V||oo^0(l-Vxo,fi(^t))
= HVIloo^"0 K , , * ( * 0 ) - ¥>*o,*(*t)) = II^Hoo^0 ( j f «(x,I>)Vxo,«(X.)ds) < W^W^tpiR) -> 0 as |a;o| -• oo where we used that | i o | —» oo implies R —> oo. Since Co°(lRn) is dense in Coo(Mn) we have proved that Tt maps Coo(Kn) into itself. Further, for i e l " fixed we have for u £ C ^ R " ) by Lebesgue's theorem of dominated convergence that lim Ttu(x) = lim Ex (u{Xt)) = Ex (u(X0)) = u(x).
t^o
t-.o
(4.182)
Recall that the dual space of Coo(Mn) is the space of all signed measures of bounded variation. Therefore bounded and pointwise convergence in Coo(K"), compare Definition 1.4.8.23, implies weak convergence in Coo(Kn) by a further
220
Chapter 4 The Martingale Problem
application of the dominated convergence theorem. This implies that {Tt)t>o is a weakly continuous semigroup on Coo(IRn), but by Theorem 3.2.17 it follows that {Tt)t>o is a strongly continuous semigroup. Since Tt is obviously positivity preserving and a contraction with respect to the norm ||.||ooi we have proved that (T t ) t > 0 is indeed a Feller semigroup. It remains to show that the generator of (Tt)t>o extends -q{x,D) with domain Cg°(Rn). However, for u € Cg°(Rn) we get first pointwise lim TtU^ t-.o
~ «(*) = l i m E*{
Once again pointwise convergence implies in our case weak convergence and by Theorem 3.1.2 in H. Tanabe [355] we derive the strong convergence in Finally we give conditions on q(x, £) implying that — q(x, D) generates a Feller semigroup. Let ip : K n -» R™ be a continuous Theorem 4.6.7 (W. Hob. [155]). negative definite function which satisfies for some ro > 0, CQ > 0 the estimate "0(0 •> c o|£| r ° for l£l ^ 1- -^ei M be the smallest integer such that M > ( i V 2 ) + n and set k := 2M + 1 - n. Further let q : K n x K n -> R be a continuous negative definite symbol and assume 1. a: — i »• q(x,£) is k-times continuously differentiable and satisfies for (3 G
Nff, \P\ < k, \d£q(x,0
(4.183)
2. For some strictly positive function 7 : K" —> R it holds q{x,Q>-r(x)(l
+ il>(Z)) for |^| > 1, x € Rn.
(4.184)
3. It holds sup g(z,£)->0
x€Rn
as ^ ^ 0 .
(4.185)
4.7 Notes to Chapter 4
221
Then -q(x,D) : C§°(Rn) -> Coo(Mn) /ias an extension that generates a Feller semigroup given by Ttu(x) = Ex(u(Xt))
(4.186)
where Ex denotes the expectation with respect to the probability measure Px e Ml(pn([0,oo))) which is the unique solution to the martingale problem for —q(x,D) and the initial distribution ex. The proof is just a combination of Theorem 4.2.1, Theorem 4.5.12 and Theorem 4.6.6.
4.7
Notes to Chapter 4
In order to associate a unique Markov process with an operator via the martingale problem it is necessary to prove the well-posedness of this martingale problem and this is easier to achieve when concentrating from the start only on cadlag processes. Thus probability measures on Z?n([0,oo)) must be constructed and in Section 4.1 we discuss probability measures on P n ([0, oo)). Our main source is the monograph of St. Ethier and Th. Kurtz [98] and W. Hoh [150] and [155]. Moreover J. Jacod and A. N. Shiryaer [206], especially Chapter VI, was a valuable source. Needless to say that A. V. Skorohod's contributions are vital in this discussion, we mention here only his original paper [334] and his monograph [335]. In addition the reader will find many results (in different presentations, partly with different moduli of continuity) in P. Billingsley [38] and K. R. Parthasarathy [284]. Some further reading includes A. Jakubowski [207]. The classical work on the martingale problem for diffusions are the papers [349] and [350] by D. W. Stroock and S. R. S. Varadhan, see also their monograph [351] and Stroock's lecture notes [344]. In [343] D. W. Stroock handled already some Levy-type processes which was taken up by R. Bass in [26]. Further earlier work realted to the martingale problem for jump-type processes include B. Grigelonis [129] and [130], T. Komatsu [229], [230] and [231], J.-P. Lepeltier and B. Marchal [242], R. Mikulevicius and H. Pragarauskas [267]-[270], A. Negoro and M. Tsuchiyu [275], H. Tanaka, M. Tsuchiya and S. Watanabe [356], and M. Tsuchiya [363]-[364]. These papers consider a representation of the generator as an integro-differential operator (of Levy-type). Beside the monograph of St. Ethier and Th. Kurtz [98], we should also mention the lecture notes volume [205] of J. Jacod in this context.
222
Chapter 4 The Martingale Problem
In [231] T. Komatsu made already some use of the pseudo-differential operator representation of the generator, but it was W. Hoh who in his Erlangen Dissertation [150] and the following paper [151], [152] and [153], see also his habilitation thesis [155] and the paper [157], made a systematic use of the pseudo-differential operator representation of the generator. The results in Section 4.2-4.6 rely much on his contributions. His work influenced also more recent work of S. Albeverio and M. Rockner [14], V. Bogachev, P. Lescot and M. Rockner [48], J. van Casteren [366], V. Kolokoltsov [228], and O. Okitaloshima and J. van Casteren [277]. Maybe I am allowed to a add reminiscence. Shortly after my arrival in Erlangen H. Bauer asked me to work through the draft of the PhD-thesis of P. Kroger [235], see also [236], where the martingale problem for diffusions with less smooth coefficients was treated. In studying his work I learnt how stopping time techniques can be used to pass from local to global results. When some time later I succeeded for the first time to construct Markov processes by using pseudo-differential operators, see [179], [181], [182] and [185], my techniques allowed only to treat operators with "coefficients" of small oscillations. In this context I suggested to W. Hoh to try to use a martingale problem approach in order to get rid of these restrictions.
Chapter 5
L^-sub-Markovian Semigroups and Hunt Processes This chapter is devoted to the construction of a Hunt process starting with an Lp-sub-Markovian semigroup. In a first section we give some reasons why the Feller theory is not sufficient. Section 5.2 is an introduction to the theory of Hunt processes. It is much influenced by the presentation given in M. Fukushima, Y. Oshima and M. Takeda [115] and we do not provide all proofs, missing proofs are given in [115]. The core of this chapter is Section 5.3 where for a class of Lp-sub-Markovian semigroups, p ^ 2 , the existence of an associated Hunt process is proved. We modelled our proof as close as possible to the (symmetric) L2-case which is due to M. Fukushima. Therefore we will prove only those results which are not covered by his theory, for the other part we refer to [115]. In a final section we outline a further approach which depends on more advanced results in the (non-linear) Lp-potential theory.
5.1
Why the Theory of Feller Processes is not Sufficient
In the last Chapter we have seen how we may apply the Kolmogorov construction of canonical processes to obtain Feller processes. In combination with previous work we have then seen that certain pseudo-differential opera-
Chapter 5 I/p-sub-Markovian Semigroups and Hunt Processes
224
tors (-q(x, D), D(q(x, £>))), Q>°(R"; K) C D(q(x, £>)), extend to generators of Feller semigroups, hence Feller processes. In this section we will first discuss by an simple example why our "Feller theory" is not sufficient to cover all cases where it is possible to construct a Markov process by starting with a (pseudo-)differential operator. We will be led to consider L p -sub-Markovian semigroups, but then, using results from [191], Section 3.2, we will see that we can not apply the Kolmogorov construction when starting with an L p -subMarkovian semigroup. Consider on L2(M) the bilinear form
£{u
' L^ ~
V)= I+X[ IA]
with domain C§° C L2(R).
(:r)
+uv dx
SS ) -
(5 i}
-
Since
\£(u,v)\<2\\u\\H1\\v\\H1
(5.2)
and £(u,v)>\\u\\2m, (5.3) 1 it follows that this form is closable and the domain of the closure is iJ (M). Let us agree to denote this closure once again by £. Thus (£, H1 (K)) is a symmetric Dirichlet form and therefore we may associate an L 2 -sub-Markovian semigroup (Tt)t>o with (£,H1(M)). This semigroup is analytic and therefore we have
Ttu£ f]D(Ak) CH^R)
(5.4)
fc>i
for all u e L 2 (K) where (A, D(A)) denotes the generator of (Tt)t>oClearly [A, D(A)) is a self adjoint operator on L 2 (K). By Sobolev's embedding theorem we have fl'1(M) C Coo(M) and therefore for every Borel set B e l , \ W { B ) < oo, the function Pt{x,B):=TtXB(x)
(5.5)
can be defined as the unique continuous representative of T t xs(-) G L2(R). Using this family pt(x,B),t > 0,x G R,B £ B^ and \{l\B) < oo, we arrive at a Markovian semigroup of kernels, hence we can apply the Kolmogorov theorem and construct a Markov process {Xt)t>o having the property that
E* {u(Xt)) = f u(y)Pt(x, dy) = Ttu(x), JR
(5.6)
5.1 Why the Theory of Feller Processes is not Sufficient
225
u e Cb(M.) n L2(M.), where the second equality holds only almost everywhere. Now we want to determine D(A)\ By this we mean to find D(A) in terms of function spaces and having in mind our previous results we are thinking on spaces such as HS(R) for some s > 1. In fact we have to expect D(A) C H1(R). The point is that functions belonging to CQ°(M) or S(M) will in general not be mapped into Coo(M); i.e. we should not expect to extend (A\cg°, C^ (R)) or (A|,5,5(10) to be a generator of a Feller semigroup! Formally the domain D(A) of A considered as L2-operator is given by D(A) := {u G D{£); there exists h G L2(R) such that £{u, v) = (h, v)0 for all v G D(£)},
(5.7)
and further (Au, v)0 = S(u, v)
(5.8)
for all v e D{£) = ff^R) and u G D(A). If we could integrate in (5.1) by parts we would arrive at
and we would conclude ^
= -^((
1
+ X[-U](*))^)+«-
But of course, even for u G CQ°(R) (or «S(R)) we are in general not allowed to integrate by parts. Taking for example u G CQ°(R), supp u C [0,2] and u\n 31 = id, i.e. u(x) = x for \ < x < | , will lead to a singularity of type ei, the Dirac measure at 1! Thus the operator ( - ^ ( ( 1 + X[-i,i](0)^) + i d . Co°(K)) is not a good starting point to generate a Feller semigroup, and clearly the singular behaviour of the coefficients is responsible for this. But note that A is well denned as operator from C$°(R) to D'(R) since for u G C$°(R) we find that (1 + X[-i,i]('))aj G Hp>i Lp(R)\ In fact we have doing calculations in D'(R)
-5((i + X[-uoH)S+« —(i + x,-.J1,(-))g-^(i+xl-.1,(-))g + ^ and we find the symbol of this operator to be
226
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
where e±i is the Dirac measure at ± 1 . For the construction of the Markov process it was essential that TtU € i? 1 (R) C Coo (IK), otherwise we would not have obtained a transition function pt{x, B) suitable for applying the Kolmogorov theorem. But the embedding of F 1 (M") into spaces of continuous functions depends on n. In fact it holds only for n = 1. Thus already in the 2-dimensional case we can easily give an example of a symmetric, hence analytic L 2 -sub-Markovian semigroup (T t ) t >o associated with a Dirichlet form such that Ttu in general does not belong to a space of continuous functions. Just take the form
£(u,v):= [If] R2
•^ Ifc^i
akl(x)-^^+uv\dx dxkdxi
(5.9)
J
with akl = aik G L°°(R 2 ) and £fc,j=i akl(x)^i > A 0 |£| 2 . Then ( f , / / 1 ^ 2 ) ) 1 2 is a symmetric Dirichlet form but now H (R ) is not any more embedded into Coo(R2), hence we can not conclude T t xs(-) € Coo(R2) for t > 0 and 5eB(2',A<2)(B)
(5.10)
holds? Of course we would like to start with the definition pt(x,B):=Ttip)XB(x).
(5.11)
5.2 Hunt Processes
227
But since T t (p 'xs(-) is in general only an Lp-function it is only defined almost everywhere. For t and B fixed we may choose by some rule a unique representative, but when t runs through [0,oo) and B through B'"' we end up with too many exceptional sets and in addition the Chapman-Kolmogorov equations give some further problems. On the probabilistic side we will overcome the problem by working with Hunt processes, on the analytic side we need to work with refinements and quasi-continuous modifications of T{ u.
5.2
Hunt Processes
In this section we will develop the theory of Hunt processes to the extend we need in order to construct such a process by starting with an Lp-sub-Markovian semigroup. Since in the end we want to apply our results to pseudo-differential operators generating Lp-sub-Markovian semigroups we need not to treat most general state spaces. Typically we shall look on subsets of W1. To make the presentation consistent with our approach to Feller processes in Chapter 3 let us assume that the state space is always a Polish space E, i.e. a topological space with countable basis the topology of which can be defined by a complete metric. Sometimes we have to work with the one-point-compactification of E, compare 1.2.1 as well as our consideration in Section 3.2. We will denote as before the one-point-compactification by E&. As usual in the case of a topological space we consider as cr-field on E or E& the Borel-cr-field. We will follow in this section essentially Appendix A.2 in M. Fukushima, Y. Oshima, M. Takeda [115]. Let us start by mentioning some obvious extensions of previous considerations. The first point refers to the time parameter set T of a (Markov) process (Xt)t£T- In Chapter 3 we used almost always the set T = [0, oo), or maybe [0,oo]. However when constructing cadlag-modifications we worked with T = Q. In the following it turns out that we may first work with a process (Xt)teQ+ a n d "extend" it to a process (Xt)te[o,oo]- Thus we will consider in the following the time parameter to belong to some subset T c [0, oo]. Further, we cannot avoid to take more care on nitrations. If (E, B) is a (Polish) state space with its (Borel-)cr- field B, and if /x is a probability measure on B, /i G M\(E), then B^ is the completion of B with respect to /x and B*:=
p) MGMJ(E)
B"
(5.12)
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
228
is the cr-field of universally measurable sets. Moreover if A/71 := {N G B"; n(N) = 0}
(5.13)
and C C SM is a sub-a-field, then we denote by CM = <j(C,A/''i) the completion inB". Let (ft, A, P, (Xt)tej)^ C [0, oo], be a stochastic process with state space (E,B). As usual we denote by (J^)teT\{oo} the canonical filtration, i.e. !Ff = a(Xs; s G T,s < t < oo) and we set J^ = a(Xs;s £ T,s < oo). If (Mt)teT is a further filtration, then (-Xt)tgT is called adapted to (A4t)teT and (-Mt)teT is called an admissiblefiltrationif for each t g T the mapping Xt : fi —» E is .MtB-measurable. In this sense the canonical filtration is the minimal admissible filtration. As before, we call a filtration right continuous if
Mt = Mt+ = p | Ms for all t > 0. s>t
Let us reformulate Definition 3.4.7. Definition 5.2.1. Let £ be a Polish space and E& its one-point-compactification. We call (n, A, Px, (Xt)te[o,oo],(Mt)teio,o0])xeEoi a universal Markov process(with respect to the filtration (Mt)te[o,<x>]) if (Mt)te[o,oc] is a n admissible nitration and it holds i) for each x £ E& a stochastic process with state space E& is given by
{n,A,Px,(xt)tmoo]y,
ii) for each B £ B and each t > 0 the mapping x H-> Px(Xt € B) is measurable; iii) the Markov Px{Xt+s e B|M t ) = P X t (Xs G B) holds for all x e E, B £ B and t, s > 0; iv) it holds PA{Xt = A) = 1 for all t > 0. If in addition we have
•property P x -a.s.
(5.14)
5.2 Hunt Processes
229
v) PX(XO = x) = 1 for all x € E we call the process a (universal) normal Markov process. Remark 5.2.2. A. For simplicity we will use in the following the notation M : = (a,A,Px,(Xt)te[o,oo],{Mt)Kio,00])xeEA
(5-15)
for a given universal Markov process. Moreover we set
M° := (n,A,Px,(Xt)te[0iOo],(F?)te[0iOo])x£EA.
(5.16)
B. Condition ii) differs of course only formally from the analogous condition in Definition 3.4.7 where the measurability of x H-» PX(A), A £ A, is required. C. The point A is often called the cemetry (point) of the process. As before we may associate with a universal Markov process the kernels Pt(x,B)
= Px(XteB)
(5.17)
and, compare Lemma 3.4.14 and Proposition 3.4.18, we can define the resolvent kernels r\(x, B), A > 0, of the process by rx(x,B):=
/ Jo
e-Xtpt(x,B)dt.
(5.18)
Hence we have the operators /•OO
Rxu(x) := / Jo
e-MPtu(x)dt
(5.19)
where as before Ptu(x)= / u(y)p{x,dy).
(5.20)
JE
Clearly the family pt(x,B),t > 0, form a Markov transition function in the sense that they satisfy the Chapman-Kolmogorov equations, compare (3.39). With the same arguments given in Chapter 3 we have Lemma 5.2.3. 7/M = (£l,A, Px, (Xt)te[o,oo], (Mt)te\o,oo)) xeE& isauniversal Markov process and if we replace (Mt)te[o,oo] by the canonical filtration then M° is a universal Markov process too. Further, for all A £ J7^ the mapping x— i > PX{A) is measurable.
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
230
Let M be a universal Markov process with admissible filtration (Mt)te[o,oo] and consider, compare the considerations preceding Theorem 3.5.10, for
P»(A) := / P-(A)M(di) ) /x G JE
M\{E±).
Then ( f 2 , J ^ , P M ) is a probability space. Further, analogous to our previous considerations in Section 3.5, we denote by J7^ and T% the completion of T^ and the completion of J"t° in J7^, respectively. Further we put as in (3.148)
?t:=
f)
J* and T^ :=
f|
T^.
(5.21)
It is now obvious that (^rt°+)te[o,oo]) (^T)t6[o,oo] a n d (^t)te[o,oo] a r e admissible nitrations and we call (Pt)t>o the minimal complete admissible filtration. With the same type of argument used in the proof of Theorem 3.5.10 we have Theorem 5.2.4. Let M have the Markov property with respect to (Ft+)t€[o,oo] then (^T)te[o,oo] o-nd (^rt)ts[o,oo] are complete and rightcontinuous, i.e. they satisfy the usual conditions. Next we adopt the concept of stopping times to the new situation. As usual, see Section 2.6, if (Mt)t>o is a nitration in a probability space (SI, A, P) we call a : SI —* [0, oo] a stopping time if for all t > 0 we have {cr < t} € M.f If (Mt)t>o is right-continuous then cr is a stopping time if and only if {a < t] £ Ait for all t > 0. Furthermore, compare Section 3.5, we set Ma :={AeA; An{a
Mt for all t > 0}.
(5.22)
The following result is proved in M. Fukushima et.al. [115], Lemma A.2.3, and we do not repeat the proof here. For every (f^-stopping time a there Lemma 5.2.5. Let \x £ M\(E&). exists an (?f+)-stopping time a' such that P^(a ^ a') = 0. Moreover, for A £ T% there exists A' £ J^,+ such that P"((A\A') U (A'\A)) = 0 where J^l+ = {A £ J^; A n {a' < t} £ JF°+ for all t > 0}. L e t M = (Sl,A,Px,(Xt)t€[0t0o],(Mt)teio,oc])xeE& be a normal Markov process as in Definition 5.2.1. We need to assume that M fulfills M.6
5.2 Hunt Processes
231
a) Xoo(u;) = A for all w £ ft; b) with C M := ini{t > 0;Xt(u>) = A} it follows that Xt)(tj) = A for all t > C M ;
(5.23)
c) there exists a family of shift operators (Os)ae[o,oc] on Q such that Xt+siu) = Xt(9s(uj))
(5.24)
holds for all t, s > 0; d) for every w g ( ] the path 11-> X t (w) is a cadlag function from [0, oo) to E&. R e m a r k 5.2.6. A. The mapping C in part b) is called the life time of the process M. B. We have already encountered families of shift operators in Definition 3.5.1. Now we are prepared to state in the new context the notion of a strong Markov process. Let M be a (universal) Markov process and {M.t)t>o a right continuous admissible filtration. Then M is said to have the strong Markov property (with respect to (Mt)t>o) if for all (A^t)-stopping times a P»{Xa+t e B\Ma) = Px°(Xt e B)
(5.25)
B £ $( A ) and t > 0 (compare holds P M -almost everywhere for all /x G MI(EA), Definition 3.5.6 and Theorem 3.5.14 taking Z = \B)A further useful reformulation of (5.25) requires Lemma 5.2.7. Let M be a strong Markov process and a and time. Then Xn is M.a -B(oo)-measurable.
(Mt)-stopping
Proof(compare [115], Lemma A.2.4)- First we prove that the process is progressively measurable, i.e. Xt : [0,4] x fi -> EA,(t,w) H-> Xt(w) is B^([Q,i\) ® yWt-^ooj-measurable, compare Definition 3.6.1. This is however done as in the proof of Proposition 3.6.2. Now let a be an (A^t)-stopping time. i > {a{w)M,w) and (s,w) — i > Xs(ui) Then Xa/\t is A^t-S( oo )-measurable since w — are measurable mappings, hence X^At is the composition of two measurable mappings. Thus for B e B(oo) we have {Xa eB}n{a
•
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
232
Having shown all required measurability properties we may give an equivalent formulation to (5.25) by P^(X f f + s € B\A) = E»(PX°(XS
€ B)\A)
(5.26)
for all A € MaDefinition 5.2.8. A. Let M be a normal Markov process. We call M quasileft continuous on (0, oo) if for every sequence (
(5.27)
B. We call M quasi-left continuous upto £ if for every sequence (o-n)n€N of (Ait)-stopping times increasing to a where a < ( a.s. it holds P»{ lim Xan = Xa) = 1.
(5.28)
n—*oo
Finally we may define a Hunt process. Definition 5.2.9. Let M = (ft, A,PX, (Xt)t€[o,oo]> (Mt)te[o,oo])xeBaL be a normal strong Markov process satisfying also M.6. If in addition M is quasi-left continuous with respect to (Mt)t>o then M is called a Hunt process. If M is quasi-left continuous upto ( then M is called a standard process. From our considerations in Section 3.5 it follows Example 5.2.10. Every Feller process is a Hunt process. When defining a universal Markov process we have already fixed the filtration (A4t)te[o,oo]- This makes in our opinion the definition easier accessible. However often it is necessary or helpful to pass from M to M' only by changing the filtration. Therefore in [115] M. Fukushima et.al. gave a slightly different definition. Instead of fixing the filtration they require the existence of an admissible nitration (having certain properties). Thus in their case we may first consider (Cl,A, Px, (Xt)te[o,oo])x£E£k a n d t n e n by choosing an admissible filtration we will arrive at a Hunt process, a standard process, etc. This point of view is taken in the following theorem. Theorem 5.2.11. Suppose that there is a filtration (Mt)t>o such that becomes a Hunt process. Equivalent for M — (fi, A, Px, (Xt)t>o, (M)t>o)x€E this is each of the following conditions:
5.2 Hunt Processes
233
^ a Hunt process where as before (^)i>o is i) (p,,A,Px,{Xt)t>o,{^:t)t>o) the minimal complete admissible filtration; ii) for each /J. G M\{E&) the filtration {!F^)t>o is right-continuous and (5.25) as well as (5.27) hold when considering the process
{n,A,p*,(xt)t>0,(f?)t>0)xeEA. Proof(Sketch, compare [115], Theorem A.2.1). Clearly, ii) implies i) and from i) we may deduce the original assertion. Thus it suffices to prove that (^t)t>o)xeE if M is a Hunt process it follows that {Vt,A, Px, (Xt)t>o, satisfies ii). Since by assumption J^+ C Mt+ = M it follows that (tt, A, Px, (Xt)t>o, (^f+)t>o) e E is a universal, normal strong Markov process. Further, from Theorem 5.2.4 we deduce that {F?)^ i s for each /i G M\{E&) right-continuous. Next let a be an (.FtM)-stopping time and A 6 ^ . Further choose an (j^ + ) : stopping time a' and A' G F^i+ accordingly to Lemma 5.2.5. Now (5.25) follows for P<",cr and A since it holds for P ^ c r ' and A'. With a similar argument one can prove (5.27) to hold. • Before we proceed further it might be helpful to make already now a comment on the construction of a Hunt process by starting with a certain Lp-s\ibMarkovian semigroup (Tt )t>o- In case of a Feller process we first constructed a canonical process using the Kolmogorov procedure and then we proved the existence of a cadlag-modification. We know already that starting with (Tt )t>o we can not use the Kolmogorov construction straightforward. The idea is to construct for the time parameter set Q+ using {Tt )t>o a universal normal Markov process for the state space E&\N, N will be a certain exceptional set. This process will already have nice path properties. Then we will extend this process to a process with time parameter set M + . Thus paths properties will not follow but must be implemented into the construction. For this reason we need much more a priori knowledge on Hunt processes as it was needed in case of Feller processes. In particular we have to introduce certain potential theoretical notions by using the process and we will identify them later on with analogous notions associated with (T^ ) t > 0 . Let M — (fl, A, Px, (Xt)t>o, (Mt)t>o)x€B be a Hunt process. Let us introduce aB{u)) := inf{t > 0; Xt(w) G B},
(5.29)
:= inf{£ > 0; Xt{w) G B},
(5.30)
&B{U>)
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
234 and
6 B},
(5.31)
where in the moment B C E is just a set. As usual the infimum of the empty set is by definition equal to +oo. Using the shift operator we find easily s + aB(es(w))
= ini{t > s; Xt(u) e B}
s+
= inf{* > s; Xt{w) € B}
and <JB(QS{U))
implying aB =lim(s
+ aB(0s(oj)))
(5.32)
=\ha(s + &B(03(u;)))
Comparing with (3.154) and (3.155) we may call <JB the hitting time of B and &B the entry time of B. If B C E is an open set then we find first that
recall that 11-+ Xt(u>) is a cadlag function, and further we have for an open set B
\J
{Xr £B}€??.
(5.33)
r€Qn(0,t)
Hence OB,GB and
pv-a.8.
(5.34) be a sequence of open Then it holds for all (5.35)
5.2 Hunt Processes
235
Proof. Obviously, for all t > 0 and n £ N we have A t (B) C At(An), and further, for all n £ N it holds &An <
find immediately that & < &B • On the other hand, by the quasi-left continuity of M we find for all \L £ M\{E^) that P»\ lim X&An = X&; a < oo) = P»{a < oo} ^•n—*oo
'
holds. Since the paths of M are right continuous it follows that X&An £ An and therefore it follows that X& = lim X&An £ p ! An = B which implies &B < & P M -a.s. on {& < oo}. Thus we have P^\ lim aAn = bB j = 1 '-n—>oo
'
(5.36)
and therefore {&An ^ OneN decreases to {&B < t) P^-a.s. which yields
{&B < t} = f| At(An)
P"-a.s.
n>l
since {&B
At(S)=
|J
{l r e5}u{I ( e5}e^,
reQn(o,t) and therefore by Lemma 5.2.12 and the definition of Tt we find for every compact set K C E that A t (iT) £ Tt. Now, fix i > 0 and fj, £ M\{EA) and define the (set-)function i(tlM) : C —> [0,1] by J(tiM)(B):=P"(At(B)). If no confusion is possible we write shortly I(B) instead of I(t,fi)-
(5.37)
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
236
Lemma 5.2.13. Fix t > 0 and // £ Ml(EA). i)ifA,BeO
For I = I{Ull) it holds
and Ac B then I (A) < I(B);
ii) for A,BeO
(5.38)
it holds I (A U B) + I {A f)B)< I (A) + I(B);
in) for BnGO,n£N,
(5.39)
such that Bn | B £ O it follows
that I(B) = lim I{Bn).
( 5 - 40 )
n—»oo
Proof. The first assertion is obvious and so is the third. In order to prove (5.39) take A, B € O and observe that I{A U B ) = P " (At(A U B)) = P"(At(i4) U At(B)) =
P»(At(A))+P»(At(B))-P»(At(A)nAt(B))
= I(A) + I(B) - P"(At(A) n At(B)). But P»(At(A) n At(B)) > P»{At(A <1B))=I(AD B) implying now that I(A UB)< I (A) + I(B) - I (A n B)
proving (5.39).
•
Remark 5.2.14. In virtue of Theorem II.3.1.15 the above lemma, Lemma 5.2.13, implies that we may extend I{t,n) to an outer Choquet capacity by defining for B <E V(E) capkM)(B) := inf{7(tiM)(^); A e OB and B C A}.
(5.41)
Moreover, by Theorem II.3.1.13 all analytic subsets of E are capacitable with respect to capTt ,. Now we can prove Theorem 5.2.15. For all Borel subsets B c E the functions CTB^B and a^ are (ft)-stopping times and it holds for all fi G M\{E) O-B
(5.42)
Proof. As stated in Remark 5.2.14 a Choquet capacity is given by cap^ > when restricted to the analytic subsets of E. Further, by Lemma 5.2.12 we have for a compact set K C E that cap*^t^(K) = P»(At(K)). Let B C E be an arbitrary Borel set. Then there exists a decreasing sequence (An)n^
5.2 Hunt Processes
237
of open sets and an increasing sequence (-R'n)neN of compact sets such that Kn C B C An and further lim 7( t , M ) (A n )= lim cap( t M ) (X n ). n—>oo
n—>oo
Moreover we have
|J At(Kn) c At(5) C f j At(An) n£N
ngN
and
P"{(f|At(A,)-UA'(^«))} = 0 implying by Lemma 5.2.12 that At(B) G J"t. Since {Tt)t>o is right continuous we find
{&B
showing that &B is a stopping time and an analogous reasoning, note that the paths all have left limits, gives that cr^ is an (^t)-stopping time too. In addition, since u> >-> ^ + &B(0X{UJ)) is an (J"t)-stopping time for each n € N and since (^ +
P^{A't(B)\At{B)}
Since P ^ { ( f l n e N A t (A n ))\A t (B)}
= 0 which implies &B = CTB^B
= O w e find that
and therefore (TB < a^ P^-
a.s. Hence we arrive at
(-+&B{0I(U>)))
P^-a.s. and the theorem is proved.
< lim (~ + a^(6i{u>))) = a~(w) •
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
238
To proceed further we state the Blumenthal 0-1-law, compare Theorem 3.5.15, for Hunt processes: For B G TQ and x G E it holds PX{B) = 0 or PX{B) = 1.
(5.43)
(The proof does not differ much from the proof given in the Feller situation.) Definition 5.2.16. Let M be a Hunt process. We call a set B C E& nearly Borel measurable (or nearly Borel) if for every fi e ftA\(EA) there exist Borel sets Bi,B2€ #(A) such that Bi C B C B2 and P»{Xt G B2\BX; for some t > 0} = 0. For a fixed Hunt process M we denote the system of all nearly Borel measurable sets by i s again an (Jrt)-stopping time. In particular, {erg > 0} G ^O and according to the Blumenthal 0-1-law it follows that PX{CTB > 0} G {0,1}. Definition 5.2.17. Let M be a Hunt process and B G B(A),n- We call x £ E a regular point of S if Px{
of compact sets Kn C B (5.44)
B. If n(B\Br) — 0 then there exists a decreasing sequence (An)neN of open sets B C An such that P»\\im
o-An=aB}
= l.
(5.45)
5.2 Hunt Processes
239
Proof. From the definition of nearly Borel sets it is clear that we may assume that B is a Borel set. A. Let (rfc)neN be an enumeration of Q+. For k > 1 there exists an increasing sequence (/£"*) f AUk{B) P^-a.s. as n —> oo. Set /^ n := / ^ U K% U . . . U if™. Then we obtain an increasing sequence (if n )neN of compact subsets of B and therefore (oxJneN decreases to a limit &,& > &B- Since {&B
{&B
Ark(B)\Ark(Kn)
for each n, k it follows that P^&B
P»(Ark(B)\Ar(Kn)) -> 0
as n —> oo implying that lim tr^n = <7B P^-a.s. n—^oo
Now we apply the above result to \ik •= fJ-Pi. ; M-PiC^) = Jpt(x,A)n(dx). Thus for eachfc> 1 there exists an increasing sequence (^fc,n)neN of compact subsets Kk,n C S such that &Kk n i &B P^-a.s. which means t r ^ n o 9± [ &B ° 0± P M -a.s. Let iiTn := (Jfe=i ^fc,n and note that <7/fn o6 1 ! \ooQi P^-a.s. as A; —> oo. Moreover, ^ +
= h'm ( - + fc^ooVA;
&B
° Oi ) = lim lim ( - + o-jfn o 0A ) */ fe-.oon^ooVA; */
= lim lim (- + &Kn °6i J = lim
*/
n—>oo
P M -a.s.
where we used (5.32), and part A. is proved. B. We may argue analogously as before to get
P"{lim «j Aii = CTB j = l even without the condition ^,{B\B^) = 0. But if /j.(B\B^) = 0 then P^i&B = <JB) = 1. Now part B follows from the fact that for an open set An it holds &An = £Mn.
•
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
240
L e m m a 5.2.19. For a Hunt process M, /i G Ml(E) and B G
< oo}.
(5.46)
Proof. By definition of UB we have X t ^ JB for 0 < t < OB and for XaB £ B we have aB = aB + &B ° #B- Therefore it follows using the strong Markov property that P»{XaB
$ B; OB < <x>} = PM{XCTB <£B;aBo =^
Thus on {XffB £ (5.46).
B,<JB
(^{(TB
9aB =0,aB<
oo}
= 0}; XaB iB,aB
< oo} we have P^-a.s. that X ffB G B (r ^ implying •
Recall that in the analysis (of the paths) of the canonical process associated with a Feller semigroup excessive functions have been of fundamental importance. This notion is also central for the analysis of Hunt processes. Definition 5.2.20. Let M be a Hunt process with associated family of kernels pt(x,A). A universally measurable function u : E —> K is called a-excessive, a > 0, with respect to M if u > 0 and for all x £ E it holds e~atPtu{x)
T u(x)
as i | 0.
(5.47)
If a = 0 we call u simply an excessive function with respect to M. We denote by S^ = S^ (M) the family of all a-excessive functions with respect to M. The operator Pt is of course defined as usual by (5.20). Note that e~atPtu(x) | u{x) implies e~atPfu(x) < u(x), hence u must be a-supermedian in the sense (analogous to) Definition 3.4.13. Clearly non-negative constants are a-excessive as well as the sum of two a-excessive functions and the positive multiple of an a-excessive function are a-excessive too. Further, if Ra is defined by (5.19), then for / > 0 the function u := Raf is a-excessive. This follows from
e~atPtRaf= rV a «+ s >/Wds= Jo
at
Jt
re-arPrfdr
at
implying both e- PtRaf < Raf and e~ PtRaf T Raf- Moreover, if (un)n£N is an increasing sequence of a-excessive functions converging to u = lim un, then u is a-excessive too which follows from monotone convergence.
n—*oo
5.2 Hunt Processes
241
Proposition 5.2.21. A. Fora>0 it holds 5 ( Q ) C f]0>a S (/3) . B. A universally measurable function u belongs to S^ if and only if 0Rp+au < u for all 0 > 0 and 0R@+au —> u as 0 —> oo. Proof. A. Since for u e S^ we have e~atPtu Q e -(a+/3)tp tU | u . B. If u € S( > then
0Ra+(}u = /3 fX e-^+MPtudt = 0 f Jo
Jo
Jo
1 u it follows immediately that
e~0te-atPtudt
e'^dtu = u,
and further
(3Ra+f3u= rV*(e- Q t P< U )diTu Jo
as (3 —> oo by monotone convergence. Hence for u € 5 ' ° ' it follows that 0Rp+au < u and )3Rp+au f u holds. Conversely, if these two properties hold for some a then by the resolvent equation Rp — R1 — (7 — fyRpRy it follows that both conditions hold for every value larger than a, hence, in view of part A, without loss of generality we may assume a > 0. It follows that un := uAn satisfies (3Rp+aun < un, recall that Pt is monotone in the sense that u > v implies Ptu > PfV. By the resolvent equation we find now for 7 > f3 0R0+aUn = (3Ry+aun + (7 -
P)Ry+a(PRf3+aun)
< PR-^+aUn + (7 - P)Rj+aUn
= 7il 7+Q U Tl ,
(5.48)
and as n -> 00 we obtain /3Rp+au < jRsy+aU which implies that 0 1—> 0Rp+aii is an increasing function satisfying 0Rp+au < u. Applying the resolvent equation once more we find R0+aun
= Ra(un - 0Ra+0un),
(5.49)
a
and therefore Rp+aun € S^ \ note that un — 0Ra+pun > 0 and it is universally measurable too. Now, as 0 —> 00 it follows that 0Rp+aun increases to some gn G S(Q) and as n —> 00 it follows that (gn)n€N increases to some g 6 S^a\ By the construction we have gn < un implying g < u. However for 0 > 0 it holds lim 0Rf}+aun
n—foo
= 0R0+au
< g.
If now u satisfies the assumption 0Rp+otu —* u as 0 —> 00, then it follows for 0 —> 00 that u < g, i.e. u = g and therefore u 6 S^a\ O
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
242
Corollary 5.2.22. For u G S^a\a > 0, there exists a sequence (hn)neK of bounded non-negative universally measurable functions hn such that Rahn increases to n as n —* oo. Proof. When taking in (5.49) f3 = n we get with un := u A n = Ra(n(un
nRn+aun
- ni?n + a u n )).
(5.50)
Since f3Rp+aun is increasing in both P and n it follows from the above proof that nRn+aun increases to u as n —> oo, and therefore we may take hn := n(un - nRn+aun). • Now, using the strong Markov property for M in the form Ex(u{Xa+t)\Ftr+)
= Ptu(Xa)
we find for any non-negative universally measurable function u and (!Ft)stopping time a
E^e-^RauiX*)) =EX (e-«CT J
= Ex(e~aa p
e-^iPtU^X^dt)
e-taEx{u{Xa+t)\Tu+)dt)
=EX (e-aaE*{J™
e-tau{Xa+t)dt\Ta+))
=Ex(e~aaEx( r
e-^r-°\{XT)&r\Ta+))
J (J
X
x
=E (E { r
e-aru(Xr)dr\Fa+)")
J (J
x
=E ^re-aru(Xr)dr), i.e. we have Ex (e-a°Rau{Xa))
=EX([°°
e-atu{Xt)dt).
(5.51)
Remembering the fact that every a-excessive function u, a > 0, is the limit of functions of the type Rahn, hn as in the proof of Corollary 5.2.22, we find Ex{e-a°u{Xa) < u(x),
(5.52)
5.2 Hunt Processes
243
where (5.51) is used as follows: With hn := n(un — nRn+aUn),un = u An, we have by (5.51)
E*(e-aaRahn{Xa)) < / Jo /•OO
= / Jo
= Ex( r
e-athn(Xt)dt)
e-atEx(hn(Xt))dt e-atPthn(x)dt
= Rahn(x)
and in addition lim Ex(e-ac7Rahn(XtT))
T u(x), = Ex(e-aau{Xa))
holds. Fix a
nearly Borel set B and define for A £ B, a > 0 and x G E the kernel
H%{x,A) := Ex{e-a^XA{XaB)).
(5.53)
For a non-negative measurable function v we denote by H^v the function obtained by integrating v against this kernel:
H%v(x) - Jv(y)H%(x,dy)
= ^( e - Q f f ^(X C T j 3 )).
(5.54)
If u is a-excessive we deduce from (5.52) and (5.53) that H%u{x) < u(x) holds. Since e~atPt is a positivity preserving operator we deduce further that e~atPtHgu(x) < e~atPtu{x) < u(x), i.e. for an a-excessive function u the function H^u is a-supermedian. If / > 0 is a bounded universally measurable function then we find further
e-atPtH%Raf{x) =E*(
/ f°° X
Jt+aBo6t
\ e-arf(Xr)dr) '
which implies as t —> 0 that e~atPtH£Raf increases to Raf- Hence for aexcessive functions of type u = Raf we have proved that H%u is again aexcessive. Now, using as before the approximation of an arbitrary a-excessive function u by a sequence of a-excessive functions of type Rahn, compare Corollary 5.2.22, we arrive at Lemma 5.2.23. If u is an a-excessive function with respect to M, then it holds (5.52) and H%u is for every nearly Borel set B once again a-excessive.
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
244
In particular we may take n = 1 to find that x ^ p%(x) := Ex{e-aaB)
(5.55)
is for every nearly Borel set an a-excessive function. Definition 5.2.24. We call Hg the a-order hitting distribution. Our aim is to prove that every a-excessive function u is nearly Borel measurable and that t — i > u(Xt) is Px-a,.s. a cadlag function. For this we need further preparations. First note that our considerations on cadlag functions made in Section 3.3 carry over when W1 is substituted by a Polish space and a topology generating metric is fixed on E. Let u be a bounded nearly Borel measurable a-excessive function with respect to a Hunt process M. Further let B := {y £ E;u(y) > a}. For x £ E such that u(x) < a we find first for any compact set K c B aEx{e-°"TK) < Ex(e-a<7Ku{XrK))
= H%u{x) < u(x).
Using Theorem 5.2.18.A we may conclude further that aEx(e~atTB) < u(x) < a implying that Ex(e~aaB) < 1 which yields that x £ B ( r ) . Next consider B = {y £ E; u(y) < a} and a point x £ E such that u{x) > a. Now Proposition 5.2.21 and Corollary 5.2.22 implying that there exists a universally measurable function / > 0 such that a < Raf(x) and Raf <• u- Using (5.51) we arrive at
a < Raf(x) = EXU°°
e-atf(Xt)dt)
= Ex U°° e-atf(Xt)dt) + Ex [j^
e-atf(Xt)dt)
= Ex(e-a°BRaf(XaB)) + EX(£B
e-atf(Xt)dt)
< aEx{e-a°) + Ex ( f * Since EX(J°B
^(irr) -p^g
e-
we
at
f{Xt)dt)
[ j a v e proved
e-
at
f{Xt)dt).
> 0 it follows that Px{uB
> 0} = 1, i.e. x £
{y £ E; u{y) > a } « C {y £ E; u(y) > a}
(5.56)
{y £ E; u(y) < o}W c {y £ E; u{y) < a).
(5.57)
and
5.2 Hunt Processes
245
L e m m a 5.2.25. Let M be a Hunt process and u a bounded nearly Borel measurable a-excessive function with respect to M. Then the mapping t \—• u(Xt) is Px-a.s., x £ E arbitrary, a cadldg function. Proof. For k > 1 define the sequence (o-^)keN,n<sN0 of (.^-stopping times by
4 = o, G\ := inf{t > 0; \u{Xt) - u(X0)\ > ^ } ,
(5.58)
For B := {y£ E; \u(y) - u{x)\ > ^} we find a\ = aBPx-a.s. and by (5.56) it follows that B ( r ) C {y G E; \u(y) - u(x)\ > ^}. Moreover from Lemma 5.2.19 we deduce
Px{\u(Xa>) - u(X0)\ > p o\ < oo} = Px{a^ < ex)}.
(5.59)
We claim now (e~Q
Ex(e-«<^u{X<+i)\A)
=
E*(e-°"'nE*(X
KE^e-^uiX^A) implying
Ex(e-a<^u{Xakn+i)\J^<)
Px-a.s.
< e-^'uiX^)
i.e. we have proved that (e~aa"u(XrTk),Fak)neN
is a positive and bounded
supermartingale, hence by Theorem 2.6.25 the limit lim e~aa^u{Xak) n—»oo
n
exists
P x -a.s. and is a bounded random variable. Using the relation cr^+1 = a^ + a i ° ^tr*) (5-59) and the strong Markov property for M, we find \u(x
px & s
- --
on
( w ; ^n+iC^) < °°}-
lim e~a<J™u(X(7fc) is P^-a.s. n—too
bounded, we must have
lim (j^ = oo for k > 1. This implies that t >-> u(Xt) has P x -a.s.
n—»oo
only
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
246
finitely many e-oscillations on finite intervals [Ti,T2] C [0,oo], hence it has right and left limits almost surely, compare Lemma 3.3.8. Applying now the "standard" regularisation procedure, compare the proof of Theorem 3.4.19 the lemma follows. • Finally we drop the assumption that u must be bounded or nearly Borel measurable. Theorem 5.2.26. Let M be a Hunt process. Every a-excessive function with respect to M is nearly Borel measurable and for all x £ E the mapping t \—> u(Xt) is Px-a.s. a cadlag function. Proof. First we show that we may reduce our considerations to bounded functions. For this let u be an unbounded a-excessive function. The function v W = J+i> 0 — * — °°! ' s strictly increasing, concave and of course continuous i » j ^ . Hence v(x) =
e-atPtv(x)
= Ex(e-atv(Xt)) < Ex{
where we used in the last step that u is a-excessive. Thus we have e~atPtv(x) < v(x). Thus we have e~atPtv(x) < v(x). Next fix x £ E and e > 0 to define
A{x,e) := {y e E\ \v(y) - v(x)\ > e} ={y G E; u(y) > ip~l{v{x) + e)} U {y G E; u{y) < ^\v{x)
- e)}.
By (5.56), (5.57) every regular point of A(x,£) is contained in {y G E; \v(y) — v(x)\ > e} and if x G A^Je) then P x -a.s. we have v(Xt) -* v(x) as t —> 0. But for x £ Af. e, it follows that \v(Xt) — v(x)\ < e for t G (0, So) with some so > 0 which together yields
e~atPtv(x) = Ex(e-atv{Xt))
-» v(x)
as t - 0,
i.e. v is a-excessive. Now suppose that u is bounded. By Lemma 5.2.25 it remains to prove that u is nearly Borel measurable. We apply Proposition 5.2.21 and its Corollary
5.2
Hunt Processes
247
and may assume that u — Raf with a universally measurable function / > 0. For (i £ Ml (E) we define the measure v by v{B)=
fra(x,B)li(dx),
compare (5.18). Since / is universally measurable there exists non-negative Borel functions /i,/2 such that fi < f < fa and /i = fa */-a.e.This implies that Rafi and Rafa are Borel measurable and Raf\ < Raf < Rah M"a-e- I n addition it follows that
E»(Ra(fa ~ h)(Xt)) = [ PtRa(fa - h)(x)n(dx) JE
< eat [ Ra(fa - fi)(x)fx(dx) JE
at
=e
I (fa - /iXj/Mdy) = 0,
JE
i.e. Rafi(Xt) = Raf2{Xt)P»-a..s. for each t > 0. But Rafi{Xt) and Raf2{Xt) are right continuous by Lemma 5.2.25 which implies Rafi{Xt) = Rah(Xt) for all t > OP^-a.s. from which we deduce that u = Raf is nearly Borel measurable. • We are going to introduce some notions which we shall refer to as "probabilistic" potential theoretical notions, and in Chapter 6 we will identify these notions with "analytic" potential theoretical notions which we already encountered in volume 1 and 2. Definition 5.2.27. Let M be a Hunt process. A. A set A c E is called polar if there exists a nearly Borel set B £ B^ such that AcB and Px(aB < oo) = 0 for x £ E. B. A set A c E is called thin if there exists a nearly Borel set B e B^ such that A C B and B^ = 0. C. We call A c E semipolar if there are thin sets (An)neN, An C E, such that D. A universally measurable set B C E is said to be of potential zero if ra(x,A) = 0 for all x G £. Remark 5.2.28. A. Recall that £ ( r ) = 0 for £ e £
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
248
Theorem 5.2.29. Let M be a Hunt process. A. If B C E is a nearly Borel set then B\B^ is semi-polar. B. If A c E is a semipolar set then {t >0;XtE A} is countable (or finite). In particular there exists B C E, B € B^n\ such that A C B and B is of potential zero.
Proof. A. Let B e B{n) and consider Bn := {x e B; pB(x) < 1 - £} where pB{x) = Ex(e~crB), compare (5.55). Since Bn c B, hence aB < crBn P x -a.s. we find pBn{x) < pB(x), i.e. Ex{e~aB^) < Ex(e~aB). Thus if x € B{n\ i.e. Px{°Bn > 0} = 0 then Ex(e~aB) = 1 implying Ex(e~aB"-) = 1, i.e. we have Bn C {x; pl(x) = 1}. Since pB is 1-excessive we know by (5.57) that x £ E such that p\(x) = 1 does not belong to B^' implying that £?„ = 0, i.e. Bn is a thin set. But B\B^ = \JneN Bn which yields that B\B^ is semipolar. B. Since a semipolar set is contained in a countable union of thin sets we may assume that A is thin. Now let B be a nearly Borel set such that A C B and BW = 0 . Take Bn := {x e B; p\(x) < 1 - £} as before and consider the stopping times
Ex(e~
and an iteration of this argument yields Ex(e-a"'k)
< (1 - -) f c -» 0 as k -* oo.
(5.60)
Thus we must have P x -a.s. that lim (Tn^ = oo. Moreover, Bn = 0 gives fc—»oo
B = \JnenBn and Xt £ Bn for any t,crn,k < t < an,k+i- Thus Px-almost surely the set {t > 0; Xt 6 S} is contained in the set {crnjfc; n > 1,A; > 1} which is a countable set. Now the final statement is easy: just notice that ra(x,A)=
f°° Jo = (°° Jo
e-at(PtXA)(x)dt e-atEx(XA(Xt))dt
and the theorem is proved.
D
5.2 Hunt Processes
249
Definition 5.2.30. Let M be a Hunt process and A C E. We call A finely open if Ac is thin at each point of A, i.e. for x e A there exists a nearly Borel set B = Bx e B(") such that Ac
take ft^eR such that ft < ft. Set B = {x £ E; ft < u(x) < ft}. Since t i-> Xt is right continuous at t = 0 we find that PX{CT.BC > 0} = 1 implying that B is finely open, i.e. u~ 1 ((ft,ft)) is finely open for every open interval which yields that u is finely continuous. Conversely, suppose now that u is finely continuous. For q £ Q let Bq :— {x £ E; u{x) < q}. Since u is also nearly Borel measurable it follows that Bq is both a nearly Borel set and finely open. Further, since PQ (X) = Ex(e~
q£Q}.
(5.61)
We have proved that Px(£lo) = 1 and therefore, if we can prove that 11-> u(Xt) is right continuous for all u G fi0 we have proved the converse direction of the theorem. Suppose that there is some u € Qo such that t i-> u(Xt{uj)) is not right continuous. Then there exists t > 0 such that limsupu(X s (u;)) < u(Xt{u)) slt,s>t
(5.62)
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
250 or
limsupu(X s (w)) >u(Xt(w)).
(5.63)
slt,s>t
Suppose that (5.62) holds — the second case can be treated by an analogous argument. If (5.62) holds, there exists a rationed number q £ Q and a sequence (tn)n£N, tn > t,tn
-> t, SUCh t h a t
lim u(Xtn{uj))
n—>oo
u(Xt(u)),
and consequently Xtn (w) G Bq since Bq is finely open and u is finely continuous. Now, from P*{£; inf{t > 0; Xt{w) G 5 f } > 0} = 1 it follows that P^ (Xtn) = EXt^^(e~
q
n—>oo
"
Xt(tj) belongs to the regular points of Bq, note that Pg (X t (w)) = 1 means = 1 implying PXtiu>)(aBq > 0) = 0. But {x 6 E; q < u(x)} that EXt^(e-aB») is finely open and therefore we have a contradiction to q < u(Xt{oj)). • Next we want to study how a given Hunt process M with state space E behaves when we restrict it to some subset E C E or, if E c E', whether it is possible to extend M to the new state space E'. Definition 5.2.34. Let M be a Hunt process and E C E be a nearly Borel set. We call E an M.-invariant set if with n := {w e Q; Xt € E{A) or X t _ G E{A) for all t > 0}
(5.64)
it holds PX(Q) = 1 for all xeE.
(5.65)
Since Cl = {LJ £ Q; &gc = oo or
(5.66)
5.2 Hunt Processes
251
We will denote the one-point-compactification of E by E& and the extra point can be taken to be the same when constructing E&. Furthermore we may extend the probability measures on E& to probability measures on E& and thus we may consider M\(E&) as a subset of M\(E&). Theorem 5.2.35. Let M be a Hunt process. If E C E is a Borel set and M-invariant, then M\g is again a Hunt process. Proof. The conditions M.1-M.6 are clear for M|g. In order to prove that M|jj is a Hunt process we prove ii) from Theorem 5.2.11. For this take [i e M\{EA) C M\{E). It follows now from J® = F? n ft and ft G J> and P"{0.) = 1 that FtM = f f f l f l C Tt and therefore ii) from Theorem 5.2.11 for M implies this property for M|^. • Without proof we state Proposition 5.2.36. Let M be as in Theorem 5.2.35 but assume that E is only nearly Borel measurable. If E is M.-invariant then M|^ has still all properties of a Hunt process except that in M.2 the Borel-measurability must be substituted by the B(n)-measurability. In order to discuss extensions of M let us change a bit our point of view. Let Eo be a Polish space and E c E$ is a Borel subset of £o and at the same time the homeomorphic image of a Polish space E*. Suppose we are given a Hunt process with state space E (or better E*). Is it possible to extend it as a Hunt process with state space E\, E C E\ C Eo, E\ being a Borel set of Eo? In some sense the answer to this question is easy and comparable with the construction of a Markov process associated with a sub-Markovian semigroup which is not conservative. Theorem 5.2.37. Let E C Ei C Eo be as above and let M = (n,A,Px,(Xt)t>Q,(Mt)t>o)X£B be a Hunt process with state space E. Then there exists a Hunt process (1)
M = ((1)tt, ("A ¥ , (Wjfcteo, ((1)Mt)t>o)x&Ei
such that E is (1)'M-invariant and ( 1 ) M| £ = M where ( 1 ) M | B denotes the restriction of^M to E. Further for every point x G E\\E it holds Wp*{WXt = x, for allt > 0} = 1.
(5.67)
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
252
Proof. We set fi := Ei\E,B{ty wx. We add fi to fi by setting
(1
(1)
= S ( £ i \ £ ) and for x G E{\E we also write Q := fi U H and define
U:={Aul; AeMandleB(fi)},
(1)
XooM := A d)P(r).= /pa:(rn")
.ie£4,re(1U D
Let M be a Hunt process with state space E and let E2 C E be a nearly Borel set. Define B by E = E2U B and introduce
i,V) = ( * [A
M
- o ^ <*•<»> ,i>crB(w)
(5.68)
and X^(UJ) = A. The process ME2 = (n,M,(X?)t>0,Px)x(_E2 is called the part of the process M on E2. The following result is proved in detail in M. Fukushima et.al. [115] and we refer to this monograph for the proof. Theorem 5.2.38. The part M B , of M on E2 is a Markov process on [Ei,B(E2)) and has the transition function P°(x,A) = Px{XteE;
t
Remark 5.2.39. In [115], Theorem A.2.10, more details on M#2 are proved.
5.3
Hunt Processes Associated with ZAsub-Markovian Semigroups
A nowadays classical result due to M. Fukushima states that to every symmetric L2-sub-Markovian semigroup (T{ )t>o acting on L2(X,n), where X is a locally compact separable metric space and /z is a positive Radon measure with full support, i.e. supp/x = X, there exists an invariant set Y C X such
5.3 Hunt Processes Associated with Lp-sub-Markovian Semigroups
253
that Yc has capacity zero and we can associate with (Tt )t>o a Hunt process ( ( X t ) t > 0 , P x ) x e y such that f^i{x) = Ex(u{Xt))
,ueD((id-A^)i),
(5.69)
holds. As usual v stands for a quasi-continuous modification for v G £>((id — A^)i). M. Silverstein [331] gave a somewhat different proof of Fukushima's result, still the standard reference is the monograph [109] of M. Fukushima and its revised and enlarged edition [115] written jointly with Y. Oshima and M. Takeda. Extensions to more general state spaces and to nonsymmetric L2-sub-Markovian semigroups have been given among others by S. Albeverio, Z.-M. Ma and M. Rockner, S. Carrillo-Menendez, Y. LeJan, Z.M. Ma, L. Overbeck and M. Rockner, Y. Oshima — and we will make some remarks in the Notes to these extensions. In [212] H. Kaneko, based on joint work with M. Fukushima [114], investigated the question whether Zp-sub-Markovian semigroups (Tt )t>o do generate Hunt processes upto a negligible set of (r, p)-capacity zero. His results depend on the fact that certain propositions of an L2-potential theory extend in a suitable way to the Lp-situation. Once this is secured the construction of the process goes along the lines of M. Fukushima's proof. In this section we want to discuss the construction of a Hunt process associated with an Lp-sub-Markovian semigroup, but we do not intend to be self-contained. More precisely, we refer the reader to M. Fukushima et.al. [115], Chapter 7: "Construction of symmetric Markov processes", where the symmetric L2-case is discussed in detail. Here we work out the potential theory needed to apply Fukushima's proof and then we outline this proof briefly. We end this section by discussing some examples. For simplicity we consider in the final result only the state space K n . Let us start by recollecting some considerations of Chapter II.3. In the following (T t (p) ) ( > 0 , or (Tt)t>Q if no confusion may arise, denotes an Lp-subMarkovian semigroup on LP(M"), 1 < p < oo. The generator of (T t ) t > 0 is denoted by (A, D(A)) and the (r,p)-Bessel potential spaces associated with (Tt)t>o are defined as in (II.3.38) and (II.3.3.9). In particular we have Tr,v = D ( ( i d -A)*)c
Lp{Rn)
(5.70)
and V^u = (id - A)~iu = - i - f ° tS-V'Ttudi. 1
\2> JO
(5.71)
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
254
Recall that on J-r>p we introduced the capacity cap r p (G) = inf{||u||P.ri; ; u € Tr# and u > 1 a.e. on G},
(5.72)
where G c K n i s open and
N I ^ , , = ll(id-^)*«IU»-
(5.73)
We have shown in volume II that cap r p extends to a Choquet capacity and that for every Borel set A with caprp(^4) < oo there exists an equilibrium potential e^, i.e.
caPr]P04) = | M K P .
(5.74)
Further we discussed in detail (r, p)-exceptional sets and (r, p)-quasi-continuous modifications of elements in TTtP. We will come back to these results and will slightly extend them. But first we need to relate our previous results of an Lp-potential theory to results to non-linear potential theory in the sense of Maz'ya-Havin [262] and Adams-Hedberg [1]. In doing so we will follow closely our joint paper [201] with R. Schilling. The first problem we need to address is when V} has a suitalbe kernel representation (extending in some sense the result [5] of S. Alberverio and Z.-M. Ma, compare also Theorem II.3.3.40). We start with Definition 5.3.1. A linear operator T : Lp(Rn) -> L P (R") is said to be an integral operator if there exists a B^ ® B^-measurable kernel function (or kernel) K : K" x Rn -» R such that K(X,-)U G Z^IR71) for all u £ Lp(Rn), x e R n , and Tu(x) = f
n K(x,y)u(y)\< \dy)
,u G Lp(Rn).
(5.75)
Lemma 5.3.2. A. A sub-Markovian operator T : Lp(Rn) -> Lp(Rn), l
5.3 Hunt Processes Associated with Lp-sub-Markovian Semigroups
255
Suppose that T is not bounded. Then there exists a sequence {uu)v^, uv £ Lp(Rn), such that \\uv\\LP < 1 and ||Tu,,||x > 4". Since |||U,,|||LP = \\UV\\LV and ||Tu^||x < H^i^i/Hlxi we may assume that all uv are non-negative. It follows that u := Y^Li 2~vuv e Lp(Rn) and for each v0 e N we find Tu > T(2-Vouvo)
= 2-"°TuV0.
Hence ||Tu|U > 2~V0\\Tuv0\\x > 2~VoAu° = 2U0 implying ||Tu||x = °o which contradicts the assumption that T maps Lp(M.n) . • into X. Theorem 5.3.3. Let T : Lp(Rn) -> LP(Rn) n C 6 (R"), 1 < p < oo, 6e a positivity preserving linear operator. Then T is an integral operator with a non-negative measurable kernel function K,(x,y) > 0. If p1 = —^-r we /md i/iat K(O;, •) e Z/(R") /or a// i e l " and sup ||K(a;.-)|| LI ,'=||T|| L p^ Cb
(5.76)
/ / T is sub-Markovian, then K(X, •) € L^K") n LP'(K") /or aft a; 6 K" Proo/. By Lemma 5.3.2 both operators T : Lp(M.n) -* Lp(Rn) and T : Lp(Rn) -> C 6 (R n ) are bounded and we put 7 := m a x ^ T ! ! ^ ^ , , , ||T||LP_>c(>)For a Borel set A £ #("' with finite measure \(n)(A) < 00 it follows that XA e Lp(Rn) and further K(-, A) := TXA(-) G L p (R") nCi(R B ). Let (-Bn)neN be a sequence of measurable sets such that \^n\Bu) Bu T R". We extend K to arbitrary ,4 e B^n) by
< 00 and
/?(a;, A) := sup K(X, A n B^) veN
and this extension is independent of the sequence (B,,),,^. We claim that for i £ R " a measure is given by A i-> K(X, A) which is absolutely continuous with respect to A'"'. Clearly we have H(x, 0 ) = 0. Now let (Au)ue^, Av e B^n\ be an increasing sequence A,, f A. For A^"' (A) < 00 the continuity of T yields K(X,A)
- Ti(x,Av) = TXA{X) - TXAu(x) = TXA\AAX)
I0
(5.77)
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
256
as v -> oo. If A (n) (A) = oo then with (Bi)i€N as above we find sup/?(a;, Av) = supsup/c(:r, A,, flB;) = supsupK(x,Av n B{) = sup i s ^ A n S i ) = Jt(a;, A), which together with (5.77) proves that K(X, •) is a cr-finite measure. Moreover we find ||«(-, A)\\LP < ^WXAWLV = 7(AW(A))'
(5.78)
which gives that X^(A) = 0 implies K(X,A) = 0 a.e. Since K(-,A) g Cb(IRn) we find /?(•, A) = 0, thus «(•, dy) is absolutely continuous with respect to X^n\ By the Radon-Nikodym theorem we find a density function &(•,-) such that K(X, dy) = /c(£, y)A'n^(d2/) and j/ H->fc(a;,y) is a measurable function. Hence we find for u £ L P (K") r«(i)= /
(5.79)
k(x,y)u(y)dy.
Similar as in J. L. Doob [87], Theorem 1, or D. Revuz [298], Lemma 1.5.3, we find a B^ x S^-'-measurable version K(X, J/) offe(a;,y), and by Lemma 5.3.2.B we know that K > 0 almost everywhere on K™ x W1. Therefore we may pass to K := max(re, 0) which is measurable, everywhere non-negative and represents T, i.e. for u G LP(M") it holds Tu{x)=
I n{x,y)u(y)dy
JlSL"
a.e.
(5.80)
From the fact that T is a linear positivity preserving operator follows that I, ,
MI
\\K{X,-)\\LP'
\JK(x,y)u(y)dy\ = sup ^ jp-jj O^ueLP
\\U\\LP
x
\Tu{x)\ -= s u p ' 0^U€LP
<7, \\U\\LP
which proves (5.76). Finally, if T is also sub-Markovian, the above calculation remains valid for the extension of T to L°°(]Rn). • As in Section 1.2.1 we denote by W/.SlC(]Rn) the set of all lower semicontinuous functions on M.n. Further, if X is a space of real-valued functions we denote by X+ (or X+ if appropriate) the cone of all non-negative functions belonging to X.
5.3 Hunt Processes Associated with Lp-sub-Markovian Semigroups
257
Corollary 5.3.4. Let T : Lp(Rn) -> Lp{Rn), I < p < oo, be a linear positivity preserving operator such that T(L°°(R n ) n £+(R n )) C W;+SX(M"). Then T is an integral operator with positive kernel K. In particular, T maps L\{Rn) into Hfs c{Rn), and Lp{Rn) into W,+s c (R n ), and Lp{Rn) into w
;.*.cl K )~ni.sAK
)•
Proof. Since T is continuous we find with the notation and the arguments of the proof of Theorem 5.3.3 that K(X,A)
= 0 a.e. whenever A (n) (^) = 0.
Prom the positivity and the lower semi-continuity of H(-,A) we derive that the set {x G Rn ; K(X, i ) ^ 0} = { I £ 1 " ; K(X, A) > 0} is open. Since AW ({a; € Rn; K(X, A) > 0}) = 0 we conclude that { i e l » ; K(X, A) > 0} = 0, and therefore K(X, •) is absolutely continuous with respect to /u. Now we may proceed further as in the proof of Theorem 5.3.3. In addition, since T is an integral operator with kernel function K we find by the monotone convergence theorem for all u £ L^M") (using the fact that the upper envelope of lower semi-continuous functions is again lower semi-continuous) that Tu = T(sup(u A i/)) = supT(u A c ) e W/.S.C(K") i^eN
i/eN
proving the corollary.
•
Remark 5.3.5. By Young's inequality, Lemma 1.2.3.15 we know that for u 6 LP(R") and v £ Lp'{M.n),p' = ^ , it follows that u*v e Cb(Rn) and ||w*w||oo < p n P II^IILP' \\U\\LP, but for u e L (R ) and v G L^R") it follows that u*v e L (R") n n and ||w * v\\LP < \\v\\Li\\u\\LP. Thus every K G L^'(M ) n L\(M. ) defines by Tu{x) = f K(X- y)u{y)dy
(5.81)
a positivity preserving operator T : Lp(Rn) -> Lp(Rn) D Cb(Rn) and therefore we can in general not expect further regularity properties of the kernel function of an operator T as in Theorem 5.3.3 or Corollary 5.3.4. We can apply the results just shown to Lp-sub-Markovian semigroups. Theorem 5.3.6. Let (Tt)t>o be an Lp-sub-Markovian semigroup. If Tt(L^{Rn) n Lp+{Rn)) C Hi.s.c{Rn),t > 0, then for every t > 0 the operator Tt is an integral operator with a non-negative kernel function pt(x,y) such that x i—• Pt(x, y) is lower semi-continuous for allt > 0 and y € 1 " . Moreover, Tt maps L+(Rn) into H?s.c(Mn), and Lp(Rn) into «+,.C(M")-W,+S c (R n ).
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
258
Proof. The proof needs in fact only that {Tt)t>o is a semigroup of positivity preserving linear operators Tt : Lp(Rn) —> Lp(Rn). For t > 0 fixed we may apply Corollary 5.3.4 to find the existence of jointly measurable kernel functions (t, x, y) >-> qt(x, y) satisfying for t > 0 and u G Lp(Rn) Ttu{x)=
[
(5.82)
qt(x,y)u(y)dy.
For u G Z,+ (M") and x G R" an application of Tonelli's theorem yields / qt{x,z)qa(z,y)u(y)dydz
TtoTsu(x)= = / (
qt(x,z)qs(z,y)dzju(y)dy.
The semigroup property and (5.82) imply now the following variant of the Chapman-Kolmogorov equations: qt+s(x,y)=
JR"
(5.83)
qt(x,z)qs(z,y)dz
for all y G N^s with A™ (JV*,*,,) = 0. Let (B^)^gN be a sequence of sets Bv G B'™^ such that X^{BV) BvlW1. It follows that for all y £Rn q?\;y)
••= (*(-,y)A l /)xfl,(0
e^onnL
0 0
< oo and
^)
and 9t(l/)(-»y) T9t(-,2/), as well as
Defining pt(x,y) :=
sup
sup(Tt_pg'[,'/)(-,2/))(a;),
p€Qn[o,t) ^eN
we find that (t, x, y) H-» pt(a;, j/) is measurable and, as upper envelope of lower semi-continuous functions, it is lower semi-continuous in x for fixed t > 0 and y £ Rn. Now an application of the monotone convergence theorem and the
5.3 Hunt Processes Associated with Lp-sub-Markovian Semigroups
259
Chapman-Kolmogorov equations (5.83) yields pt(x,y)= = =
sup
sup/
jt>6Qn[0,t) i>€N JRn
sup
/
sup
/
q<^)(z,y)qt-p(x,z)dz
svipq^\z,y)qt-p{x,
z)dz
pGQD[0,t) JU" u€N
pGQn[0,t) JRn
= qt(x,y)
qp(z,y)qt_p(x,z)dz
for A(n>-a.e. y € R",
but note that the exceptional set may depend on t and x. Thus we get Ttu(a;) = f
Pt{x,y)u{y)dy
, t > 0 and u £ L p (M n ),
and as above we find pt+s{x,y)=
(5.84)
pt(x,z)ps(z,y)dy,y£N°ttS,
where NXtt,a i s a s e t of Lebesgue measure zero. Now the remaining mapping • properties follow once again by a montone convergence argument. Using Theorem 5.3.3 and Corollary 5.3.4 we can extend the claim of Theorem 5.3.6. These results are of interest by their own right and we will prove and use them in Section 5.4. Theorem 5.3.7. Let (Tt)t>o be an Lp-sub-Markovian semigroup such that Tt : L~(R") n Lp+{Rn) -> H?s C (R") and such that (Tt*)t>0 is sub-Markovian too. Then Tt maps Lp+(M.n) into n£sc(Rn) and there exists a family of kernel having the following properties: functions {pt(x,y))t>0 x^pt{x,y)
belongs to Uf^JW1)
sup ||pt(a;, -)||Li < 1
for ally &W1 andt>0;
for t > 0;
(5.85) (5.86)
xSR"
Ps+t(x, y) = I pt(x, y)ps(z, y)dz
for all s, t > 0, x, y e Mn;
(5.87)
Ttu(x) = /
pt(x, y)u(y)dy
fort>0
and u € Lp(Rn);
(5.88)
T v
Pt{x, y)v{x)dx
fort>0
and v e LP (Mn).
(5.89)
t (y)
= /
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
260
/ / in addition Tt maps L+(R") into W/" s c 6 (K n ) ; i.e. into the bounded, nonnegative lower semi-continuous functions, then it holds with p' = - ^ and for t>0 sup ||p t (av)|| LP < = HTtllLP^Loc.
(5.90)
x€Rn
Now we turn to the operator Vr• , 0 < r < oo. Theorem 5.3.8. Let {Tt)t>o be an Lp-sub-Markovian semigroup such that Tt(Lf(Rn) n L\(Rn)) C W,+,.c(Rn), t > 0. For each r > 0 the operator Vrip) is an integral operator with a non-negative kernel function vr(x,y) such that x H-> vr(x, y) in lower semi-continuous for all r > 0 and y £ R n . In particular we have vr{x,y) = =^r[ 1 (2) Jo
tf-i-e-'ptix^dt
(5.91)
and for u s Lp+{M.n) the function Vr u(x) is lower semi-continuous. Proof. It is sufficient to show that Vr{p) maps L~(K")nLP (R n ) into Hfs C (R") and recall that (Vr )r>o is an L p -sub-Markovian semigroup, hence we may apply Theorem 5.3.3 and Corollary 5.3.4. Now, pick u <E L\(Rn) n L ^ ( R n ) , 1 6 l " and any sequence (xv)v^n, %v G R™, converging to x. Using the assumption that Tt (L^°(R n ) n L\ (R n )) C Wi+s.c(Kn) an application of Fatou's lemma yields 1
f°°
liminfV; (p) (a; l/ )=liminf- 77 Y / w—»oo
v—»oo r ( 5 j •'O
i5- 1 e -*r t u(a; y )di
>r^Y rV^e-^lminfTtute^dt > ^TTT / r \2) Jo i.e. Vrip)(L^{Rn)
*5-ie-*rt«(i)dt = Vr^u(x),
n L ^ ( R n ) ) C W; + sc (R n ) and the theorem follows.
•
Next we want to give a different characterization of c a p r p . For this assume that (Tt)t>0 is an L p -sub-Markovian semigroup satisfying the assumption of Theorem 5.3.8, i.e. Tt maps L™(Rn) n L ^ R " ) into Hfs C (R". Hence, for
5.3 Hunt Processes Associated with Lp-sub-Markovian Semigroups
261
u e L\{Rn) the function VrP\ is lower semi-continuous. For an open set G G W1 we define kaPr,P(G0 := inf{||/||£ P 5 /
€
£+(« n ) and Kfp)/ > 1 on G a.e.} (5.92)
and for an arbitrary set A C Mn we set kapr,p(A) := inf{kap rp (G); A C G and G c R " open}.
(5.93)
Clearly, kap r p extends to a Choquet capacity and since for 1 < p < oo the space Lp(Rn) is uniformly convex, for every set i c l " with finite capacity kap rp (j4) there exists a unique capacitary function f A satisfying kaPr>p(A) = || A Hk.
(5.94)
Using the fact that Vr(p) = (id - A^)~~^ isometry we find
: Lp(Rn)
-> Tr,p is a bijective
ca Pr , p (A) = \\eAf^v = ||K (P) /^II^, P - H/*Ilk =
tePrtP(A)
(5.95)
implying that kap r p = cap r p and hence exceptional sets, quasi-continuous modifications etc. are for both capacities the same. In view of Theorem 5.3.8 we know further that &A is a lower semi-continuous function. (Of course, here as before e.A denotes the equilibrium potential of cap r p ). Lemma 5.3.9. Let X be a uniformly convex Banach space and let (a:,,),,^ be a sequence in X such that lim ||:zv||x = 1 and liminf ||\{x v + x^)\\x > 1. v—>oo
Then (x^u^N converges strongly in X.
v,\i—*oa
Proof. Recall that X is uniformly convex if for every e > 0 there exists 5 > 0 such that if ||x|| x < l+<*, \\y\\x <1+S a.nd\\±(x+y)\\x > 1, then ||a;-y|| x < e. Now, let e > 0 be given. For any 6 > 0 we find vo such that ||a;u||x < I + 5 and \\^(xu + z M )||x > 1 — 5 for i>,[i > v0. Applying the condition of uniform convexity to -fz^, we find for 5 being sufficiently small that \\xu—x^W < e, hence (xv)ven is a Cauchy sequence in the Banach space X, i.e. it is convergent. • For later purposes it is important to note the following result which is taken from D. R. Adams and L. I. Hedberg [1]. Proposition 5.3.10. Suppose that AcM.n has finite capacity kap rp (A) < oo and let (Av)V£n, Av C Mn, be a sequence of capacitable sets increasing to A, Av | A. Then the sequence of capacitary function (fAu)v€N converges strongly in LP{Mn) to fA.
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
262
Proof. We sketch the proof following D. R. Adams and L. I. Hedberg [1], Proposition 2.3.12. If fi < v then it follows that
/
k/^+^jfdx^kap^^)
and since lim kap r p ( J 4 y ) = kap r p (A), we may apply Lemma 5.3.9 (to (ka P / j 4 V))" e N ) anc * **nc* t n a t ( ^ " ) ' / e N n a s a l i m i t f i n ^ p (K n )- A more detailed analysis gives now that / must be the capacitary function of A, i.e. / - JAU Remark 5.3.11. Many arguments we omitted in the proof above are quite similar to considerations we made in vol II.3, but going into details would imply to rework a larger part of Section 2.3 in [1]. We will need the following consequence of Proposition 5.3.10: Corollary 5.3.12. Let {Av)v^n be a sequence of capacitable sets increasing to the capacitable set A c R™ satisfying cap rp (j4) < oo. Denote by (e.Au)v&i the sequence of corresponding equilibrium potentials. Then (eAv)v£N converges in Fr,p to eAProof. We need only observe that e^^ = Vr• K-(p) maps Lp(Rn) continuously onto Tr,v.
/AV and &A = Vr JA and that •
Corollary 5.3.13. Let {Av)v
(5.96)
5.3 Hunt Processes Associated with Lp-sub-Markovian Semigroups
263
and if in addition lime-atTtu = u no
a.e.,
(5.97)
then we call u an a-excessive function (with respect to (Tt)t>o). B. If (Tt)t>o is a Feller semigroup and u e Coo(Kn), u > 0, we call u asupermedian (with respect to (Tt)t>o) if (5.96) holds for all x e K n , and if in addition (5.97) holds for all i G I " we call u a-excessive (with respect to (Tt)t>o). Proposition 5.3.15. Let {R\)\>o be the resolvent of the Lp-sub-Markovian semigroup (Tt)t>o and let f £ Lp(M.n), / > 0. For every a > 0 the function Raf is a-excessive with respect to (Tt)t>oProof. First we observe that
e~atTtRaf = e~at f°° e-asTt+Jds Jo e~asTsfds < / e- QS T s /ds = Raf, Jo i.e. Raf is a-supermedian. Since oo
/
roo
e-asTsfds=
/ Jo
e-asTJds
it follows further that Raf is a-excessive.
D
Remark 5.3.16. Clearly the result and proof of Proposition 5.3.15 applies also to Feller semigroups. Proposition 5.3.17. Let {Tt)t>o be an Lp-sub-Markovian semigroup on Lp(Rn) and r > 2. Further let A C K" be a capacitable set with finite capacity caprp(^4) < oo. Then the equilibrium potential eA of A is 1-supermedian with respect to (T t ) t >o. Proof. Since for r > 2 it holds s ? " 1 < (s + t)*~l
for all s,t > 0 we find for
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
264
eA = Vr{p)fA e-'TteA = - ^ / s5-i e -( s +*)r s+t / A ds 1 (2) Jo 1
rOO
< ^ {s + 1 (2) Jo
=
i
t)!-1e-WTa+tfAds
r°°
W)l ^'-^ 1 r°°
< ^77^ / T \2) Jo
s^e-T.fAds
= eA.
D
In the discussion of cap r p the definition of an (r, p)-nest and related notions have been important, compare Definition II.3.1.42: A. A sequence (Fk)keN of closed sets Fk C R™ is called an (r,p)-nest if Fk C -Ffc+i for all k £ N and if lim capr]P(-Ffec) = 0.
(5.98)
fc—»oo
B. An (r,p)-nest is called regular if for each fc G N it holds suPP(xFfcA(">) = Fk. For an (r,p)-nest we have defined C({Fk})
:= {u : R" -> E ; u|Fjfc is for each fc G N continuous}
(5.99) (5.100)
and Coo({Fh}) := {w : R A ~* ^ ! u\Fku{A} is for each fc G N continuous}. (5.101) It holds C^W) as well as
C CooUFk})
C(R") c C{{Fk}).
(5.102) (5.103)
Furthermore, we will need certain regularity conditions for .7>,p> compare Definition II.3.1.35:
5.3 Hunt Processes Associated with Lp-sub-Markovian Semigroups
265
A. We call . ^ ( R " ; E) weakly regular if .7>,p(En ; E) n C 0 (M n ; E) is dense iv. T
/TIP'1 • TU1
B. The space ^>)P(K" ; E) is called regular if it is weakly regular and if .7>,p(Rn ; R) n C0(Mn ; R) is dense in (C 0 (R n ; R ) ; ||.||oo)C. The space J> iP (E" ; R) is called contraction regular if there exists a subspace W C J>,p(E n ; E) (1 C 0 (K n ; E) such that W is dense in (:Fr,p(Rn ; R),||.||^ r , p ) and in (C 0 (E n R) ; ||.||oo), and in addition W has the property that u € W implies |w| € W. Most important is the fact that if J> iP (K" ; K) is weakly regular, then each element u € ^>)P(K" ; E) admits an (r, p)-quasi-continuous modification in the restricted sense, compare Definition II.3.1.38.D, and as before we write Fr,p:={ue^r,p}.
(5.104)
Note that equivalence classes in FTtP with respect to quasi-everywhere equality are identical with equivalence classes in J-r>p with respect to almost everywhere equality. We recall and extend slightly Proposition II.3.2.9: Proposition 5.3.18. Let (Tt)t>o be an analytic Lp-sub-Markovian semigroup on L P (R" ; R) and suppose that TT,V is contraction regular and has the truncation property. Then for the countable set Q+ there exist a regular nest (F®)^^ and sub-Markovian kernels (p~t)teQ+ on (R n , K (n) ) such that for u e C0o(Rn; R)
ftu(x):=
f u(2/)Pt(-,dy)e a*, ({F,?}).
(5.105)
Moreover, Ttu is an {r,p)-quasi-continuous modification ofT}p'u for all u £ L p (R n ; R ) n B ( R n ; E) and t G Q + . In addition there exists a sub-Markovian kernel ri on (E™,S(n)) such that £i(
(5.106)
and R\u is an (r,p)-quasi-continuous modification of R\u. Here R\u{x) = f u(y)ri(x,dy) and Ri is the resolvent of (Tt)t>o at \ = 1. Remark 5.3.19. We have given a complete proof of the proposition in volume II, pp. 248-251, for all assertions involving Tt. Now, checking the construction of pt, it is clear that along the same lines we may construct r\ and then we obtain the rest of the proposition.
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
266
Remark 5.3.20. To proceed further we need to recall some constructions made in proving Propposition II.3.2.9. Since Tr
# o : = ( U Tt(V))uiJi(V).
(5.107)
teQ+
Let {.AyjvgN, Av compact, be a countable basis of open sets in R™ and put N
01 := | A ; A = ( J ^
for some iV G N }
(5.108)
Clearly O\ c Co where Co is denned by Co := | A C M" ; A is open and BA ^ 0 J
(5.109)
£ A := {« G J > , P ; u > 1 a.e. on A j .
(5.110)
and
Note that cap r p (A) < oo for i G O 0 With a small modification of the proof we may restate a version of Lemma II.3.2.10. Lemma 5.3.21. Let (Tt)t>o be as in Proposition 5.3.18 and let Ho be as in
(5.107). Let H C F r , p (R"; R)DBb(M.n; R) 6e t/ie smallest algebra over Q suc/i Vci/
and
{eA,AGOi}c#,
(5.111)
where V is as in Remark 5.3.20 and ZA is a quasi-continuous Borel version of the equilibrium potential e^ such that for all x G R™ it holds 0 < (1A(X) < 1. Further we require Tt(H) CH forteQ+ Then H is countable.
and Ri{H) c H.
(5.112)
5.3 Hunt Processes Associated with Lp-sub-Markovian Semigroups
267
Remark 5.3.22. The change in the proof needed is to add into the consideration the mapping S5 , (u,v) i-> Rxu, and to consider instead of G — V now G := V U {eA ; A £ Oi}. Note that the latter set is countable. Further for 5" we have to take now {s\, S3, S5} U {s2,a ; « 6 Q} U {s4>t; t £ Q+}. We now extend Lemma II.3.2.11, compare [115], Lemma 7.3.1. Since for the construction of the processes associated with (Tj ) t > 0 the presentation in [115] for the L2-case is the template, we formulate the following lemma as close as possible to Lemma 7.3.1 in [115] (including the order of all assertions). However, please note that in the Lp-case substantial changes must be made in viii) and the proof of vi) when compared with the mentioned result in [115]. Lemma 5.3.23. Let (Tt)t>o and J> )P (E" ; K) ,r > 2, be as in Proposition 5.3.18, in particular assume that (Tt)t>o is analytic. Further let (F^)kejq be the regular nest from Proposition 5.3.18 and let H be as in Lemma 5.3.21. Then there exists a regular nest (Fk)ken such that Fk C F%, k £ N, and with Yi •= Ur=i Fk it holds
i)
HcCocdFk});
ii) e~A(x) = 1 for all x e A n Y\ and A e O\; in) there exists a sequence (ifc)fceN; ifc £ Q+, decreasing to 0 such that Ttku(x) ->• u(x) and —(Riu{x) - e~tkRiTtku(x))
-4 u(x) (5.113)
iv) for all x GYi, t,s £ Q+ and u G H we have {{ftofs)u){x)
= (ft+su)(x);
(5.114)
v) for all x £ Yi, t E Q + and u £ H, u > 0, we have TtRiu(x) = Riptu(x) vi) e~tfteA{x)
< eA(x) forxeYi,
vii) 0 < eA(x)
and
and e^TtR^x)
< RlU(x);
(5.115)
t£
If in addition (Tt)t>o satisfies the assumptions of Theorem 5.3.8 then is holds
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
268
viii) for A G OQ there exists a sequence of sets {Av)v^^, e~A{x) converges to e~A(x) q.e.
Av G O\, such that
Proof. Most of the proof can rely on the proof of Lemma II.3.2.11 once we have incorporated the effect of the family e^, A G O\, into the construction of (-Ffc)fceN- Denote by iVi, cap rp (A r i), the exceptional set constructed in the proof of Lemma II.3.2.11 but with H as defined in Lemma 5.3.21. Now, from Theorem II.3.1.51 we know that the equilibrium potential e^ satisfies eA > 1 a.e., i.e. ZA > 1, q.e. By the truncation property (0 V eA) A 1 belongs to Tr,v and the definition of LA yields that (0 V eA) A 1 G CA, hence we may conclude that e^ = 1 a.e. on A implying that CA{X) = 1 q.e. on A. Therefore there exists N2 such that caprp(A^2) = 0 and for all A G O\ (recall that O\ is countable) it holds eA(x) = l
for all zG ( ( J AJ\N2.
(5.116)
Since iv) and v) hold a.e. we may pass to the q.e.-modification of these statements picking up two further sets N3 and N4 of (r, p)-capacity zero. By Proposition 5.3.17 we know that vi) holds a.e. leading to a further exceptional set N5, and since the same type of argument applies to vii) we end up with an exceptional set A^6, caprp(iV6) = 0 such that vii) holds for all x G Nfj, N6 being independent of A G Q\. Now, with N := |J^ =1 Nj, caprp(A/') = 0, we may apply Theorem II.3.1.45 with the obvious extension including Ri. Thus we arrive at the existence of a nest {F'k)ken such that i)—vii) hold for (F^)^gN and iV C (UiteN-^fc) • -^n application of Lemma II.3.1.44 finally yields the existence of a regular nest (-Ffc)fceN- It remains to remark that viii) follows from Corollary 5.3.13. • Remark 5.3.24. In Lemma 5.3.23.viii we can first find a set N\ caprp(iV') = 0 such that for all x G (TV')0 all function HAv are pointwise defined and satisfy i)—vii), in fact we can find such a set for all e^4, A G O\. But clearly we can not find such a set for all e~A,A G OQ. Next we construct a transition function pt,t G Q+. Lemma 5.3.25. Let (Tt)t>o, ^>,P(K" ; R), r > 0, and Y\ be as in Lemma 5.3.23. A. There exists a Borel set Y2 C Y\ with cap rp (y 2 c ) = 0 andpt(x,Y2c) = 0 for
5.3 Hunt Processes Associated with Lp-sub-Markovian Semigroups
269
x £ Y2 and all t £ Q+. B. Let ,x£Y2,A£B^
\pt{x,A) Pt\x,A) := <
c
\o
(5.117)
n
,xeY2 ,AeB^ \
Then (pt)teQ+ is a Markov transition function on (Mn,B(™') in the sense that each pt is a (sub-)Markovian kernel and
r /
r ( r /
u(y)pt+s(x,dy) =
\ (5.118)
u(z)ps(y,dz) )pt{x,dy)
/IO^S /or a» s , t e Q + anrf u G Sb(E n ). Proo/. A. Since cap r p (y l c ) = 0 it follows that TtXYf(x) = 0 a.e. By Proposition 5.3.18 pt(x, Y{-) is a quasi-continuous modification of TtXY{, hence there exists a Borel set Y^l) C Yi such that cap r p (y i ( 1 ) c ) = 0 and pt(x, Yf) = 0 for all x £ Y^ and t £ Q+. By induction we can find a sequence ( y / ) f c e N of Borel sets Yx D Y^l) D • • • D Y^ D • • •, such that pt (x, Y^k)c) = 0 for all x e Y^k+1) and all t 6 Q+, and cap r p (y i ( f c ) c ) = 0. Now we may take as Y2 the set r 2 := flfcli ^i (fe) proving part A. B. It is sufficient to prove / u(y)pt+s(x,dy) y»"
= / 7R"
/ u(z)p s (y,d2) p t (x,dy) V^R" /
(5.119)
for a; £ R n , i, s e Q+ and uGV where V is the subset of J" r , p (K n , M) discussed Both sides in Remark 5.3.20. As in (5.105) we set Ttu(x) = fRn u(y)pt(x,dy). in (5.119) vanish for x € Y£. However, for x £ Y2, part A of this Lemma implies
f ( f u(z)Ps{y,dz))pt{x,dy) = Tt( f u(z)pt(-,dz)) (x)
JR"
WR™
/
\JR"
/
= ft(fsu)(x), but in addition by Lemma 5.2.23.iv we have
Tt(Tsu)(x) = (Tt+Su)(x) = [ implying (5.119).
u{y)pt+s{x,dy) D
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
270
With these preparations we can start to construct a Hunt process associated with (Tt)t>o- For the following we will always work under the general Assumption 5.3.26. The semigroup (Tt)t>o is an Lp-sub-Markovian semigroup which is analytic and which dual semigroup is sub-Markovian too. Further we assume that Tt maps L^(M.n) n Z/^(R") into W ; + s c (R n ) and that ^> i P (R n ; R) is contraction regular, has the truncation property and that r > 2. Remark 5.3.27. The assumption r > 2 can be replaced by the assumption that equilibrium potentials are 1-supermedian. Given (Tt)t>o satisfying Assumption 5.3.26 and let Yi and (pt)teq+ be as in Lemma 5.3.25. We extend (pt)teQ+ from ( R " , £ ( n ) ) to (R£,S(R£)) by putting
^
)
:
(^,A{A}) + ( i - M . , R « ) ^
(5120)
[XA(A) Clearly, (p't)teQ+ 1S a Markovian transition function on ( R ^ , S ( R ^ ) ) with p't{x,W%) = 1 for all l e l j . Now we define
(5.121) X°(w) := u(t) , u e S l o , t e Q + ;
(5.122)
M:=o-(X°;seQ+);
(5.123)
M°t : = a(X°s ; s
(5.124)
We may apply the Kolmogorov theorem to construct a univseral Markov process
Mo := (nO,M,P*, (X?)tm+, (M°t)tm+)x^
(5.125)
with state space (Rn,BM) (or ( » £ , # ( ! £ ) ) ) , time parameter set Q+ and transition function (pJ) t€ Q + . Then Mo satisfies i)-iv) of Definition 5.2.1 with EA replaced by R^ and [0, oo) by Q_|_, respectively. From Lemma 5.3.25 we deduce Px (Xt° eA)= pt(x, A) for t G Q + , x 6 R" and A € B{n).
(5.126)
Further we have Px (X° e Y2 U {A} for all t G Q+) = 1, x £ Y2,
(5.127)
5.3 Hunt Processes Associated with Lp-sub-Markovian Semigroups
271
which means that Y2 is M 0 -invariant. For t > 0, t £
f|
Mt:=
M°
(5.128)
seQ+,s>0
and M{:=<7(M,^0,
(5-129)
where PX{C) = 0 for all x G Y2).
Af:={CeM;
(5.130)
Both filtrations (-Mt) t > 0 and {M't)t>Q are right-continuous. The goal is of course to extend M o to a Hunt process with time parameter set [0, oo) which is associated (in some precise sense) to (Tt)t>o- For this we need a careful study of the path properties of Mo- We start with Lemma 5.3.28. Let A £ O\, compare (5.108), and x G Y2. For w G fi0 and teQ+ define Yt°{w) = e-teA(X°t{w)). Then (Yf', M.f)
(5.131)
» is a non-negative bounded
Px-supermartingale.
Proof. Using Lemma 5.3.23 we find first of all 0 < ZA < 1 and e" ( t - s ) feA(y)pt-s(x,dy) = e~^~^ft-seA(x} < eA{x) for x G Y2. Now, using the Markov property of Mo and the invariance of the set Y2 we get P x -a.s. that 0 < Yt° < 1 and for t> s,t,s,€ Q+ FE(yt0|M2)=e-*/"
e^d/Jpt-.^.dy)
<e-s^(X°)=ys0, proving the lemma.
•
For a set F C Mn we define the hitting time
(5.132)
with the usual convention that inf 0 = oo. Further we will use in the following the convention e~°° = 0.
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
272
Lemma 5.3.29. For A e O\ it holds Ex{e-a
(5.133)
forx€Y2.
We do not prove this lemma now, but refer either to the treatment in [115], Lemma 7.2.1 and Lemma 4.2.1, or to Chapter 6, especially 6.2.30. Combining Lemma 5.3.29 with Lemma 5.3.23 we find Lemma 5.3.30. A. For any G € Co and any quasi-continuous version ec of the 1-equilibrium potential eo we have Ex(e-ae)
<eG(x)
(5.134)
q.e.
B. If (Gu)v^n is a sequence in OQ, which decreases such that cap r p (G,,) —> 0, then Px( lim o%v = oo) = 1
(5.135)
q.e.
V—»OO
Proof. It is clear that part B follows from part A. By Lemma 5.3.29 we know that (5.134) holds for A £ O\. Now we may approximate G € Co by an increasing sequence {A^)v^n-, Av G O\, such that the assertion of Corollary 5.3.13 holds already for this sequence which implies the lemma. • Due to our preparations, the following three central results can be proved as the corresponding results, i.e. Lemma 7.2.3, Lemma 7.2.4 and Lemma 7.2.5, in M. Fukushima et.al. [115]. In fact there is almost no change of notation needed and therefore we state these results without proofs. Lemma 5.3.31. Suppose that Assumption 5.3.26 holds. Then there exists a Borel set Y% c I2, Y2 as in Lemma 5.3.25, such that caprtP{Y£) = 0 and that the following statements hold: i) Let O01 := •jo; G fio ! lim "•
k—KJO
a<
x\Fk ~ °° \> O^OfceN
as
™ Lemma 5.3.23,
'
(5.136) and
n02 := {w G n0 ; the paths (* s °M) s € Q +
(5-137)
have at every t > 0 the left and right limits inside l ^ U A J ,
5.3 Hunt Processes Associated with Lp-sub-Markovian Semigroups
273
and define fii:=fioinfio2-
(5.138)
Then it holds P x (fti) = 1 for all xeY3.
(5.139)
ii) With Xt(w):=
lim
sGQ+,slt
X?(u)
,wefii,t>0.
(5.140)
it follows Px(Xt
= X° , for all t G Q+) = 1 /or a// x G Y3.
(5.141)
mj For all x G Y3 ii /10/ds P X (X O = 1) = 1.
(5.142)
Kt(uj) := {X s (w) ; 0 < 8 < t } C R£,w G « ! ,
(5.143)
iwj Let
and Cl2 := lu G fti ; ^ ( w ) C K" is compact if Xt(u>) G K " | . (5.144) T/ien P x (fi 2 ) = 1
for all xeY3.
(5.145)
Remark 5.3.32. In [115] the Kt(u) is defined by Rt(w), but in order to avoid a confusion with (.R\)A>O, the resolvent of (T t ) t > 0 , we changed the notation. Lemma 5.3.33. Under Assumption 5.3.26 there exists a Borel set Y C F 3 with cap r p ( y c ) = 0 such that the set r := LJ e O 3 ; 0 swc/i t/iot X t (w) or X t _(w) belong to Yc\ (5.146) is contained in a set To G M with PX{TO) = 0 for all x G.Y.
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
274 Let us define
ft := {a; € n2\T0 , Xt(w) = X?(w) for all i G Q+} C
fi0
(5.147)
and let us agree to denote the restrictions of M, M®(t e Q+), Xf(t 6 Q), Mt(t > 0), Xt(t > 0), and Px for x G 1 A , to the set fi once again with the same symbols. Lemma 5.3.34. The process My := (fl,M,P x ,{X t ) t > 0 , (Mt)t>o) is a Hunt process with state space
(5.148)
(V"A,B(Y"A))-
Our final result follows now by an applicaton of Theorem 5.2.37: Theorem 5.3.35. Suppose that Assumption 5.3.26 holds. Then there exists a Hunt process M = (n, A, Px, (Xt)t>0,
(^i)t>o)
(5-149)
such that for every (r,p)-quasi-continuous function u £ ^> iP (K",R) it holds Ex(u(Xt))=ftu(x).
(5.150)
Remark 5.3.36. A. Note that we used in (5.149) for the random variables the same notation as in (5.148) instead of introducing a new symbol such as (1) X t in Theorem 5.2.37. B. Note further that we may modify Assumption 5.3.26 by using Remark 5.3.27. C. Clearly, a direct application of Theorem 5.2.37 will give a process with state space (M A ,S(R A )), but this process we may restrict to (R™, S(">). Remark 5.3.37. Combining Theorem II.3.3.44 with Remark II.3.3.43 it is possible to give non-trivial examples, i.e. examples for p ^ 2, of spaces ^>,p satisfying Assumption 5.3.26. There are a few remarks in order to relate Theorem 5.3.35 to other results. Most of all, we must note that certain of the conditions of Assumption 5.3.26 seem to be rather strong and we believe that it should be possible to relax them considerably in two directions:
5.3 Hunt Processes Associated with i/p-sub-Markovian Semigroups
275
The condition that Tt maps L™(7Rn)nLp+(M.n) into Hi.s.c(Rn) is only used to have Corollary 5.3.13 at our disposal. Thus, whenever we can prove this result in a different way, we can get rid of this condition. Further, the condition that r > 2 is needed for our proof that equilibrium potentials are a 1-supermedian. Whenever we can get this result in a different way, we can abandon this condition too. Thus we may give a somewhat unfair reformulation of Theorem 5.3.35: Theorem 5.3.38. Let (Tt)t>o be an analytic Lp-sub-Markovian semigroup such that (Tt*)t>o is sub-Markovian too. Suppose further that .7>,p(R",R) is contraction regular and satisfies the truncation condition. Whenever equilibrium potentials are 1-supermedian and whenever for a sequence (A,,,)^^ of capacitable sets increasing to a capactiable set A, cap rp (j4) < oo, it follows a subsequence of {^Aj)v&i, converges (r,p)-quasi-everywhere that {^AUI)I€N, to e~A, then we can construct a Hunt process associated with (Tt)t>o in the sense that (5.150) holds. Note that Theorem 5.3.38 is not completely "unfair" since there are cases where its assumptions are fulfilled. Most of all, if p — 2 and r = 1 and (Tt)t>o is symmetric, because then we recover M. Fukushima's famous result which was of course the template for Theorem 5.3.35 (and Theorem 5.3.38). Theorem 5.3.39 (M. Fukushima). Let (Tt)t>o be a symmetric L2-subMarkovian semigroup and (£,D{£)) the corresponding regular Dirichlet space. Then D(£) = T\$. and we can associate with {Tt)t>o a Hunt process satisfying (5.150). Fukushima's theorem has been extended to non-symmetric Dirichlet forms, semi-Dirichlet forms and to positivity preserving forms, see the Notes to this chapter. When longing for examples of pseudo-differential operators generating Hunt processes we can of course rely on the results in volume II, especially Section 2.1, Section 2.6 and Section 2.8, where examples for L p -sub-Markovian semigroups, p ^ 2, are discussed. Clearly, the Z 2 -theory is richer with respect to examples since we may start directly with a (pre-) Dirichlet form given by its Beurling-Deny representation. So far we miss an analogous theory when working with the form £r ,
£p>(u,v)= I
\(id-A^yu\p~2{id-A{p)yu{id-A^yvdx, (5.151)
276
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
compare Section II.3.2, p. 267. Once the process M is constructed it is of course interesting and important to develop the corresponding stochastic calculus. In the L 2 -case this is a wellestablished theory and best discussed in M. Pukushima, Y. Oshima and M. Takeda in [115]. We refer also to some discussions in Z.-M. Ma and M. Rockner [252] as well as to N. Bouleau and F. Hirsch [55]. Certain discussions for the Lpcase are given T. Kazumi and F. Shigekawa [218], and in recent contributions by M. Fukushima and co-authors, in particular in [112], [110], [111], and in the papers with T. Uemura [117]-[119].
5.4
A further approach to Markov processes associated with an Lp-sub-Markovian semigroup
The construction of a Hunt process by starting with an L p -sub-Markovian semigroup as discussed in the previous section uses a priori knowledge on the potential theory of the L p -sub-Markovian semigroup. In particular we need to have a deeper understanding of corresponding capacities. On the other hand, the construction of a Feller process by starting with a Feller semigroup is independent of such knowledge. On a technical level the difference is that with a Feller semigroup we can more or less straightforward associate a transition function whereas in the L p -case the construction of the transition function requires some care with exceptional sets. In Definition II.3.2.3 we introduced the notion of a strong L p -subMarkovian semigroup which is by definiton an L p -sub-Markovian semigroup (Tt)t>o mapping IP into IP Pi C. In this case for a set A G B^ such that XA £ Lp the transition function (5.152)
Pt(x,A):=TtXA(x)
is pointwise defined, i.e. when picking the continuous representant of i H Pt{x, A) we get a family of sub-Markovian kernels. This enables us to construct immediately a canonical process. The same argument applies in the situation of Theorem 5.3.7. Indeed, we get even a density for pt, i.e. Pt(x,dy)=Pt(x,y)X
{n)
(dy).
Thus Theorem 5.3.7 has as consequence
(5.153)
5.4 Markov Processes Associated with an Lp-sub-Markovian Semigroup
277
Corollary 5.4.1. Let (Tt)t>0 be an Lp-sub-Markovian semigroup such that -> ^ + S C (K") and that {Tt*)t>0 is sub-Markovian too. Tt : Lf(Mn)nLp+{Rn) Then there exists a universal Markov process (Q, A, Px, (Xt)t>o)x€Rn with state space (M.n,B^) which is associated with (Tt)t>o by Ex(u(Xt))=Ttu(x)
(5.154)
for all u 6 Bb(Rn) D Lp(Rn). We must remark that the proof of Theorem 5.3.7 requires also some potential theory — in fact not so much different parts than we used in Section 5.3. We will not give proofs to these potential theoretic results, but refer to our own source, i.e. R. Blumenthal and R. Getoor [46]. We now provide the proof of Theorem 5.3.7 following our joint paper [201] with R. Schilling. Proof of Theorem 5.3.7. We will use the notation from the previous section. By Theorem 5.3.6 we know that (Tt)t>o is a semigroup of integral operators on Bb(Rn) with Ttu(x)=
(5.155)
f u(y)Pt(x,y)dy,
and the adjoint semigroup (Tt*)t>o is also a semigroup of integral operators given by (5.156)
Tt*u(x)= [ u(y)Pt(y,x)dy.
We call u e B^~(Rn) an a-excessive function, a > 0, with respect to (Tt)t>0 if e~atTtu(x) < u(x) and if lim e~taTtu(x) = u(x), note that in our case t->o
lim e~taTtu{x) — supe~atTtu(x).
t->o
t>o
If a = 0 we call u an excessive function.
The a-excessive functions with respect to (Tt*)t>0 are called co-a-excessive and co-excessive, respectively. Let rt be the shift operator, n
,s,t>0,i6R".
(5.157)
Clearly, (rt
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
278
(n ® Tt)t>o we extend w : [0, oo) x K n -> H. by defining w{t,x) = u>(t,x) for t > 0 and x G K" and 5(t, a;) = 0 for t < 0 and x £ M n . Now we find
= I
/
/
v(s + t,y)cj(s,x)pt(x,
/
/
u(s,y)w(s-t,:r)pt(z,2/)da;dyds
JO
JKn JRn
= / ^t
JR" VR"
y)dydxds (5.158)
= / / / w(s,3/)u;(s-f,a;)pt(a;,2/)da;dT/ds Jo Jun JRn = ( V ) T_ t ®T;aJ) L 2 ( A ( 1 ) | [ o o o ) 8 A ( n ) ) . Thus we may consider r t ® Tt and r_ t
Rflv(s,x)=
e~tiJ(Tt^Tt)v{s,x)dt
Jo
= f = /
JO
f e-^v{s + t,y)Pt(x,y)dydt
(5.159)
v(t,y)e-{t-s)»pt-s(x,y)x[s,oo)(t)dydt
/
JR"
as well as /
w(t,x)e-{s-t)l"ps-t(x,y)X[o,s](t)dxdt.
(5.160)
^R n
Thus, both Rfj, and i?* have densities with respect ot A'1' ® A ^ and satisfy (Rfiv,u)c2
(5.161)
= (v,R;u;)c2.
Now we may apply a result from ft. Blumenthal and R. Getoor, [46], p. 254-4, especially Theorem 1.4, to find that R^ and i?* are in duality ([46], p. 2544, Definition 1.2), and R^ is an integral operator with a jointly measurable, positive density r\(s,x ; t,y) which is excessive in (s,x) with respect to (rt ® ^t)t>o and it is co-excessive in (t,y). Obviously we have rii(s,x;t,y)
= e~(t-s^pt^s(x,y)xis,oo)(t),
A^^.oo) ® A^'-a.e.,
(5.162)
5,5 Notes to Chapter 5
279
and we see that rM(0, x-1, y) = e-tfipt(x, y)
\\0oo)
® A^-a.e.
(5.163)
Now, for u e Lp+{M.n) we find as \x \ 0 (passing through a sequence) that Ttu(-)=
(5.164)
fro(O,-;t,y)u(y)dy.
The Chapman-Kolmogorov equations are now given by ro(O,x-t + s,y)=
I
ro(0,z;t,y)r0{0,x;s,z)dz
x G WLn,y G Ncx^s, (5.165)
where NXtt,s is a set of measure zero, i.e. \^{Nx
G L1 (Rn) n L°°(Rn)
and define 7r t (i,y):=
sup
sup(r t _ p r^ ) (0,-;p,y))(a;)
(5.166)
for all t > 0, x,y e K".
(5.167)
p€QD[0,t) keN v
'
to see nt(x,y) = r0{0,x;t,y)
With this definition (taking now pt instead of nt) we derive Theorem 5.3.7 from Theorem 5.3.3 and Corollary 5.3.4. D
5.5
Notes to Chapter 5
In Section 5.1 we tried to give some simple motivation that Feller semigroups are not the only candidates for constructing a Markov process, and this leads us to consider Hunt processes in Section 5.2. These processes originate in the work of G. A. Hunt [163]-[165] and their theory is discussed in detail in the monographs of R. Blumenthal and R. Getoor [46], P. A. Meyer [266] as well as
280
Chapter 5 Lp-sub-Markovian Semigroups and Hunt Processes
[79]-[83], E. B. Dynkin [92]-[93], or M. Sharpe [329]. We have been following very closely the presentation given in the monograph of M. Fukushima, Y. Oshima and M. Takeda [115]. For p = 2 the construction of a Hunt process associated with an subMarkovian semigroup on a locally compact state space is due to M. Fukushima [108]. Two early comprehensive monographs are M. Silverstein [331] and of course M. Fukushima's [109] (with new and revised edition [115]). Fukushima's results have been extended into several directions: - non-symmetric Dirichlet forms with contributions of H. Kunita [238][239], A. Ancona [16], S. Carrillo-Menendez [65], Y. LeJan [246] and H. Kim [220]; - semi-Dirichlet forms and beyond with contributions of Zh.-M.Ma, L. Overbeck and M. Rockner [251] and Zh-M. Ma and M. Rockner [253]; - time-dependent Dirichlet forms with contributions of Y. Oshima [279][282], W. Stannat [341]-[342], with some examples related to pseudodifferential operators given in [183]; - non-locally compact state spaces, see S. Albeverio and R. Hoegh-Krohn [3]-[4], S. Albeverio and Zh.-M. Ma [6] and S. Albeverio, Zh.-M. Ma and M. Rockner [7]-[ll] as well as S. Albeverio and M. Rockner [12]-[13]. The lecture notes of Y. Oshima [280]—[281] deal with non-symmetric and time-dependent ([281]) Dirichlet forms, the monograph [252] of Zh.-M. Ma and M. Rockner is a very good introduction to the non-symmetric situation with general state spaces. We refer also to the survey [250] of Zh.-M. Ma and to the more recent paper of P. Fitzsimmons [105]. The monograph [55] of N. Bouleau and F. Hirsch and the one of P. Malliavin [257] discuss relations to stochastic analysis on Wiener space. In [212] H. Kaneko discussed the construction of a Hunt process associated with an L p -sub-Markovian semigroup. Our approach differs in so far that we make more use of the L p -potential theory as a non-linear potential theory as developed jointly with W. Hoh in [159] and with R. Schilling in [201]. (In this context one should also mention the papers M. Rao and J. Sokolonski [295] and M. Rao and Z. Vondracek [296].) All in all, once the potential theory is settled, the proof of the main result is along the lines as proposed by M. Fukushima [108], [109] and [115].
5.5 Notes to Chapter 5
281
Section 5.4 is in some sense new, it relies on our joint work [201] with R. Schilling and is much in the spirit of suggestions of M. Fukushima.
Chapter 6
Markov Processes and Potential Theory Although some applications have been discussed in Chapter 3-5, this chapter and the following are the ones being completely devoted to applications. In this chapter we discuss applications to potential theory and conversely the impact potential theory has on the theory of Markov processes. In a preparatory section we just indicate links between the theory of Markov processes and potential theory. In Section 6.2 we discuss the potential theory of Hunt processes more systematically by relating proper potential theoretical notions (analysis) to probabilistic notions from the theory of Markov processes. Central themes are excessive functions as well as global properties such as transience and recurrence. Both, a Feller theory and a Dirichlet space approach are discussed. Some standard material from the general theory is not proved but precise references are provided. In Section 6.3 we apply results of Section 6.2 to concrete processes, namely Levy processes, and we extend our general theory. The important point is that we try to characterize potential theoretical results by using the symbol of the Levy process. This becomes vital in Section 6.4 where we consider general processes generated by pseudo-differential operators. If the symbol of such a process (Xt)t>o is q(x, £) and if this symbol is in some sense (which may change from problem to problem) comparable with a fixed continuous negative definite function ip, i.e. the symbol of a Levy process (Yj )t>Oj we show that {Xt)t->0 has similar potential theoretical properties as ( ^ ) t > 0 Thus these results extend our discussions in Section 3.9 where path properties have been in the center of our interest.
284
Chapter 6 Markov Processes and Potential Theory
The final section, Section 6.5 is devoted to the balayage-Dirichlet problem, i.e. the problem to solve q(x,D)u = 0 in G C R", U|GC = / • It turns out that the abstract frame of balayage spaces as introduced by J. Bliedtner and W. Hansen, see [42], is best suited for the Feller case whereas the Dirichlet space setting is best when handling the L 2 -situation. In case that we have a symmetric Feller semigroup and both theories apply we can identify the results by probabilistic expressions. Our aim is to apply the existing theory to concrete pseudo-differential operators, thus we develop the theory mostly without proofs (but we give of course references), however we prove in detail the results needed for our concrete applications.
6.1
Heuristic Links between Markov Processes and Potential Theory
This section shall convince the reader that we should expect deep and interesting relations between Markov processes and parts of potential theory. It is difficult to point out who was first to realize these connections. They happened to appear in different contexts and ideas, first insights were floating around in the periodic 1923-1943. Names to be mentioned must include N. Wiener, P. Levy, S. Bochner, J. L. Doob and K. Ito. However it seems that the solution of the Dirichlet problem for the Laplacian using Brownian motion which is due to S. Kakutani, see [210]-[211], marked the start of a new period and maybe this early period ended with the seminal contributions of G. A. Hunt [163]-[165]. We leave these considerations to professional historians of mathematics. We want to sketch some connections of Markov process theory and potential theory not by following the historial way but using the knowledge we acquired already in earlier sections. It is difficult to give a definition what potential theory is (nowadays). Classical potential theory dealt of course with the Newton potential fiy
Nnf(x)=cnf
l
dy= f kn(x-y)f(y)dy
Jun x ~y\ J«.n which is related to the Laplacian by ^n(Nnf)
= f.
,n>3,
(6.1)
(6.2)
The kernel kn is called the Newton kernel. More general, classical potential theory is the theory of the Laplacian. But the Laplacian is also the generator
6.1 Heuristic Links between Markov Processes and Potential Theory
285
of the Gaussian semigroup (Tt)t>o, Ttu(x) = /
(6.3)
gn>t(x - y)u(y)dy
with Gaussian kernel
(6.4)
9nM = jA^e-^. The interesting fact is that /•OO
kn(x) = / gn,t(x)dt. Jo Taking functions u £ <S(Rn) (for simplicity) we find
Nnu(x) = f
(6.5)
( [ gn,t(x - y)dt) u(y)dy = [ Ttu(x)dt.
JRn \Jo
JO
/
(6.6)
Thus we can relate Nnu to excessive functions with respect to {Tt)t>o- Further we find for u e S(R n ) (for simplicity) t-oo
/ Jo
roo
Ttu(x)dt= / Jo
Ex(u{Xt))dt,
(6.7)
where ((Xt)t>o> Px)xeRn is Brownian motion. Thus we can look at Nn as the 0-potential operator associated with Brownian motion and for u £ 5(R") it follows from (6.2) that on (suppu) c a harmonic function is given by r°° x>-> / Ex(u(Xt))dt: Jo
(AJ \
I™ E*(u(Xt))dt)) / /
\J0
(6.8)
. .. (supp u)c
=(A n (^ n «))| V
' l(suppu)<:
=u\{suppu)c=0.
Thus, given u e <S(Rn), Brownian motion enables us to construct certain harmonic functions. Let u > 0 be an excessive function with respect ot (T t ) t > 0 , in particular we have TtU < u. Suppose that u belongs to the domain of the Laplacian seen as generator A of the Gaussian semigroup (on some Banach function space). A formal calculation yields Au = lim TtU~u t->o
t
(6.9)
286
Chapter 6 Markov Processes and Potential Theory
and therefore we may identify (formally at least) u with a superharmonic function. On the other hand we know that (u(Xt))t>Q is a supermartingale! It is obvious that there is no problem to transfer these observations to more general Markov processes, or Markov semigroups and their generators. However, at a certain stage of our considerations we must become precise, i.e. we have to make a decision whether to take Coo(R n ), or some L p -space, or (by giving up the strong continuity) S;,(K") as underlying function space. In each case we will need different arguments for getting the analogous results. Moreover, having in mind that in the L 2 -case (or the Lp-case) the state space of the process is essentially R " \ F , Y has capacity zero and Yc is invariant, we need also take into account exceptional sets or sets of capacity zero. In our construction of a Hunt process (L 2 -or Lp-case) estimate (5.134) in Lemma 5.3.30 was crucial: Ex(e-°°) <eG{x),
(6.10)
as well as its consequence in Lemma 5.3.30.B. Roughly spoken, here the probability to hit a set is linked to the set where an excessive (a superharmonic) function can become infinite. In some sense a central problem in the theory of Markov processes was to determine the sets in the state space which are not "seen" by the process, i.e. the sets B such that Px{Xt £ B) = 0 for all t > 0. We will see that this problem is closely related to the possibility to formulate and solve a Dirichlet problem for a generator of a Markov process. Let us return to some of the above considerations we made for the Laplacian but let us consider now a Levy process with symbol ip(£) which we assume for simplicity to be real-valued and to satisfy 4 £ Lloc(M.n). As we know, at least on 5(K") we may express all operators as pseudo-differential operators using the symbol ip(£): Au(x) = -j>(D)u{x) = - ( 2 T T ) - * /
e"'«V(£)«(£)d£(generator);
Tu(x) = (2TT)-T f
e t e > £ e-** K ) u(0d£
Uu(x) = (2n)~% /
eix<-j--u{£,)d£
Rxu(x) = (27r)"f /
e"*
(semigroup); (6.12) (potential operator); (6.13)
u(fldg
(resolvent);
(6.14)
(symbol);
(6.15)
A + V>(£)
JRn V»(0 = - lim t—o
*
(6.11)
Ex(e-it-Xt\
i
t
'-
_1
6.2 Potential Theoretical Notions and their Probabilistic Counterparts
287
The natural question is of course whether we can formulate certain potential theoretical results and their probabilistic counterparts in terms of ip(£). Furthermore we want to know whether this is possible when we work with a generator having a negative definite symbol — q(x,£). Problems we may approach are for example related to - conservativeness - invariant sets, transience-recurrence - exceptional sets, polar sets, sets of potential zero - regular and irregular points - balayage problem. First of all we need to identify probabilistic notions with potential theoretical notions and for this we will restrict ourselves to the case of Feller semigroups. — The case of (symmetric) L2-sub-Markovian semigroups is treated in detail by M. Fukushima, Y. Oshima and M. Takeda in [115].
6.2
Potential Theoretical Notions and their Probabilistic Counterparts
In this section we will link several concepts of potential theory introduced before to their probabilistic counterparts. Since our aim is to apply these results later on to Markov processes generated by pseudo-differential operators, and since most of the processes we constructed so far are Feller processes, we restrict ourselves mainly to Feller semigroups and Feller processes respectively, with state space R n . However, some excursions to the Lp-sub-Markovian case, especially for p = 2, will be made. In addition, in many cases we will discuss results without proving them, but of course we will provide precise references. If not stated otherwise in the following (Tt)t>o is a Feller semigroup on Coo (Kn) with generator (A, D{A)), D(A) C Coo(Kn), and resolvent {R\)\>0. 0. In Section 1.4.8 we discussed extensions of (Tt)t>o which we will need now and therefore we briefly recollect some results. A Feller semigroup (Tt)4>0 has the representation Ttu{x)= f 7R"
u(y)pt(x,dy)
(6.16)
288
Chapter 6 Maxkov Processes and Potential Theory
where pt(x,dy) is a sub-Markovian kernel on M" x B^n\ see Theorem 1.4.8.1, which satisfies the Chapman-Kolmogorov equations pt+s(x,A)
=
and
is»
ps(y,A)pt(x,dy)
(6.17)
(6.18)
po(x,dy) = ex(dy),
compare Theorem 1.4.8.2. Prom this we may derive, see Corollary 1.4.8.4, that (Tt)t>o has an extension (Tt)t>o to Bb(M.n), where ft : Bb(WLn) -» Bb(Rn)
(6.19)
is a linear, positivity preserving contraction and the semigroup property holds for (Tt)t>o too. In addition (t,x) >-> Ttu(x) is for any u € Bb(M.n) measurable and by Lemma 1.4.8.7 we have for all u e C&(Rn) limTtu(a:) = u(x)
(6.20)
t->o
uniformly on compact sets K C Kn and pointwise in case of monotone limits, u G Bb(Rn), o r u e B(R n ), u > 0. In an analogous way we may treat the resolvent (R\)\>o, compare volume I, p. 428-430. In particular R\ has a kernel representation R\u(x)=
f
u{y)rx(x,dy)
(6.21)
with [ e-Xtrx(x,A)dt. ./o Thus we get the extension rx(x,A)=
(6.22)
Rxu{x) = [ e-xtftu{x)dx (6.23) Jo which is a linear, positivity preserving operator on B&(IRn) such that XR\ is a contraction. In addition the resolvent equation RxRti = ^-{Rll-Rx) AH
holds. We recall Definition 1.4.8.6.
(6-24)
6.2 Potential Theoretical Notions and their Probabilistic Counterparts
289
Definition 6.2.1. A. A Feller semigroup {Tt)t>o is called a strong Feller semigroup if for all t > 0 the operator % maps Bb(Rn) into Cb(Rn). B. We call a Feller semigroup (Tt)t>o a Cb-Feller semigroup if for each t > 0 the restriction of ft to Cb(Rn) maps C6(M") into itself. It was proved, see Theorem 1.4.8.8, that the following statements are equivalent i) {Tt)t>o is a C^-Feller semigroup; ii) ft\ G C6(R") for all t > 0; iii) Rxl e Cb(Rn) for all A > 0; iv) Rx : Cb(Rn) -^ Cb(Rn) for all A > 0. Furthermore it holds, Corollary 1.4.8.10, that every Cb-Feller semigroup extends to a semigroup on Ch(M") which is continuous with respect to uniform convergence on compact sets. We need also to extend the generator [A,D{Af). By Definition 1.4.8.14 in case of a Cb-Feller semigroup the Cb-extension of the generator (A,D(A)) is given by D(A) :— \ u £ Cb{Rn); lim *•
t->o
t
^— exists uniformly on compact sets \ J
(6.25) and Au(x) = lim TtU{x)
~ U{X) , u G D(A).
t—>o
t
Typical formulae including the generator do extend to (T t ) t > 0 , A:
~
~
/ • *
_
Ttu-u=
rt
(^A)A>O
and
(6.27)
—Ttu = ATtu = TtAu\ _
Ttu-u = A Tsuds; io
(6.26)
(6.28) »t
/ ATsuds= / TsAuds; Jo Jo
(6.29)
290
Chapter 6 Markov Processes and Potential Theory
or R\Au = \R\u - u.
(6.30)
A further extension we need to mention is the extension of pt(x, dy) from Rn x $(") t o M ^ x S ( K ^ ) which becomes only important in case where pt (x, R n ) < 1. As usual we set, see (3.46), for x £ E and A € B
Pt(x, A)
tf\x,A) = ' -pt(X'E) 0 1
hrXGE
^
A
= {A}
for x = A and Ae B for x = A and A = {A}.
(6.31)
We may now extend (T t ) t > 0 from CooQR") to C fe (R£), but we leave it to the reader to extend the properties of (Tt)t>o to this new semigroup. When (Tt)t>o is a Feller semigroup as aobve we denote the corresponding an d whenever we need we will assume Feller process by ((Xt)t>o,Px)x€Rn, that the process has cadlag paths and is adapted to a filtration which satisfies the usual conditions (if required). The formula Ttu{x) =Ex(u(Xt))
,ue ^
(Kn)
(6.32)
extends to (T t ) t >o and u G Bb(M.n). In order not to overload our notations let us agree to Convention 6.2.2. If no confusion may arise, for a given Feller semigroup (Tt)t>o we denote by (T t ) t > 0 , (A, D(A)) and (.RA)A>O also the possible extensions. Further, we will write just (Xt)t>o for the corresponding Feller process which is considered as a strong Markov process. Note that this process is a Hunt process. Now, of fundamental importance are the obvious relations Pt(x,A) = TtXAix) = Ex(XA{Xt))
= Px{Xt G A)
(6.33)
and rx(x,A)
- R\XA(X) ,00
=J
= / J
Xt x
°
e-XtPt(x,A)dt /foo
x
e- P (Xt€A)dt = E (J
e-
Xt
(6.34) XA{Xt)dt).
6.2 Potential Theoretical Notions and their Probabilistic Counterparts
291
Note that in both relations on the very left handside the term is obtained from analysis where on the very right a probabilistic term stands. We may also introduce the potential kernel
U(x, A)= I Px(Xt e A)dt = Ex U
XA(Xt)dt) = J
TtXA(x)dt, (6.35)
but note that whereas for A > 0 the kernel r\ (x, A) is for each x 6 R" and every A 6 B^ finite, U(x, A) might obtain the value +oo. However in any case U(x, •) is a measure, sometimes called the potential measure at £ £ E™. Denote as before for a Borel set B 6 B^ the entry time of {Xt)t>o into B by &B, see (2.144). It follows that f XA(Xt)dt = 0 ./o
(6.36)
iors
and therefore we find
U{x,A) =
Ex(r'XA(Xt)dt\.
Using the strong Markov property it follows with Uf(x) = J f(y)U(x, dy) that
E*(J°°xA(Xt)dt)
= ^ ( ( | 0 ° X A ( X t ) d t ) oBiB) = EX(EX*B
(J°°XA(Xt)dt))
=
EX(UXA(X&B)).
Thus we find U(x,A) = E*(H
XA{Xt)dt)
=EX(UXA(X&B)).
(6.37)
With the notation introduced in (3.161) we may write EX(UXA(X&B))
=T&B(U(-,A))(X)
for which it is sometimes convenient to write T&B(U(-,A))(x) = / U(y,A)Px(X&B e dy). JA
(6.38)
292
Chapter 6 Markov Processes and Potential Theory
Thus we arrive at U(x,A) = Ex( r V<7 B
XA{Xt)dt) = f_U(y,A)Px(X&B '
£ dy).
(6.39)
JA
We encountered already several times the notions of excessive and a-excessive functions. Basically, whenever a semigroup (St)t>o is given one defines u to be (a-)excessive if u > 0 and
(e~atStu
Stu
and
Mm Stu = u (lim e~at Stu = u).
Of course the notions depend on which space (St)t>o is denned. We will consider here the case of a Feller semigroup with its extension (Tt)t>o to Bb(Rn), but sometimes it is convenient to allow measurable functions u : M™ —> K. Let us give Definition 6.2.3. Let (T t ) t >o be the extension of a Feller semigroup. A. For a > 0 we call a measurable function u : l n —> R an a-supermedian function with respect to (Tt)t>o if w > 0 and e~atTtu
for all t > 0.
(6.40)
If in addition lim e~atTtu
= u,
(6.41)
HO
then we call u an a-excessive function with respect to (Tt)t>oB. A measurable function u : W1 —> R is said to be superrnedian with respect to (Tt)t>o if u > 0 and Ttu < u
for all t > 0
(6.42)
and if u is supermedian and satisfies in addition
limTtu = u, no
(6.43)
we call u excessive with respect to (Tt)t>oRemark 6.2.4. A. If (Tt)t>o is a semigroup then (e~ a *T t ) t > Q is for every a > 0 also a semigroup and it has the same (essential) properties as (Tt)t>o has. If u is a-excessive (or a-supermedian) with respect ot (T t ) t >o, then it
6.2 Potential Theoretical Notions and their Probabilistic Counterparts
293
is excessive (supermedian) with respecto to ( e ~ a t T t ) t > Q . Therefore, in many cases it is sufficient to prove results for excessive (supermedian) functions only. B. When we want to consider martingales of type (u(Xt))t>0 where u is an aexcessive function we might run into a further (minor) measurability problem since in this case we often consider on TSLn not the Borel-measurable functions but the universally Borel measurable functions, compare Section 3.5. None of the above or following statements will change when u : Rn —> R, u > 0, or u e Bb(M.n), is substituted by a universally measurable function with the corresponding properties. — We refer the reader to R. Blumenthal and R. Getoor [46] for details. C. Let (Xt)t>o be the process associated with {Tt)t>o- Since (Xf)t>o is a Hunt process we can define a-excessive functions associated with (Xt)t>o a s in Definition 5.2.20. But it is obvious that our two definitions coincide. Most of the following considerations are taken from K. L. Chung [75]. We denote by S^ the set of all a-excessive functions, but instead of 5° we will write S only. The proof of Proposition 3.4.15 yields that for u £ Bb(M.n), u > 0, the function Rau,a > 0, is a-excessive. In addition it is obvious that every non-negative constant C > 0 is a-excessive, as well as cu and v + u belong to 5 ( Q ) , a > 0, if c > 0 and u,v 6 S^a\ Moreover, if (ul/)ve^ is an increasing sequence of a-excessive functions, then supu^ is a-excessive. Indeed, for u = supu,, we find e~atTtu
= supe~ Q t T t u y < supu,, < u.
Showing that u is a-supermedian, and further we find \ime'atTtu tio
= sup e-atTtu t>o
= sup sup t>o ven
= sup sup e~atTtuv i/£N t>0
e~atTtuv
= supu,/ = u. vEN
Thus we have proved Lemma 6.2.5. For a > 0 the set S^a' of a-excessive functions associated with {Tt)t>o is a convex cone which contains the non-negative constants and which is stable under pointwise increasing limits. Remark 6.2.6. A. The proof yields that also the set of all a-supermedian functions is a convex cone which contains the non-negative constants which is
294
Chapter 6 Markov Processes and Potential Theory
stable under increasing limits. B. It is easy to see that the cone of the a-supermedian functions is also stable under taking the minimum, i.e. if u\, ui are two a-supermedian functions then u\ A «2 is a-supermedian too: For j = 1,2 we have Tt{u\ A U2) < TtUj < Uj
implying Tt(u\ A 1*2) < u\ AU2. The same result for a-excessive function needs a much more involved proof, compare Lemma 6.2.30. A further easy consequence of the definitions is Corollary 6.2.7. A. Let u € S^, a > 0. Then the mapping t ^ e~taTtu is decreasing and continuous from the right. B. For a < 13 it follows that 5 ( Q ) C SW and for each a > 0 we have S^ = Proof. A. Since for s, t > 0 e-(t+s)ccTs+tU
sa = e-t<*Tt(e- Tsu)
<
e-taTtu
it follows that t 1—> e~taTtU is increasing. Further we know that increases to u as s decreases to zero which implies lime-(t+s)QTs+tw = lime-tQTt(e-saTsu) = siO
s|0
B. This part is identical with part A of Proposition 5.2.21.
e~sc"Tsu
e'taTtu. •
Remark 6.2.8. The first part of the corollary holds also for a-supermedian functions. We want to give a first application which links potential theory to Markov processes. Suppose that (Ti)t>o is a conservative Cft-Feller semigroup. As in the calculation leading to (6.37) we may derive for every relatively compact Borel set A G B{n) that
Tt ([/(•, A))(x) = Ex ( | ° ° XA(Xs)ds) < Ex (1°° XA(Xs)ds) = U(x, A), (6.44) i.e. x H-> U(x, A) is supermedian and since Ex(ff° XA(Xs)ds) —> x E [Jo° XA{Xs)ds) it is in fact excessive, hence lower semi-continuous. On
6.2 Potential Theoretical Notions and their Probabilistic Counterparts
295
the other hand (6.44) yields also limTt ([/(•, A)) ( x ) = 0 .
(6.45)
t—+OO
Now we may conclude that (U(Xt, -<4))te0 is a positive super-martingale and combining martingale convergence with Fatou's lemma we find that lim U(Xt,A) = 0.
(6.46)
t—>oo t€Q+
Prom the representation U(x, A) = Ex(/0°° XA(Xt)dt) we derive using the right-continuity of the paths that x — i > I/(:r, A') is strictly positive for any bounded open set A' such that with a further bounded open set A it holds A C A'. Since a; H-» U(X, A') is lower semi-continuous there exists a constant 77 > 0 such that (/(-, J4/) > 77 on J4'. Suppose £ i-» Xt(cj) hits /I infinitely often. Still it follows that \imsupU(Xt,A') > r\ > 0. By (6.46) we have to conclude t—0 teQ+
that the set of these paths have probability zero, hence almost surely A is hit only finitely many times. Thus we have proved Proposition 6.2.9. Suppose that (Tt)t>o is a conservative Cb-Feller semigroup. In addition suppose that for all relatively compact Borel sets A the potential kernel is finite. Then the process (Xt)t>o converges to infinity as t —> 00, i.e. for every i £ l " it holds Px(limmi\Xt(w)\ t—>oo
< M) = 0
for every M e E.
(6.47)
It is worth to consider already here an example, namely Brownian motion. Lemma 6.2.10. For gt{x) = (4Trt)~%e~J^~ it follows
f%, W d< = H * | J - " - " ^
Jo
[+00
(6.48)
,n = 1,2.
Proof. Using the transformation 5 — ^ - we find / gt{x)dt = (4Tr)-Z r^e-^rdt Jo Jo
= cn\x\2-n
Jo
st-2e-*ds,
but for n > 3 we have /0°° s^~2e~sds = T(f - l) and for n = 1,2 we find / 0 °°5t- 2 e- s d S = +oo. n
296
Chapter 6 Markov Processes and Potential Theory
Thus for n > 3 we find for the potential kernel Un(x, A) associated with Brownian motion Un(x, A)= I Nn(x-
, n > 3,
y)dy
(6.49)
JA
which is finite for relatively compact Borel sets implying that for n > 3 Brownian motion converges to infinity. We leave for the moment open to investigate how Brownian motion behaves for n — 1,2. Instead we continue to study excessive functions. We know already that for an a-supermedian function it G BiW1) the mapi > e~atTtii, a > 0, is increasing as t decreases to zero. Thus an aping t — supermedian function u G B(Rn) and i £ l " the mapping t H-> e~atTtu(x) is increasing as t decreases to 0 with limit in [0, oo]. Therefore we may define u*(x) :=lime~atTtu{x).
(6.50)
no
L e m m a 6.2.11. For any a-supermedian function u G JB(R n ),a > 0, the function u* defined by (6.50) is an element in S^ and u* is the largest a-excessive function dominated by u, i.e. u* < u and if v is a-excessive with v < u then v < u*. Moreover it holds for all t > 0 Ttu* = Tt+u = lim Tsu.
(6.51)
S-tt s>0
Proof. Observe that (e~ a *Ti) t > 0 is a semigroup sharing all relevant properties with (Ti)t>o and a-excessive functions with respect to (Tt)t>o are excessive for (e~ Q t T t ) t > 0 . Therefore we may consider the case a — 0 only. Since Ttu* = Tt(\imTsu) = lim TtTsu = limT t+s u = Tt+u slO s>0
sj.0 s>0
slO s>0
it follows (6.51). Now, the definition of u* implies that u* < u and Ttu* < Ttu < u*, i.e. u* is supermedian. Moreover, by (6.51) we get limTtM* = limTt+u* = limT t u = it*, t[0 t>0
tiO t>0
tiO t>0
thus it* G S. Finally, if v G S and v < u then Ttv < Ttu and in the limit we arrive at v < u*. D
6.2 Potential Theoretical Notions and their Probabilistic Counterparts
297
The next result yields that for a "nice" a-excessive function the a-potential operator behaves in a very weak sense always as inverse operator to the generator. Since there is no problem to extend the result from excessive to a-excessive function we formulate and prove this result for the excessive case only. Proposition 6.2.12. Let u £ S and Ttu < oo for all t > 0. Further assume lim Tt = 0.
(6.52)
t->oo
Then it holds u = YimU(^H)
HO
v
n
(6 .53)
'
where the limit is increasing. Proof. Since Ttu < oo we find for r > 0 and h > 0 rr
rr
rt+h,
/ Ts(u- Thu)ds = / Tsuds - /
J0
JO
h
/
rt+h
/ Jt
Tsuds-
and therefore V
tToo Jo
+h
where we used that lim f* therefore we have
t—»oo
"
Tsuds,
J
h
Jo
Tsuds = 0 by (6.52). Note that Thu < u and
hm fTJ^T^ys tiooJo
Tsuds
Jh
^
h
= u,u_zTiuy '
\
h
J
Now passing to the limit h J. 0 we obtain (6.53).
•
We want to relate (a-)excessive functions to the resolvent operator Ra, a > 0. For u £ S it follows aRau= and further
Jo
ae~atTtudt=
Jo
e~rTrUdr0, a
lim aRau = u.
afoo
For the following definition we refer also to Proposition 5.2.21.
(6.54)
(6.55)
298
Chapter 6 Markov Processes and Potential Theory
Definition 6.2.13. Let (Tt)t>o be the extension of a Feller semigroup to Bb(Rn) and (3 > 0. We call u € B(Rn), u > 0, 13-excessive with respect to (R\)x>o if aRa+pu < u
for all a > 0,
(6.56)
= 0
(6.57)
and lim aRa+f3u
afoo
hold. (For j3 = 0 we just speak of excessive functions with respect ot
(.RA)A>O-)
Remark 6.2.14. Whenever we speak of a-excessive function or excessive function without a further explanation we mean (a-)excessive function with respect to the semigroup. Proposition 6.2.15. If u £ B(Rn), u>0,
and (6.56) holds for j3 = 0 then (6.58)
lim aRau = u*. c*T°°
If in addition (6.57) holds withfi = 0 thenu is excessive with respect to (Tt)t>oProof. For u G Bb(Rn), u > 0, and 0 < 7 < a it follows from the resolvent equation (which we may apply since all terms are finite!) that Rau = Ry(u-
(6.59)
(a--f)Rau).
From (6.56) with (3 = 0 we derive that gal :=u-
(a^)RyU > 0.
(6.60)
Now, R-fga-y is 7-excessive with respect to (Tt)t>o and Rau is 7-excessive with respect ot (T t ) t > 0 for all 7 G (0,00). Hence, by Corollary 6.2.7.B we have Rau £ S. Using once again (6.59) we find further 'yRyU < ~fRyU + (a - 7)i? 7 (u — aRau) = aRau. Thus for i e l " fixed the function a H-> aRau(x) Hence we may define u^x) = lim aRau(x) = lim Ra(au)(x), afoo
aToo
(6.61)
is increasing and bounded. (6.62)
6.2 Potential Theoretical Notions and their Probabilistic Counterparts which implies by Lemma 6.2.5 that u^ pass from u £ Bb(WLn), u > 0, to the such a function u we set uv := u A v, aRauv < uv and furthermore we have limit
299
€ S. Before we identify u^ with u* we general case u € J3(K n ), u > 0. For v e N. By (6.56) with fi = 0 we find aRauu < v. Thus for i / £ N fixed the
ul(x) = lim aRauv(x) exists by our previous considerations. In addition aRauv > JRJUU for a > 7 implying that aRau > ^R^u and therefore u' = lim aRau = lim lim aRauv afoo
aloof—»oo
= lim lim aRauv = lim u£. v—>oo o|oo
1/T00
Since u y € 5 it follows that «t e S. Further, for g G S such that g < uwe find ocRag < a-RaU and for a increasing to 00 we find 3 < u^, i.e. u^ is the largest excessive function with respect to (Tt)t>o which is less or equal to u, i.e. by Lemma 6.2.11 we have u^ = u*. The second assertion becomes trivial in view of Proposition 5.2.21 and the proposition is proved. • The proof of Proposition 6.2.15 gives us an important possibility to approximate excessive functions. Again, the result extends to excessive functions, see Corollary 5.2.22. Theorem 6.2.16. Let u € S. For 7 > 0 there exists a sequence (gu)vm, gv € Bb(M.n) and gu > 0 such that u = lim R^gv.
(6.63)
Proof. For u e Bb(M.n), u > 0, we find with the notation of the proof of Proposition 6.2.15 that Ra(au) = R1{agai) and (6.63) follows from (6.57) with j3 = 0 and gv := vgv^. The general case follows by considering first u/\k, k £ N, which we can approximate now using a suitable sequence (gik^) N to get uAk= lim R^gt, , and it follows finally V—>OO
u = lim lim &,gW = lim k-^oo v—>oo
R^g^.
v—•00
•
300
Chapter 6 Markov Processes and Potential Theory
Remark 6.2.17. A. Note that Rf$gv is an excessive function and bounded, hence every excessive function can be approximated by bounded excessive functions. B. Note that in general Theorem 6.2.15 becomes false when i? 7 , 7 > 0 is substituted by U. In the above considerations the potential operator U associated with (Tt)t>o was of central importance. We encountered this operator already in the context of Z/p-sub-Markovian semigroups, compare Definition II.3.5.17 where we denoted it as G. In Proposition 6.2.9 we noticed that the finiteness of UXA for relatively compact sets give a lot of information on the Markov process associated with (T t ) t > 0 . Clearly this should be related as in Section II.3.5 to the notioin of transience. Unfortunately there is not a unique definition of transience in the literature. Most common is Definition 6.2.18. Let {Tt)t>o be the extension of a Feller semigroup. It is called transient if there exists a strictly positive Borel function h > 0 such that Uh < 00 on R". The corresponding process is called transient if (Ti)t>o is transient. This definition coincides with the Xp-case when neglecting sets of measure zero, compare Lemma II.3.5.22. Suppose that pt(x, dy) = pt{x, y)X^(dy) and that pt(x,y) > 0 for a l H > 0 and x,y e R". Then for every g > 0 it follows that
Ug{x) = f
( f Pt(x,y)g(y)dy)dt > 0 , i e I n ,
(6.64)
and in fact in many other situations g > 0 will imply Ug(x) > 0 for all n e t " . More generally, we may use the concept of invariant sets, compare Section II.3.5, to sort out the situation when Ug > 0 for all g > 0. Our aim is however to find a "readable" version of potential theory in order to understand the role and importance of the symbol of a Markov process. For this reason let us give Definition 6.2.19. Let (Tt)t>o be the extension of a Feller semigroup onto Bb{Rn) and suppose that for some function h e B(Rn), h > 0, it holds 0 < Uh(x) < 00
for all x G Rn.
Then we call (Tt)t>o transient in the restricted sense.
(6.65)
6.2 Potential Theoretical Notions and their Probabilistic Counterparts
301.
Taking in (6.65) the function hv := h/\v G Sb(K") (and setting K(L) = 0) we find Uhv(x) > 0
and
for all x G R n .
UK(x) T oo
(6.66)
Proposition 6.2.20. Suppose that (Xt)t>o IS transient in the restricted sense and let u £ S. Then there exists a sequence (gu)uen, 9v £ Bb(Rn), gv > 0, such that u=
lim Ugv(x),
(6.67)
V—too
where the limit is an increasing limit. Moreover we have gu < u2 and Ugu < v. Proof. With /» v ,i/gN, as in (6.66) we set uv := u A Uhv A v to find /•OO
Ttuv < TkUhv = I TshvAs h which decreases to 0 as t increases to oo by the boundedness of Uhv. Further, since «„ is supermedian we know that w* is excessive. Since Ttu*v < TtUv < oo, and since Ttuv —> 0 as t f oo, we may apply Proposition 6.2.12 to get u* = lim Vguk (6.68) k—»oo
and (6.69)
Ugvk = k(u*v- Ti.ul) < kv. The proof of Proposition 6.2.12 yields
r\ Ugvk = k / Tsulds < v. Jo For v fixed Ugvk increases with A;, for k fixed Ugvk increases with v and therefore (in the sense of increasing limits) it follows lim u* = lim lim Uguk = lim Uguv.
v—>oo
v—>oo
fc—»oo
v—*oo
On the other hand we have lim u*v = lim limTtu^ = lim lim Ttuv = \imTtu = u.
v—+oo
v—too tiO
Thus the result follows with gv = gvv.
tj.0 v—too
tlO
D
302
Chapter 6 Markov Processes and Potential Theory
Definition 6.2.21. Let (Tt)t>o be as in Definition 6.2.19. We call (T t ) t > 0 recurrent if Uh(x) = +oo or 0 for every h G £?(R"), h > 0. The corresponding process is called recurrent if (Tt)t>o is recurrent. Remark 6.2.22. A. Once again this notion coincides with that given for Lpsub-Markovian semigroup if we neglect sets of measure zero. Further, using the concept of invariant sets we can reduce the condition to Uh{x) = +oo only. B. If A € B^ is of positive Lebesgue measure, then for a recurrent semigroup it follows that U(x,A) G {+oo,0} for all x G R n . In analogy to Definition 6.2.19 let us give Definition 6.2.23. A semigroup as in Definition 6.2.19 is called recurrent > 0, it follows that in the restricted sense if for every A G B^n\ X^(A) U(x, A) = +oo for all x G R n . Example 6.2.24. For n > 3 the Brownian semigroup is transient in the restricted sense, whereas for n = 1,2 the Brownian semigroup is recurrent in the restricted sense. This follows immediately from Lemma 6.2.10. We mentioned above a few times invariant sets. The reader might have noticed that we have by now two notions of invariant sets, namely invariant sets with respect to a semigroup, compare Section II.3.5, especially pp. 339, and invariant sets with respect to a Hunt process, compare Definition 5.2.34. It is not difficult to see Corollary 6.2.25. If a nearly Borel set A is invariant with respect to a given Hunt process then A is also invariant with respect to the corresponding semigroup of operators. Before we explore more the probabilistic meaning of transience and recurrence we must understand the relations of exceptional sets defined in terms of capacities and their relations to sets "not seen" by the process, i.e. sets which are hit by the process with probability zero. The latter sets have been introduced in Definition 5.2.27. So far we have no analytical characterization of polar, thin or semipolar sets. On the other hand, in case of L p -sub-Markovian semigroups (T^ )t>o we have the notion of (r, p)-capacity and we have called a set A of (r,p)-capacity zero an (r, p)-exceptional set. Definition 6.2.26. Let (Xt)t>o be a Hunt process with state space R n and associated semigroup (T t ) t >o.
6.2 Potential Theoretical Notions and their Probabilistic Counterparts
303
A. We call {Xt)t>o symmetric (with respect to A^n^) if /
(Ttu(x))v(x)dx = /
u(x)Ttv(x)dx
(6.70)
for u,v e L 2 (R") n Bb{Rn). B. If (Xt)t>o is a symmetric Hunt process and N C M.n we call N an exceptional set with respect to (Xt)t>o if there exists a nearly Borel set N such that N C N and P(o-$ < oo) := / K n Px{a^ < oo)da; = 0. Remark 6.2.27. A. Let (Xt)t>o be symmetric with respect to \(nh Then the corresponding semigroup (Tt)t>o extends to an Xp-sub-Markovian semigroup (Tt )t>o for all 1 < p < oo. In addition the process is associated with (Tt )t>o in the sense of Theorem 5.3.35. Furthermore [T{ ) t > 0 is associated with a symmetric Dirichlet form (£,D(£)). We will always assume that this Dirichlet form is regular. B. In the following we still assume that our process originates from a Cj-Feller semigroup and is symmetric with respect to A^n^, for short we will call (-Xj)t>o just symmetric. Our aim is to show that for a symmetric Hunt process in many cases exceptional sets with respect to the process are exactly the sets of (1, 2)-capacity zero. For this we need some preparations, namely an understanding of how excessive functions relate to the corresponding Dirichlet form. For a proof of the following lemma we refer to M. Fukushima et.al. [115], Lemma 2.1.1 and Lemma 2.3.2. Lemma 6.2.28. Let (£,£)(£)), D{£) C L2(Rn), be a regular symmetric Dirichlet form and let Oo as in (5.109). Then it holds: i) for A £ Oo there exists a unique element &A S LA such that £i{eA,eA)
= cap 12 (A);
(6.71)
ii) it holds 0 < eA < 1 a.e. and eA — 1 a.e. on A; Hi) eA is the unique element in D(£) satisfying eA = 1 a.e. on A and £i(eA>v) > 0 for all v 6 D{£) such that » > 0 o . e . on A; iv) ifveD(£),v
= l a.e. on A, then £i(eA,v) = cap1)2(-A);
v) if A,B e £>o and Ac B then eA < eB a.e.;
304
Chapter 6 Markov Processes and Potential Theory
vi) ifu\ andu-i are two a-excessive functions (belonging to L2(M.n)) such that u\ < U2 a.e. andu2 € D(£) thenu\ € D(£) and£a(ui,ui) < £0(^2,^2)Remark 6.2.29. Of course assertion i)-iv) follows from our general considerations on equilibrium potentials but for reference purposes we restated these results here again. In the following we have to distinguish more carefully between the L2-subMarkovian semigroup (Tt( ')t>o and the semigroup (and its extension) associated with the Hunt process (Xt)t>o which is denoted as before by (T t ) t > 0 . In accordance with Lemma 5.2.23 and Definition 5.2.24 we write now TZ(x) = Ex(e-a°*),A£Bin),
(6.72)
for the Q-order hitting distribution of A, and TA(x) stands for the 0-order hitting distribution. Lemma 6.2.30. For an open set of finite capacity the 1-order hitting distribution TA is a version of eA. Proof, (compare [115], Lemma 4.2.1) We know for u € L 2 (R") a version of T} u is given by Ttu whenever u > 0 is universally measurable. This implies in particular that if u is a-excessive with respect to (Tt)t>o then it is a-excessive with respect to (Tt )t>o- By Lemma 5.2.23 applied to the 1-excessive function i n l w e know that T\ is 1-excessive with respect to (Tt)t>o and further, by Lemma 6.2.28, it holds T\{x) = 1 for all x £ A. By Lemma 6.2.28 it is sufficient to prove T\ < eA
a.e.
(6.73)
Let e~A be a Borel version of eA such that eA(x) = 1 for all i e R ™ . Our aim is to end up with the estimate (/i,T^) L2 < {h,eA)jj2 for all non-negative Borel functions h > 0 such that JRn h(x)d = 1 which will imply (6.73). Consider for such a function h the measure P/i(A) := / R n Px(A)h(x)dx and denote the expectation corresponding to Ph by Eh. Let us define Yt(u) := e~teA(Xt(w)), t > 0 and u> £ Q. We claim that (Yt,J^,Ph)t>o is a supermartingale. For this let 0 < s < t. Using the Markov property we find
Eh(e-teA{Xt)\Tf)
= e-se-^Tt-seA(Xs)
< e"seA(Xs) Ph-a.s.,
6.2 Potential Theoretical Notions and their Probabilistic Counterparts
305
since A ^ ( i £ l n ; e-^-s~>Tt-aeA(x)) = 0. Now let D C (0, oo) be a finite set with minZ? = a and m&xD = b and set
.(^):={ m i n { t 6 D ; X t G A } \b
,ii{teD;
XteA}
= 0.
We may apply the optional sampling theorem, compare Section 2.6, to (Yt,f?,Ph)teD and find Eh(e-*ID;A)
. o{p
;A)
Eh(Y
< Eh(Ya)
<
{h,eA)L2.
Now let D increase to a countable dense subset of (0, b) and then we let tend • b to infinity to arrive at (h,TA)L2 = (h,eA)L2 proving the lemma. Lemma 6.2.31. In the situation of Lemma 6.2.30 let a > 0 and let (Wi/^eN be a decreasing sequence of a-excessive functions having the limit u. If u = 0 a.e. then u = 0 q.e. Proof. For e > 0 and K C {u > e} compact we know by (5.52) that
Hj^uv{x) < uv(x), hence we get H^u(x) In particular u(x) = 0 implies
< u(x) whenever u(x) is finite.
eT£(x) < H%u{x) < u{x) = 0, i.e. T%(x) = 0. By Lemma 4.1.4 in [115] it follows that K must be exceptional and an application of Theorem 5.2.18 yields that {u > 0} (which is a nearly Borel set) is an exceptional set. • Now we can proof Theorem 6.2.32 ([115], Theorem 4.2.1). Let {Xt)t>0 be a symmetric Hunt process as above. A. If (A !/ ) I/£N is a decreasing sequence of open sets with finite (1,2)-capacity then lira capx 2 (A/) = 0
if and only if lira TAi(x) = 0
q.e.
(6-74)
B. Suppose that all compact sets K C R™ have finite (1,2)-capacity. Then a set N C R " is exceptional with respect to {Xt)t>o if and only i/capi 2 (N) = 0.
306
Chapter 6 Markov Processes and Potential Theory
Proof. A. Suppose that c&pl2{Av) —> 0 as v —> oo. Prom cap 12 (A,,) = £i(eA»,eAv) w e deduce that e ^ —> 0 a.e. and by Lemma 6.2.30 combined with Lemma 6.2.31 we find lim T\ {x) = 0 q.e. The converse follows when V—*OO
using the proof of Lemma 6.2.30.iii as given in [115]. But since we provided this result in the more general case with a different proof, compare the remark following Corollary II.3.2.34, we refer the reader to [115], p. 142. B. If cap12(./V) = 0 then there are open sets Av D N, v G N, satisfying the conditions of part A, hence Tg(x) — 0 q.e. for B := |~)^Li Av 3 N. Therefore N is exceptional with respect to {Xt)t>o- Conversely suppose that N is exceptional with respect to (Xt)t>o and compact. Take a sequence {Gv)v^m of decreasing, relatively compact open sets such that Gv D Gu+i and f\€N Gu = N. It follows with (5.36) and the fact that N is A(Ti)-negligible that lim T^u(x) = Tjf{x) = 0 a.e. Therefore we have V—>OO
capx 2(iV) < lim c&pl2(Gv = 0, v—»oo
where the last equality follows from part A. The general case follows from sup cap12(K). • cap12(>l) = KCA,K compact
Thus in the situation of Theorem 6.2.32 we may describe exceptional sets with respect to (Xt)t>o with the help of capx 2 . The following results are proved in detail in M. Fukushima, Y. Oshima and M. Takeda [115], Theorem 4.1.2 and Theorem 4.1.3 and we omit the proof. Theorem 6.2.33. Let (Xt)ty0 be a symmetric Hunt process as above. A. The following conditions are equivalent: i) A set is polar if and only if it is exceptional. ii) ra(x,-)
is absolutely continuous with respect to \ ^ for each a > 0 and
every i s l " . B. Any semi-polar set is an exceptional set. As a corollary we find Corollary 6.2.34. Let (Xt)t>o be a symmetric Hunt process as above and assume that pt(x, dy) — Pt(x, y)dy. Then a set of (1,2)-capacity zero is polar. Proof. In this case we have ra(x,y)
= /0°° e~atpt(x,y)dy
for a > 0.
•
6.2 Potential Theoretical Notions and their Probabilistic Counterparts
307
Remark 6.2.35. Recall that Theorem II.3.6.1 gives condition in terms of i p -estimate which ensure the existence of a density pt(x, y) for pt(x, dy). Now we return to the discussion of transience and recurrence. For a given Hunt process (Xt)t>0 as above and for a Borel set A G B^ (or more generally, for a nearly Borel set A CM") we set R(A) := {u> € n ; l i m s u p x ^ t H ) = l } . t—*oo
(6.75)
Obviously we have R(A) = P | {W G O ; t + a A ° #tM < oo) *° = P ) { w e n ; !/ + (TAO ^(w) < OO}.
(6.76)
Thus LJ G -R(A) if the path £ t-» Xt(w) hits the set A infinitely often. The set R(A) is clearly invariant under 0t, t > 0, i.e. 0^1(R(A)) = R(A). We define now the function h,A{x) by hA{x) := lim TtTA{x) = lim PX(JR(A)), t—>oo
(6.77)
t—+oo
recall that TA(X) = T^(x), and using the fact that t — f > £4- cr^ O 9t is increasing we find
/M(a;) = P x ( f l aA ° ^ < oo).
(6.78)
Thus h,A{x) is the probability that when starting at x the set A is hit at arbitrarily large times. By Proposition X.3.4, p. 393-94, in D. Revuz and M. Yor [299] it holds XR(A) = lim hA(Xt)
a.s.
(6.79)
t—*oo
Definition 6.2.36. Let (Xt)t>o be a Hunt process as above. A. We call a (nearly) Borel set A C M.n recurrent with respect to (Xt)t>o if hA(x) = 1 for alia; eK". B. If for all a; e R n we have /i^(a;) = 0, then A is called transient with respect to (Xt)t>oRemark 6.2.37. Note that in general recurrence and transience is not a dichotomy, compare also the corresponding discussion for semigroups in II.3.5.
308
Chapter 6 Markov Processes and Potential Theory The following result is proved in K. L. Chung [75], Theorem 3.7.1, p. 122.
Theorem 6.2.38. Let (Xt)t>o be a Hunt process with state space W1 as above. Then the following statements are equivalent i) every excessive function is a constant; ii) for every non-negative, nearly Borel-measurable function f it holds Uf = 0
or
Uf = +oo;
(6.80)
Hi) if A is nearly Borel measurable and not thin, then T^l = 1; iv) for every nearly Borel set A C K" it holds either T^l = 0 or T^l = 1, i. e. A is either polar or recurrent.
This theorem states that (Xt)t>o is recurrent if and only if every nearly Borel set A C M" is either polar or recurrent. In particular in the situation of Theorem 6.2.33 we have Corollary 6.2.39. Let (Xt)t>o be as in Theorem 6.2.33 and assume that ra(x,-) is absolutelly continuous with respect to \(n\ If a nearly Borel set A C Mn is not exceptional, then it is recurrent. The transient case is not as easy to describe and we give here a part of Theorem 3.7.2, p. 126, in K. L. Chung [75], compare also M. Sharpe [329], p. 59. Theorem 6.2.40. The process (Xt)t>o is transient if and only if there exists a sequence (K^)ue^ of transient sets Ku such that Kv C Kv+\ and 1 " = Note that (Xt)t>o is transient if for some Borel function h > 0 it holds Uh < co. As proved in K. L. Chung [75], Theorem 3.7.2, p. 126, the finiteness of UXK(X) for all x £ K™ and all compact K C Mn implies that {Xt)t>o is transient in the strict sense. A converse holds under some regularity assumptions on Raf, ot > 0, and Uf. The following result is taken from D. Revuz and M. Yor [299], Proposition X.3.7, p. 394, and it gives a transient-type result under more simple to formulate assumptions. Theorem 6.2.41. Let (Xf)t>o be as above and suppose that for every relatively compact set A c t " the potential UXA is finite. Then the process converges to infinity, i.e. lim |Xt(w)| = co a.s. t—>oo
6.2 Potential Theoretical Notions and their Probabilistic Counterparts
309
As noted in Remark 6.2.27, transience-recurrence is in general not a dichotomy, but there are cases where it is. To get a characterization of these cases we start with Definition 6.2.42. A finite universally measurable function h is said to be invariant with respect to (Tt)t>o (or (Xt)t>o) if f° r all < > 0 (6.81)
T th = h holds. The following decomposition result holds for excessive functions: Theorem 6.2.43. Let u £ S and suppose that the decreasing limit h(x) := lim Ttu{x)
(6.82)
t—>oo
is finite for all x € 1 " . Then h is invariant and UQ = u — h is excessive and it holds lim Ttu0{x) = 0.
(6.83)
t-tOO
Proof. ([75], p. 120) Fix x G M™. From (6.82) we deduce the existence of to = to(x) such that Ttou(x) < oo and the monotonicity of each operator Tt implies that Ttu < Ttou and T3(Tto)(x) < Ttou(x) < oo for all s > 0. By dominated convergence we find for s > 0 Tsh = Ts( lim Ttu) = lim TsTt = lim Tt+Su = h, t—>oo
t—»oo
t—>oo
(6.84)
i.e. h is invariant. Now for uo = u - h we have uo(x) = oo if u(x) = oo and therefore for t > to Ttu0 =Ttu-Tth = Ttu-h
= u0,
(6.85)
i.e. -u0 is supermedian, and since u is excessive, hence Ttu f u as t J, 0, it follows also that u0 is excessive. Moreover, using Ttw0 = Ttu - h we may pass to the limit t —> oo to find lim Ttuo = 0. • t—too
Remark 6.2.44. A. Theorem 6.2.43 is a rather weak form of a Riesz-type decomposition theorem. B. Note further that u0 satisfies condition (6.52) of Proposition 6.2.12, i.e.
310
Chapter 6 Markov Processes and Potential Theory
we know that if Ttu0 < ooforall* > 0 then lim U{Ul>~T^Un) = 0 and since h - Tth = 0 we know even lim U(u~ThU)
= 0.
h->0
C. The function UQ in the decomposition u = h + UQ is often called the pure excessive part of u whereas h is called the invariant part of u. The following result is proved in D. Revuz and M. Yor [299], p. 394. Proposition 6.2.45. Let (Xt)t>o be as above. Equivalent are i) the bounded invariant functions are constant, ii) every set is either recurrent or transient.
6.3
Some Potential Theory of Levy Processes and more Probabilistic Counterparts to Potential Theory
Let q(x, £) be a negative definite symbol such that —q(x, D) generates a "nice" Hunt process (X t )t>o- Assume further that q(x,£) ~ ip(£) where ip is a fixed continuous negative definite function with associated Levy process (Yt)t>oHere "~" stands for some type of comparison. We know already that we can not always expect the process (Xt)t>o to have properties similar to those of (Yt)t>o, compare Section 3.7, especially pp. 138. — But as we have seen in Section 3.8 in some cases a comparison of symbols yields a comparison result for certain properties of the corresponding processes. In the next section we want to explore how this philosophy works with respect to potential theoretical properties. For this reason we discuss in this section how the symobl of Levy process can be used to characterize potential theoretical properties of a Levy process. The first and rather easy to prove result is Proposition 6.3.1. Let (Yf)t>o be a Levy process with state space 1 " and symbol if). The process is conservative if and only if ip(Q) = 0. Remark 6.3.2. By definition we call a Hunt process conservative if its associated semigroup is conservative, i.e. T t l = 1 for t > 0. Proof of Proposition 6.3.1. (Compare Example II.3.5.69) Take tp G C%°(W.n) such that 0 < ip < 1, supp<£> C Bi(0) and V'IBI(O) = 1 Further let
6.3 Potential Theory of Levy Processes and more Probabilistic Counterparts 311 ?(f), k 6 N. Then (
It follows that
(Ttlpk)(x) = (2n)-* f = (2?r)-* /
ete-«e-**«^*(Odf ete*e-**K)/fen£(/fef)d£
By monotone convergence we have lim Tty>fc = Tt (lim ?&) implying if ip(0) = 0 A;—>oo
that
(Ttl)(a;) = T t ( lim ^^(a;) = lim (Tt
k—»oo
JK
thus (Tt)t>o, and therefore (lt) t >o is conservative. Conversely, suppose that (Yt)t>o (or (Tt)t>o) is conservative. Using the same sequence (y>fc)fceN as above we find since ip(0) > 0 that 1 = (Ttl)(x) = lim Tt
e-^(°)^)d$
Jm.n
= e-**(0V(0) = e"^ (0) < 1 if V'(O) 7^ 0 which would be a contradiction. Hence we must have ip(0) = 0 and the proposition is proved. • In general "transience-recurrence" is not a dichotomy, but for Levy processes it is: Theorem 6.3.3. A Levy process (Yt)t>0 with state space Rn is either recurrent or transient. For a proof of Theorem 6.3.3 we refer the reader to K. Sato [310], Theorem 35.4. The proof of the following is taken from K. Sato [310], Theorem 37.5. Theorem 6.3.4. For a Levy process (Yt)t>o with state space Rn and symbol ip the following statements are equivalent: i) (Yt)t>o is recurrent;
312
Chapter 6 Maxkov Processes and Potential Theory
ii) for some r > 0 it holds
lim
/
Re
( l T ^ H = +oo;
< 6 - 86 )
Hi) for some r > 0 it holds
lim sup /
Re( — i — W =+oo. y
A-*0 JBT(O)
(6.87)
A + W\£.)'
We prepare the proof of Theorem 6.3.4 by L e m m a 6.3.5. For r > 0 there exists a bounded, continuous, non-negative, integrable function vT : M.n —> M., vr ^ 0, such that v is non-negative and V
\BC(O) = 0.
Proof, (following [310], p. 251) For b > 0 consider the function g : R -> M defined by 9b(s) = Yb{1-
^)x[-2i l 2 6](s).
(6-88)
It follows that ^j^^eR.
(6.89)
For the function vr{x) :=db{xi)---gb(xn),x
(6.90)
= (xi,...,xn),
we find that MO = 9b(t;i) • • • 9b(tn) and vr has all desired properties if b = b(r) is chosen in a suitable way.
•
Proof of Theorem 6.3.4. ([310], Theorem 37.5) We start with proving that i) implies ii). Thus assuming that (Yt)t>o is recurrent and vr as in (6.90) we find with A > 0 (flA«r)(0) = (27T)-*/
^ J T ^ T ^ n
•
6.3 Potential Theory of Levy Processes and more Probabilistic Counterparts 313 Since R\vr(0) is real-valued also the right hand side must be real-valued implying
tv(£)Re(—±— W .
{Rxvr)(0) = (2n)-% f
(6.91)
From 6-92) (
Re AT^)=^Tj^)F >0
we deduce that there is a constant CQ > 0 such that
(Rxvr)(0) < co [
Re(
*
W.
(6.93)
The recurrence of (Yt)t>o however yields (taking into account that vr > 0 and vr(0) > 0) that \im(Rxvr)(0) = (Uvr)(0) = +oo, A->0
thus i) implies ii). Clearly ii) gives iii). Finally we prove that iii) implies i). For this let v = vi be the function (6.90) for r = 1. It follows that v(0) > 0 and for c > 0 we set vc(£) := v(c£). Thus we find for c large enough that inf vc(£) > 0 and with a suitable constant c\ we get ZeBr(o)
W_i_W
(RxVc)(0) >cj JBr{0)
VA
(6.94)
+ V(?) /
Since (R\dc)(0) f (Uvc)(O) as A I 0 and since by iii) we know that • limsup(R\vc) (0) = +oo we deduce that (Yt)t>o is recurrent. A—»oo
~
Since in case of Levy processes we have a dichotomy, a easy consequence of Theorem 6.3.4 is Corollary 6.3.6. A Levy process (Yt)t>o with symbol ip is transient if and only if for some r > 0 lim sup /
Re(
1
W < oo.
The next corollary gives a criterion involving only ip, not A + t/j.
(6.95)
314
Chapter 6 Markov Processes and Potential Theory
Corollary 6.3.7 (K. Sato [310], Corollary 37.6). Let (Yt)t>0 be a Levy process with state space R n and symbol ip. We set R e ^ y = +oo and , , L , = +oo for any ( e R n such that ip(£) = 0. Fix r > 0. A. If
I JBT(O)
Re
(77^) d £ = +O °
(6-96)
\i>{Q'
then (Yt)t>o is recurrent. B. If (Yt)t>o is symmetric, i.e. ip is real-valued, then (Yi)t>o is recurrent if and only if
I
h^| d ^ = +0 °-
(6 97)
'
C.If
(6 98)
I m^\ds < °°
-
then (Yt)t>o is transient. Proof. A. By Fatou's lemma we have / Re(—^W
which yields that (6.96) implies (6.86) and therefore the recurrence of (Yt)t>o. B. For symmetric (Ft)t>o we know that ReV(£) = ^{0 = 1^(01 a n d ( 6 - 97 ) i s equivalent to (6.96) which proves one direction. In addition, in this case (6.97) is equivalent to the negation of (6.98). By the dychotomy part B follows once part C is proved. C. Since
|A + ^(0! 2 = (A + ReV(0)2 + (lm^(0) 2 >(ReV(0) 2 +(lmV(0) 2 = l ^ ) | 2 , implying Re
(lT^)) -
ATVK?)
- W&V
thus (6.98) yields that (6.87) can not hold and once again the dichotomy gives the result. •
6.3 Potential Theory of Levy Processes and more Probabilistic Counterparts 315 Remark 6.3.8. We refer the reader to K Sato [310], Section 35-37, where a lot of further material on the recurrence-transience dichotomy for Levy processes is discussed. In case of a symmetric L2-sub-Markovian semigroup we know by Lemma 6.2.30 that T\ is a version of e^, the equilibrium potential. This gives a hint that Tji should be related to the (1,2)-capacity. In fact the hitting distribution gives information on the smallness of a given set with respect to a process, but so does also e^. More precisely, cap12(^4) = £i(eA,eA), gives a notion of smallness of sets. We have already seen that often a set N C N (where iV is a nearly Borel set) is exceptional, i.e. P(&ff < oo) = 0, if and only if ca,p12(N) = 0, Theorem 6.2.32, and Theorem 6.2.33 relates polar sets to exceptional sets. Our aim is to explore these relations a bit more. We sketch first the general theory following closely K. L. Chung [75], then we switch to Levy processes and try to understand conditions and results in terms of the symbol ip of the Levy process. This part is mainly taken from K. Sato [310]. Many of the following results we will not prove and we refer to the references just mentioned. We assume in the following that our Hunt process (Xt)t>o is associated with a symmetric Cb-Feller semigroup which generates a regular Dirichlet form (£,£>(£)). The semigroup and its resolvent as well as all their extensions are denoted by (Tt)t>o and (R\)\>o, respectively. The potential operator is denoted by U. We will also require that U has a density, i.e. U(x,A)=
f ro{x,y)dy
JA
(6.99)
which is symmetric, i.e. ro(x,y) — ro(y,x), by the symmetry of {Tt)t>o- In addition we assume ro(x, y)>0
for all x,y £ M n
(6.100)
and ro(x, y) = +oo if and only if x = y.
(6.101)
Note that the Riesz kernels of order a, 0 < a < 2, i.e. ka(x, y) = \x—y\a~n satisfy these assumptions. They are the kernel associated with the a-symmetric stable processes as we will see below. In some results some transience conditions are required but note that considering (e~'7t) t > 0 instead of (T t ) t > 0 these
316
Chapter 6 Markov Processes and Potential Theory
conditions will be satisfied. This "transformation" corresponds to switching from the Dirichlet form (£,D(£) to the form (£1,D(£)). As a first result we state, compare [75], p. 213, Theorem 6.3.9. Let (Xt)t>o be as above. For every transient set A c K" there exists a Radon measure fiA called the equilibrium measure satisfying Px{aA
< oo} = /
(6.102)
ro(x,y)fiA(dy).
Furthermore, "Hunt's switching11 result holds, compare [75], p. 219, Theorem 6.3.10. Let (Xt)t>o be as above and suppose in addition that U(x, K) < oo for every compact set K C R" and that for every y £ M" the mapping x i-> ro(x,y) is excessive. Then we have (6.103)
Tbu(x,y) = Tbu(y,x) for all relatively compact open sets B where
TBu(x,y)=
[
u(y,z)TB(x,dz).
Definition 6.3.11. A. Let A c K" be transient with respect to (Xt)t>o and let fiA be the corresponding equilibrium measure. The capacity of A is defined Cap(^) := fj,A(M.n)-
(6.104)
B. For two cr-finite measure // and v on B^ e(/i,i/)= !
{Uii){x)v{dx)=
f
f
we define their mutual energy by ro(x,y)fi(dy)v(dx).
(6.105)
The energy of fi is by definition e(fi, fi). Clearly we have e(/i, I /)=e( I /,/i)
(6.106)
since (Xt)t>o is symmetric. Suppose that \i has a density Av, v £ D(A) and v has a density Au, u e D(A) with respect to A ^ where D(A) is the domain of the L 2 -generator of the corresponding semigroup: It follows that
e(fi,v) = I"(Un)(x)v(dx) = f(Un)(x)Au{x)dx = / (UAv)(x)Au(x)dx = / v(x)Au{x)dx = e(v,u),
6.3 Potential Theory of Levy Processes and more Probabilistic Counterparts 317 and in particular for \i = v we have (6.107)
e(fx,fi) = £(u,u), i.e. the corresponding Dirichlet form is equal to the energy. The next theorem is taken from [75], p. 223.
Theorem 6.3.12. Let (Xt)t>o be as above and v a cr-finite measure with supp v c K where K C Mn is compact. Suppose further that Uv{x) = /ffin ro(x, y)v{dy) < 1 for all x G K. Then it holds v{K) < Cap(JO-
(6-108)
For a fixed compact K c R™ denote by $(K) the following set of measures ®(K) := {v G A4fe(Rn) ; suppi/ c K and e(v,v) < oo}.
(6.109)
As proved in [75], p. 226, we have always (6.110)
e{fiK,HK) = Cav(K). In addition it holds
Theorem 6.3.13. Suppose Cap(if) > 0. In this case for any v G $(K) with v{K) = Ca.p(K) it follows that (6.111)
Ca.p(K)<e(v,v) with equality only for v — /J,K .
Remark 6.3.14. We refer to the reference [75] and the notes for the discussion that Cap is indeed a capacity. Now suppose that {Xt)t>o is a symmetric Levy process with symbol ip which is transient, or let if C 1 " be a transient set with respect to (Xt)t>oAssume further that K is a compact set with finite capacity Cap(-ftT). Then \IK is a bounded measure with Fourier transform JLK which is bounded and uniformly continuous. A straightforward calculation yields e{/j,K,HK) = S^{HK,^K) , 1
= /
(UfiK)(x)fiK(dx)
Mn
= c / — ^ ( f l p d S = Cap(K) = Cap^K).
(6.112)
318
Chapter 6 Markov Processes and Potential Theory
More generally, for a measure v £ $(K) we find ^(I/,I/) = C/"
J-|£(£)|2d£.
(6.113)
In particular, if Vi(O > c o ^ 2 (O for all f G M" we find e^x (i/, i/) < c'ey,, (i/, i/);
(6.114)
implying Cap^GFOfCc'Cap^/O-
(6.115)
Note that for A > 0 we may consider the process with symbol ip + X (instead of VO and this process always will satisfy our conditions if ip does, but the process associated with tp + A, A > 0, will always be transient by Corollary 6.3.7.C. Let fi be a bounded Borel measure on W1 and ip a real-valued continuous negative definite function. The domain D(A^) of the generator A^ of the corresponding L 2 -sub-Markovian semigroup is the space H^'2(M.n). Proposition 6.3.15. For A > 0 fixed there exists a sequence (wfc)fceN, "fc € D{A{-2)), such that
4 A V,M)= f {Rxn)(x)n(dx) = lim £x(uk,uk)
(6.116)
holds where £\{u,u) = £{u,u) + X(u,u)i2 and (£,D(£)) is the Dirichlet form corresponding to tp. Proof. For k G N define
s
<«>-irlr~w'
<
It follows that
('••
Sx{uk,uk)=
[ (A + V(O)l"fe(O|2de
= I (A+^(o),x h»
\u.2\m\2e-^l2dt
(A + v(0)
2e f |2d ~" ^ = y/Rn ATT777Tl^) + ^(0
6.4 Applications to Markov Processes
319
Hence
lim £x(uk,uk) = lim /
1
|fi(^)|2dg = effW)-
n Corollary 6.3.16. In the situation of Proposition 6.3.15 and a transient process (Xt)t>o we have also (Ufj,)(x)fj,(dx) = lim £{uk, uk). (6.118) 7R« k—»oo We refer the reader to M. Pukushima, Y. Oshima, M. Takeda [115], especially Section 2.2, to explore more relations on Cap and cap x 2e^,(fj,,fj,)=
6.4
Applications to Markov Processes Generated by Pseudo-Differential Operators
In Section 6.2 we have seen that several notions from potential theory have a probabilistic counterpart and in Section 6.3 it was pointed out that in case of Levy processes the symbol ip can be used to characterize potential theoretical properties of the process. In this section we will address the following problem: Let q{x,£) be a negative definite symbol such that —q(x,D) extends to a generator of a Feller (or Lp-sub-Markovian) semigroup with corresponding process (Xt)t>o- Suppose that with some fixed continuous negative definite function ip it holds q(,x£) ~ V'(C)- I s the potential theory of {Xt)t>o comparable to the potential theory of the Levy process (Yi)t>o corresponding to ip? We do not intend to be exhaustive in this section, especially since so far no complete satisfying theory exists. Instead we want to give some typical results. First we consider the question: When is (Xt)t>0 conservative. In some sense the existence results relying on the well-posedness of the martingale problem as discussed in Chapter 4 give such conditions, namely sup q(x, f) -+ 0 as £ -> 0.
(6.119)
However we will discuss here a result due to R. Schilling [318] using extension properties of the corresponding semigroup. We pose
320
Chapter 6 Markov Processes and Potential Theory
Assumption 6.4.1. Let (Tt)t>o be a Feller semigroup on C00(Wl) generated by the pseudo-differential operator —q{x,D). More precisely, -q(x,D) extends from Co°(M.n) to the generator (A,D(A)) of (Tt)t>o- In addition we assume that the negative definite symbol q : Mn x R n —> C is locally bounded. Lemma 6.4.2. Let
(6.120)
k—»oo
// in addition sup |g(z,£)| < c(l + |C|2) holds, it follows that sup sup \q(x,D)(fk{x)\ < oo. fe6Nx€Kn
Proof. Since ^t(£) = kn(p{kCj we find |g(a:)Z»)¥>fc(a:)| = (27r)-j|/
e^g^O^CO^
= (27r)-*|/
e«-^(x,|)^)d^
<(2TT)-*
/
|^,|)||^)|d^
< 2(27r)-S /
sup \q(x, r,)\(l + 1|£) |^(O|de V
^ R " |?7|<1
*
'
<2(27r)-t sup |g(i,7,)| / (l + |£|2)|£(0|d£, |t/|
VR"
where we argued similarly as in the proof of Lemma 1.3.6.22. Applying now the dominated convergence theorem in the first two equalities of the above calculation we arrive at lim q(x,D)ipk(x) = q(x,0). k—>oo
The second statement is obvious when using once again the above calculation since under the additional assumption we have \q{x,D)
(i+\U2)mm
<(27T)-t C / (1 + |f|2)|£tf)|d£.
6.4 Applications to Markov Processes
321
• Remark 6.4.3. As done before, compare Lemma 4.2.13 for example, we may assume that (tfk)keN satisfies in addition (pk T 1Theorem 6.4.4 (R. Schilling [318]). Let (Tt)t>0 sumption 6.4.1 and assume in addition that sup\q(x,O\
n
and q(x,£) be as in As-
+ \S\2)
(6.121)
holds. If x i-> q(x,0) is continuous, then x H-> (Ttl)(x)
is continuous too.
Proof. With (tpk)k&n as in Remark 6.4.3 we find 1 - (ftl)(x)
= Urn (
= lim /
k—»oo JO
T.(q(;D)
/
JO
Ttq(-,D)ds,
where we used Lemma 6.4.2. By assumption q(-,Q) G Cf,(R"). Thus there exists a sequence (uk)ken, "fc G Co(R n ) increasing to q(-,0). By monotone convergence we get / T s Q(-,0)ds= / T(supu f c )ds = sup / r s u f c ds, Jo ken keNJo Jo implying that / 0 Tsq(-, 0)ds is a bounded lower semi-continuous function. Analogously we find that Til = sup Ttfk is also lower semi-continuous and bounded. fc€N
Hence it follows that the upper semi-continuous and bounded function 1 — T t l which satisfies
1 - T 1 = / Tsq(-,0)ds Jo is also lower semi-continuous, i.e. it must be continuous which yields T t l €
Cb(R»).
•
The next lemma prepares our final result: Lemma 6.4.5. Let (Tt)t>o and q(x,£) be as in Assumption 6.4.1 and assume in addition thatq(-,O) G C(E n ) and sup |g(a;,OI < c(l + |£| 2 )- Then for every xSR"
\iml-{T?1){x)=q(x,0)
(6.122)
322
Chapter 6 Markov Processes and Potential Theory
holds.
Proof. With ((fik)keN 6.4.4 that
as
in Remark 6.4.3 we find as in the proof of Theorem
\{l-fl) 1
= \ f f.q(;0)ds,t>0. <- Jo
n
Since q(-,0) e C6(R ) it follows from Lemma 6.4.2 that \imfsq(-,0) s >0 ~ _ implying that lim \ /„* Tsq(-,Q)ds = q{-, 0).
= q(-,0) D
Theorem 6.4.6 (R. Schilling [318]). Let (Tt)t>o andq{x,£) satisfy Assumption 6.4.1 and suppose that sup |
Remark 6.4.7. In [318], Theorem 4.4, ft. Schilling gave some characterization of the condition that x H-> q(x, 0) is continuous, namely each of the following conditions is equivalent to q(-,0) 6 C(M.n): i) lim sup \q(x,£) — q{x,0)\ = 0 for all compact sets K C Rn; Kl-tOze/r ii) lim sup ^(z, -B^(O)) = 0 for all compact sets K C R n ; •R-toozeA"
where v(x,dy) denotes the Levy kernel corresponding to q(x,£); iii) x H-> g(x, ^) is continuous for all ^ G R".
6.4 Applications to Markov Processes
323
Next let us turn our attention to the question when a Feller process generated by a pseudo-differential operator is transient or recurrent. First we want to discuss the problem whether transience-recurrence is a dichotomy. Suppose that Assumption 6.4.1 holds andsuppose that h is invariant, i.e. for all t > 0, it holds Tth = h. It follows that ^ ^ = 0, hence lim ^ = ^ = 0. Therefore an t-*o invariant function belongs to the domain of the extended generator A, in fact it belongs to its kernel. Thus if A has a generalized Liouville property, i.e. the only bounded solutions of Au = 0 are constants, then according to Proposition 6.2.45 the transience-recurrence dichotomy holds for every set B € B^n\ Now A is an extension of -q(x, D) which we may represent using the Levy-Khinchin representation of q(x, £). Thus we have Problem 6.4.8. Let q(x,£) be a continuous negative definite symbol such that — q(x, D) extends from Co°(Rn) to a generator A of a Feller semigroup and denote by A the extended generator associated with (Tt)t>o- Which conditions on q(x,£) ensure that A has the generalized Liouville property, i.e. Au = 0, u G Bb(M.n), implies u =constant? So far no non-trivial solutions to Problem 6.4.8 are known. According to our previous considerations, in order to decide on the transience or recurrence of (Xt)t>o w e need to investigate the potential operator U. However we do not know the symbol a(U))(x,£) of U. Clearly, Ayr is only an approximation of a(U)(x,£) and remainder estimates are not sufficients to decide a question as "Does there exists a strictly positive Borel function such that Uh < oo?" when knowing a positive answer for the operator u^(27r)-*/ R B e«-« 5 j^ J «(Od^. The same problems occur when looking to the semigroup directly. The symbol a(Tt)(x, £) is of course not equal to e~tq(-x>& and therefore a comparison of e~tg<^x'^ and e~*^^) for a suitable continuous negative definite function ip will not lead to a comparison of transition functions which could imply a comparison of potential operators. Nontheless, the most recent results in Appendix I and Appendix II might become tools to settle the problem. So far we know only two approaches to decide whether (Tt)t>o, hence (-Xt)t>Oi generated by an extension of —q(x,D) is transient or recurrent and both rely on certain comparisons. If (St)t>o is a further Feller semigroup having the transition function pf(x, A) and if (Tt)t>0 has the transition function pt(x,A), then a compar-
324
Chapter 6 Markov Processes and Potential Theory
ison of the type for al\xeWl,AeB{n),t>0,
pf(x,A)
(6.123)
will imply for all bounded Borel measurable functions h > 0
Sth(x)dt
Tth(x)dt. Jo
Now, if (St)t>o is recurrent in the strict sense, then (Tt)t>o is recurrent in the strict sense too. Conversely, if pt(x, A) < c'pf(x, A)
for all i € t t " , i e B{n\t > 0,
(6.124)
holds and if (St)t>o is transient, then (Tt)t>o is transient too. In case that both semigroups have densities, i.e. pt(x,dy) = pt{x,y)X^(dy)dy) and pf(x,dy) =p?(x,y)\W(dy),dy), then (6.123) and (6.124) are of course reducible to a comparison of densities. We want to combine these observations with the Aronson estimates (II.2.442) and deduce some results for subordinate diffusions. For this we state first Lemma 6.4.9. Let (Y^ ) t > 0 be the Levy process on Mn with symbol £ <—» | £ | 2 Q , i.e. (Yf ) t > 0 is a symmetric la-stable process. For 2a < n the process is transient, for 2a > n the process is recurrent.
Proof. Since
LAQ)W^
= UlnLP
d P \= + oo
the lemma follows from Corollary 6.3.7. C.
for2a>n •
Now we can prove
Theorem 6.4.10. Let (6.125)
6.4 Applications to Markov Processes
325
be a second order elliptic differential operator with au = aik £ C^(Rn) satisfying 2
n
Aoiei < S awM&fc ^ V'l^l2-
( 6126 )
Further let f be a Bernstein function with corresponding convolution semigroup (r]t)t>o- Denote by (Tt)t>o the symmetric Feller semigroup generated by L(x,D) and let (T/)t>o be the subordinate semigroup, i.e.
T/u(x)= [°° Ttu(x)rH(ds). Jo If j B .Q. f(|gia\dg is finite for r > 0, then (T/)t>o is transient, otherwise (T/)t>o is recurrent. Proof. Denote by T(t, x, y) the fundamental solution to Jj — L(x, D) and for 7 > 0 denote by r 7 (i,x,j/) the fundamental solution to Jj — 7A(n). Prom (II.2.442) we know the tronson estimates KxV* (t, x, y) < T(t, x, y) < K2Y^ (t, x, y)
(6.127)
with suitable constants ^1,^2,71,72 > 0- Since T/u is given by T/u(x)=
/
Jun Jo
r(s,a;,j/)u(i/)»fc(ds)di/
the result follows from Lemma 6.4.9.
•
Corollary 6.4.11. For the operator A?, the extended generator of (T/) t > 0 , the generalized Liouville property holds. Proof. We need only apply Proposition 6.2.45.
O
Remark 6.4.12. Note that so far the results at the end of Section II.2.9 or in Appendix II are not sufficient to prove the expected result for the semigroup generated by -f(q(x,£))(x,D). In case that (Tt)t>0 is symmetric and extends to an £2-sub-Markovian semigroup (which we denote again by (Tt)t>0) with associated regular (symmetric) Dirichlet form (£,£>(£)) we may try to use Theorem II.3.5.65 to deduce a transient or recurrent result for (Tt)t>0 by comparing with the Dirichlet form
326
Chapter 6 Markov Processes and Potential Theory
[£'^,H^'1(M.n)) corresponding to a fixed real-valued continuous negative definite function. The typical situation we encounter in results such as Theorem II.2.6.6 or Therorem II.2.6.10 is that — q(x,D) extends to a generator and for the corresponding bilinear form B(u,v) = {q(x,D)u,v)o we find a Gardingtype inequality ueH^\Rn).
B(«,u)>7olHlli-Ao||«||§,
(6.128)
Clearly Hull^j = £f(u,u), but since / B ,0) 1+1Lod£ < oo holds always, this comparison is not much of interest. However, we may rewrite (6.128) as B{u,u) > Tbf*(«,u) + (70 - A0)||u||g
(6.129)
to find, compare Example II.3.5.67: Proposition 6.4.13. Suppose that q(x,(,) is a real-valued negative definite symbol such that —q(x, D) extends from C§° (M.n) to a generator of a symmetric L2-sub-Markovian semigroup (Tt)t>o- Suppose in addition that (6.129) holds with 70 — Ao > 0. / / / B (o) W ? ) ^ < °°> *hen the semigroup (Tt)t>0 and therefore the Hunt process associated with q(x, £) is transient. Let G C K n be an open bounded set and consider C§°(G) as subspace of H^iW1). Denote the closure of C$°(G) in H^'^W1) by H$'l{G). Suppose that we have the following Poincare-type inequality
tf(O|S(OI2d£
\\u\\h < 7^(«,«) = 1G f
(6-130)
k a U u e f l j f ^ G ) . From [ \u\(X{n)(G))~1dx< ff
X^iG^dxY
(f
\u\2dxY
(6.131)
we derive that £^ is transient. In addition on HQ (G) we find from (6.129)
£^(u,u) < —B(u,u) + 7o
or
< —B(u,u) 7o
+
^—^\\u\\l 7o
7o
^^lG£*{u,u),
( l _ ^ l Z j * 7 G y * ( U ) u) < -B(u, 7o ' 7o V Thus we have proved
u).
(6.132)
6.4 Applications to Markov Processes
327
Proposition 6.4.14. Suppose that q(x,£) is as Proposition 6.4.13 and in addition suppose that the Poincare-type inequality (6.130) holds. If °~^° jc < 1 then the Dirichlet form (B,i7g''1(G)) is transient. Remark 6.4.15. The interesting point is that once Ao and 70 are known we is necessarily may determine those domains G e t " for which (B,HQ:1(G)) transient. We want to derive the Poincare-type inequality for some situations and follow essentially the paper [89] jointly written with K. Doppel, but this paper depends already much on Ch. Morrey [273], p. 83. Assume that ip : M.n —> R is a continuous negative definite function such that I € L}0C(W) implying that (£'i').EPM(Rn)) is transient. Suppose that v G H^iW1) and i(>i(D)v = 0. From Theorem II.3.5.33 we know that there exists a function g G L1(JK") which is almost everywhere strictly positive, bounded and satisfies (II.3.365), i.e. f
\u\gdx<(e*{u,u))i
for allforallueiT^G).
(6.133)
Taking in (6.133) a function v such that ij)*(D)v = 0 we find
/ \v\gdx<{£*{v,v))*= I ^(OI«(O|ad£=ll^4(£MU»=0, or \v\g = 0
a.e.,
(6.134)
which implies v = 0 a.e. Thus we have proved Lemma 6.4.16. Let ifr be a real-valued continuous negative definite function such that ^ G Ljoc(Rn) and suppose that tpi(D)v = 0 for some v G -fT^^R"). Then v = 0 a.e., i.e. v is the null-function in i7^'1(]Rn). Now we can prove Theorem 6.4.17. Let ip : R" —> M be a continuous negative definite function such that i G Ljoc(Rn). If the embedding i : Hpx{G) --» L2(G) is compact, then the Poincare-type inequality \\u\\2L2 < c£^(u,u)
holds for all us
= cUHD)u\\l2
^(G).
(6.135)
328
Chapter 6 Markov Processes and Potential Theory
Proof. Suppose that (6.135) is false. Then there exists a sequence (uj/)ygN, uv G HQ'1{G) such that ||w^||,/,,i = 1 and (6.136)
\\uv%tl>v£*{uv,uv) holds. Prom (6.136) we deduce that £^(uu,uu) ip?{D)uv -> 0
—> 0 as v —» oo, i.e.
inL2(Rn).
(6.137)
Since H^^IG) is reflexive, there exists a sub-sequence of (uv)v^n, denoted once again by (u^) 1/6N , such that {uv)v&^ converges weakly in H$'l(G) to some element u G H^^IG). By compactness of the embedding of Hp1{G) 2 into L (G) it follows that (uv)v^ converges strongly to u G L2(G), hence \\uu - w||o -* 0. Now let (p G Cfi°(G). Then we have - u)
/ ^{D){uv
which gives i/ji(D)uv —^ ipi(D)u in L2(G). Hence by (6.137) we have ipi{D)uu -> ipi(D)u = 0. By Lemma 6.4.16 it follows that u = 0 (in L 2 (G)) and therefore
I k 4 , ! < c(||Ul/|||2 + UHD)UV\\2L2)
which contradicts J|z/^ || v,i
=
1-
-+ o
^
Remark 6.4.18. In Theorem 1.3.10.5 a necessary and sufficient condition for the compactness of the embedding of H^u8(Rn) n £'{K) into iJ^ 3 ' s (M n ) was given when K C R n is a compact set. For the case of i: HQ:1(G) —> L2(G), G being a bounded open set, the criterion yields that the embedding is compact if and only if liminf r/i(£) = oo holds. KHoo
Next we will turn our attention to the comparison of capacities, hence of exceptional and polar sets. Let us assume that (Tt)t>0 is a symmetric Feller semigroup which extends to a symmetric L2-sub-Markovian semigroup which we denote again by (Tt)t>o. In addition suppose that (Tt)t>o is generated by an extension of (—q(x,D),Co°(M.n)) where q(x,£) is a negative definite symbol. We require that q(x, £) is comparable with a fixed continuous negative definite function ip : E n —> R and that for the bilinear form B associated with (Ti)t>o the estimates |B(«,w)|<7iH^, 1 ||v|^,i
(6.138)
6.5 The Balayage-Dirichlet Problem
329
and
(6.139) hold. In Section II.2.6 we gave a lot concrete examples of symbols q(x,£) leading to such a situation. By our assumptions ( 5 , i/^'^JR™)) is a Dirichlet form, in particular B(u,u) > 0 and for Ai, A2 > 0 we have K1BXl (u, u) < BX2 (u, u) < K2BXl (u, u), which yields with (6.138) and (6.139) that Vl€f(u,u)
= rn\M\l,i < Bx(u,u) < V2£f(u,u)
(6.140)
for suitable constants 771,772 > 0. From (6.140) we deduce that capfjiA) = capf 2(A),
(6.141)
where cap{*2 denotes the (1,2)-capacity associated with £^ and capf 2 denotes the (1,2)-capacity associated with B. Taking into account Theorem 6.2.32 and Corollary 6.2.34 we have proved Theorem 6.4.19. Let (Xt)t>o be the Feller process corresponding to (Tt)t>0 and let (Tt)t>o be just as above. If all compact sets K have finite capacity capf 2{K) < ° ° then a set N is exceptional for (Xt)t>o if and only if capf)2(-W) = 0 which holds if and only if N is exceptional for (Yt )t>o)t>o where (V/)t>o is the Levy process with symbol ip. Further, if (Tt)t>o and (Tt )t>o have densities with respect to A ^ then a set A is polar for (Xt)t>o if and only if it is exceptional with respect to (Xt)t>o and these sets coincide with the polar, hence exceptional sets with respect ot (Yt )t>oRemark 6.4.20. A. We used above the notation (Tf)t>o for the semigroup generated by —ip(D). B. Under our assumptions it is not difficult to see by using the considerations in Section II.3.6 that (Tt)t>o has a density with respect to A'™' if and only if (Tt )t>o has a density.
6.5
The Balayage-Dirichlet Problem
The potential theory for the Laplacian is much concerned with the Dirichlet problem Au = 0
in
G
and
u\dG - 9,
(6.142)
330
Chapter 6 Markov Processes and Potential Theory
where G C Mn is an open set with dG ^ 0 . In case of a ball BR(0) a solution to (6.142) is obtained by an integral formula, namely the Poisson integral u(x)
=
I^RSaBrio)i^-9(y)dy \g(x)
xeBR(0) x£dBR(o),
(6.143)
which gives a function u 6 C2(BR(0)) H C(BR(0)). Other methods have been developed to solve the Dirichlet problem on general domains including H. Poincare's balayage theory, the Perron-Wiener-Brelot theory, Hilbert space methods (Dirichlet's principle), or S. Kakutani's probabilistic solution u{x)=Ex(u{XaaG))
(6.144)
,xGG,
where (Xt)t>o is an n-dimensional Brownian motion and ago is the first hitting time of the boundary dG. In the Notes we will make some more historical remarks. As early as in 1938 M. Riesz [300] solved the corresponding problem for (—A)Q, 0 < a < 1, in case of the ball BR(0). He realized that the data must be prescribed on Gc, not only on dG. More precisely for the ball BR(0) he found the solution
_ r(g)Bin TO r
u{)
-
^+1
(R> - isf)° _
^
7*5,(0) (M2 - m * iv - xi"*"'
(
6J45)
for g : BR(0) - > I a suitable function. As we will see later on the probabilistic solution has the same form as in case of the Laplacian, namely u(x)=Ex(u(XaGC))
(6.146)
where (Xt)t>o is now the symmetric stable process of order 2a and ac is the first hitting time of Gc. Since Brownian motion has continuous paths (almost surely), for Brownian motion OQG — &G"- Thus we have a nice probabilistic interpretation of the difference: When the process has almost surely continuous paths then a path starting at x £ G will hit Gc for the first time when hitting dG for the first time (assume for the moment that dG is smooth). However, if the process has only cadlag paths the first hitting of Gc will not occur at the boundary dG, but somewhere in G : the process (almost surely) will jump over the boundary. For this reason the data must be given on Gc and not only ondG. The processes we are interested in have in general cadlag paths which are (almost surely) not continuous. Hence a problem analogous to (6.142) for the
6.5 The Balayage-Dirichlet Problem
331
corresponding generator A should be Au = 0
in G, u\Gc = g.
(6.147)
We call this the balayage-Dirichlet problem for A. In the following we will discuss three approaches to (6.147). First we will use the abstract theory of balayage spaces as developed by J. Bliedtner and W. Hansen, see [41] and their monograph [42]. Then we will show that many of the pseudo-differential operators we proved to generate a Feller semigroup give rise to a balayage space thus we may apply immediately this abstract theory. Next we discuss the problem in the context of Dirichlet spaces and finally we study a probabilistic approach. In the end we will see that for "nice" data all these approaches will lead to the same solution for (6.147). Let us introduce balayage spaces and see how problem (6.147) can be treated within these objects. Our presentation is taken from our joint paper with W. Hoh [158] but of course it relies on the monograph [42] of J. Bliedtner and W. Hansen. In the following X is a locally compact topological space with countable base and by B(X) we denote the space of all Borel-measurable functions / : X -> S. Definition 6.5.1. A. A family S C C(X) is called linearly separating if for any x,y € X and any A > 0 there exists / G 5, / > 0, such that f(x) ^ A/(y). B. A cone S C C(X) is called a function cone if S contains a strictly positive function, the set of non-negative functions in S is linearly separating, and for any / G S there exists a non-negative function g G S such that for any e > 0 there exists a compact set K C X such that |/(x)| < eg{x) for all x G Kc. For F C ~B(X) we define S(F) := {sup/ y ; (fv)ueN is an increasing sequence in F}.
(6.148)
We call F a-stable if S(F) = F. Moreover we define the lower semi-continuous regularization of / : X —> 1R by /*(a;) := liminf f{y) , x G X.
(6.149)
y—>x
Definition 6.5.2. Let W be a convex cone of non-negative lower semicontinuous functions / : X —* R. The W-fine topology associated with W is the coarsest topology on X which is finer than the initial topology and for which all functions of W are continuous.
332
Chapter 6 Markov Processes and Potential Theory
The following definition is central and is taken from J. Bliedtner and W. Hansen [42], p. 57. Definition 6.5.3. Let X be a locally compact topological space with countable base and let W be a convex cone of non-negative lower semi-continuous functions. The pair (X, W) is called a balayage space if the following conditions hold i) the cone W is cr-stable; ii) for every subset V C W we have (wf{u;veV})*feW,
(6.150)
where * / denotes the lower semi-continuous regularization with respect to the H^-fine topology; iii) for u, v\, v2 G W such that u < v\ + v2 there exist u\,u2 S W such that u = u\ + U2, "1 < ^i and u2 < v2; iv) there exists a function cone P of non-negative continuous functions such
that W = S{P). The next result, proved by J. Bliedtner and W. Hansen [42], p. 177, shows the close connection of balayage spaces to Feller semigroups, hence establishing the link to our previous considerations. We need before Definition 6.5.4. A kernel r : X x B(X) —> K + is called proper if x H-> r(x, K) is for every compact set K C X a bounded function. T h e o r e m 6.5.5 (J. B l i e d t n e r and W . H a n s e n ) . Let {Tt)t>o be a strong Feller semigroup originally defined on Coo(K") and denote by E(Tt)t>0 the set of all excessive functions with respect to (Tt)t>o and as usual we denote by U(x, A) If the potential kernel associated to (Tt)t>o, i.e. U(x,A) = f^°(TtXA)(x)dt. U is proper and if there are two strictly positive continuous functions u and v which are excessive and such that ^ e Coo(Kn), the (M™, E(Tt)t>0) is a balayage space. Remark 6.5.6. A. As before ft denotes the extension of Tt to i? 6 (R n ), but often we will write Tt instead of Tt. B. Of course in Theorem 6.5.5 we may take instead of K n a topological space as in Definition 6.5.3.
6.5 The Balayage-Dirichlet Problem
333
Before proving that many pseudo-differential operators with negative definite symbol give rise to a balayage space we want to discuss the balayage problem in a balayage space. Again we follow [158] but rely on [42], Definition 6.5.7. Let (X, W) be a balayage space. A. The set of all continuous potentials in (X, W) is defined as P := {p e W n C(X); ^ 6 Coo(X) for some 0 < v e W n G(A")}. (6.151) B. The reduced function Rf of / e W to the set J4 C X is the function i2^(a;) := ini{v(x) ; v £ W such that v < f and vA = / }
(6.152)
Remark 6.5.8. Later on we will often encounter the situation where l e W . In this case all functions in W D C^X) are continuous potentials. 0A
It can be shown that there exists a unique measure ex on X such that pde* = Rp{x)
for all p £ P.
(6.153)
I Using this measure, for a fixed open set G C X we define the kernel HQ(X, B) by (i, B) ^ tfG(z, B) := C (B).
(6.154)
Let us introduce the shorthand Bi.s.c(G) := {u G B(X) • U\G is lower semi-continuous}.
(6.155)
For a suitable function u we write as usual when dealing with kernels Hou(x) for HGu{x)= / u(y)HG(x,dy) = / u(y)ex{dy).
(6.156)
The hyper-harmonic functions on G C X are given by •#(G) := {u G Bj.,.c(G) ; -oo < HG,u
334
Chapter 6 Markov Processes and Potential Theory
Further we set (6.158)
*H+(G):={u€*H(G);u>0}, and S+(G) := {s e *H+(G); HG,s\G, G C{G')
for all G' open, G7 C G). (6.159)
We call elements in S+(G) positive superharmonic functions on G. The set of all harmonic functions on G C X is given by tf(G) := ' i f (G) n (--fl-(G)),
(6.160)
i.e. H(G) = { « £ £ ( X ) ; hG € C(G)
and H&u = u for all G' open, G7 C G}. (6.161)
We will see that this notion of harmonicity is a reasonable generalization, in particular when dealing with solutions u of Au = 0 where A generates a (strong) Feller semigroup. We want to discuss the Perron- Wiener-Brelot method in the setting of a balayage space (X, W). For this take an open set G C X and a function / : X - » I . We define Hf := inf {u 6 *H(G)\ u is l.s.c. on X, u > -p on X for some p £ P, u > f on G c },
(6.162)
and further we set
F ^ := -If?/. Note that 77° = H_f = f
(6.163) on Gc.
Definition 6.5.9. Let (X, W) be a fixed balayage space, G C X an open set and / : I - » R a function. A. We call / resolutive for the balayage-Dirichlet-problem for G (with respect to (X, W)) if
Tff = F G = . ^
(6 164 )
6.5 The Balayage-Dirichlet Problem
335
and Hf is called a generalized solution to the balayage-Dirichlet problem for G. Further we call Hj upper generalized solution and H_f lower generalized solution. B. If / € C(X) is resolutive, then we call Hf well-behaved if lim
G3y-*x
Hf(y) = f{x)
for all x e dG.
(6.165)
In particular, if Hf is a well-behaved generalized solutioin, then Hf G C(X) and Hf = / on Gc. Clearly on the vector space of all real-valued resolutive functions / i-> Hf defines a linear operator H°. The following existing results are taken once again from J. Bliedtner and W. Hansen [42]. Theorem 6.5.10. Let (X, W) be a fixed balayage space and G C X an open set. A. Every f G P is resolutive and Hf = R9" = Hcf • Moreover, if 1 G W then R®0 is the generalized solution to the balayage Dirichlet problem for G andfeWnC^iX). B. Every f e C0(X) is resolutive and Hf = HgfC. Let f : X —> M+ be lower semi-continuous on X and bounded from above in Gc by some s € S+(G) which is alos lower semi-continuous on X. Then f is resolutive and Hf = Haf •
Decomposing / = / + - / — we derive from part C Corollary 6.5.11. Let f 6 C(X) and suppose that \f\ < s on Gc for some s S S+(G) which is lower semi-continuous on X. Then f is resolutive and
Hf = Haf. Corollary 6.5.12. Let 1 G W.
Then any f G Coo(X) is resolutive and
Hf = Haf. We will need later on the following result on the continuous dependence of the generalized solution on / . Proposition 6.5.13. Let 1 G W. Further let {fu)v&N be a sequence of resolutive, real-valued functions converging uniformly to a resolutive function f. In this case the sequence (i7^)^ g N of generalized solutions converges uniformly
to Hf.
336
Chapter 6 Markov Processes and Potential Theory
Proof. Prom [42], VII.2.2(2), we derive that for all e > 0 the estimate \\fv /Hoc < e implies
\\Hfv - HfU = \\Hfv_fU < \\HfU. Since the constant function x — t » e is hyperharmonic, the definition of a generalized solution gives 0 < Hf(x) < e for all x G X which yields the proposition. • The discussion of well-behaved generalized solutions to the balayageDirichlet problem requires the notions of regular points. Again in our presentation we follow [158] but of course we rely on J. Bliedtner and W. Hansen [42]. Definition 6.5.14. Let (X,W) be a balayage space and G C X an open set. We call x e dG a regular point with respect to G (and (X, W)), if for every
/ G C0(X) lim
Hf{y)
= f{x)
(6.166)
G3y->x
holds. The set G is said to be regular, if all points x € dG are regular. If x e dG is not regular we call x an irregular point. Following [42] we have Theorem 6.5.15. Let (X, W) be a balayage space and let G C X be a regular open set. Further let f £ G(X) such that \f\ < p on Gc for some p £ P. Then H^ is a well-behaved generalized solution to the balayage-Dirichlet problem for G and f, i.e. Hf € H(G)nC(X), Hf = / on Gc. Moreover we have \Hf\ < p onX. In L. Bliedtner and W. Hansen [42] various results on regular and irregular points are shown, but we will not use these results later on in our discussion. We want to apply Theorem 6.5.15 to some concrete pseudo-differential operators generating Markov processes. For this we need first of all conditions assuring that a given pseudo-differential operator gives rise to a balayage space. Let q : R" x R™ —> R be a negative definite symbol and for the corresponding pseudo-differential operator q(x, D) we assume for a fixed continuous negative definite function V : R" ~> R ||«(z,.D)u||o<7iNk2.
(6.167)
6.5 The Balayage-Dirichlet Problem Further the bilinear form B(u,v) iT^^R") and to satisfy
337 = (q(x,D)u,v)Q
is assumed to extend to
|£(u,iOI<-yslMkiNki
(6-168)
£(«,«) >-N>IMI$,i-Ao||u||g.
(6.169)
and
Moreover, — q(x, D) is supposed to extend to a generator of a Feller semigroup {Tt)t>o which satisfies (6.170)
\\Ttu\\L-
In Section II.2.6 we compiled a lot of examples of negative definite symbols and corresponding pseudo-differential operators for which all conditions are fulfilled. Note that (6.170) follows from (6.169) if ^ satisfies V»(O>co|Cr
,co>0,ro>0,|^|>/90,
(6.171)
and q(x,D) is symmetric, compare Section II.3.10. In fact the latter condition is not really needed as pointed out by W. Hoh in [155]. Theorem 6.5.16. Let q(x,D) have an extension to a generator of a Feller semigroup {Tt)t>o on Coo(Rn) and assume (6.167)-(6.170). If in addition ? ( * , 0 < 7 ( 0 < c ( l + K|2)
(6.172)
holds for a continuous function 7 : R n —> R with 7(0) = 0, then the semigroups (Tt,\)t>o, A > 0, Tt<\ = e~XtTt, are strong Feller semigroups. Proof. It is sufficient to prove that {Tt)t>o is a strong Feller semigroup. Let (f G Cg°(R") such that 0 < y> < 1,
.R-»oo
=0.
(6.173)
338
Chapter 6 Markov Processes and Potential Theory
For R > 1 we find \\q(x,D)
< sup(27r)-t / q{x,£)\
jRn
< (2TT)-* /
7(0^1^(^)1^
+/
= (2TT)-*{/
+/
}(7(0«nlv(i^)|de)
= (27r)-*(7i+/2+/ 3 ) The first integral is estimated according to
7(0fl"l£(fl0|d4
h= f
< ( sup 7(0 / = ( sup
7(0)
i?"|
|^(O|df.
v iei<^ ' •/K" which yields, since 7 is continuous and 7(0) = 0, that
Ii -> 0
as
i? -> 00.
(6.174)
Further, since ip £ C$°{Rn) it follows that (p e <S(M") implies that | ^ ) | < c/|^|-(n+3) for a l j ^ e R»\{0}. Using (6.173) we derive, recall R>1,
7(0^nl^(-R0|de
h =f
(1 +1^ i2)/in|i^r(n+3)<^
< ZR-3 t
|^r("+3)d^ = cR-\R? - 1)
^
as
/?-•(».
(6.175)
6.5 The Balayage-Dirichlet Problem
339
Finally we estimate I3 by 7 (£)#
h= I
n
|WM
(1 + \£\2)Rn\RnZ\-(n+s)d(,
< CR-3 f
iei 2 icr (n+3) de =
C*R-3,
i.e. we have h -> 0
as R -> 00.
(6.176)
Thus, combining (6.174)-(6.176) we have proved (6.173). Denote by the kernel associated with Tt, i.e.
Ttu{x)=
(6.177)
f u(y)Pt(x,dy).
Fix x0 € M™ and t] > 0, and take ># as above. Note that a; e Bv(x0) UR> 2(\xo\ + 77). For these R we find sup
Pt(x,B%{0))=
<
sup
/
XB'R(o)(y)Pt(x,dy)
sup
/• /
(l-(pR(y))px(x,dy)
i€B,(io) ^R"
<
sup (
i6B,(io)
sup /
=
pt(x,dy)
x^Bn(xo)Jo
= 1 for
TtipR(x))
Ts{q(x,D)ipR)(x)ds
< t\\T.(q{x,D)
< t\\q(x,D)
which yields
sup
xeBv(x0)
pt(x,BR(0))
-> 0
as
R^oo.
(6.178)
Let u G S b (E") and define for t fixed fl(i) := Ttu(x) = I u(y)Pt(x,dy).
(6.179)
340
Chapter 6 Markov Processes and Potential Theory
We want to prove that g is continuous. For £ > 0 choose R > 0 such that sup
pt(x,B%(0)) < - 4
•
(6.180)
For R > 0 such that BC~(Q) C ££(0) we define uR{y) = XBh(x0){y)u{y). Then it follows that \g{x) - g{xo)\ = I / <
/
u(y)pt(x,dy) - /
u(y)pt(xQ,dy)
Un(y)Pt(x,dy) -
uR{y)pt{x0,dy)
+ H U ~ (ft (a:, S|(a;o)) + Pt (so, ^l(^o))). If x e Bn(xo) we find ||u||i» (pt(x, Bc~(x0)) + Pt{x0, < \\u\\L~(pt{x,BcR(0))
Bcn(x0)))
+pt(xo,BcR(0)))
(6.181)
-(4ii^ir + 4jKfe:) = l-
We define ^ by g&(x)=
f
(6.182)
un(y)Pt(x,dy)
and claim that ^ ^ is continuous. Since uR £ L 1 (K n ) we can approximate uR in L 1 (R") by a sequence of uniformly bounded test functions which also converges pointwise almost everywhere to uR. Now we may use (6.170) to deduce that pt(x,dy) is absolutely continuous with respect to A^™^(dy). Therefore, using (6.170), (6.179), the dominated convergence theorem, and the fact that Tt maps n C Q ° ( E " ) into Coo(M. ) we deduce that gR can be uniformly approximated by continuous functions. Thus for 6 E (0,»?) such that x e Bs(x0) we have \g~(x) - gn(x0)\
<
£
-.
Combining (6.181) with (6.183) finally proves the theorem.
(6.183) •
Remark 6.5.17. Note that by Theorem 6.4.6 the semigroup (Tt)t>o is conservative.
6.5 The Balayage-Dirichlet Problem
341
Our next aim is to find strictly positive excessive functions associated with (Tt,\)t>oRemark 6.5.18. Suppose that q(x, D) and {Tt,\)t>o are as in Theorem 6.5.17. If A > 0 then for any u G Coo(Kn), u > 0, the function Rxu is a strictly positive excessive function of the semigroup (TtiX)t>oProof. For u > 0 it follows from />OO
e~XtTtu(x)dt
R\u(x) = / Jo
with Tt = Tt,o that R\u(x) > 0. Let x0 G Mn such that R\u(x0) = 0. We find that -R\u(x0) = sup (-R\u(x)) > 0 and the positive maximum principle yields -qx(x,D)(-Rxu)(xo)<0, but — q\{x,D){—R\U){XQ) = u(xo), i.e. U(XQ) < 0 which is a contradiction, thus R\u > 0. From our previous considerations we know already that R\u is excessive, which can also easily be seen from TttXRxu-Rxu=
I Ts,x(-qx(x,D)Rxu)ds Jo
=- [ Jo
Ts<xuds<0,
and sup(Tt,xRxu t>0
- Rxu) = \ixn(Tt,xRxu - Rxu) = 0 t|0
which follows from the strong continuity of {Tt,x)t>o-
•
There are situations in which we may extend Proposition 6.5.18 to the case A = 0. For example Proposition 6.5.19. Let q{x,D) and (Tt)t>o be as in Theorem 6.5.16. / / (Tt)t>o is transient and if Tt has a continuous, strictly positive density Pt(x,y) > 0, t > 0, x,y € l n , i.e. Ttu(x) = fRnpt(x,y)u(y)dy, then for every
/
/•
/ Ps(x,y)
J.QQ
/ JO
Ts
(6.184)
342
Chapter 6 Markov Processes and Potential Theory
Proof. For ps(x, y) and
rOO
g(x)= /
JO
JRn
< IMIoo / Jo = IMIoo /
JK
r
rOO
/ ps(x,y)ip(y)dyds = /
JO
/
JK
/ Jo
/
JK
ps(x,y)ip(y)dyds
ps(x,y)dyds ps{x,y)dyds
= WipW^Uix^K) < oo,
where U(x, A) is the potential kernel associated with (T t ) t >o and supp
rOO
rOO
/
TtTs
Ux(x,B)=
Jo
re-XtPt(x,B)dt,
our assumptions imply in each case that U\ is a proper kernel. Further, (Tt)t>o is conservative, hence x >—> 1 is an excessive function for (Tti\)t>o, A > 0. The existence of a further strictly positive excessive function follows either from • Proposition 6.5.18 or Proposition 6.5.19. In the situation of Theorem 6.5.21 we know that a strictly positive, continuous and excessive function which vanishes at infinity is a continuous potential. Depending on whether A > 0 or A = 0 it is possible to construct explicitly
6.5 The Balayage-Dirichlet Problem
343
some continuous potential by using R\ (or U\) or U, respectively. Thus we may use such potentials to specify "boundary data" in Theorem 6.5.15 for the balayage Dirichlet problem for the corresponding balayage space. We will come back to this question later on in our considerations. Next we want to discuss the "generalized-Dirichlet-problem" for q(x, D) in the setting of the Dirichlet spaces. Let -q(x, D) have an extension to a generator of an L2-sub-Markovian semigroup on L2(Rn) and for simplicity assume that -q(x,D) is symmetric. We denote this extension of q(x,D) again by q(x,D). For G C K n , an open bounded set, we may pose the generalized-Dirichlet-problem: Given / : E" -» M, find u : R" -> R such that (q{x,D)u)\G = 0
and
u\Gc = f\Gc,
(6.185)
or more generally for A > 0 with q\(x,D) = q(x,D) + Aid (qx(x,D)u)\G
=Q
and
u\Gc = f\Gc
(6.186)
A remark is in order with respect to the data / . Formally we need to know / only in Gc. But it turns out that for solving (6.185) or (6.186) we often have to know / on the whole space Mn, compare also Theorem 6.5.15 where we treated the balayage-Dirichlet-problem. However, it is reasonable to take the following point of view: First we find conditions for a given / : E n —* E in order to solve (6.185) and then we try to solve an inverse trace type problem, namely given / : Gc -> R find / : R" -* R extending / s u c h that for / , problem (6.185) is solvable. This approach goes confirm with the discussion of the Dirichlet problem for elliptic differential operators in Sobolev spaces where boundary data are assumed to be traces of functions in certain Sobolev spaces, compare [247] or [361]. We assume that q(x,D) is defined on Co°(E") and with some fixed continuous negative definite function ip : E™ —» R we assume that the extensions of —q(x,D) as generator of an Z2-sub-Markovian semigroup on L2(M.n) has do-
main H^'2(Rn).
Further we assume that B(u,v) = (q(x,D)u,v)0, u,v € C§°,
extends to a continuous bilinear form B on H"^!l(Rn). The symmetry of q(x, D) implies that its extension to a generator is self-adjoint and that B is a symmetric form. Moreover we require B to fulfill a Garding-type inequality, i.e. B shall satisfy once again (6.168) and (6.169). Now let us transform problem (6.186). Suppose that / € //^(R™) and that u e H^'2(Rn) solves (6.186). It follows that v := u - f 6 H^'2(Rn)
344
Chapter 6 Markov Processes and Potential Theory
satisfies v\Gc = u\Gc — f\Gc = 0 and (qx(x, D)v) \G = (q\(x, D)u) \G - (qx(x, D)f) \G, G L2(Rn)
or with g := -q\(x,D)f
we have
and
(qx{x,D)v)\G=g\G
(6.187)
v\G°=0.
(6.188)
Conversely, if v G H^>2(Rn) satisfies (6.188) and g = -qx(x,D)f for some / e i ^ l 2 ( R n ) , then u := v + f is a solution to (6.186) as is seen from (qx(x, D)u) | G = (qx(x, D)(v + / ) ) | G = g\G - g\G = 0 and u\Gc = v\Gc + f \ c = /|G<=-
We will discuss now (6.188) and introduce the concept of a variational solution. For this denote by -ff^ a (G) as before the closure of C%°{G) C C^°(R n ) with is a closed subspace of H^>X(G). respect to the norm ||.||^,i- Clearly Hfi'1^) C n Further for y> G C$°(G ) C C0°°(M ) and w e ^ ^ ( G ) we find /
iy(a;)<^(a;)da; = lim /
(pu(x)tp{x)dx = 0
(6.189)
where (<^y)^6N is a sequence of functions <£„ 6 CQ°(G) converging in the norm 11.1|^,i to w. Thus we conclude w\Gc = 0 almost everywhere for every w € HQ'1^). In this sense elements in HQI1(G) satisfy the condition w\Gc = 0 posed in (6.188). Next let g G L2(Rn) and u G H^<2(Rn) be a solution to (6.190)
(qx(x,D)u)\G=g\G. Multiplying in (6.190) with
(qx{x,D)u)(pdx=
/ g
or Bx(u,
forall^GC 0 °°(G).
(6.191)
Note that if u 6 H$'l{G) n F^' 2 (G) satisfies (6.191) then it follows that u is a solution to (6.188).
6.5 The Balayage-Dirichlet Problem
345
Definition 6.5.22. Let G C W1 be an open set and g £ L2(Rn). We call u € H$'X{G) a variational solution to problem (6.188) if (6.191) holds for all V GCo°°(G).
Remark 6.5.23. A. Due to the continuity of B\ we may assume that (6.191) holds for all v £ H^'^G) instead tp e Cg°(G). B. Note that in [158] a variational solution was called a weak solution. We changed the name in oder to be consistent with Definition II.2.3.26. The formulation of the following result is taken from the paper [158] jointly writting with W. Hoh, compare also [184]. Theorem 6.5.24. Suppose that q(x, D) extends from Co°(M") to the generator of a symmetric L2-sub-Markovian semigroup on L2(M.n). In addition assume that for a fixed continuous negative definite function tp : M.n —> K the domain of the generator is H^'2(M.n). Moreover we assume (6.168) and (6.169) to hold for the associated bilinear form B(u,v) = (c[(x,D)u,v)0. A. The generalized Dirichlet problem for q\(x,D) has for all A > Ao and all G C Mn a unique variational solution. B. Suppose that the embedding of Hpl(G) into L2(G) C L2(Rn) is compact. Then the following Fredholm alternative theorem holds: The solutions v € H^'X{G) and w € H$'l(G) of the equations Bx(v,ip)=0
forall
(6.192)
Bx{ip,w) = 0
for ally £Co°°(G),
(6.193)
and
respectively, form finite dimensional subspaces V\ C H$'l(G) and W\ C HQ (G), respectively. In addition we have dimV,\ = dimW^x- Furthermore in order that at least one variational solution u £ HQ1(G) to (6.188) exists, it is necessary and sufficient that (g,w)o = 0 holds for all W £ W\. The solution is unique up to an element ofV\. The proof of Theorem 6.5.24 is a straightforward modification of the proof of Theorem 1.14.6 in A. Friedman [106]. Remark 6.5.25. A. It is possible to omit the symmetry condition in Theorem 6.5.24.
346
Chapter 6 Markov Processes and Potential Theory
B. If lim ip(£) = °° then the embedding of
HQ'1(G)
KI-OO
into L2(G) is compact
if G is bounded, compare Theorem 1.3.10.5. C. In case that a Poincare-inequality holds for B, then part A holds for all A>0. Remark 6.5.26. Depending on properties of q(x,£) we may apply regularity results for the equation q\(x,D)u = h in M" (compare Chapter II.2) in order to derive for a variational solution to (6.188) a local regularity result of the type
(6.194) Hf£{G).
We want to have a better understanding of the "boundary" behaviour of a variational solution to (6.188) and we want to compare this solution with a solution of the corresponding balayage-Dirichlet problem if we can associate with q\ (x, D) also a balayage space. For this we need a deeper understanding of the variational solution in the Dirichlet space H$'l(G). Let q(x,D) and B be as above. In particular assume that B\, A > Ao, is a symmetric Dirichlet form with domain H^'1(Mn). The L 2 -sub-Markovian semigroup generated by an extension of — q(x, D) is dentoed by (Tf1 ) t > 0 or just (T t ) t >o if no confusion arises. Further we assume that —q(x,D) also extends to a generator of a Feller semigroup (Tt )t>o- Let u £ H'^'1(Mn) be A-excessive with respect to (Tt)t>o (or excessive with respect to (Ttt\)t>o, Tt,\ = e~xtTt). For AcM"we put jCUtA:= {weH^^iW1);
w>u
q.e. on A}.
(6.195)
(All notions depending on a capacity refer to the (1,2)-capacity in iJ^'^R™).) With arguments similar to those applied in Chapter II.3 one proves the existence of a unique element UA £ CU,A minimizing B\ on CU,A, i-e. Bx(uA,uA)
= mi{Bx(w,w) ; w £ £U,A}-
(6.196)
The function UA is called the X-reduced function (in the Dirichlet space setting) of u to A. Using the general theory of Dirichlet forms, compare in particular M. Fukushima, Y. Oshima and M. Takeda [115], Section 2.3, we have
6.5 The Balayage-Dirichlet Problem
347
Proposition 6.5.27. A. The X-reduced function uA of a X-excessive function u G H^^iW1) is the unique element in H^'^W1) satisfying forallv&Er>''\m.n),v>0
Bx{uA,v)>0
q.e. on A,
(6.197)
and UA = U
q.e. on A.
(6.198)
B. For u and A as in part A we define UU,A ~ {w ; u> is X-excessive, 0 < w < u a.e. and w = u q.e. on A}. (6.199) Then UA is the minimal element in UU,A, i-e. UA € UU,A and UA < U> a.e. for all w € 14U,A-
Remark 6.5.28. The reader should note the similarity of these results with analogous results for equilibrium potentials as in fact the proofs are quite the same. Given a A-excessive function u G iJ^'^R") and a closed set A = Gc where G C IK" is a (bounded) open set. Then by Proposition 6.5.27 we can construct a A-excessive function ugc £ H'^'1(Wn) such that WGC is the minimal A-excessive function less or equal to u which coincides with u on Gc in the sense that c U|GO = u q.e. on G . We continue to follow [115] but we develop for the moment the general case further: Let (£,F) be a general regular symmetric Dirichlet form on L2(X,/JL) and for A e B(X) we set TA* •= {u G T; u = 0 q.e. on A}.
(6.200)
The space J-A" is a closed subspace of the Hilbert space (TjSx), A > 0, and its orthogonal complement is denoted by H^, i.e. UA := {u £ T; S\(u, v) = 0 for all v £ TA-)-
(6.201)
Thus it holds T = TA°®'H\,
(6.202)
where © is the orthogonal sum with respect to £\. For the A-reduced function UA of a A-excessive function u we find the orthogonal decomposition u = (u — UA) + UA and according to Proposition 6.5.27.A it follows that UA is the orthogonal projection of u onto H^.
348
Chapter 6 Markov Processes and Potential Theory
Definition 6.5.29. Let Q c X be an open set. It is called a X-regular set with respect to u G T if for any » e f n C0(X) with supp v C G we have (6.203)
£x{u,v)=0.
Note that if {£,F) has a "nice" core, compare [158], p.42, then we need to require (6.203) only for all v belonging to this core and satisfying suppv C G. Definition 6.5.30. The X-spectrum a\{u) of u G T is the complement of the largest A-regular set with respect to u. Now let G C X be an open set. The closure of {u £ T; a\(u) C G} with respect to the norm £f is denoted by W^. By Lemma 2.3.3 in [115] we have
W? = Wf.
(6.204)
Moreover, for a closed set T C X we denote by W£ the space of all u G T such that <J,\(u) G F. By the spectral synthesis theorem for symmetric Dirichlet spaces, compare Theorem 2.3.2 in [115], we know that (6.205)
Wl = H\ Now we return to our concrete case {B\, i/^ i l (R n )) and claim Proposition 6.5.31. Let G e l " be an open set. Then for it holds
{BX,H'4''1{W1))
H$'1(G)=FG,
(6.206)
where fG = { « 6 ff^OR") ; u = 0 g.e. in G c }. Proo/. (compare [158]) By the definition of the A-spectrum of u e we know that <J\{u) C Gc
if and only if G is A-regular w.r.t. u.
H^iW1)
(6.207)
Further, G is A-regular with respect to u if and only if Bx(u, t>) = 0
for all ueC 0 °°(G).
When we combine this fact with the spectral synthesis theorem, i.e. with (6.205), we find using the continuity of Bx with respect to the norm ||.||^,i
6.5 The Balayage-Dirichlet Problem
349
that Uf
= Wf = { « £ ^ ( R " ) ;
G is A-regular w.r.t. u}
1
= {u£ i ^ ' ^ " ) ; Bx{u,v) = 0 for all v G C^{G)} = {n£ ff^OR"); 5 A («,v) = 0 for all v G H$'\G)}. Since #
and
u|G= = f\Gc
(6.208)
Multiplying in (6.208) with tp G C^(G) we find for a solution u G ^ ^ ( E " ) BA(U, ¥>) = 0
for all y> G C0°°(G),
(6.209)
and therefore BA(u,¥>) = 0
forall V G F ( f ' 1 ( G ) = J-G,
(6.210)
and u\G' = /|G«.
(6.211)
Therefore solving (6.208) is related to looking for the orthogonal projection Pjif of / onto the space 7i^c. In fact for a A-excessive functions / G H'^'1(Mn) we know that this projection is the A-reduced function u = fa? G H^>l(M.n). Further, with v := Pfif - f we find v G TG = H$'X(G) and for ip G C7^°(G) it follows that Bx(v,
= -Bx(f,
In particular, for / £ iJ^-^E71) we find with g := -qx(x,D)f 5 A (v,^) = (0)V>)o
that (6.212)
for all yi G GQ°(G) i.e. u is a variational solution in the sense of Definition 6.5.22.
350
Chapter 6 Markov Processes and Potential Theory
In order to match these considerations with those about the balayageDirichlet-problem we need some probabilistic interpretations of our results. For this we need that —q\(x,D) extends to a generator of an L 2 -sub-Markovian semigroup (Tt ^) t >o as well as to a generator of a strong Feller semigroup (T/*\)t>o admitting sufficiently many excessive functions. In the first case we can use the associated Dirichlet space for our discussion, in the second case we want to use the associated balayage space. In this situation the Hunt process (Xt,\)t>o associated with (Tt A )t>o coincides with the Feller process associated with (Tt °£ )t>o and in particular we need not take care on exceptional sets when constructing the process. For the process (XttX)t>o and g £ F^' 2 (K") D Coc(R n ) we define u{x):=Ec{g{Xaoe,x))
(6.213)
where as usual we have aGc := M{t > 0 ; Xt,x £ Gc}.
(6.214)
Let / £ P where P denotes the continuous potential associated with the balayage space under consideration. By Theorem VI.3.14 in [42] it holds
Rf\x)
(6.215)
= E*(f(XrTGCtX))
G
G
where R* is the lower semi-continuous regularization of R °, compare (6.149). For x £ G or x £ G° it holds Rf{x) = Rf\x). If in addition G is a regular set in the sense of Definition 6.5.14 then by Theorem 6.5.14 we find Rf = HGf <E C(R n ), i.e. for all x £ R" it holds Rf{x) = Rfc{x) and it follows that Hf(x)
(6.216)
= E*(f(X
for all f £ P. Using the linearity of / — f > H9(x) and the fact that we can decompose / £ Coo(lRn) into f = f+ — f~ as well as the fact that we can uniformly approximate / + and / ~ by continuous potentials, compare [42], 1.1.2, or [158], p. 45, we arrive at Proposition 6.5.32. Let q\(x,D) be as before, in particular assume that (M.n,E,„(«,)> ) is a balayage space. If G C M™ is a regular open set in this balayage space, then for all f £ Coo (IK™) the solution of the balayage-Dirichletproblem is given by Hf(x)
= HGf(x)
= Ex (f{XOGC
i A )),
(6.217)
6,6 Notes to Chapter 6
351
and Hf is well-behaved, i.e. Hf e H(G) n C(R n ) with Hf = f on Gc. In the setting of Dirichlet spaces we have a probabilistic expression for the projection P£[f, more precisely, following [115], Theorem 4.3.1, we know that for any / e / / ^ ( R " ) the function x^Ex(f(XaaeiX)) is a quasi-continuous version of Pfif and therefore we find that u(x) = Ex{f(XIIOC,x))-f(x)
(6.218)
is a variational solution to the generalized Dirichlet problem (6.186) provided that / G H^'2(Rn). Theorem 6.5.33. Suppose that —q\(x,D) extends from Co°(Kn) to a generator of a symmetric L2-sub-Markovian semigroup {Tt ^ )t>o with corresponding symmetric Dirichlet form (Bx,H^>1(Wn)), and to a generator of a strong Feller semigroup ( T t ~ )t>o to which we can associate the balayage space (M.n,E.Tiao), ) . Suppose that G C Mn is a bounded open set regular with respect ot this balayage space and let f G H^'2(Rn) n Coo(Rn). solution of the balayage Dirichlet problem is given by w{x)=E*{f{X<,ac,x)).
Then the
(6.219)
In addition w — f E HQ (G) is a variational solution to the generalized Dirichlet problem (6.186). Moreover, if a variational solution of the equations q\{x,D)v = h, h£ L2(Rn) always belongs to H^'2(Rn), then we have
w G H^'\Rn) n Hf£(G).
6.6
(6.220)
Notes to Chapter 6
Since Section 6.1 is by itself of introductionary nature we need not add further comments. In writing Section 6.2 we used as main sources the monographs of R. Blumenthal and R. Getoor [46], K. L. Chung [75] and M. Fukushima, Y. Oshima, M. Takeda [115], with additional support of D. Revuz and M. Yor [299]. As already said, we compiled standard material and do no claim any originality.
352
Chapter 6 Markov Processes and Potential Theory
The standard references for the (potential) theory of Levy processes are nowadays the monographs of J. Bertoin [37] and K. Sato [310], with some material included in D. Applebaum [21]. In both [37] and [310] many historical comments are given and we refer the reader to these comments for details. Important contributions are due to S. C. Port and C. J. Stone [289]-[290], M. Kanda [213]-[215], J. Kingman [221], and especially to J. Hawkes [139], [143][144]. We also shall mention the surveys of S. J. Taylor [357], B. E. Fristedt [107] and N. H. Bingham [40] which have been important to shape the subject in their times. The applications discussed in Section 6.4 are essentially due to the author and his students W. Hoh and R. Schilling. The conservative result, Theorem 6.4.6, is taken from R. Schilling [318], realted results are discussed in W. Hoh [155], W. Hoh and the author [158], in [189], as well as in R. Schilling [317]. The results around Theorem 6.4.10 are consequences or our earlier discussions of subordination. The proof of the Poincare-type inequality is modelled after a result of K. Doppel and the author [89] and depends much on a corresponding result proved in Ch. Morrey [273]. In fact, Theorem 6.4.17 extends to more general transient Dirichlet spaces, compare [202], see also Section 7.5. Implicitly a Poincare inequality was also proved by J. Deny in [85] for regular, symmetric transient Dirichlet forms. Section 6.5 is based on our joint paper [158] with W. Hoh. Our treatment of the general theory of balayage spaces borrows much from J. Bliedtner and W. Hansen [42]; the discussion of spectral synthesis in Dirichlet spaces is taken from M. Fukushima, Y. Oshima and M. Takeda [115]. We refer the reader to the notes in [42] where the authors relate their theory to other parts of axiomatic potential theory.
Chapter 7
Selected Applications and Extensions In this final chapter we discuss several further results to indicate the scope of our theory. Partly we give detailed proofs, however more often we only sketch results and refer to the literature. In the first section we explore how to use fractional derivatives to solve certain boundary value problems in the half space which will enable us to construct processes with state space M" x M+. In Section 7.2 we treat subordinate killed and reflecting diffusions. More precisely we study the process associated with a fractional power of an elliptic diffusion operator under Dirichlet or Neumann conditions. We also discuss the boundary Dirichlet form (Douglas integral) and where possible we give the Skorohod deomposition of the subordinate process. A few hints we give to more recent developments concerning censored stable processes and the regional fractional Laplacian. A new idea enters the theory by making parameters of continuous negative definite functions state space dependent. This is due to 0. Barndorff-Nielsen and S. Levendorskil and is sketched (with some of its consequences) in Section 7.3. In Section 7.4 we discuss an extension of the Feynman-Kac formula and applications to stochastic spectral analysis. The final section, Section 7.5, is devoted to three topics on function spaces related to continuous negative definite functions: equivalent norm representations, spaces of generalized smoothness and a Poincare inequality for transient Dirichlet forms in the Lp-setting.
354
7.1
Chapter 7 Selected Applications and Extensions
Fractional Derivatives and Related Operators as Generators of Markov Processes
In this section we will first explain how fractional derivatives arise in a natural way as (parts) of generators of Markov processes. Then we will discuss some concrete operators and related processes using work partly done with A. Krageloh and partly done with V. Knopova. We encountered already twice fractional derivatives. In Section 1.4.7, p. 417-421, when discussing certain non-symmetric Dirichlet forms, and in Section II.3.4, p. 326-330, when dealing with Stein's Littlewood-Paley theory for Markovian semigroups. i > (±i£) a are continuous negative Let 0 < a < 1 be fixed. The functions £ — definite functions. Hence we may consider on S(K) (or CQ°(M)) the operators u ^ (2TT)-* f e i( -' o (±t0 a «(0d£-
I7-1)
For u G <S(R) we can represent these operators differently, compare S. Samko et al. [309], but we follows here closely our joint paper [198] with R. Schilling, namely we have D% Ru(x) := (2TT)-* f e i a *(i0 Q u(0d£ JR
1 d fx u(y) F(l - a) Ax J^ (x - y)«
a T(l - a) Jo
U
r°°u(x)-u{x-y) U y^+' (7.2)
and D1Ru(x):= /e t e «(-t0 Q 2(0d$ 1 d f°° u(y) T(l - a) dx Jx (y -x)a
V
a f°° u(x)-u{x + y) = V ~ r(l - a) Jo yi+<* '
(7.3) Now, for any interval / C K we can restrict a function u belonging to CQ° (R) to I and we get an element u £ C°°(I). Moreover, C§°(7) C C°°(R) as well as C§°{I) C C°°(I) (or C°'P(I), 0 < (3 < 1). Thus we may search for closed extensions of the restrictions of D±R to CQ°(I) which generate a Feller or an Lp-sub-Markovian semigroup on a Banach space of functions u : I —> R.
7.1 Fractional Derivatives as Generators of Markov Processes
355
Clearly, boundary conditions will become important and different representations of Z?!| R m a v allow different extensions. But not all extensions need to satisfy the positive maximum principle. We will restrict our considerations to the case / = K + . In order to make precise statements we need to introduce certain function spaces. As usual we set R + = [0,oo) and we define C(R+) := {/ G C ( R + ) ; /(0) = 0}
(7.4)
Coo(m+) := {/ G Coo(R+); /(0) = 0},
(7.5)
and
where u G
CQO(K+)
if u 6 C(K+) and lim u(x) = 0. Further we denote by X—+OO
04(0,00))
(7.6)
the space of all functions u G C((0, oo)) which have at most a weak singularity at 0, i.e. u{x) = O(x~13) as x —* 0 with some 0 < /3 < 1, and which have at most polynomial growth at oo, i.e. u(x) = O(xJ) as x —> oo and 7 > 0. By definition Coc(M+)nC 1 ((0,oo))
(7.7)
stands for all functions in Coo(M+) whose restrictions to (0,00) belong to (^((O.oo)). Clearly, the spaces (Coo(R+), ||-||oo||) and (C(M+), ||.||oo) are Banach spaces. Moreover Co°(R + ) is dense in Coo(R+) and C^°((0,oo)) is dense in C'oo(R+). For 0 < 7 < 1 the left-sided Riemann-Liouville fractional integral of order 7 is defined for u £ Cw ((0,00)) by
Il(u)(x) := - i - f (x - yy-1u(y)dy , y > 0. 1
\i) Jo
(7.8)
In S. Samko et al. [309] several properties of 7+ are discussed in different function spaces, and we refer the reader to [309] for details. In particular, for 7 > 0 and u £ Cw({0,00)) the Laplace transform of I^u exists for all z £ C, Re z > 0, and it holds (7.9)
C{llu)=z-iC(u)(z), 1+e
or for u € Cw((0, 00)) such that u(x) — O(x~ it follows that lim P+u{y) = 0.
x—>0+
)
as x —> 00, and some e > 0 (7.10)
356
Chapter 7 Selected Applications and Extensions
Definition 7.1.1. A. For u G Cw((0,oo)) the (left-sided) Riemann-Liouville fractional derivative D^+u of order a, 0 < a < 1, is defined by
(7.11) B. Let u £ C{R+) nC 1 ((0,oo)) be such that u' £ Cw({0,oo)). fractional derivative D^+u of order a, 0 < a < 1, is defined by
The Caputo
D£+u(x) := /+- a (^«)(s) = f ( r ^ ) / ' ^ ~ 2/)"°^)^' ^ > °" (7.12) The relation of D^+ and D£+ is given by Lemma 7.1.2. Let u € C(M+) D C1 ((0, oo)) swc/i that u' € Cw ((0, oo)). For all x > 0 it /io/ds D£ + u(:r) = D%+u(x) + "(0)
^_°
Proof. By our assumptions both D^u with (7.11) we find
•
(7.13)
and Z?g.+ exist on (0, oo). Starting
u(0)x-a U Corollary 7.1.3. Let u G C{R+) D C1 ((0, oo)) be such that v! G Cw ((0, oo)). A. Ifu(0) = 0 then D%+u = D%+u on (0,oo). B. Ifu'(x) - O(x~1+a+e) as x -> 0 /or some e > 0, then by (7.10) it follows that lim D£+u(x) = 0.
i->0+
(7.14)
7.1 Fractional Derivatives as Generators of Markov Processes
357
In this case it holds for D^+u lim D%,u{x) = 0
(7.15)
ifu{0)=0
x->0+
but lim |£>g+u(a;)| = oo
if u(0) ^ 0.
(7.16)
Remark 7.1.4. Since a generator of a Feller semigroup on CCO(E+) must map its domain into Coo(M.+ ) , the result of the second part of the above corollary rules Dft+ out when other than Dirichlet conditions are considered. For this reason we will restrict the rest of our discussion to the Caputo fractional derivative. For our purposes it is of advantage to give a different representation of DQ+, namely its Marchaud representation. Proposition 7.1.5. For u € ^ ( R + J and x > 0 it holds TY* ,/V>
1
u(x) - u(0) ,
DC+U(X) = r ( 1 _ a)
xa—
a
+ rxr^yy o
fx u{x) - u(x -y)J
ynz
d^-
(7.17)
Proof. Let x > 0 and rewrite
D£+u(x) =
[ y-"u'(x - y)dy
l
as Stieltjes integral to find
r(l - a)D%+u(x) = lim f y-ad(u(x) - u{x - y)) =
^ k ' W 1 ' ~"^-y))\l
+ aj
v'1'"^)
-<x-y))dy}. (7.18)
Since u is a C1-function on R + it is in particular locally Holder continuous with exponent a < 7 < 1 and therefore the limits limU{x)-u{x-£)
=Q
358
Chapter 7 Selected Applications and Extensions
and r u(x)-u(x-y) exist. Hence (7.18) implies (7.17).
•
Remark 7.1.6. Since />OO
Jx it follows in the situation of Proposition 7.1.5 that (7.19) provided we extend u by u(x) = 0 for x < 0. The following proposition summarizes certain mapping properties of -D§+For a proof we refer to S. Samko et al. [309] or to A. Krageloh [233]. Proposition 7.1.7. A. The operator D%+ maps Crl(K+) into C{R+). B. IfuG Coo(M.)nC1(R+) and v! is a bounded function on R + , then D^+u e /'ltP A + J. Coo(.JK
Of central importance to us is Corollary 7.1.8. The operator —DQ+ satisfies on C 1 (R+) the positive maximum principle. Proof. Let u £ C1^-^) and a;o > 0 such that U{XQ) = sup«(:r) > 0. Now, if x>0
Xo > 0, then we derive from the Marchaud representation of DQ+, i.e. from (7.17), that Dc+u(xo) < 0. However, if xo = 0 then, since by Proposition 7.1.7.A it follows that D%+u £ C{R+), we conclude that D%+u(x0) = 0 which • proves the corollary. We are interested in the resolvent of —Dg+, more precisely in solving the equation (\ + D%+)u = f
,A>0,
(7.20)
in certain function spaces. For this we need to introduce and discuss MittagLeffler-type functions. We have learnt much about the importance of MittagLeffler functions in the study of fractional derivatives from the work of R.
7.1 Fractional Derivatives as Generators of Markov Processes
359
Gorenflo and F. Mainardi [126], and we will briefly discuss their papers and related work in the Notes. Once again, in our presentation we follow our joint work with A. Krageloh [194] as well as his thesis [233] and [193]. Two further helpful references are K. S. Miller and B. Ross [272] as well as I. Podlubny [286]. The classical Mittag-Leffler function Ea is defined by k
00
(7-2I)
«><*>-£f(3+i) •a>a
We will need certain functions out of the two parameter family of generalized Mittag-Leffler functions given by OO
J.
(7.22) Most of all we have to investigate ea(x;\) := E a > 1 ( - \ x a ) = E a ( - X x a ) =
° ° (_\\k ^ / ' fc=o L
^ak
ak ,x>0.
(7.23)
+ l>
A few examples are given by 1
772—2
fc
^(*) = ^ ( e " - £ i r ) '
( 7 - 24 )
^2,m(^2) = cosh^
(7.25)
fc=0
and
E2,2(z2) = ^ - ^
or %i(2)=e*2erfc(-z).
(7.26)
A proof of the following results can be found in R. Gorenflo and F. Mainardi [126] and in I. Podlubny [286]. Proposition 7.1.9. Let a > 0 and A > 0. A. The function eQ(-, A) belongs to Coo(M.+), is positive with ea(0, A) = 1, and further for Re z > 0 we find for its Laplace transform za-\
C(ea{; A))(z) = j - ^
,Rez > 0.
(7.27)
360
Chapter 7 Selected Applications and Extensions
B. The restriction of ea(-,X) to (0, oo) is continuously differentiable with e'a(-,X) being negative and integrable on (0, oo). In addition \\e'a{', A)||^i = 1 and its Laplace transform is given by
£K(-,A))(z) = - ^ , R e 2 > 0 .
(7.28)
A -f- Z
C. The fractional derivative _Dg + (e Q (-, A)) exists and it holds - D g + ( e Q ( . , A ) ) ( z ) = Xea(x,X) ,x>0.
(7.29)
Note that Proposition 7.1.9.B implies that x >-> eQ(«, A) is on (0, oo) monotonically decreasing to 0 as x —> oo and l = eQ(0,A) = s u p e r s , A) > 0.
(7.30)
The relation of eQ(«, A) to (7.20) becomes clearer when noting that for "nice" functions C(D%+u)(z) = zaC{u)(z) - z Q - V 0 ) , Rez > 0,
(7.31)
(or Rez > r for some r > 0) holds, compare I. Podlubny [286], p. 106. Therefore, for / and u being "nice" and satisfying (7.20) it follows that
£
W( 2 ) = X T ^ £ ( / ) ( z ) + U{0)JT^
' Rez > 0)
(7 32)
-
i.e.
£(«)(*) = -£{e'Q(-,X))(z)£(f)(z)+u(0)-£-^.
(7.33)
Thus, specifying u(0) and using a convolution theorem for Laplace transforms might lead to a solution to (7.20). For this reason we introduce the family (II")A>O of operators denned on Coo(K+) by
nS(/)(a:) : = - y f f(x - y)e'a(y, X)dy,x > 0, ^ Jo
(7.34)
nS(/)(i) = -i/*e / a (.,A).
(7.35)
i.e.
7.1 Fractional Derivatives as Generators of Markov Processes
361
Note that in (7.35) we shall use as definition of the convolution rx
(u*v)(x)=
/ u(x - y)v(y)dy Jo
(7.36)
which fits well with the "standard" definition of the convolution as pointed out in volume I, p. 157. A general convolution theorem for the Laplace transform was proved in Theorem 1.3.8.5. The following results will take into account the special function spaces we are interested in now. Lemma 7.1.10. / / / G C(K+) and g £ ^ ( ( O . o o ) ) , then f*g £ C{R+). addition f £COO{R+), then / * ( i e C o o ( l + ) .
If in
For the elementary proof we refer to [194], p.402. Proposition 7.1.11. Let A > 0. A. If f £ C(K+) then U%f G C(R+) and it holds
Il-Q(nax(f))(x) = n2(/|- Q (/))(z) = f f(y)ea(x - y, A)dy. Jo
(7.37)
Moreover, if f e Coo(M+) then Tl^f £ Coo(R+). B. If f G C1(M.+) then 1 1 " / is a continuously differentiable function on (0, oo) and we have
£n^(/)(x) = HW)(x) + / ( O ) ^ ^ , x > 0,
(7.38)
andnX(/') GC(R+). Proof, (compare A. Krdgeloh [233]/ A. Taking into account Proposition 7.1.9.A and Lemma 7.1.10 it remains to verify (7.37). Using Pubini's theorem, (7.12) and (7.29) we find
4-a(nX(/))(«) = rT^-r fix - mra T f(y2)e'a{yi \V2'X)dy2dyi 1
=
\l ~~ a) Jo
r fiv2) r~v2
—r/ A Jo Jo
Jo
yiaea(x-y2-yi,\)dy1dy2
= £ ^fDZ+(ea(;\))(x-y2)dy2 = / Jo
~*
f{y2)ea{x-y2,X)dy2.
362
Chapter 7 Selected Applications and Extensions
The second equality in (7.37) is proved in a similar way. B. By our assumption / G C1(K_|_) and therefore we may differentiate under the integral sign to obtain
£ns(/)(ao = [ n* - yf-^dy + / ( o ) ^ , i.e. (7.38). Finally, U^(f') G C(K+) follows from part A. 1
Corollary 7.1.12. For A > 0 and f G C ^)
•
it holds
0S+(nX(/))(s) = nS(Dg + (/))(x) + f(Q)ea(x,\),x > 0.
(7.39)
Furthermore, the function u := II"(/) solves on (0, oo) i/ie equation (7.20). Proof. The first part follows from Proposition 7.1.11 and (7.29), recall also (7.12). Moreover, using (7.38) and the right hand side of (7.37) it follows for x > 0 that
Dd+(n$(f))(x) = /l- Q (W))(:c) + -Lll-"(e'a(.,\))(x) = / X f'(y)ea(x
- y, X)dy + f(0)ea(x, A).
Integrating by parts and taking into account the definition of IIJ, i.e. (7.34), we deduce that II£(/) solves on (0, oo) equation (7.20). • Now we turn to the problem to determine extensions of £>g+ which will generate Feller semigroups. First note that by standard arguments we find Lemma 7.1.13. The space VD := {u G COOCRH- n C\R+); is dense in (C f oo (R+), ||-||oo)>
u' G Coo(K+)}
(7.40)
an
d the space
VN := {u G Coo(K+) n C 1 ^ ) ; u' G Coo(R+)}
(7.41)
is dense in (Coo(R+), ||-||oo)Let us define on Coo(K+) and for A > 0 the operators R%(f)(x) := U$(f)(x) + / ( 0 ) ^ | ^ A > 0.
(7.42)
7.1 Fractional Derivatives as Generators of Markov Processes
363
Since II" maps Coo(R + ) into Coo(M.+) and since e a (-,A) e Coo(M+) it follows that R% maps Coo(M+) into intself, and further, noting that iJJ(/)(O) = j / ( 0 ) and that \\e'a(-, A)||/,i = 1, we deduce that
\\RVL ^ jll/lloo-
(7-43)
Proposition 7.1.14. Let A > 0. A. The operator R" maps Dp into T>o and for f € T>D we find that u := R®f solves the equation (A + D g + ) u = / onR+, and in addition we have u(0) = 0. B. The operator R" maps T>N into T>N and u := R^f, f G V^, solves (A + -Dg+) u = / on E + and it holds u'(0) = 0. Proof. A. Note that the restriction of R% to Coo(M.+ ) is just 11^, but by Proposition 7.1.11 we know that U^(T>D) CDD- In addition, if / G VD then by Corollary 7.1.12 we find (A + DQ+)U = f first on (0, oo) and by the definition of Croo(R+) and Dp, respectively, this identity extends to T>DB. By Proposition 7.1.11 we deduce that R"f £ Coo(lR+) is continuously differentiable and it holds for x > 0
^*S(f)(*) = (iW'Kz) + / ( o ) ^ ^ ) + /(o)^J^ - iW)(z). Since II^(/') e Coo(]R+) it follows that R%f € VN. Once again Corollary 7.1.12 (in combination with (7.29)) implies that (A + D%+)R%f = f holds on (0,oo). But \R%(f){0) = / ( 0 ) and £>g + (J?J(/))(O) = 0, hence the latter D equality extends to R + . Theorem 7.1.15. A. The operator (—D£+,T>c) is closable and its closure generates a Feller semigroup on Coo{^+)B. The operator (—£)g + ,£V) is closable and its closure generates a Feller semigroup on Coo (!&+)• Remark 7.1.16. In the formulation of Theorem 7.1.15 we used an obvious extension of the definition of a Feller semigroup. Proof of Theorem 7.1.15. Clearly we want to apply the Hille-Yosida-Ray theorem, Theorem 1.4.5.3. According to Lemma 7.1.13, both T>D and T>N are dense in Coo(R + ) and in addition we know that D%+ : T>D —> (7oo(K+) and that DQ+ : T>N -* Coo(R+), compare Proposition 7.1.7. Further, by Corollary 7.1.8 we know that Z?g + satisfies on T>D and VN the positive maximum
364
Chapter 7 Selected Applications and Extensions
principle. Finally, Proposition 7.1.14 together with Lemma 7.1.13 imply that for every A > 0 the range of the operator (A + DQ+,T>D) is dense in Coo(]R+) and the range of the operator (A + DQ+,T>N) is dense in Coo(R + ). Hence, by the Hille-Yosida-Ray theorem we conclude that both operators extend to generators of a Feller semigroup. • A natural question is whether we can identify the Feller semigroups constructed in Theorem 7.1.15 with concrete semigroups, and clearly we should expect some relations to certain semigroups of drift-type. We denote by aa(x,t) — <jf (x) the density of the one-sided stable semigroup of order a G (0,1], i.e. it holds /•OO
/ Jo
e~zxaa(x,t)dx
(7.44)
= e~tza ,Rez >0,t>0.
Standard properties of aa(x,t) are /•OO
lim / t-»o+ Js
aa{y,t)dy
= 0,5>0,
(7.45)
aa(x-y,t1)aa(y,t2)dy,x>0.
(7.46)
and of course aa(x,h+t2)=
./o
Furthermore, as shown in A. Krageloh [234], it holds ^ Jo
e-xtaa(x, t)dt = -\e'a(x, A) , A > 0. ~A
(7.47)
On Coo(IR+) we define /-OO
pX
(Tt{a)f)(x)=
J0
f(x-y)aa(y,t)dy
+ f(0)
Jx
aa(y,t)dy ,x > 0,
(7.48) and (T t ( a ) /)(0)=0
fort>0,
(7.49)
as well as ^Q)=idCo.(R+).
(7-50)
7.1 Fractional Derivatives as Generators of Markov Processes
365
T h e o r e m 7.1.17. By ( r / a ) ) t > 0 a Feller semigroup is given on Coo(R + ). In addition, the sets C 0 0 (R + ), T>D and T>N are invariant under each of the operators T ( ( Q ) . The closure of (-D%+,T>N) generates (Tt(a))t>0 and the closure of (—Dg + ,P£)) generates the restriction of the semigroup (Tt ) t > 0 onto Coo (R+). Proof. Since of / G CooO^) and t > 0 we have / * aa(-, t) e C"oo(K+) we may apply Lemma 7.1.10 to find Tt{a) f G Coo(K+). Further we observe that Cx»z(Tt(a)f) (z) = C{f){z)e-^a + / ( O ) 6 " ^ ' 1
(7.51)
which implies the semigroup property T t l OT/^ = ^tV+t2 • The non-negativity of o~t(x,t) yields that T t is positivity preserving and ||a a (•, t)||jj. = 1 implies that TJ; is a contraction on Coo(M+). For e > 0 we choose 5 > 0 such that l/(2/i) - / ( S f e ) | < I
if |3/i - Sfel < <J, 3/1, J/a e 1R+-
(7.52)
Moreover, by (7.45) there exists r > 0 with /•°°
/ J0
£
for all 0 < t < r.
(7.53)
4 II/I|oo
For x > 0 and t > 0 w e find
Tt{a)(f)(x) - f[x) < f \f(x -y)-
f(x)\aa(y,t)dy
°
,00
+ 1/(0) - f(x)\ /
(7-54)
ffo(y,*)dy.
Thus combining (7.52) with (7.54) we have \Tt{a)(f)(x)-f(x)\ < e for 0 < t< r and 0 < x < 5. But for 5 < x < 00 we get by (7.52), (7.53) and (7.54) once again \Tt{a){f){x) - f(x)\ < e. Observing that T/ a) (/)(0) = /(0), we finally arrive at \\TJ;a'f - / ^ < s. for all 0 < t < r, implying the strong continuity of (T{a)) 01 \2t )t>oNext note that ea(x, A) = f^° -e'a(y,X)dy and therefore we may prove the invariance properties as we proved the mapping properties of R", A > 0, compare Proposition 7.1.14. The resolvent of (TJ ) t > 0 is of course given by / 0 °°e- A t T t ( a ) /dt, A > 0 and / e COO(R+), and from previous calculations
366
Chapter 7 Selected Applications and Extensions
we find that this integral coincides with R", the resolvent of (—DQ + ,V N ) at A. Hence, the closure of (-DQ,VN) generates (T t(Q) ) t>0 . The case of (—Dg+, T>D) follows now from the previously proved assertion by an analogous argument. • Now>
(-£'VN)
witn
VrN := {/ G Coo(R+) n C 1 (R+); / e CUR+)}
(7.55)
extends to the generator of
Tt(f)M = i / ( 0 )
'°~X
\f(x-t)
,0
f € Coo(R+), and it follows that (T t ( a ') t > 0 is the subordinate semigroup of (Tt)t>o and on VN it holds (7.56)
where ( —gj)
is the fractional power of the generator of (Tt)t>o-
Remark 7.1.18. Note that many of the results described above are already (implicitly) contained in P. Butzer and H. Berens [60] or K. Yosida [373]. Next we want to use the results derived above, especially those in Theorem 7.1.17 to construct Feller processes in the half space R™ x R + . Since d(R" x R + ) = I " x { O } ^ 0 , when starting with a pseudo-differential operator defined on Co°(Rn xK+), we need to prescribe some boundary conditions in order to get a closed extension. First of all these boundary conditions could not be arbitrary, but they must assure that we still maintain the Feller property, i.e. we need to get positivity preserving semigroups. This restricts us to Wentzell boundary conditions. Secondly, in the theory of classical pseudo-differential boundary value problems the operators are assumed to satisfy Boutet de Monvel's transmission condition, compare L. Boutet de Monvel [57] or G. Grubb [132], G. Grubb and L. Hormander [133] and L. Hormander [162]. However, as pointed out by Y. Ishikawa [168], operators with typical negative definite functions as symbol do not satisfy the transmission condition! In particular, this applies to fractional powers (-A) Q of - A . On the other hand, as seen above, in the one-dimensional case using fractional derivatives some boundary value
7.1 Fractional Derivatives as Generators of Markov Processes
367
problems can be treated. Therefore we suggest to investigate operators of the type --Dg + - q(x, D), acting on functions u : R n x M+ -> R, (x, y) H-> U(X, y), where DQ+ acts only with respect to y and q(x, D) acts only with respect to x. We may use the following general result. Theorem 7.1.19. Let X and Y be two locally compact metric spaces and assume that the operators (A,D(A)), D(A) C Coo(X), and (B,D(B)), D(B) C Coo(Y), are closable with closures generating strongly continuous contraction semigroups (Tf-)t>o on Coo(X) and (Tf)t>0 on COO(Y), respectively. Then the operator C := A + B, D(C) = D(A) ® D(B), is closable and its closure generates a strongly continuous contraction semigroup {Tf)t>o on Coo(X x Y). Furthermore Tf, t > 0, is a continuous extension ofT^ ®Tf from Coo{X) x C^Y) to C«,(X x Y). A detailed proof is given in A. Krageloh [233], Theorem 1.1.12. However the result follows of course from standard results in semigroup theory. Using the fact that Coo(Rn) ® Clc»(K+) is dense in Coo(Kn x R + ) and the notation H*'a{R) = {u G L2(R) ; ||(1 + | • \ayu\\L^ < oo and suppw c M+}
(7.57)
we can state Theorem 7.1.20. Let —q(x,D) be a pseudo-differential operator generating a Feller semigroup on Coo(Kn) with C§°(M.n) being a core for —q(x,D). Further let a 6 (0,1) and take s > 0 such that a(s + 1) > §, i.e. s > ^ - 1. Then the operator A+.D = -D%+-q{x,D) with domain D(A+,D) : C§c{Mn)®Ha's+1(R) is closable and its closure generates a Feller semigroup on C^R™ x R+). Furthermore it holds Theorem 7.1.21. Let —q{x,D) be a pseudo-differential operator generating a Feller semigroup on CooCR71) with Co°(M") being a core for —q(x,D). Further let a € (0,1). Then the operator A+>jy := —Dg+ — q(x,D) with domain D(A+tN) := Clo°(Rn)(g)I'jv(Dg+) is closable and its closure generates a Feller semigroup on Coo(R" x R+). Remark 7.1.22. Theorem 7.1.19 and Theorem 7.1.20 are taken from A. Krageloh [233]. Results for periodic boundary conditions are discussed in the Notes. Remark 7.1.23. In V. Knopova [223], see also her papers [224] and [225], as well as [192], first results within an Lp-setting for operators of type (—•§- — q(x,D))a acting on functions defined on R" x R + are obtained.
368
7.2
Chapter 7 Selected Applications and Extensions
Remarks on Markov Processes with State Spaces Having a Boundary
Suppose that G e l " , dG ^ 0 and G ^ R n , is an open set and that q(x, D) is a pseudo-differential operator with negative definite symbol q : G x I " —> C, or sometimes let us assume q(x,£) = q\-QXRn(x,£), where q : W1 x 1 " —> C is a negative definite symbol. Any extension of (—q(x, D), Co°(G)) generating a Feller semigroup or an Lp-sub-Markovian semigroup (Tt)t>o must be a closed operator in the Banach space under consideration. This is only possible when prescribing the behaviour of — q(x, D) on dG, i.e. boundary conditions must be given. We know already that in general a pseudo-differential operator with a negative definite function does not satisfy the transmission condition and therefore we should not long to extend a Boutet de Monvel-type approach. Nonetheless, the principle type of admissible boundary conditions are known, they are Wentzell conditions, compare K. Taira [352] or [353] for a detailed discussion. The general problem just drafted is still open, in fact no satisfying general result is known so far. Clearly, in case that q(x,£) fits into existing theories for classical symbols many results are known and we refer to K. Taira [352]-[354] and the references therein. However, there are some approaches starting either with a process, a Dirichlet form or a semigroup with state space G. Either one tries to characterize the boundary behavior of elements in the domain of the generator, or if the latter is known one tries to construct new processes or semigropus starting with the given ones and then to analyze the boundary behavior. We do not want to discuss the first topic here and refer to M. Silverstein [332] and the most recent work of M. Fukushima, P. He and J. Ying [113] as well as Z.-Q. Chen, M. Fukushima and J. Ying [66], where the problem is considered within the theory of Dirichlet forms. In this section we discuss two distinct topics related to the second approach. We discuss subordinate (elliptic) diffusions and study their boundary behavior, and we briefly will discuss censored stable processes and related processes. In the following we orientate our presentation closely at our joint work [197] with R. Schilling. Let G C W1 be an open bounded set with dG being a C°°-manifold (for simplicity). Further let (7.58)
7.2 Remarks on Markov Processes with State Spaces Having a Boundary
369
be a second order differential operator with aki = a/fc G C°°(G) satisfying with some Ao > 0
AQ^I2
< J2 M * ) & 6 < AotCl2-
(7-59)
fc,(=i
Of course £{u,v)=
) JG^X
aki{x)-^-L—^-Ldx dxk dxi
(7.60)
is a regular symmetric Dirichlet form with domain H1(G) C L2(G), and the same applies to £\(-,-) = £{•,•) + A(-,-)o for A > 0. The generator A\ of {£\, Hl(G)) is the closure of the operator L(x, D) subjected to Neumann conditions, more precisely we have
D{AX) = {u€ H2{G) • | H = o}
(7.61)
where ^ is the outward normal derivative and ^4A|C°°(G) = L(x, D) + X. Note that (L{x,D) + A, -^) forms a regular elliptic boundary value problem in the sense of S. Agmon, A. Douglis and L. Nirenberg [2], see also H. Triebel [361] as a standard reference. For A = 0 the corresponding semigroup is conservative as are the corresponding processes (Xt)t>o for which we obtain a Skorohod representation: Let Xf denote the fcth coordinate of Xt, 1 < k < n. For t > 0 and x G G it holds P x -almost surely
X? - Xofc = M? + J2 f ^±L(Xs)ds + £ f auiX.MXJdL.. i=i
Jo
d x i
i=i
Jo
(7.62) Here (Mf)t>o, 1 < k < n, are continuous additive functionals in the strict sense, see M. Fukushima et al. [115], p. 181, p. 326, satisfying E(Mtk) = 0 and Ex{M*Mlt)
= 2Ex f f akl(Xs)ds)
.
(7.63)
In fact (Mtfe)t>o is a continuous martingale under Px with co-variation rt
<Mk,M' >t=2 / akl(Xs)ds Jo
Px-a,.s.
(7.64)
370
Chapter 7 Selected Applications and Extensions
Moreover, Lt is the local time, i.e. the unique positive continuous additive functional in the strict sense with Revuz measure a, a being the surface measure on dG, and hence it is supported by dG, and characterized by Lt = ! XdG(Xs)dLs. (7.65) Jo (We borrowed this result from M. Fukushima and M. Tomisaki [116] where the aim was to have minimal smoothness assumptions on dG.) Instead of considering £ or £\ with domain H1 (G) we may also consider £ or £\ with domain HQ(G) where as usual HQ(G) := C£°(G) A\,D of (£\,H&(G)) is given by := {u G H2{G) ; ju = 0}
D(AX,D)
where 7 : H1(G) —> H^(dG) is the trace operator and X. Clearly we have H^G)
\ The generator
= {ueH1(G);7u
(7.66) ^4A,D|CJ°(G)
= L(x,D) + (7.67)
= 0}
implying D(AX,D)
= H2(G)nH%(G).
(7.68)
corresponds to a reflected diffusion process The Dirichlet form [£\,H1(G)) := (£\,HQ{G)) corresponds to an absorbing diffusion whereas (£\,D,HI{G)) process. Note t h a t the boundedness of G entails t h a t £(•,•) a s well a s i i H This follows from (7.58) JG |Vu| 2 d:r give rise to an equivalent norm on HQ(G).
and Poincare's inequality
\\u\\l < c j |VU|2d:r.
(7.69)
JG
Once again (L(x, D) + A, 7) is a regular elliptic boundary value problem. Now we may consider fractional powers of (A\, H2(G)) and (A\tD, H2(G)f~\ HQ(G)), respectively. For this we need some further definitions: Hs(G):={u\G;u£Hs(Rn)}
(7.70)
where s > 0 and the norm on HS{G) is given by IMItf<-(G) := inf {||u/||,! W\G = u in V and w £ Hs{Rn)}
.
(7.71)
7.2 Remarks on Markov Processes with State Spaces Having a Boundary
371
Further, for s > | we set
^ } (G):={«€^(G);^=0}.
(7.72)
When £ is a Dirichlet form with generator A and associated semigroup (T t ) t >o, by £(a\ A^ and (Tt )t>o we denote the corresponding objects obtained as subordinate objects with respect to the one-sided stable semigroup of order a, 0 < a < 1. A well known fact, compare for example H. Triebel [361], is that domains of fractional powers of generators of contraction semigroups are obtained by complex interpolation, i.e. D{Aa) = [L2(G),D(A)]a ,0 < a < 1.
(7.73)
Applying a result due to R. Seeley [328], Theorem 4.1, we find Theorem 7.2.1. Let (Ax,H2(G)) be as above and denote by A^ and £{xa) the corresponding subordinate objects (with respect to the one-sided stable semigroup of order a). Then it holds D(£[a))
= Ha(G)
D(A^)
= H\%}{G)
D(A[a))
= H2a(G)
, 0 < a < 1;
(7.74)
\
(7.75)
,0
(7.76)
and
Moreover it holds D H^(G)) be as above then for the correTheorem 7.2.2. Let (A\,D,H2(G) sponding objects £^'D and A"D it holds D
(4%)
= {« € Ha(G); T« = 0} , i < a < 1;
D(£^D)=Ha(G),0
= (^ e H2a(G);
7u
(7.77) (7.78)
= 0} , \ < a < 1;
(7.79)
and D(A%D) = H2a(G), 0 < a < J .
(7.80)
372
Chapter 7 Selected Applications and Extensions
These results become interesting when considering the converse problem, i.e. solving a boundary value problem in order to construct a semigroup with a subordinate generator originally acting on functions defined on K™ or G. In case of (7.76) and (7.80) the boundary conditions "vanish" as intrinsic property of the corresponding domains. This has a nice probabilistic counterpart. According to a result due to St. Orey [278], p. 123, for a < \ the boundary dG will have capacity zero, i.e. is not seen by the process! Results similar to Theorem 7.2.1 and 7.2.2 can be obtained for the i n setting. Clearly in this case the existence of boundary values, i.e. traces, for elements in Ha'p(M.n) depends on s and p (as well as on the smoothness of dG). Typically we have traces for u £ Ha'p(Wl) if a > ± and these traces belong to some Besov spaces, compare H. Triebel [360]. Interesting is that the larger p the smaller a is allowed to be to have still a trace. Moreover, our "limiting case", i.e. p — oo, should be Coo(G) where always a trace exists if dG is smooth. This monotonicity result resonates well with the monotonicity of (r, p)-capacity We want to study the process associated with the Dirichlet form (£j;Q , Ha{G)) in more detail, in particular we want to understand the behavior at the boundary. Once again we follow [197] but we will also extend these results a little. Let £ be the Dirichlet form (7.60) with domain HX{G), hence its generator is given by (A,D(A)) where A = AQ, compare (7.61). As before, by £^a\ 0 < a < 1, we denote the Dirichlet form obtained by subordination with respect to fa{x) — xa. The domain of £^ is Ha{G). Further we set e[a\u,
v) := ((A - A)*u, (A - A)*v)0,
A > 0,
(7.81)
with the identification £<"> = £^a). Clearly (£^,Ha(G)) (G)) is a Dirichlet form and for A > 0 the form £J;a^(-,-) is a scalar product equivalent to the one in Ha(G). Moreover, the quadratic form £{xa)(-, •) and ( ( - A ) f •, {-A)%-)Q + A(-, -) 0 are equivalent. On the subspace Hg(G) this holds even for A — 0 which follows from the Poincare inequality \\u\\l < co£(a)(u,
for all u G H${G).
u)
(7.82)
Definition 7.2.3. For 0 < a < 1 and A > 0 the elements of H${G) := {u e Ha(G); are called £^" -harmonic
£{a\u,v)
functions.
= 0 for all v £ H£{G)}
(7.83)
7.2 Remarks on Markov Processes with State Spaces Having a Boundary
373
Remark 7.2.4. Since Cg°(G)Ua = H${G) we have of course H${G) := {u G Ha(G) ; £(xa)(u,
(7.84)
Theorem 7.2.5. Let (£{xa), Ha(G)) be given as above, 0 < a < 1, A > 0. Then we have the orthogonal decomposition Ha(G) = Uax{G) ©£(O) H£(G).
(7.85)
For a > | this decomposition is non-trivial in the sense that W"(G) ^ {0} and non-empty. Moreover there is a canonical isomorphism n (a)
. Ha-t(dG)
_ Ht{G).
(7.86)
Proof. First let 0 < a < \. In this case we have Ha(G) = H${G) and £x (u,v) = 0 for all v S H§{G) implies that u — 0, i.e. the decomposition in (7.85) is trivial. Now let \ < a < 1. The spaces HQ(G) and Tix(G) are closed subspaces of Ha(G) and for all u E H$(G) the condition £{a){u,v) = 0 for all v G Fg'(G) implies that u = 0, i.e. the decomposition (7.85) is orthogonal. (This argument holds also for a = ^.) The construction of 11^ requires some knowledge on the trace operator 7. Once again H. Triebel [360] serves as standard reference. Recall that 7 : HS{G) —> Hs~%(dG), \ < s < § is by definition the continuous extension of the mapping u 1—> u|dc for u G COO(G). The trace 7 is onto and there exists a bounded linear operator 7 : Hs~z(dG) —» HS(G) such that 7 o 7 = id on Hs~i(dG). Moreover the nullspace of 7 is H$(G). Therefore for u G ffs(G), 5 < s < | , the trace 711 G Hs~i(dG) exists and 7U = 0 yields u G H^{G). Conversely, given <> / G Hs~i(dG) there exists u v := 73 G HS(G) such that 7^^, = 5, but 7U = jv does not imply u = v. Now our aim is to construct a continuous, bijective linear mapping from Ha-i(8G) to H${G), a >\. For
A J » := 4 a) (/,«),« G ^Q(G).
(7.87)
By the Lax-Milgram theorem, Theorem 1.2.7.41, we know the existence of w\j G H$(G) such that
4 a W , « ) = A^M.vG ifoQ(G).
(7.88)
374
Chapter 7 Selected Applications and Extensions
Now we define "A,/ := WA,/ - /•
(7.89)
For v G C$°(G) it follows that
£l?\uXJ,v)=£ia\u,XJ,v)-£f\f,v) = Alf(v)-S[a)(f,v) = £ia\f,v)-£{a\f,v)=0, i.e. u\j G H%(G). Next we want to show that u A ,/ is determined by ip := 7 / only, and that
(7-90)
where uA,/3 G WA(G) and w A J j G Hg(G). For v G tf£(G) it follows further £ a)
{ (h
~ h,v)
= £ A a) ( u A,/i - u\j2,v)
+ £[a)'(WA./J - w A , / 2 , u )
= 4Q)(WA,/! -U;A,/2,U).
Since /1 - / 2 G fl?(G) and WA./J - W A , / 2 6 flS"(G) we find /1 - / 2 = WA.A - ^ A , / 2 implying UA./J = WA,/2 • The linearity of ip >—> uA>v, is obvious. In particular we have proved by now that
U[a) : Ha~HdG) -> nf(G) , v - • «A,V,
(7.91)
is a well-defined linear operator. Suppose that Tl" {(p) — 0 for some ip G Ha-$(dG). This yields that 0 = nAQ)(<^) G # £ ( G ) , i.e.
7.2 Remarks on Markov Processes with State Spaces Having a Boundary
375
consider the Dirichlet form
V«(a;) • Vv(x)dx, Bi(0) C R2,
£cl{u,v) = f_
(7.92)
•/BI(O)
with domain H1(Bi(0)).
In this case 8B\(0) — S1 and £cl is determined by
the Douglas integral 1
r2ir
/,9_,9'\
/-2TT
/ fa W - ¥>('))tyW- V^O) sin"2 - r - dtfdt?',
Cfo ^):=~
lOTT JO
JO
\
Z
J
(7.93)
compare M. Fukushima, Y. Oshima and M. Takeda [115], p. 12-13. Using Theorem 7.2.5 we can extend this result to subordinate Dirichlet forms. For this let G C Kn be a bounded open set and dG a C°°-manifold. In the space Ha~i(dG) we may define the norm using a special atlas and a partition of unity. Let (£^)J=I,...,M, UJ C dG, be a covering of dG by coordinate patches and denote by (pj)j=i,...tM a partition of unity relative to this covering. For ip G Ha~i(dG), \ < a < 1, we put
(7-94)
:
INII^-i ( a G ) =Ell^lll^-i(a G ) with
(7.95) where a is the surface measure on dG. Consider the quadratic form defined on its domain D(S^) = Ha~i(dG) by (a)
S^
M
s (y, ^) ••= E / ^ (^^ (^)^(^) ^__i JOG JoG
I
i/(
(7.96)
376
Chapter 7 Selected Applications and Extensions
Clearly (S(-a\D(S{a))) is a regular Dirichlet form on L2{dG). for the unit contraction Ngo{f) '•= (0 V
NBG{
< S(Q)(
In particular
(7.97)
Denoting by NQ, NG(U) :— (0 V u) A 1, the unit contraction for a function u : G —» M, we find that A^Q leaves H1^) invariant. Moreover we have Lemma 7.2.6. Let 7 be the trace operator and Nga and No the unit contraction for functions defined on dG and G, respectively. For | < a < 1 it holds j(Ng(u))
(7.98)
= NdG(1(u)).
Proof. For h G C(G) n Ha(G) this relation is trivial. Since 7, NdG and iVG are all continuous operators, so are the compositions 7 o NG : # a ( G ) -> Ha-i{dG)
and
ATaG o 7 : F Q ( G ) -+
Ha~^(dG).
Now (7.98) follows from the density of C(G) n i / a ( G ) in i/ Q (G). Let 4 Q ) . n i Q ) a n d ^ A ( G ) H ~i(dG) the quadratic form
b e as in
a
D
Theorem 7.2.5. We may define on
c[a\
(7.99)
Since II^ a ' : Ha~z(dG) —» H*(G) is linear, continuous and bijective and since (^Ai (") ')Q) is a closed subspace of Ha(G), it is itself a Hilbert space and with Ci, C2 > 0 we have
d l M I ^ - ^ < ||ni a ) (v)L a ( O ) < c2y\\Ha.i{dGy which yields that (C{xa) ,Ha~i(dG))
is a closed form.
Theorem 7.2.7. The bilinear from (C A Q ) ,Ha-?{dG)) Proof. Since {C<^l\Ha~^(dG))
(7.100)
is a Dirichlet form.
is a closed form it remains to show that the
unit contraction NdG operates on (C A a ,Ha~i(dG)), C A Q ) (iV a G M, ATaG(V)) < Cf\v,
i.e.
, V G i/Q-5(aG).
(7.101)
7.2 Remarks on Markov Processes with State Spaces Having a Boundary To prove (7.101) let us first show that for cp G
377
Ha-?(dG)
NG{Tl[a)(v)) = n[a)(NdG(tp)) +9V
(7.102)
holds where n{"] (NdG(ip)) € H%(G) and gv G H${G). Since the decomposition (7.102) is unique it suffices to prove a
7(NG(n{
\v)))
= 7(4 a) (iVaGM)),
(7-103)
i.e., since 7 o n(°} = id on Ha~^(dG), 7 (iV G (ni
Q)
M)) =
NBG(
(7-104)
which however holds by Lemma 7.2.6. Now using (7.102) we find
^ ^ ^ ) = ^(4 a ) M,ni a '( v )) + 2£) >C{a)(NdG(
D
Remark 7.2.8. Note that for /x > 0 the forms S £ Q ) ( - , •) = S{a\-, •) + /z(., -)o and C^(-,-) := C^" (•,•) + fi(-,-)o give equivalent scalar products on
Ha~i{dG). Since (C^ a , Ha~ 2 (3G)) is a regular Dirichlet form we can associate a Hunt process with CJ^ . However, since the process associated with L(x, D) — A has a smooth density with respect to the Lebesgue measure the same applies to the subordinate process. Hence we need not take into account exceptional sets. For a = 1 the process (X\,t)t>o 1S a reflected diffusion (with filtration If dG is smooth the surface measure {F\,t)t>o associated with [£\,H1(G)). a is a smooth measure of finite energy integral, compare M. Pukushima et al. [115], Section 2.2. Therefore the exists a unique positive additive functional {L\,t)t>o such that a is its Revuz measure, compare [115], pp. 187-188. In our case this is the boundary local time, i.e. L\,t
= I XdG(Xx,s)dLX:S ./o
(7.105)
378
Chapter 7 Selected Applications and Extensions
holds and the support of {Lx,t)t> equals dG. We define TA,t(w) := inf{s > 0; Z,A,.(w) > i),
(7.106)
i.e. (TA,t)t>o is the generalized right-inverse of (Za,t)t>o- The process (n,t)t>o is a subordinator in the sense of Definition 3.7.15. By Theorem 6.2.1 in [115] we have Theorem 7.2.9. Let L(x,D) be as before and denote by (Xx,t,P\,t)t>o the The timeFeller process associated with the Dirichlet form {£\,Hl(G)). changed process {Xx,T^tt)t>o is a Hunt process associated with the Dirichlet form(Cx,Hi(dG)). Note that Theorem 7.2.9 implies that the process (X\:TX t)t>o is comparable with the process associated with the Dirichlet form {S^\ H* {dG)). Now we turn to the subordinate processes, i.e. the processes associated and (Cxa),Ha~i{dG)), a > \, X > 0. We denote by with (£xa),Ha(G)) (FtQ)t>o the one-sided a-stable subordinator with associated Bernstein function fa{x) = xa. Without loss of generality we may choose (y^*)t>o independent of {X\tt)t>o- It follows that X$(w)
:= XXYtla)(u,)
:= X ^
{u>)(u)
,t > 0,
(7.107)
is the subordinate (reflected diffusion) process associated with (£xa',Ha{G)) with filtration ( J ^ y(«)) t > 0 - As before we find that a is a smooth measure. In fact it is the Revuz measure associated with the positive continuous additive functional (L\t)t>o, the boundary local time for {XXt )t>o> i-e- we have
Ll$ = f Xea(xg)
(7.108)
Once again, the support of (-^ t ) t > 0 is dG and we denote its generalized right-inverse by (r^at )*>o- It follows Theorem 7.2.10. Let (Xx"', Fx y
a
(o )
t(a)^xY(")oT
(Cx \H -HdG)),X>0.
' )t>o
a > \. s
Then the time-changed
* associated with the Dirichlet
form
7.2 Remarks on Markov Processes with State Spaces Having a Boundary
379
So far, starting with the process {Xx,t)t>o associated with [£\,H1(G)) have constructed three new processes:
we
(*A,T,,,)t>0
associated with (C A ,F5(aG)),
(4 Q t ] ) t >o = (*A,y/«>)t>o
(7.109)
associated with {Sxa),Ha(G)),
(7.110)
and ( ^ < - ) ) * > o = (Xx ywori->)«>o
associated with (c{a\ H<*~ HdG)). (7.111)
Now we may ask whether we can obtain (X
Theorem 7.2.11. Let Lx,t, rx,t, Lxa^, T$ by (X\ TX t)t>o
an
d (X
X T
M)t>o
( a )) t > 0
andY^
as
subordinate process
be as before and denote
the process associated with the Dirichlet form
< X,t
(Cx,Hi(dG)) and (C{xa), Ha~i(dG)), a > \, respectively. Then a timechange for the process (Xx,TX,t)t>o *s given by px,t := Lx, o K(Q) o r j j , i > 0,
(7.112)
and it holds Tx,.opx,t = Y.{a)oT^
as well as X^\a)
= XX,T, .oPX t,
(7.113)
i.e. the boundary process of the subordinate process can be represented as a time-changed process of the original process. Proof. By construction the process (px,t)t>o is a cadlag process with almost surely positive and increasing paths starting at 0. Further Y. o r|"' is an ^A.t-stopping time. Assuming (7.113) we find from {px,t <s} = {TX,. O px,t < rx,t} = {Y{a) o T g < r AiS } e Tx,TKa, (7.114) with s > 0 that (px,t)t>o is a family of .T^.TA.t-stoppmg times, hence a timechange. It remains to prove (7.113). The fact that Tx,t is right-inverse to Lx,t implies Lx,. o rx,t = t, whereas TX,. O Lx,t = t holds only at increase times t of Lx,t- Once we have shown X
XX{a)or^t
e SU
PP (L*.*) = {x£G;
PX(TX,O
= 0) = 1}
(7.115)
380
Chapter 7 Selected Applications and Extensions
we may deduce that Y. o r A " is almost surely an increase time of L\^. w G Q and t > 0 w e find
For
= P (inf {* > 0; 2 ^ , > L[^ } = O ^ o o ^ ) = P (inf {S > 0 ; L j ^ > «} = 0|^yc.,OTc.,+) = 1, since r j ^ is by its very definition the right end point of every interval of constancy of Lxa\. Thus, up to a set JVi of capacity zero we have X
X,Y.M=T^
G SU
However supp [L^lj
PP {L<£t) •
(7.116)
is a quasi-support of the Revuz measure a, see [115],
Theorem 5.1.5, implying that supp (L^j set
7V2(Q).
= dG up to a further exceptional
Thus we get
*Aiy.«.>OT(-> e supp(L A , t ) U JVi U 7V2(Q) U 7V2(1),
(7.117)
and under our regularity assumption the set N := N\ U iV2 U A^2 is even polar with respect to (X A " ) t > 0 , see [115], Theorem 4.1.2. Thus we have for all t > 0 and i s G
i- ( ^
£
^ ) = F ( x , ( ^ T & ) ) ) < ET (sup X , (X£))) = 0. (7.118)
Hence Xx y(«)OT(tt) S supp(L A ,t)
P^-a.s. for every x eG,
and (7.113) follows implying the theorem.
(7.119) •
Remark 7.2.12. It seems that in a general situation the statement that "the boundary process of a subordinate process is some subordinate to the boundary process of the original process" does not hold. In general p\}t is neither a Levy process nor an independent process.
7.2 Remarks on Markov Processes with State Spaces Having a Boundary
381
Finally we state without proof the Skorohod representation for the process {•X-t
)t>o-
Theorem 7.2.13. Let (X't
)t>o be the process that is obtained from the re-
flected diffusion {Xt)t>a associated with (£, #*(£)) through subordination with respect to the one-sided stable suordinator (Yt 1
it holds for the k-th component {{Xf
) t > 0 of order a G (0,1]. Then
fc
) ) t > 0 of (X\a )t>o the decomposition
(*<->)'-(x<">)'
= M ' + 1 E jf ^ K<.»+>i,.-0 "• (^+**f*) n
1=1 r
+ J2J2 /
L
f^c'+sAnC") ^ (XYr(Q)+SAYr<«>) ^ V + i a y r " " (7.120)
where N t = Mya is a pure jump martingale with respect to the time-changed filtration, Mt is the continuous martingale part in the Skorohod representation of (Xt)t>o, and Lt is the boundary local time of the diffusion (Xt)t>oA detailed proof of this result is given in our joint paper with R. Schilling, [197], Theorem 7.1. Remark 7.2.14. In our joint paper [99] with W. Farkas all results upto Theorem 7.2.7 have been generalized in case where dG is only a d-set. Note that in this case modifications taking into account the roughness of dG are needed. For example instead of HS{G) = flg(G) for 0 < s < \ we have HS(G) = H$(G) forO<s<^,n-l
382
Chapter 7 Selected Applications and Extensions
state space G or G by starting with (—A) a . The affirmative answer leads to the censored stable process of order 2a, 0 < a < 1, as well as to the regional fractional Laplacian. Such processes have recently been studied by many authors including R. Bass, K. Bogdan, K. Burdzy, Z.-Q. Chen, Q.-Y. Guan, M. Kassmann, P. Kim, Zh.-M. Ma, R. Song, P. Sztonyk, Z. Vondracek. Here we will only recall its definition and recollect some simple properties. In the end we will indicate the obvious generalization to the case where ( - A ) Q is substituted by a certain pseudo-differential operator. The Dirichlet form associated with (-A) Q , recall
S^\u,v)=
f \Z\2au(Z)W)<%
with domain Ha(Rn).
^
An equivalent representation is given by
ft
("W-WHt'-^dxd, F ~ V\
7K" JR"
and on Ha(Rn)
(7-121)
(7.122)
an equivalent norm is given by
/ K*)lW / y - f f W
<7.I»)
In the following the corresponding (symmetric 2a-stable) process is denoted by (X t (a) ) t > 0 . We may use the one-point-compactification E ^ of 1 " to define a Hunt process on G in the following way. For a Borel set G C R" we put as before <7Gc := inf \t > 0 ; X t ( a ) G G c }
(7.124)
and define *,<•>.%,):=/
MU)
^
<
^
^
(7.125)
This process is called the process obtained from {X[ )t>o by killing upon leaving G and therefore we call (x[a)'G)t>o the killed process. It is a Hunt
7.2 Remarks on Markov Processes with State Spaces Having a Boundary
383
process but in general it has only finite life-time (. The corresponding Dirichlet form is given (upto some constants) by
jf ^
+ jG«(«M«)Ko(a)dx (7.126)
{u{x)-^l\:{;tV{y))^y
where the killing measure has the density
(7.127)
KG(x) = ck,aJGlx_1y]n+2ady, and the domain is given by {u e Ha(Rn) ; u = 0 q.e. on Gc},
(7.128)
compare M. Fukushima, Y. Oshima and M. Takeda [115]. Thus we arrive at a different generator than (—A)Q. Another suggestion leads to the censored stable process (Z\a )t>o- The starting point is the observation that
~£i°Hu'v)'LJc{u{x)~
i"(-'yr*'""'"" "**
<7'129)
is a closable form on CQ°(G) and its closure is a regular Dirichlet form. The domain of £^ is of course the closure of CQ°(G) with respect to (7.123) which we may of course identify with HQ{G). In order to understand [Z\\ )t>o we need to recall briefly the Ikeda-Nagasawa- Watanabe piecing together procedure, compare [166]. For t < crGc(w) we set Z{ta)(w) := x[a){uj) = X$a)'G(u>). Now at aGc(w) for the path t v-> x[a\u)) we may have x£)c'G(w) e G or X^G{u)€(w). Gc. GC. In the latter case we just define V( (w) = A for t > OG^ • In the first case however, we set Yaac (w) := X^_ (u) G G and glue an independent copy of {Xt )t>o starting at X^GC (w) to YaGC (w). (Note that in this situation we have .) Now this procedure is iterated countably many times and this X t = X} leads to a strong Markov process. In [49], Theorem 2.1, K. Bogdan, K. Burdzy and Z.-Q. Chen have proved Theorem 7.2.15. The following processes have the same distribution: i) the Hunt process associated with (f^ a \i?o ! (G));
384
Chapter 7 Selected Applications and Extensions
ii) the strong Markov process obtained from {X[• ) t > 0 through the IkedaNagasawa- Watanabe piecing together procedure in G; Hi) the process obtained from (X t
formelo-o{x^)ds
)t>o through the Feynman-Kac
trans-
In a series of partly rather nice papers, we mention only R. Bass and D. Levin [28]-[29], K. Bogdan, K. Burdzy and Z.-K. Chen [49], K. Bogdan, A. Stos and P. Sztonyk [50], Z.-Q. Chen and T. Kumagai [68], Z.-Q. Chen and P. Kim [67], Z.-Q. Chen and R. Song [69], J. Glover et al. [124], M. Kassmann [217], R. Song [336], and R. Song and Z. Vondracek [337]-[339], the authors have obtained a plenty potential theoretical results for the killed and censored stable process. Their proofs often use the special structure of (—A)a and related objects. Especially they can rely on many explicit formulae. However, having in mind how the theory of second order elliptic differential operators (with variable coefficients) has developed we may suggest the following programme: Let q{x,D) be an elliptic pseudo-differential operator with symbol in S2a(M.n) such that -q(x, D) extends to a (selfadjoint) generator of a symmetric L2-sub-Markovian semigroup. Denote by (B,Ha(M.n)) the corresponding regular Dirichlet form. Investigate the potential theory of (B,H$(G)), G e l " open and bounded, as a "perturbation" of the potential theory of the censored stable process. Note that we may pose a second, similar problem when considering instead of £ ( Q ) the form /
[ (u(x)-u(y))(v(x)-v(y))N(dx,dy)
(7.130)
JG JG
where we assume with a function 0 < k\ < k(x, y) < /c2 that iy(d*,d,) = | ^j 2 a d*d,.
(7.131)
In a very interesting and recent paper Q.-Y. Guan and Zh.-M. Ma [135], see also [134] investigated the Dirichlet form (7.132) with domain (7.133)
7.3 Making Parameters State Space Dependent
385
The corresponding process is a type of reflected symmetric 2a-stable process. In [135] the authors studied especially the generator of £^ and its domain. They end up with the regional fractional Laplacian which is denned for all ueL1 (G, (1+ |jfn+aa) for which Agu(z) := - lim A g £u{x) ,xeG,
(7.134)
£-»0
exists, where Ag e is given by
AS,ei*(x) = cn,a f
T'^W
( 7 - 135 )
JyeG,\x-y\>e \x ~ V\ Note that the investigations in [135] indicate some relations to our previous considerations related to fractional derivatives as generators.
7.3
Making Parameters State Space Dependent — An Idea from Financial Mathematics
So far we discussed stochastic processes generated by pseudo-differential operators —q(x,D) having a negative definite symbol q(x,£). Typically we assume that q(x, £) compares with a fixed continuous negative definite function. Already in Remark 3.7.23 we pointed out that this approach has some limitations. A very natural way to understand the arising of pseudo-differential operators as tools in the theory of Markov processes is due to O. E. Barndorff-Nielsen and S. Levendorskii [25], see also the monograph [59] of S. Boyarchenko and S. Levendorskii. Given a Levy process (Yt ) t > 0 with symbol ip : R™ —> C, i.e. with characteristic exponent t(i. In general ip depends on parameters a, b,c,..., i.e. we have ^(O=^a,b.c,..(O.
(7.136)
where the parameters belong to a certain subset of M. Now when considering problems in financial mathematics, O. E. Barndorff-Nielsen and S. Levendorskii suggested to consider processes which are in some sense close to (Y^)t>0 by making the parameters a, 6, c , . . . state space dependent. This idea fits of course well to our approach (which in fact has stimmulated the paper [25]). To make the point clear, consider ?/> : R" —* C depending on one parameter a £ [A, B]
386
Chapter 7 Selected Applications and Extensions
only, i.e. we have ip(£) = ipa(O- Now, if we let the parameter a become state space dependent we have to consider a function a : Kn —> [A, B] and then we shall study the negative definite symbol ?(x,0:=^«(*)(0-
(7-137)
Clearly we need now conditions on q{x,t;) (or equivalently o n x n a(x)) in order to ensure that —q(x, D) generates a process. But here we can rely on previous work. This idea does not only give a new, very natural and interesting interpretation of our approach, it also shows a road to more refined comparison results. So far we have assumed estimates such as co(l + ^ ( O ) < 0 ( z . O < c i ( l + V(O)
(7.138)
which state that the asymptotic behaviour of q(x, £) with respect to £ is uniformly (with respect to x) the same as that of if). For some problems we have to consider the behavior at £ = 0 instead of the behavior at infinity. Such a comparison does neither take into account smoothness with respect to £ nor the "shape" of ip. However, if we consider symbols q(x,€) = V>a(z),6(z),c(z),...(0
(7.139)
where for XQ e Kn each of the continuous negative definite functions ^o(xo),6(xo),c(x0),...(0 belongs to one, say fc-parametric family of continuous negative definite functions, then our conditions are much more restrictive and we should expect more and better comparison results. Note that in the diffusion case this is well known: From ip{^) = Y12i=i $ki£k£i we pass to
k,i=i
/
n
\
\
j=i
)
This idea leads to a programme: Given tpa^,c,... a continuous negative definite function, find conditions for functions defined on the state space K" such that the continuous negative definite symbol q(x, £) = V'a(x),6(x),c(x),...(^) give rise to a generator — q(x, D) of a Markov process. For the Normal Inverse Gaussian case, i.e. for i/,(Z) = -U£ + 6 (yja? - {b + i£)2 - y/a2 - 62) this programme was carried out in [25] by O. E. Barndorff-Nielsen and S. Levendorskii. For the Meixner process this was done by B. Bottcher, see below.
7.3 Making Parameters State Space Dependent
387
More generally, in [59] a lot of more classes of continuous negative functions have been discussed, however they all lead to classical symbols, i.e. elements in S%s.
For the reader's convenience we will study one example, Meixner-type processes, in more detail. Here we will follow the PhD-thesis of B. Bottcher [52]. The family of continuous negative definite functions we want to investigate is given by
i>M{0 = -Hi + 2r fin cosh {—^) ~ In cos {^j\ , £ e R,
(7.140)
where a > 0, —n < b < n, r > 0 and I € K. Note that
Re<M0 = -2rln ( J ) + rln (cosh 2 (^) - sin 2 (^))
(7.141)
and knipM(0 = - ^ + 2rarctan ( - t a n ( - ) t a n h ( ^ ) ) .
(7.142)
Hence we find |^Af(OI
(7.143)
for |e| > — ,
(7.144)
a
and |ImViif(OI < c o (l +ReVM(e)).
(7.145)
The latter estimate implies that the sector condition, compare Definition 1.4.7.12, holds for the quadratic form
£*M(u, v) := f 1>M{S)u(Z)W£)dt,
(7.146)
i.e. {£^M,H* (M.)) is a non-symmetric Dirichlet form, where the domain H$(R) is determined when taking into account (7.143)-(7.145). Now the Meixner-type symbol class is denned by gM(x,0 := -il(x) + 2r(z) ^ l n c o s h ( ^ i ^ ) ) - Incos(^)) (7.147)
388
Chapter 7 Selected Applications and Extensions
with a,b,l,r € C°°(R) such that for all x e M and k e N it holds - oo < a^ < oSk\x) < a% < oo - oo < 6^ < 6
(fc) k
(z) < b\ < oo
- oo < s^ < s^ \x) m^k\x)
< s~l < oo
and
0 < a^ < a(x) < a j ,
and
- IT < b$ < b(x) < b<j" < TT
and
0 < s^ < s(x),
<mk.
Under these assumptions it follows that QM(X,0 is an elliptic symbol in 5 1 (M) and moreover, compare B. Bottcher [52], Theorem 4.1.17, we have Theorem 7.3.1. The pseudo-differential operator —qM{x,D) defined on Co°(R) is closable in Coo(R) and its closure generates a Feller semigroup. In Appendix A we will discuss how to obtain an approximation for the symbol a(Tt)(x,£) when (Tt)t>o is generated by the pseudo-differential operator —q(x, D). These results are taken from B. Bottcher [52], see also [53]. However in case of classical symbols they are due to H. Kumano-go [237]. The results read as a(Tt)(x,0 = e - * 9 ^ + ro(t; x,0
(7.148)
with ro(t; x,£) —> 0 as t —> 0 in some weak topology on the space of symbols is bounded (for more details we refer to Appendix A). In and (r°(t\x>^ ) V * Jo
(7-149)
for t small. In particular, if we start at XQ then for t small o-(Tt)(x,0~e-t(>^xa*],
(7.150)
i.e. for small t, in a neighborhood of XQ the Meixner process with characteristic exponent 9M(^O, 0 gives a first approximation of the process {Xt)t>o generated by -qM(x,D). Thus we may consider the process (Xt)t>o as a process which is matched into a field of Meixner processes. As we will discuss in Appendix C this resonates well with the idea Roth's method fo construction (diffusion-type) Markov processes.
7.4 Remarks on Stochastic Spectral Analysis
7.4
389
Remarks on Stochastic Spectral Analysis
Spectral theory is clearly one of the most powerful tools in analysis and this would justify alone to investigate the spectral theory of (perturbations of) generators of (symmetric) Feller semigroups or Lp-sub-Markovian semigroups. However, of more importance for us is here the fact that many spectral results of such operators are obtained by using the corresponding Markov process. The magic word is of course "Feynman-Kac-formula". Feynman's "Space-time approach to non-relativistic quantums" was a brilliant idea of a physicist lacking any mathematical rigour and many questions around this "path integral" are note yet settled in a mathematical satisfactory way. The best reference nowadays is of course the monograph [208] of G. Johnson and M. Lapidus. However, often mathematicians are able to transform brilliant ideas (from physicists for example) lacking any rigour into proper and rigorous mathematics. This is what M. Kac did with Feynman's idea when spotting the connection to Brownian motion. We refer again to [208] for historical comments as well as for a thoughout treatment of the classical Feynman-Kac formula. The reader should also consult B. Simon [333] and M. Reed, B. Simon [297]. In this section we first outline (borrowing from K. L. Chung and Z. Zhao [76]) the basic ideas behind the Feynman-Kac formula for the Schrodinger operator — A + V and then we discuss the case where —A is replaced by a generator of a symmetric Feller semigroup. The aim is to investigate the Schrodinger operator (7.151)
-Au+Vu n
where V : R —> M is a given potential. In particular we are interested in spectral properties of — A + V and this is motivated by quantum theory. First of all conditions are needed to assure that (7.151) is self-adjoint and here the Kato class K& gives a sufficiently large class of potentials. By definition y e if A if limfsup/ \Nn(y-x)V(y)\dy) =0, J rlO \x€Rn J\x-y\
(7.152)
where
[\z?~n , n > 3 Nn{z) = cn <j In jij
[\z\
,n = 2 ,
,n = l
(7.153)
390
Chapter 7 Selected Applications and Extensions
with suitable constants cn (which of course have no effect on the definition). As proved in [76], Theorem 3.6, the following characterization of K& holds: Theorem 7.4.1. A Borel function V belongs to K& if and only if lim sup / Pa\V\(x)ds t|o xenn Jo
=Q
(7.154)
holds where (Pt)t>o denotes the Brownian semigroup. Denote by (Bt)t>o Brownian motion and introduce the multiplicative functional
ev(t) := exp (- j V(Bs)ds J
(7.155)
which we may re-write as ev(t) = e~AvW
(7.156)
with additive functional Av{t) = f V{B3)ds. (7.157) Jo Now the Feynman-Kac formula (for the Laplacian) states that the semigroup (Tt)t>o generated by —(—A + V) has the representation Ttu{x) = Ex (exp( - I V{Bs)ds)u(Bt)\
(7.158)
where the expectation refers of course to Brownian motion starting at x. It is the explicit representation of Tt which makes the Feynman-Kacformula such a successful tool. We refer to B. Simon [333] for many applications. For us of interest is the idea to substitute A by a generator of a symmetric Feller semigroup on Coo0&n) which in many cases is a pseudo-differential operator. This was the basic idea of M. Demuth and J. van Casteren when developing their "Stochastic Spectral Theory" which in a final form is presented in their monograph [84]. In the following we rely on [84]. First we give the following Basic Assumptions on Stochastic Spectral Analysis for a Feller Note that —q(x,D) semigroup (T^)t>o on Coo(Rn) with generator -q(x,D). will be the substitute for A and therefore we may call (Tt°)t>o the (potential) free semigroup and — q(x, D) the (potential) free generator.
7.4 Remarks on Stochastic Spectral Analysis
391
Assumption 7.4.2. Let {T^)t>o be a Feller semigroup on Coo(Rn) having a continuous density p®(x,y), i.e.,
T?u{x)= j p°t(x,y)u(y)dy,
(7.159)
which is symmetric, i.e. P°t(x,y)=p°t(y,x) for x, y £ R". domain.
(7.160)
Further the generator —q(x,D) has Co°(R") as core of its
Remark 7.4.3. A. Note that Assumption 7.4.2 implies BASSA in [84], p. 5. B. Prom Assumption 7.4.2 it follows that (-q(x,D),C{?(Rn))n)) extends to a self-adjoint operator on L2(Rn). C. The results of volume 2 as well as of Chapter 4 and 5 provide us with many examples. In particular, if if^'^R™) is continuously embedded into L p (R n ), p > 0, then according to Theorem II.3.6.1, whenever for —q(x,D) a Garding inequality holds in H^:i(Mn) the corresponding semigroup has a density. In a next step we have to determine the class of potentials V for which we may investigate q(x, D) + V using a generalized Feynman-Kac formula. Definition 7.4.4. The Kato class Kq^xj)) associated with q(x, D) consists of all measurable functions V : K" —> R such that lim sup / T®\V\(x)ds = 0 t|0 i£S"
(7.161)
Jo
holds. Remark 7.4.5. In Definition 7.4.1 and Definition 7.4.4 we are more restrictive than necessary. Denoting by /fq(Xio),ioc the class of all measurable functions belonging locally to Kq(XtD), many results hold for Kato-Feller potentials V = V+ - y_ with V+, V- > 0 and V+ € Kq(XtD), V- € Kq(x>D)t]oc. Suppose that (T°)(>o satisfies Assumption 7.4.2 and is generated —q(x,D). From more or less classical perturbation theory it follows that V £ Kq(XtD) (or V being a Kato-Feller potential) the operator — q(x, D) extends to generator of a Feller semigroup (T t ) t > 0 . Moreover, denoting process generated by -q(x,D) by ((Xt)t>o,Px)x€Rn we have
by for —V the
Chapter 7 Selected Applications and Extensions
392
Theorem 7.4.6. For (Tt)t>o the Feynman-Kac formula
Ttu(x) = Ex fexp(- J V(Xt)diju{Xt)\
(7.162)
holds where Ex denotes the expectation with respect to Px. It is interesting that the semigroup (T t ) t > 0 has also a kernel representation and its kernel pt(x, y) is given in probabilistic terms by pt(x,y) = lim£* (exp(-J'v(Xr)dr)p^a(Xa,y)\
.
(7.163)
For a proof of Theorem 7.4.6 and (7.163) we refer to Theorem 2.5 and Chapter 3 in M. Demuth and J. van Casteren [84]. We resist the temptation to quote now the one or the other result from [84] and refer the reader to M. Demuth's and J. van Casteren's monograph. However we want to mention two examples how the symbol and the process can be used to obtain results in spectral theory. We restrict ourselves to the Levy process case and the problems under considerations are the existence of negative bound states and the decay of eigenfunctions. The following results are taken from the paper [62] of R. Carmona, W. C. Masters and B. Simon. Let tp : R™ —> R be a continuous negative definite function and denote the corresponding Levy process by (X4)t>oTheorem 7.4.7. The following properties are equivalent: i) (Xt)t>o is recurrent; ii) the operator tfj(D) + V has at least one negative bound state whenever V ^ 0 is a non-positive bounded potential with compact support. Recall that i) is equivalent to JB ,ON ^77yd^ = +oo, compare Corollary 6.3.7. Let v be an L2-eigenfunction of tl>(D) + V and assume that lim V(x) = 0. |s|-oo
Further denote by v the Levy measure of ip. Theorem 7.4.8. If v decays exponentially then \v{x)\ < cie- C 2 | x | for constants c\ > 0 and c-i > 0.
(7.164)
7.5 Function Spaces Associated with a Continuous Negative Definite Function 393 Note that according to Z. Jurek and J. Smalara [209] the Levy measure v decays exponentially if and only if Pt(x) = (2TT)-» /
e^e-^dS
(7.165)
decays exponentially.
7.5
More on Function Spaces Associated with a Continuous Negative Definite Function
In Section 1.3.10 and Section II.3.3 we systematically investigated function spaces associated with continuous negative definite functions and these spaces have an overwhelming impact on our theory. They are needed to construct processes, they characterize domains of generators and Dirichlet forms, and embedding results lead to bounds for (integrated) transition functions or estimates for capacities, just to mention some topics. Over the last four years (since publishing volume 1 and 2) a few new results have been proven for these spaces — some of them with far reaching consequences. In this section we want shortly summarize and discuss some of these results. Our first topic is the different representation of norms in /f^>1(RTl). Let tp : R n —> R be a continuous negative definite function and define as usual
I M I $ , i = / (1 + ^ ( 0 ) |2(0l 2 d£-
(7-166)
Using the Levy-Khinchin representation for ip, i.e. 1>(€)= [
JRn\{0}
(7.167)
(I - cosy • €)v(dy)
we find that (7.166) is on 5(R n ) equivalent to /
|u(a; + j/)-ix(a;)|2da;i/(d2/)+ /
/
\u(x)\2dx.
(7.168)
In [259] V. Maz'ya and J. Nagel considered anisotropic spaces HM(Rn) which are denned as completion of Co°(Kn) with respect to ||U|&M=
/
(l + M(fl)|S(0l2d£
(7-169)
394
Chapter 7 Selected Applications and Extensions
where /z(£) = X^£=1 Mj(lCjl) a n < i Mj : K —> R is a temperate weight function in the sense of L. Hormander [160] or [161]. The aim in [259] was to find an equivalent representation of ||.|||f^ as
IHIIff*=/
(f
\u(x + y)-u(x)\2N(y)dy]dx+
f \u(x)\2dx,
(7.170)
where iV is a certain weight function. In [274] J. Nagel considered the rotational invariant case, i.e. JJ, = M ( | £ | 2 ) a n d obtained as equivalent norm to (7.169) MH»= [
(f
(u(x + y)-u(x))2g(^-)^)dx+[
\u(x)\2dx (7.171)
where
ds\ M*) = y/"*o /[Jf°° 9(s)^jdr.
(7.172)
Now, both the norms (7.170) and (7.171) are stable under the operation of the unit contraction, in fact it holds in both cases ||(0Vu)Al||2< H | 2 .
(7.173)
Hence, according to Example 1.4.7.28 the norm (7.169) should be equivalent to (7.166) with a suitable continuous negative definite function tp. Further, in the rotational invariant case ip should be of type /(|£| 2 ) with a suitable Bernstein function / . In our joint work with R. Schilling [200] the following result was proved: Theorem 7.5.1. Let g{t) = Jo+ ~^p(ds) and define /j,(t) by
/"* / r°°
" ( ( ) : = I(i
7//z(l) < oo then
be a complete Bernstein
ds\
9W ?) ds -
function
(7.175)
(7.175)
is a Bernstein function and with the continuous negative definite function
*{0 = mf) = f JR"\{0}
(1 - cos y • £)m(\y\2)dy
(7.176)
7.5 Function Spaces Associated with a Continuous Negative Definite Function 395 we have the following norm equivalences
\ I
I \u(x + y) - u(x)\2m(\y\2)dydx + f \u{x)\2dx
= / (i + /(KI2))|2(0l2d£ 7" ~ / (l + M(ie|2))RO|2de
(7.177)
Hence in many cases we can find the continuous negative definite function explicitly and this result extends to many anisotropic situations. For the latter remark we have only to note that for two continuous negative definite functions ipi : H n —> M and ^2 : Km —> M and two (complete) Bernstein functions /i and fi the function (£77) H-> /i(^i(£)) + f2(ip2(v)) *s o n c e again a continuous negative definite function. Thus often when a norm equivalent to (7.169) of type (7.170) or (7.171) exists, then the space H>* is after an (equivalent) change of norms already a translation invariant Dirichlet space. Next we turn our attention to the space Hf's(Rn) as introduced in Section II.3.3. Although many results analogous to those holding for Bessel potential spaces H£(M.n) can be shown for the scale Hps(Rn), so far certain tools are not at our disposal, for example atomic decompositions. The main problem is of course the lack of homogeneity for a general continuous negative definite function i/>. However in some cases continuous negative definite functions are good enough to give rise to spaces Hps(Rn) fitting into the concept of function spaces with generalized smoothness. We briefly outline some ideas following the paper [100] by W. Farkas and H.-G. Leopold. We need some definitions. Definition 7.5.2. A sequence 7 = (7j)jeN0> lj > 0> is called i) almost increasing if there exists a constant dQ > 0 such that dolj < Ik
holds for all j , k, with 0 < j < k;
(7.178)
ii) strongly increasing if it is almost increasing and if there is «o € N such that 2jj < 7fc
for all j , k, with j + K0 < k;
(7.179)
396
Chapter 7 Selected Applications and Extensions
iii) of bounded growth if there are d\ > 0 and Jo £ No such that 7j+i < ^171 for all j > J o ;
(7.180)
iv) admissible if with do > 0 and di > 0 it holds dofj < 7j+i < ^i7j
for all j € N o ;
i.e. (TjOjeNo i s admissible if both (7j)jgN0 growth.
(7.181) an
d ( —)jeN0
are
°f bounded
Now fix a strongly increasing sequence N = (iVj)j€N0> l-e- (7.179) holds, and fix J G N. Then Q^- 7 = (fif l J ) j e N o is a covering of K" where fif'J = K e M " ; ICI <
^+J«O}
if 3 = 0,1, • • •, JKO - 1,
(7.182)
and
fifJ = { e e K n ; Ar,_jK0 < |^| < Nj+jK0}
if j > J Ko ,
(7.183)
where KQ is taken from (7.179). We associate with such a covering a class $ i V ' J of function systems
a) ¥>f J eCS°(R n ) )¥ >f' J >0; b) supple nf-7; c) for any a G NQ there is cQ > 0 such that for all j G No
0'Vf J (O|
0 < f > f lJ(0 = c,, < oo. Now we may give
7.5 Function Spaces Associated with a Continuous Negative Definite Function 397 Definition 7.5.3. Let N = (Nj)jen0 be a strongly increasing sequence, J € No and let {ff'J)j£N0 £ $N'J. Further let (aj)j£N0 be an admissible sequence. A. For l < p < o o , l < g < o o the Besov space of generalized smoothness is defined by
B;£ := \u e <S'(Hn); I £ ( £ n | < ^ f ' ^ M ^ f d z ) M
I?;? := j u G S'(R") ; ( ^ ( £ l^vf • 7 (^)«Wf) ?da; J < ool . (7.185) As usual in (7.184) and (7.185) we denote by ipf'J(D) differential operator J Vf' (D)u(x)
= F~1{V>f'J(.)u)(x).
the pseudo-
(7.186)
As proved by W. Farkas and H.-G. Leopold in [100] elements in these spaces have an atomic decomposition and hence we have more tools at hand to study operators. Let us finally give examples (taken from [100]) of continuous negative definite functions tp which give rise to spaces with generalized smoothness. More precisely for these functions ijj we have H^s(Rn)
= F%jN*'2
with as = (2^) j e N o and AT*-2 = (Nf'2)jeNo
Nf'2 = sup{|£| ; V(0 < 22^}.
(7.187) is determined by
(7.188)
Example 7.5.4. For the continuous negative definite functions that follow, equality (7.187) holds:
^(£) = l £ | 2 a , a e ( 0 , l ] ;
(7.189)
V>(0 = log(l + |£|2);
(7.190)
5
VKO = V i i F + m - m, m > 0; iKO = l£|log(l + |£l);
(7.191) (7.192)
^ ( 0 = |€|(1 - e - 4 ^ ) ; ^(O = l4|log(l + coth|4|).
(7.193) (7.194)
398
Chapter 7 Selected Applications and Extensions
Our last topic is devoted to lower bounds for (transient) Dirichlet forms. This question was taken up recently by M. Fukushima often in collaboration with T. Uemura, see [112] and [117]-[119], and recent contributions are due to A. Ben Amor [32]-[33]. These authors are longing for capacitary bounds of type H(K)K < 0cap1)2(AT), K compact,
(7.195)
and related estimates. Here /J, is a certain measure and capj 2 is the capacity associated with a Dirichlet form. For example in [118] M. Fukushima and T. Uemura proved for a transient regular Dirichlet space (X, m,£, .F), where X is a locally compact space and the Radon measure m has full support, the following theorem. T h e o r e m 7.5.5. Let \i be a Borel measure on X and K € (0,1]. / / (7.195) holds then fi is a smooth Radon measure and \HU(X
(7.196)
holds for all u G Te and Co < (^)K#- Conversely, if (7.196) holds for all u € TC\ Co{X) and some Co > 0 then (7.195) holds for some 9 < CQ. Note that in general pL^m. Note further that from (7.196) one may derive bounds for the (integrated) transition function for a time changed process where the time change is controlled by fi. More precisely, /i is the Revuz measure of a positive continuous additive functional At and with Tt := inf {s > 0 ; As > t} the new process is (XTt)t>o where (Xt)t>o is the Hunt process associated with
{£,?). In the recent paper [33] A. Ben Amor extends some of the capacitary estimates to an Lp-setting and relates lower bounds such as (7.195) to the compactness of the operator Vr considered as operator from Lp(X,m) to Lg(X,n) for suitable values for p and q. We want to discuss a different type of lower bound, namely a Poincare inequality for p ^ 2. The case p = 2 is covered by Theorem 6.4.17. Using the notation from Chapter II.3 we sketch some results from our joint paper [202] with R. Schilling. With Jp(u) := |u| p ~ 2 u we consider the form
4PHf,9) = JJP((id- A)if) (id- A)lg dm
(7.197)
7.5 Function Spaces Associated with a Continuous Negative Definite Function 399 where A is the generator of an Lp-sub-Markovian semigroup (Tt)t>o on Lp(X,m). For S[p\f, f) we write £[p\f). As usual we set
Vr{u) = J 1
f" ti-'e-tTtudt, r > 0,
(7.198)
( . 2 / JO
and ^ i i P = V^(XP). Moreover we put
£{p)(f,9) = JJP{(-A)if)(-A)igdm
(7.199)
and as before £<">(/) = £ (p) (/>/)• Definition 7.5.6. The form £(p) is called transient if there exists an m-almost everywhere strictly positive function g £ Ll{X,m) such that [
(7.200)
holds for all >p £ Vi{Lp+). One can see that (7.200) is equivalent to I l/lffdm < (£ ( p ) (/))^ for all / G TltP.
(7.201)
Further one can prove, compare [202], Corollary 16, that if (Tt)t>o and (Tt*)t>0 are both sub-Markovian and give rise to transient forms £^ and Si , h + -, respectively, then both semigroups are transient. The central result in [202] is however the following Poincare inequality: Theorem 7.5.7. Let £^ be a transient form and suppose that the embedding T\%v "—> Lp(X,m) is compact. Then it holds \HPLP < co£^(u)
(7.202)
for all « £ f i i P . Note that Theorem 7.5.7 applies to H^'1 (G) for a bounded open set G c R " and a continuous negative definite function tp satisfying lim ip(£) = oo. For the case p = 2 and transient symmetric Dirichlet form a Poincare-type inequality is already included in the paper [85] of J. Deny.
400
7.6
Chapter 7 Selected Applications and Extensions
Notes to Chapter 7
Fractional calculus has a long history and we refer to the monographs of S. Samko, A. A. Kilbas and O. I. Marichev [309], B. Rubin [306] and J. Podlubny [286] as well as the related monograph [308] of S. Samko. Recently there is more interest in the relation of fractional calculus to probability theory. Interesting contributions in different directions are coming from a team around R. Gorenflo and F. Mainardi, see [125], [127], [128], [254] and [255], a team around V. V. Ann and N. Leonenko, see [18], [19] and [20], and a team around M. Meerschaert, D. Benson and H. P. Schemer, see [263], [264] and [265], just to mention from each team some contributions. In [358] J. A. Tenreiro Machado gave a probabilistic interpretation of fraction derivatives. Our approach is more straighforward. We identify fractional derivatives as extensions of subordinate drift operators. Hence they fit into our frame. As mentioned in Section 7.1, the results there are obtained within the PhD-projects of A. Krageloh and V. Knopova. We have to confess that so far we do not see any way to get a general theory for Wentzell boundary value problems for pseudo-differential operators with negative definite symbols. Of course, special cases related to classical symbol classes are known, here K. Taira gave valuable contributions [352][354]. As a type of case study jointly with R. Schilling [200] followed up by a paper [99] with W. Farkas we investigated subordinate diffusions just to understand what might happen at the boundary. These results are presented in Section 7.2 and there we have already given some notes. It seems that from the probabilistic side the recent two papers M. Fukushima, P. He and J. Ying [113] and Z.-A. Chen, M. Fukushima and J. Ying [66] settled the problem quite generally. However the analytic, especially the constructive counterpart is almost untouched. Section 7.3 to Section 7.5 are in some sense extended notes, so here are only a few additions. The idea of 0. Barndorff-Nielsen and S. Levendorskii [25] to look at pseudo-differential operators generating Markov processes as operators with symbols where parameters of a fixed continuous negative definite function are made state space dependent is rather beautiful and lead to new insights and examples, see for example B. Bottcher [52]. In particular it might help to overcome the problem of lacking the notion of a principle symbol of our theory. The comprehensive source for stochastic spectral analysis is the monograph [84] of M. Demuth and J. van Casteren to which we refer the reader. More comments are in order to Section 7.5. The function spaces H^yS(M.n)
7.6 Notes to Chapter 7
401
and more generally Hp3(Rn) are key in many parts of the theory, but the lack of homogeneity for a generic continuous negative definite function causes several problems when concentrating on the analysis of operators in these spaces. Thus some progress in the general theory depends on a better understanding of these spaces. It was interesting to see that conditions implying SobolevSlobodeckil-type norm representations for anisotropic spaces already entail the Dirichlet space structure for these spaces. It would be of interest to revise the theory of anisotropic spaces under this point of view. The work of W. Farkas and H.-G. Leopold [100] on spaces of generalized smoothness, see also the recent paper of A. Caetano and W. Farkas [61], which includes non-trivial examples from the scale Hps(M.n) should be seen as a first step towards a better understanding of operator analysis in these spaces. In [100] a detailed introduction to the subject is given and many historical commands and references are provided. The idea to consider Dirichlet spaces as function spaces is old. A new aspect enters into the considerations due to the fact that often function spaces over infinite dimensional spaces are of interest. We refer to the work of D. Feyel and A. de La Pradelle [103] and [104], F. Hirsch [148] and [149], S. Watanabe [367] as well as to the monograph [257] of P. Malliavin. Some different aspects are investigated by N. Weaver in [368] and [370], see also his monograph [369]. Capacitary estimates for classical Sobolev spaces have also a long history, we refer to the monograph [261] of V. G. Maz'ya as well as to D. Adams and L. I. Hedberg [1]. The latest work withing the Dirichlet context is due to M. Fukushima and T. Uemura [112] and [117]-[119] and [365] and it was shortly discussed in Section 7.5. The Lp-Poincare-type inequality is new and is taken from our joint paper [202] with R. Schilling.
Appendix A
Parametrix Construction for Fundamental Solutions of Evolution Equations Using Hoh's calculus, compare Chapter II.2.4, we succeeded to construct a Feller semigroup (Tt)t>o with —q(x, D) as generators. From the general theory it follows that for / € Coo(Mn) the function u(x, t) := Ttf(x) solves 3u -r- + q{x,D)u = 0
inRnx(0,oo)
(A.I)
and (A.2)
limu(x,t) = f{x). t->o
Moreover, the transition function for the corresponding process is given by (A.3)
Pt(x,A)=TtXA(x)
and if (Tt)t>o has a density we have pt(x,A)=
JA
(A.4)
pt(x,y)dy.
For pt(x, y) we find (at least by a formal calculation)
^yl+q{x,Dx)Pt(x,y)
=0
(A.5)
404
Appendix A Parametrix Construction for Evolution Equations
and limpt(x,y)=ex-y.
t->o
(A.6)
Thus an approximative solution to (A.5) and (A.6) would lead to an approximation of pt{x,y) and pt(x,A), respectively. One possibility to get such an approximation is to construct a parametrix to the fundamental solution of (A.I), (A.2). Definition A.I. We call a pseudo-differential operator U(t, s; x,D) a fundamental solution to the operator du — +q(x,Dx)u at
(A.7)
if for every fixed s, 0 < s < t < T and / G L2(Rn) u(x,t; s):=U{t,s;x,Dx)f(x)
(A.8)
solves (A.7), i.e. §f + q{x, Dx)u = 0 and limU(t,0;x,Dx)f(x) = f(x)
(A.9)
holds. Remark A.2. Some reader will prefer the more formal definition that an operator-valued function U(t, s) is a fundamental solution to ^ + A(t)u = 0 ,A(t)=q(x,D), dr
(A.10)
if
(A.11)
U(t,t) = id
(A.12)
and
hold. It turns out that in our context there is no real difference in these two definitions.
405
The symbol classes S™^{Rn), p{k) = k A 2, and S ^ f l R " ) are introduced in Definition II.2.4.4. On S™'^(]Rn) we introduce the system of seminorms by
\q\\m):= max
sup
(\d?dgq(x,£)\ (l + V ( 0 ) " ^ ^ )
|a+/3|
(A.13)
/
which turns S™'^(M.n) into a Frechet space. For every topological vector space V by BV^dV) we denote all continuous functions u : [0,oo) —> V which are m-times continuously differentiable. We say u G -BJ^(V') in [0, T] if u|[o,r] is m-times continuously differentiable. The following result is taken from B. Bottcher [52], see also [53], and its proof combines the classical idea of H. Kumano-go [237] with Hoh's symbolic calculus. Theorem A.3. Let q G S™-^(R n ), 0 < m < 2, be an elliptic symbol. Then there exists a fundamental solution U(t, s; x,D) to the operator (A.7) which has a symbol U(t, s; x,£) satisfying
i)U(t,s;.,.)eB°t)(S0^)nBlt)(S^); ii) U(t, s; x,£) —> 1
weakly in So
as 11 s;
Hi) U(t, a ; i , 0 = e-^-'^'V + ro(t, with ro(x, s; x,£) satisfying ro(t, s; x, 0 - • 0
s;x,{)
weakly in 5 0 " 1Am ~ 2 ' V) (R n ) as t i s
(A.14)
and /roi^s^x^n \
t
S
is bounded
in S™-^(Rny
( A 15)
J 0<s
Some remarks to the proof of Theorem A.3 are in order. In Section II.2.7, p. 143-147 we outlined the existence proof for a parametrix to du -^+q(x,D)u
= 0,
u(x,0) = f(x),
for classical symbol classes, let us refer once again to the work of V. Kolokoltsov [226] and [227]. The proof of Theorem A.3 goes along the same lines, however now we have to use Hoh's calculus and we have to take into account that higher
406
Appendix A Parametrix Construction for Evolution Equations
order iterations do not improve the behaviour of the remainder term. Thus we start with = e-^-s^x^
e0(t,S;x,O
(A.16)
and then we determine (in a few steps) the remainder ro(t, s; x, £) such that iii) holds. For this we have to solve first ( 37 + 9(3,0 ) e i ( M ; 3 , 0 = -qi(t,s;
x,£), ei(s,t; z,0| t =, = 0 (A.17)
with
qi(t,s;x,£) = J2 d?q(x,£)D2eo(t,s;x,O.
(A.18)
|a| = l
Now we have to work through the usual iteration process and to estimate the remainder. As consequence of Theorem A.3 we have Corollary A.4. For f e L2(Rn) and g e C([0,T]; L2(Rn)) a solution to -^+q(x,D)u at
= g,
limu(x,t) = f(x)
(A.19)
t-»o
is given on [0,T] 6y u(x,t) = U(t,0;x,Dx)f(x)+
U(t,s;x,D)g(s)ds.
(A.20)
Further we find for the semigroup (Tt)t>0 generated by —q(x, D) Ttf{x) =
(2TT)-*
/
e--« e -"^'«/(Ode + (2TT)-* /" efa-«r0(t, 0; x, 0 / ( 0 ^ (A.21)
Clearly improved control on ro(t, 0; a;,0 will lead to better estimates for pt(x,y) or pt(x, A), respectively.
Appendix B
A Parameter Dependent Extension of Hoh's Calculus As we have seen repeatedly we often need to estimate terms involving the resolvent (Rx)x>o of a pseudo-differential operator — q(x, D) generating a Feller or an Lp-sub-Markovian semigroup (Tt)t>o- For example, in some cases when dealing with subordinate semigroups we have to control integrals such as f°° / \\\RxKx(x,D)u\\L2P(dX) Jo
(B.I)
with K\(x,D) — id — q\(x,D) o r\(x,D) where q\(x,D) = q(x,D) + Aid and r\(x,D) = ( ^ x ) (x,D), compare Vol. II, p. 195-203. Thus a control on the A-dependence becomes crucial. As in the classical case, compare G. Grubb [132] or M. A. Shubin [330], it is possible to establish a parameter dependent symbolic calculus for Hoh's symbol class. This is done in our joint paper [203] with A. Tokarev which is based on [154], [155] and [330]. Let ip '• K™ —+ K be a continuous negative definite function, A > 0 and s, m £ M, d > 0. Then it holds the following parameter dependent inequality of Peetre type: (l + V(£ + »7))* ( 1 + ^ + 7?)+ \i)* < c ( i + ^ ( 0 ) 5 ( i + V-(0 + A 3 ) 2 ( i + N 2 )
(B.2) 2
•
408
Appendix B A Parameter Dependent Extension of Hoh's Calculus
(We state this inequality explicitly since it is a major tool in the parameter dependent calculus.) By A we denote the class of continuous negative definite functions introduced in Definition II.2.4.3, i.e. tp G A if tp is an arbitrarily often differentiable real-valued continuous negative definite function satisfying
\%£+W))\
(B.3)
with p(k) - k A 2. For ip e A the symbol class 5™^(R") consists of C°°functions q : R n x R" -> C satisfying \d^d^q(x,O\
(B.4)
Moreover, we denote by R3.'^ (Mn) the set of all q : R+ x R n x R n -> C such that q(X, •, •) G C ° ° ( l n x M"), A > 0, and ^
\d^q(X,x^)\
-
m — (rAJn|
2
(1 + ^(0 + ^)
•
(B.5)
It follows that q e J*$ l l *(R n ) implies ?(A,-,-) € 5 r s + m ^ ( R " ) . Now it is straightforward to define the corresponding operator classes ORsr'™ , O5^ n> ^ etc. With S™f(Rn) = Ror'^{Rn) we find that ^ ^ ( R " ) and S^{Mn) are vector spaces and it holds T}S\,m\,4>nan\
^r.d
rtS2,'m2,ipfrnn\ ,— n»i+S2,"»i+tn2,t/ifTa n \
VK J - Ur,d
\K
)C
H
r,d
\K
>>
/"D fl^
\ab)
as well as S ^ ' * ( I " ) • 5^jlVl(Rn) C S^+m2^(Rn).
(B.7)
Further, if q(\,x,£) € 5™/(R n ) satisfies g(A,a;,0 > c(l + V(0 + A a ) f then we find for k £ N {q{X,x,0yk^S;kdm'i'(Rn).
(B.8)
Typical examples are q(X,x,£)
= q(x,£) + X G 5 ^ f ( R n ) for q(x,£) G
S^^(R n ), or if q(x,£) is elliptic then we have (q(x,0 + X)~k G 5^ m > *(R n ). As in the non-parameter case we may now introduce double symbols and associated operators and use them to build up the calculus. We end up with results such as
OBjf 1 '* o OR?}mui> C OR£f'i'mi+m*
(B.9)
409 or estimates like
\\q(X, x, D)uU,s < c(l + An) ^ ^
ll«IU,.+m+_m»
(B.10)
where m = m+ — m_ — m'_ for m + , m_, m_ > 0 and q(x,£) G 5 ^ (Mn). These results shall only give a flavour for this highly technical extension of Hoh's calculus. As indicated in Vol. II, p. 199-203, using this parameter dependent calculus we may prove Theorem B . I . Let q G S2 (M") be an elliptic symbol such that the closure (J4, D(A)} of (—q(x,D),Co°(Rn)) generates a strongly continuous semigroup on L 2 (R"). Let f(s) = a + bs + /0°° r,rs+s\p(dx) be a complete Bernstein function where p satisfies /0°° r~ 1 (l + r)~? p(dx) < oo. Then (/ o q)(x, D)u G L 2 (K") for all u G C§°(Rn) and \\Afu - ( - / o q){x, D)u\\L, < c\\u\\L2
(B.ll)
holds for all u G C0°°(Kn), where u G Q°(M n ) e/ u € 5(K n ) anrf suppw is compact. Prom Theorem B.ll we get, compare Vol. II, p.203, Corollary B.2. Suppose thatq(x,£) and f are as in TheoremB.l. In addition assume that ( - / o q)(x,D) extends to a generator of a strongly continuous contraction semigroup (St)t>o on L2(IRn). Then it holds |r/-5t|
(B.12)
Appendix C
On Roth's Method for Constructing Feller Semigroups In his paper [303] J. P. Roth suggested an interesting technique to construct a Feller semigroup associated with a second order elliptic differential operator. Let
L(x,D)= J2 akl(x)-^— + J2bJ(x)^-+c(x)
(C.I)
be a second order uniformly elliptic differential operator satisfying the positive maximum principle. Suppose further aki, bj £ Cj,(IRn) (or better if needed). For XQ £ K" the operator L(XQ, D) is a constant coefficient operator generating a translation invariant semigroup and hence a Levy process of diffusion type. Roth's idea is to glue these semigroups (or Levy processes of diffusion type) obtained by freezing coefficients together to one semigroup (diffusion process) being gnerated by L(x,D). In other words one tries to fit a diffusion process into a field of Levy processes. In [288] E. Popescu tried to extends this approach to a certain class of pseudo-differential operators generating semigroups. However, unfortunately his proof has a serious gap: a certain pointwise estimate must hold uniformly. Nonetheless, some ideas in E. Popescu's paper are noteworth. In a joint work with A. Potrykus [196] we succeeded to make Roth's method work for pseudo-differential operators with bounded negative definite symbols.
412
Appendix C On Roth's Method for Constructing Feller Semigroups
It is immediately clear that such operators are bounded operators and hence they generate a semigroup. Thus it is making the method work for non-local operators that is of interest, not the final result. The hope is to extend this approach to unbounded symbols. Our following considerations are taken from [196]. Let q : R" x W1 —> R be a continuous function such that q(x, •) : Rn —» E is negative definite. Further suppose that q(x, •) G C 2 (K n ) and that foraeNS,|a|<2.
\dfq(x,O\
(C.2)
Since £ i-> m(x0) - q{xo,£) is for some m(xo) > 0 positive definite there exists a bounded measure vx° £ A^+(Kn) such that Vx°(t;)=m(xo)-q(xo,S).
(C.3)
Let us assume further that |m(a:o)l < K
and | | ^ ° | | < (27r)3tf
(C.4)
with K independent of XQ. For xo e K n we consider now the Feller semigroup
Vtxou(x)= f u(x-y)tf°(dy)
(C.5)
where j5f«(O = ( 2 7 r ) - t e - t 9 ^ ° ^ ) .
(C.6)
The generator of (V t X 0 ) t > 0 is given on «S(Mn) by i4u(a:) = -(/(a;o,^)«(a;) = (27r)-* /
u(x - y)vx°(dy)
- m(xo)u{x),
(C.7)
and hence it extends to C ^ K " ) with bound ||9(a:o,I>)«||oo<2A-||«||oo.
(C8)
Next define on S(Rn) Wtu{x) = (2TT)-* /
eix<e~t
(C9)
413 Under our assumptions it holds Wtu G Coo(Rn) if u £ <S(R"). Note that we have Wtu(x) = Vtxu{x)
(CIO)
and further, since |^Xou(:c)| < ||u||oo we find sup \Vtxu{x)\ < ||«||oo
(Cll)
which yields \\WM\oo = sup \Vtxu{x)\ < Hulloo.
(C.12)
With some effort we may prove, see [196], Proposition 2.4, Proposition C.I. For q(x,£) as above it holds 1 lim WiwA™ u - V(Wt) u T/
m-»oo||\
•»/
oo
=0
(C.13)
for u € Ccx)(IRn) uniformly for t in compact intervals. Now a result of P. R. Chernoff [70] reads as Theorem C.2. Let (St)t>o be a family of strongly continuous linear contractions on a Banach space (X, ||.||) with So = id. Assume that the strong derivative So is densely defined and suppose that =0 (C.14) Sj.) u-Ttu holds for all u G X. Then (Tt)t>o is a strongly continuous contraction semigroup on X and its generator A extends So. Moreover the convergence of (S_L ) to Tt is uniform for t in compact intervals. Combining Theorem C.2 with Proposition C.I we arrive at Theorem C.3. Letq(x,£) be as above. Then —q(x,D) extends to the generator (A, CQO(K")) of a strongly continuous contraction semigroup (Tt)t>o on oo(K j .
Sketch of Proof. From Proposition C.I it follows that Ttu:= lim
m—>oo
(W_L)"\( m
exists and satisfies the conditions of Chernoff's theorem.
(C.15) •
414
Appendix C On Roth's Method for Constructing Feller Semigroups
In the proof of Proposition C.I and Theorem C.3 it is important that we use the sup-norm to eliminate the xo-dependence of Vtx° or q{xo,D). Details are given in [196], see also the forthcoming thesis [291] of A. Potrykus. As corollary to Theorem C.3 we may state Corollary C.4. In the situation of Theorem C.3 the semigroup (Tt)t>o is a Feller semigroup. Proof. We need only note that —q(x, D) satisfies the positive maximum principle. •
Appendix D
More Continuous Negative Definite Functions1 The table on the next page gives further examples of continuous negative definite functions. Here are some further comments concerning the distributions mentioned in the table:
Generalized Hyperbolic Distributions The density of Xi of a generalized hyperbolic process is given by: PGH(x;
A, a, 0,6, M) =a(X, a, 0,6) (S2 + (x - M) 2 ) • Kx_i (ay/fi* + (x- M) 2 )
2
S'-ri
where the normalizing constant is a(X,a,0,S) =
(a2 - 8P2)? ^ /
y/2^ax'UxKx
[Sy/a2 - ??2J
Hyperbolic Distributions If we set A = 1 in the generalized hyperbolic model then we get the hyperbolic model, X\ has the density: Va^P2
pH(x) =
2a8Kl (Sy/a 1
Compiled by B. Bottcher
2
e _ a ^a2 + ( a ._ M ) 2 + / 3 ( j , + M ) ^ 2
- /3 )
416
Appendix D More Continuous Negative Definite Functions
Model
Negative Definite Function
Comments
V(f) = - » £ ( M + *" K > , + 1 , ° ~f ' ) K\(IV<* —0*) — / (e'x^ — 1 — ix • £J g(x)dx
GH [Barndorff-Nielsen] (generalized hyperbolic)
3{x)=^{SS°('-^V+a2W) 7— 1 x4y - 2 « ( . 7 2 x | ( ^ ) + >fx|(*v/3?))
+ Xe-a\x\
[24], [22] and [94]
\ " '
V(«) = -i«(* + ^ ^ H i ' V " 2 - ^ )
H [Eberlein]
a>O,O<|0| 0 AeR
( 9 4 ],
[95]
- /(e*x'£ - l - t i • $)g(x)dx
(hyperbolic, A = 1 in GH)
«(')= ^ ( J f ^ . ( ^ ( " . S ^ l l * ^ ) - "
->0.0<,/,,
NIG [Barndorff-Nielsen] (normal inverse gaussian)
V ( 0 = V« + <5(v'a2 - (0 + »£)2 - V " 2 - /32)
[23],[24],0<|6|
VG [Madan] (variance gamma)
V(£) = J ln(l - ifli/f + ^Z2)
[63], [120] e>0, a>0, v>o
CGMY (Carr-Geman-Madan-Yor)
V(?) = -CV(-Y){(M - iOY - MY +(G + i£)Y — GY}
[64],OO,M>O, Y(Z,G>0,Y<2
TLF [Matacz] (truncated Levy flights)
^(f) = ^ 3 ^ ^ ^ ^ ( « 2 + A2)$ co»(a arctan<£))-V*)
[258],[260],[232], 0o,
TLP [Boyarchenko, LevendorskI] (truncated Levy processes)
^ ( 0 = «»*£ - c + r(-i/)((A + + i£)" - X|^)
[58],c-|->0, A_<0< A+,i/:j.e(a,i)u(i>2)
Meixner Process (SchoUtens)
V(0 = -Hi + 2 r ( l n c o s h ( ^ ^ - lncos(|))
[131],[325], [326] a>0, -ir<6<7r, T->O, left
Real Meixner Process |
V'ReMtO := ReV'(f) = - 2 s lncos(|) +sln(cosh 2 ^ - s i n 2 $)
[52]a>o, |-^<6<^, 3 >0.
Normal Inverse Gaussian Distributions We get this class of distributions by setting A = — | in the generalized hyperbolic distribution. The density of Xt is given by
r, . ,(r\ - a rStVaTZbZ+b(x-nt) Pa,b,ii,S\-^) — e
Id (aSty/l + \
(^)*) J_
.
417 In [24] 0. Barndorff-Nielsen gives its Levy density as 7T
\x\
T h e diffusion component is 0 a n d t h e drift is given by MJV/G = A4 H
/ 7T
sinh(6a;)i ; i'i(a|a;|)da;.
JO
Variance Gamma Process The Levy density can be calculated as
[_^f. whereC=I;G= v /^
+
x>0
^ +f;M=v/^
^-f.
+
The Carr-Geman-Madan-Yor process The Levy density has the following form: ^ T Y ~
, X > 0
< S ^ ,*<0. Truncated Levy process This process is directly constructed using a negative definite function. Including the cases v — 0,1 the negative definite function is given by:
{
c(ln(A±«fl-lnA)
if „ _ n
-2^fe7(A "-(A ± *fl") -f((A±i01n(A±»0-AlnA) 2
, iff e (0,1) u (1,2) , if !/ = 1, , II 1/ — U
where c > 0, A > 0. Meixner Process
The density of Xt is given by p< h
JX)-
(2cos(|)) 2 S t M ^ l
/
___-___\
2
418
Appendix D More Continuous Negative Definite Functions
The Levy measure is
bx
vldx) = s
7—rdx, xsinh(^)
the drift is
(
fo \
2) and there is no diffusion component.
roo sinh (-%•)
+2s
• hfm)^
~
m
Real Meixner Process The density of the transition probability of the real Meixner process is for 6 = 0 given by 4 / x\ I^ and for (b ^ 0) by cos2st ( | ) 4st ~ stjst + 1) •... • {st + k - 1) Pt(;E) ~(27r) 2 r(2s*)a 2 ^ k\
\2j r(2fc) 7 . ^
V
a
J
\
aJ\
Appendix E
More (Complete) Bernstein Functions1 For the following table we fix some notation: The standard form of a Bernstein function is f(x) =a + bx+ [ (1 - e-sx) r(ds) Jo+ where a, b > 0 and r is a measure on (0,oo) with /0°°(s A l)r(ds) < oo. The standard form of a complete Bernstein function is f(x) = a + bx+
r°°
x T—p{dt)
J0+ T + X
where a, b > 0 and p is a measure on (0, oo) with / 0 ^(l + t)~1p(dt) < oo. Note that for a complete Bernstein function f(x) the function f(x)/x, x
x
J(0,oo) t + x
J[0,oo] t + x
Stieltjes transform
is a Stieltjes function (cf. Chr. Berg and G. Forst [35]) resp. Stieltjes transform of the measure p(d£) := a5o(dt) + p(dt) + btSoo(dt) on [0, oo]. The interplay between complete Bernstein and Stieltjes functions is, e.g., discussed in [319]. Here we only need that a Bernstein function / is a complete Compiled by R. Schilling
420
Appendix E More (Complete) Bernstein Functions
Bernstein function if, and only if, /•OO
r(ds) = m(s)ds
where
m(s) = /
Jo+
e~sttp(dt).
In the table below we consider only (complete) Bernstein functions where a = 6 = 0. We write Jl/(x),Yl/(x) for the Bessel functions of the first and second kind, Iv(x),KI/(x) for the modified Bessel functions of the first and second kind and 0 < jv,i < jv,2 < • • • < jv,n < • • • for the positive zeros of the Bessel function Jv(x) (see, e.g., G. E. Andrews et al. [17]). f(x)
7-(ds)
p(dt)
Comments
1 - e"71
<5T(ds)
does not exist
7 > 0; [35, p. 71]
log(l + x)
3
e' df
X(i,=o)(t) f
[35, p. 71]
log ^
e~i°^
X(.y.=o)(t)¥
t>°-< [311, P- 35]
log(ff±f)
(e—-e-l>-)to.
x(o,«(t)f
a,/9>0 ; [311,p.35]
2
(x + 7) log(x + 7) -xlogx - 7 log 7 (x + P)log(x + 0)
13
+
(l-e- )^
((M) f
7 > 0; [311, p. 35]
(e-as - e-0s) ji
[(t-a)A(/3-a)]+ ^
0 > a > 0; [311, p. 36]
-/31og/3 + a logo - ( x + a) log(x + a) s'a ^
x"
r<1°g)
^T^-m
-fee-^'s-1'2^
3^
7e"
VSarctan^ v^log(l + v^) 4
VS(l-e" ^)
7s
^X(m2|Oo)(t) Vt - m2 ^
0 < a < 1; [35, p. 71]
m>0;
<57(dt)
7 > 0; [35, p. 71]
/ J u2e—u2d«ds
X(o,^)(*)^
7 > 0; [311, p. 36]
anon
log(l +1) ^ -
anon
v^log(l + cothVi) 1 anon
ds
5iasi t a sit
2
(sin2Vt) ^t | V^log(l + coth Vi)4i
[100]
[100] 1 [100]
More complicated complete Bernstein functions can be obtained by composition of two complete Bernstein functions, e.g., f(xa) and fa{x), 0 < a < 1, or by setting fl/a{xa), 0 < |a| < 1, cf. [324].
421 I p(dt)
f(x)
~ Comments
ex - i ( l + l/x)x
4i(dt)+(TiI)t ^X(o,i)(')d<
e = 2.71828 ...; [15]
*(1 + l / x ) I + 1 - ex
t « o o ( d t ) + ( T i T ) t " 1 «!aj2lX(Oil)(t)dt
e = 2.71828 ...; [15]
i(l + 1 ) 1 / 1 - !
<5i(dt) + J r ( t - l ) - 1 / ' sinf x(1,oc)Wdt
(l + inrU + x))1'*
}|S;i^,»Ml')'" VK
XK
'
fl-t \l-n/t
[34]
if 0 < t < 1, i f n < 3 < n + l,
««,((!*)+ 4 sin ^ / ~ X ^ ( 2 t s i n h » ) x(e (2 "+«» - e-<2"+«")dy X ^(^)+^(^) dt
£($Z?
[15]
/9 > 0, -/3 < „ < (0 A 1 - | ) or ^ > O,/9€(O,2)
(/ + 0 < 0; [170] a^-.^Jdt)
^'itieF ^
^^H^;:,
1
^'
i (««[J, a -i(^ + ^-xC^)] + 0^(Vi) +^ 2 (v / f)] + 2(/3* + a 7 )/(7rv / t)) X
[«^_i(vf)--fi'2(^t)]2+[-r j j i v i H j y ^ ^ ^ ] 3
v>0;[170] &h > 0, . > 0; [173]
422
Corrections to Volume I
Corrections to Volume I p. p. p. p. p. p. p.
xii 55 89 94 106 109 138
/ - : read: ( - / V O ) line 11 from below: read: . . . each x £ X ... line 12 from above: read: JRn \u(x)\pdx < ... (3.57): read: (T*u)A line 5 from above: read: = (2ir)%'j2(£) • £(£). line 12 from above: read: for all ip € S(Rn), ip > 0,... (3.143): read: i ^
p. 183
Table 3.9.19, Hyperbolic semigroup: read - In
p. p. p. p.
line 7 from below: read: J0+s~^v(ds) line 8 from above: read: . . . such that a > Jo°° ja(dt). line 8 from above: read: . . . equivalently, r s e~rs < 1 — e~rs Remark 3.10.6: read: lim |V»i(f)l = °°-
190 194 205 212
lei—°°
p. 252 line 11 from above: read: sup UTtn^Hx p. p. p. p. p.
265 411 412 413 414
p. 426 p. 438
neN
=
°°
(4.46): read: lim \\\R\u - u\\x = 0 line 3 from below: read: domain iJ^^R 7 1 ; R). line 6, 10, 11, 14, 17: read always: ff^^R"; R) line 11, 18: read always: H ^ ' ^ R " ; R) line 2, 6, 7: read always: ff^2>1(Rn ; R) line 9: read: J f ^ R " ; R) (4.415): read: fRnpt(x,dy)ps(y,A) line 2 from below: read: Lemma 4.8.19
( K ^ T J ^ / ^ P )
Corrections to Volume II
423
Corrections to Volume II p. xi p. xx p. 68
/ - : read: / ~ = ( - / V 0) line 10 from above: read [159] line 5 from above: read . . . ? : K n x E " ^ C
p. 70
line 2 from above: read: = J Rn J Rn . . .
p. 73
(2.148): read: | [ ( l + iP(D))2,q2(x,D)]u\\o
< ...
p. 105 (2.224): read: q*(x,£) p. 119 line 4 from above: read: < 4(1 + \s - s'|)~ 6 (l + \tp. p. p. p. p.
t'\)~6
122 (2.284): read: ^ | | u | | $ m + s < 155 (2.385): read: iptf) > c\$\r 167 line 9 from above: read: . . . Section 1.4.11... 234 (3.57): read: ^ c l " 235 Proof of (3.59), starting line 3 from above to line 18; read: First let (Gv)^gpj be a sequence of open sets. Denote by uGu the (r, p)-equilibrium potential of Gv and set uGy = Vr f with fGv e L"(Rn; R), JGV > 0. For / := sup fGv it follows that 1/gN
P < T,v&ifhv ^ d / G X^(]R" ; K) provided that E , 6 N / G , £ LP(Rn ; R), i.e. Et,eN ca Pr, P ( G ") < °°- N o w w e n n d
\\VrP)ft
^E^rAGv).
Since Vr(p) f > 0 a.e. on \JueNG">
w e find
further that
cap,,(U a.) < \v}»t\lrr which proves (3.59) for open sets. (Note that if ^2v€^fGv & Lp(M.n,E) the estimate is trivial). Now let Au c R n be [Continue now as in the text from line 5 from above: arbitrary. For e > 0. . . t o line 11 from above: which yields (3.59). Ignore the rest from line 11 from above to line 18 from above until: which proves (3.59).]
424 p. 242 p. 251 p. 340
p. 357 p. 366
Changes in the Bibliography of Volume II Corollary 3.1.50: read: uv € ^" r , p (K n ; R ) . . . line 9 from below: read: . . . be the . . . line 13 from below: read: ...u = u a.e. Lemma 3.5.6.A: read always in line 6, 5, 9, 16 from above: "countable" instead of "arbitrary" line 16 from above: read: ( G J ) J £ N line 10 from above: read: recurrent line 4 from below: read: lim {Stg - TsStg, u)0 = lim - (Stg - TsStg, u) 0
s->0
s—0 S
p. 385
line 2 from above: read: . . . < (8^ {11,11))*
p. 387
line 2 from below: read: . . . = c' / R n ip2(Z)kn $(kO
d£
Changes in the Bibliography of Volume II [88] [133] [134] [166] [171] [197]
add: Ann. Mat. Pura Appl. (in press). add: J. Evolution Equations 4 (2004), 297-312. read: Jacob, N., and A. G. Tokarev, A parameter dependent symbolic calculus for pseudo-differential operators with negative definite symbols. J. London Math. Soc. (2) 70 (2004), 780-796. add: Acta Math. Sinica (in press). add: Potential Analysis 19 (2003), 69-87. add: 5(2002), 297-315.
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Author Index Adams, D. R. 254, 261, 401 Agmon, S. 369 Albeverio, S. 222, 253, 254, 280 Ancona, A. 280 Andrews, A. 419 Anh, V. V. 400 Applebaum, D. 153, 352 Barham, J. ix Barndorff-Nielsen, O. E. 7, 138, 353, 385, 386, 400, 416 Bass, R. 138, 382, 384 Bauer, H. 3, 4, 9, 18, 21, 23, 24, 27, 28, 31, 33, 40, 41, 46, 48, 49, 50, 87, 94, 152, 222 Ben Amor, A. 398 Benson, D. 400 Berens, H. 366 Berg, Chr. 133, 153, 419 Bertoin, J. 4, 152, 352 Billingsley, P. 9, 24, 152, 221 Bingham, N. 153, 352 Bliedtner, J. 6, 284, 331, 332, 335, 336, 352 Blumenthal, R. 149, 154, 277, 279, 293, 351 Bochner, S. xxv, xxvii, 4, 152, 153, 284
Bogachev, V. 222 Bogdan, K. 382,383,384 Borodin, A. N. 138 Bottcher, B. ix, x, 7, 8, 135, 153, 386, 387, 388, 400, 405, 415 Bouleau, N. 276, 280 Bourbaki, N. 9 Boutet de Monvel, L. 366, 368 Boyarchenko, S. 385, 416 Burdzy, K. 382, 383, 384 Butzer, P. 366 Caetano, A. 401 Carmona, R. 392 Carr, P. 416 Carrillo-Menendez, S. 253, 280 Chen, Z.-Q. 368, 382, 383, 384, 400 Chernoff, P. R. 413 Choquet, G. 22 Chung, K. L. 41, 71, 95, 100, 152, 293, 308, 315, 351, 389 Ciesielski, Z. 154 Courrege, Ph. xxvii Davies, I. M. ix Dellarcherie, C. 41 Demuth, M. 7, 390, 392, 400 Deny, J. 352, 399
458 Dieudonne, J. 9 Doob, J. L. 33, 41, 94, 256, 284 Doppel, K. 327, 352 Douglis, A. 369 Dudley, R. M. 9, 33 Dunford, N. 65 Dynkin, E. B. xxv, 41, 280 Eberlein, E. 416 Engel, K.-J. 65 Ethier, St. 5, 33, 36, 38, 39, 41, 76, 78, 113, 152, 158, 159, 160, 167, 170, 173, 176, 178, 183, 188, 192, 198, 214, 221 Farkas, W. ix, 7, 381, 395, 397, 400, 401 Feller, W. xxv, 24, 41 Feyel, D. 401 Feynman, R. 389 Fitzsimmons, P. 280 Forst, G. 133, 153, 419 Fristedt, B. 345 Fukushima, M. xxv, 6, 223, 227, 230, 232, 252, 272, 275, 276, 280, 281, 287, 303, 306, 319, 346, 351, 352, 368, 369, 370, 375, 377, 383, 398, 400, 401 Geman, H. 416 Getoor, R. 149, 154, 277, 279, 293, 351 Gihman, I. I. 152 Glover, J. 384 Gorenflo, R. 359, 400 Grigelionis, B. 135, 153, 221 Grubb, G. 366, 407 Guan, Q.-Y 382, 384
Author Index Halmos, P. 9 Hansen, W. 6, 284, 331, 332, 335, 336, 352 Haroske, D. 155 Havin, V. P. 254 Hawkes,.J. 154,352 He, P. 368, 400 Hedberg, L. I. 254, 261, 401 Herren, V. 154 Hewitt, E. 9 Himmelberg, C. J. 183 Hirsch, F. 276, 280, 401 Hoegh-Krohn, R. 280 Hoh, W. ix, x, 5, 6, 7, 8, 70, 152, 154, 157, 158, 170, 173, 175, 177, 178, 184, 190, 192, 194, 198, 200, 201, 214, 215, 216, 218, 220, 221, 222, 280, 331, 337, 345, 352, 403, 405, 407, 409 Hormander, L. 366, 394 Hunt, G. A. 279, 284 Ikeda, N. 40 Ishikawa, Y. 366 Ito, K. xxv, 148, 153, 154, 284 Jacobs, K. 9, 23 Jacod, J. 78, 152, 221 Jakubowski, A. 221 Johnson, G. 389 Jurek, Z. 393 Kac, M. 389 Kakutani, S. 284, 330 Kanda, M. 352 Kaneko, H. 253, 280 Karatzas, I. 100, 152
Author Index Kassmann, M. 382, 384 Kazumi, T. 276 Kerkyacharian, G. 154 Khinchin, A. A. 153 Kilbas, A. A. 400 Kim, J. H. 280 Kim, P. 382, 384 Kingman, J. 352 Knopova, V. ix, 7, 354, 358, 367, 400 Kolmogorov, A. N. xxv Kolokoltsov, V. 222, 405 Komatsu, T. 221, 222 Krageloh, A. ix, 7, 354, 359, 361, 364, 367, 400 Krein, M. 65 Kroger, P. 222 Kumagai, T. 384 Kumano-go, H. 388, 405 Kunita, H. 280 Kuratowski, K. 183 Kurtz, Th. 5, 33, 36, 38, 39, 41, 76, 78, 113, 152, 158, 159, 160, 167, 170, 173, 176, 178, 183, 188, 192, 198, 214, 221 Lapidus, M. 389 de La Pradelle, A. 401 LeJan,Y. 253, 280
Leonenko, N. 400 Leopold, H.-G. 7, 395, 397, 401 Lepeltier, J.-P. 221 Lescot, P. 222 Levendorskii, S. 7, 138, 353, 385, 386, 400, 416 Levin, D. 384 Lewis, J. ix Levy, P. xxv, 4, 153, 284
459 Lytvynov, E. ix, 153 Ma, Z.-M. 253, 254, 276, 280, 382, 384 Madan, D. B. 416 Mainardi, F. 359, 400 Malliavin, P. xxv, 280, 401 Marchal, B. 221 Marichev, O. I. 400 Masters, W. C. 392 Matacz, A. 416 Maz'ya, V. G. 7, 254, 393, 401 McKean, H. xxv Meerschaert, M. 400 Meyer, P.-A. 41, 279 Mikulevicius, R. 221 Millar, W. 154 Miller, K. S. 359 Morrey, Ch. 327, 352 Nagel, J. 7, 393 Nagel, R. 65 Negoro, A. 221 Neveu, J. 33 Nirenberg, L. 369 Okitaloshima, O. 222 Orey, St. 372 Oshima, Y. 6, 223, 227, 253, 276, 280, 287, 306, 319, 346, 351, 352, 375, 383 Overbeck, L. 253, 280 Oxtoby, J. C. 22 Parthasarathy, K. R. 9 Podlubny, I. 359,400 Poincare, H. 330 Popescu, E. 154, 411
460 Port, S. C. 352 Potrykus, A. ix, x, 8, 411, 414 Pragarauskas, H. 221 Protter, Ph. 33, 39, 41, 153 Pruitt, E. 154 Qiang, Y. ix Rao, M. 280 Reed, M. 389 Revuz, D. 15, 33, 36, 92, 100, 102, 103, 105, 106, 152, 254, 307, 308, 310, 351 Riesz, M. 6, 330 Rockner, M. 222, 253, 276, 280 Rogers, Chr. 33, 40, 41, 138 Ross, B. 359 Roth, J.-P. 411 Roynette, B. 154 Rubin, B. 400 Rudin, W. 65, 162 Ryll-Nardzenski, C. 183 Salminen, P. 138 Samko, S. 354, 355, 358, 400 Sato, K. 4, 133, 142, 143, 144, 145, 152, 153, 311, 314, 315, 352 Scheffler, H. P. 400 Schilling, R. ix, x, 5, 7, 8, 9, 31, 93, 138, 149, 150, 151, 153, 154, 155, 254, 277, 280, 281, 319, 321, 322, 352, 354, 368, 394, 398, 400, 401, 419 Schoutens, W. 135, 153, 416 Schwartz, J. T. 65 Schwartz, L. 22 Seeley, R. 371 Sharpe, M. 41, 280, 308
Author Index Shigekawa, S. 276 Shiryaev, A. N. 78, 152, 221 Shreve, St. 100, 152 Shubin, M. A. 407 Silverstein, M. 253, 280, 368 Simon, B. 389, 392 Skorohod, A. V. 75, 152 Smalara, J. 393 Smullian, V. 65 Sokolowski, J. 280 Song, R. 382, 384 Srivastara, S. M. 22 Stannat, W. 280 Stein, E. M. 354 Stone, C. J. 352 Stos, A. 384 Stromberg, K. 9 Stroock, D. W. 5, 9, 24, 138, 148, 154, 198, 221 Sztonyk, P. 382, 384 Taira, K. 368, 400 Takeda, M. 6, 223, 227, 253, 276, 280, 287, 306, 319, 346, 351, 352, 375, 383 Tan, R. T. x Tanabe, H. 200 Tanaka, H. 221 Taylor, S. J. 153, 154, 352 Tenreiro Machado, J. A. 400 Teugels, J. 135, 153 Tokarev, A. G. ix, 8, 407 Tomisaki, M. 370 Triebel, H. 155, 369, 371, 372, 373 Truman, A. ix Tsuchiya, M. 221 Uemura, T. 276, 398, 401
Author Index
van Casteren, J. 7, 222, 390, 392, 400 Varadhan, S. R. S. 5, 138, 198, 221 Vondracek, Z. 288, 382, 384 Watanabe, S. 40, 221, 401 Weaver, N. 401 Wiener, N. xxv, 284 Williams, D. 33, 40, 41, 138
461
Xiao, Y. 155 Ying, J. 368,400 Yor, M. 15, 33, 36, 92, 100, 102, 103, 105, 106, 152, 307, 308, 310, 351, 416 Yosida, K. xxv, 366 Zhao, Z. 389
Subject Index 0-1 law - Blumenthal, 105, 238 - Borel, 25 - Kolmogorov, 25, 27 ^4-harmonic function, 110 «4-measurable set, 10 a-excessive function, 90, 240, 263, 277, 292, 298 a-order hitting distribution, 244 a-supermedian function, 89, 262, 263, 292
absorbing diffusion, 370 adapted process, 13, 228 admissible - filtration, 228, 230 - random variable, 27 - sequence, 396 almost everywhere, 10 almost increasing sequence, 395 almost surely, 14 almost sure convergence, 19 Assumption 5.3.26, 270 Assumption 6.4.1, 320 balayage Dirichlet problem, 331 balayage space, 332 basic assumption of stochastic
spectral analysis, 390 Bernoulli topology, 158 Besov space - generalized smoothness, 397 - weighted, 150 Bliedtner-Hansen theorem, 332 Blumenthal 0-1 law, 105, 238 Borel - 0-1 law, 25 - <j-field, 22 - measurable, 238 - nearly measurable, 238 boundary local time, 378 bounded - growth (sequence), 396 - kernel, 54 - stopping time, 36 Brownian motion, 134 Brownian motion, - n-dimensional, 136 Cft-extension, 289 Cj-Feller semigroup, 289 cadlag - function, 73 - path, 72 - process, 72
164 canonical - filtration, 13 - process, 51 - projection, 14, 47 capacitary function, 261 capacity, 316 C a p u t o fractional derivative, 356 Caratheodory extension theorem, 16 Cartesian product, 47 Carr-Geman-Madan-Yor process, 417 Cauchy process, 135 cemetry, 229 censored stable process, 383 Chapman-Kolmogorov equations, 55 characteristic - exponent, 124 - function, 18, 123 Chebyshev inequality, 21 closed martingale, 39 co-a-excessive function, 277 co-excessive function, 277 compact containment condition, 168 compactification, one-point, 22, 59 compensated sum of jumps, 145 complete nitration, 13, 230 completion of a cr-field, 14 compound Poisson process, 129 conditional - expectation, 28 - probability, 24, 30 conservative operator, 84 contact time, 39 continuous - measure, 19 - negative definite symbol, 175 - p a r t of a Levy process, 145 - p a t h , 42
Subject Index - potential, 333 - process, 72 - quasi-left, 232 - stochastically, 70 contraction regular, (J" r , p -space), 265 Convention 6.2.2, 290 convergence - almost sure, 19 - in distribution, 20 - in mean, 20 - in measure, 20 - in probability, 20 - in quadratic mean, 20 - stochastic, 20 counting process, 126 counting process without explosion, 126 covariance, 26 •D n -martingale problem, 112 decomposition - Levy-Ito, 144 - Riesz-type, 309 density of a measure, 19 diffusion - absorbing, 370 - reflected, 370 Dirichlet problem - balayage, 331 - generalized, 343 discontinuity - j u m p , 74 - second kind, 74 discrete stopping time, 37 distribution - a-order hitting, 244 - finite dimensional, 50 - generalized hyperbolic, 415
Subject Index - hyperbolic, 415 - initial, 62 - joint, 26 - normal inverse Gaussian, 416 - of a random variable, 15 domain, extended, 111 Doob inequality, 35 Douglas integral, 375 Dynkin system, 10 Dynkin system, generated, 10 £^ -harmonic function, 372 e-oscillation, 75 elementary Markov property, 81 energy, 316 energy, mutual, 316 entry time, 38, 234 equi-integrable, 21, 40 equilibrium - measure, 316 - potential, 254 essential set, 94 event - independent, 24 - terminal, 25 exceptional set, 303 excessive - function, 240, 263, 277, 292, 298
- a-function, 90, 240, 263, 277, 292, 298 expectation, 18 expectation, conditional, 28 explosion time, 126 exponent, characteristic, 124 extended - domain, 111 - real-valued function, 17
465 extension, C(,-_- of a generator, 289 (J Ft)-martingale, 33 (J-t)-progressive measurable, 38 (.^-stopping time, 36 (^rt)-sub-martingale, 33 (J r t)-super-martingale, 33 factorization lemma, 31 Feller - Cb--- semigroup, 289 - process, 91 - semigroup, strong, 289 Feynman-Kac formula - for Laplacian, 390 - general, 392 filtration - admissible, 228 - canonical, 13 - complete, 13 - minimal complete admissible, 230 - right continuous, 13, 228 - usual condition, 13 - usual hypothesis, 13 fine topology, 249 finely open set, 249 finite dimensional distribution, 50 finite stopping time, 36 first contact time, 39 first hitting time, 38, 234 fractional - derivative, 355, 356 - derivative, Caputo, 356 - derivative, Riemann-Liouville, 356 - derivative, Marchaud representation, 357
466
Subject Index
- integral, Riemann-Liouville, 355 - Laplacian, regional, 275 Fukushima theorem, 275 function - A-harmonic, 110 - 4 a) -harmonic, 372 - a-excessive, 90, 240, 263, 277, 292, 298
- a-supermedian, 89, 262, 263, 292, 298 - A-reduced, 346 - cr-stable cone, 331 - cadlag, 73 - capacitary, 261 - characteristic, 18, 123 - co-a-excessive, 277 - co-excessive, 277 - cone, 331 - excessive, 240, 263, 277, 292, 298 - extended real-valued, 17 - generalized Mittag-Leffler, 389 - harmonic, 334 - hyperharmonic, 333 - invariant part, 310 - invariant w.r.t. semigroup, 309 - kernel, 254 - linear separating, 331 - lower semi-continuous regularization, 331 - Mittag-Leffler, 358 - pure excessive part, 310 - resolutive, 334 - simple, 13 - superharmonic, 334 - supermedian, 292 - transition, 55
function space of generalized smoothness, 395 fundamental solution, 404 Gauss kernel, 285 generalized - Dirichlet problem, 343 - hyperbolic distribution, 415 - Liouville property, 323 Hahn-Banach theorem, 23 harmonic function - A-, 110 - 8{xa)-, 372 - hyper-, 334 - super-, 334 hitting distribution, a-order, 244 hitting time, 38, 234 Hoh's theorems, see Theorem Hoh Hunt process, 232 Hunt's switching result, 316 hyperbolic distribution, 415 hyper-harmonic function, 333 identity of Bienayme, 26 Ikeda-Nagasawa-Watanabe piecing together, 383 image measure, 18 increments - independent, 117 - stationary, 117 independent, - events, 24 - family of events, 24 - increments, 117 - random variables, 25 indistinguishable processes, 72
Subject Index inequality - Chebyshev, 21 - Doob, 35 - Jensen, 17, 29 - Poincare, 326, 327, 370, 372, 399 initial distribution, 62 integrable - equi-, 21, 40 - uniformally, 21, 40 integral - Douglas, 375 - operator, 254 integration w.r.t. image measure, 18 intensity, jumps of Poisson process, 126 intensity measure, 142 invariant, - function, 309 - part of a function, 309 - set, 250 irregular point, 238, 336 Ito decomposition, see Levy-Ito decomposition, Jensen inequality, 17, 29 joint distribution - of random variables, 26 - of a process, 42 jump - compensated sum of, 145 - discontinuity, 74 - intensity (Poisson process), 126 - part of a Levy process, 145 Kato class - general, 391 - for Laplacian, 289
467 Kato-Feller class, 391 kernel - bounded, 54 - function, 254 - Gauss, 285 - Markov, 52 - Newton, 284 - of an operator, 254 - potential, 291 - proper, 332 - sub-Markov, 52 killed process, 382 Kolmogorov - 0-1 law, 25, 27 - theorem, 50 A-potential operator, 91 A-reduced function, 346 A-regular set, 348 A-spectrum, 348 left continuous path, 42 Levy process, 120 Levy-Ito decomposition, 144 life time, 231 linearly separating functions, 331 Liouville property, 323 local time, 370 local time, boundary, 378 locally finite measure, 22 lower semi-continuous regularization, 331 //-almost everywhere, 14 //-continuous measure, 19 /i-equi-integrable, 21 /it-measure zero, 14 //-negligible, 14 //-null set, 14
468 /x*-measurable, 15 mapping - measurable, 12 - product, 25 Marchaud representation of fractional derivative, 357 Markov - chain, 42 - elementary property, 81 - kernel, 52 - process, 81 - process, normal, 229 - process, universal, 85, 228 - strong-.-process, 99 - strong-.-process, universal, 99 - strong property, 99 - universal-.-property, 86, 97, 98, 228 martingale - P=i)-, 33 - closed, 39 - right continuous, 72 - sub-, 33 - super-, 33 martingale problem - Vn, 112 - stopped, 199 - well posed, 112, 199 measure, 11 measure - (7-finite, 12 - carried by, 23 - continuous, 19 - with density, 19 - equilibrium, 316 - image of, 15 - locally finite, 22 - outer, 16
Subject Index - Poisson random, 142 - potential, 291 - probability, 12 - Radon, 22 - sub-probability, 12 - supported by, 23 - tight, 162 measure space, 12 measure space, cr-finite, 12 measurable - mapping, 12 - nearly Borel, 238 - progressive, 38, 108 - selections, 183 - set, 10 - space, 12 - universally, 14, 101, 228 Meixner process, 136, 386, 417 Meixner process, type, 386 metric - Prohorov, 158 - Skorohod, 77 Mittag-Lemer function, 358 Mittag-Leffler function, generalized, 359 modification of a process, 72 monotone class, 10 monotone class, generated, 10 monotone class theorem, 11 mutual energy, 316 nearly Borel measurable, 238 negligible set, 14 Newton - kernel, 284 - potential, 284
Subject Index normal, - inverse Gaussian distribution, 386, 416 - inverse Gaussian process, 386 - Markov process, 229 - semigroup, 55 null set, 14 one-point compactification, 22, 59 operator - A-potential, 91 - conservative, 84 - integral, 254 - potential, 91 - Schrodinger, 389 - shift, 97, 231 - trace, 370 optional sampling, 39 optional stopping, 39 oscillation, e-, 75 outer measure, 16 P-almost surely, 14 part of a process, 252 path of a process, 42, 71 path - cadlag, 42 - continuous, 42 - left-continuous, 42 - right-continuous, 42 Perron-Wiener-Brelot method, 334 Poincare inequality, 326, 327, 370, 372, 399 point - irregular, 238, 336 - regular, 238, 336 Poisson process, 126
469 Poisson process - compound, 129 - jump intensity, 126 Poisson random measure, 142 polar set, 247 Polish space, 49 potential - A-.-operator, 91 - continuous, 333 - equilibrium, 254 - Kato, 389, 391 - Kato-Feller, 391 - kernel, 291 - measure, 291 - Newton, 284 - zero set, 247 probability - conditional, 30, 44 - measure, 12 - space, 12 - sub-.-measure, 12 process - adapted, 13 - cadlag, 72 - canonical, 51 - Carr-Geman-Madan-Yor, 417 - Cauchy, 135 - censored stable, 383 - compound Poisson, 129 - continuous, 72 - counting, 126 - counting without explosion, 126 - Feller, 91 - Hunt, 232 - independent increments, 120 - indistinguishable, 72 - killed, 382 - Levy, 120
470
Subject Index
-
Levy subordinate, 125 Levy, symbol, 124 Markov, 81 Markov, normal, 229 Markov, strong, 99 Markov, universal, 85, 228 Markov, universal strong, 99 Meixner, 136, 386, 417 Meixner, type, 386 modification of, 72 normal inverse Gaussian, 386, 416 - part of, 252 - Poisson, 126 - quasi-left continuous, 232 - real Meixner, 418 - recurrent, 302 - recurrent in the restricted sense, 302 - restriction of, 250 - right continuous,72 - standard, 232 - stationary increments, 120 - stopped, 43 - subordinate, 132 - symbol of, 148 - symmetric, 303 - symmetric stable, 135 - transient, 300 - transient in the restricted sense, 300 - truncated Levy, 417 - variance gamma, 417 - version of, 72 product - cr-field, 11, 14, 68 - Cartesian, 47 - infinite, 47
- mapping, 25, 48 progressively measurable, 38, 108 Prohorov - metric, 158 - theorem, 162 projection, canonical, 14, 47 projective family, 50 proper kernel, 332 pure excessive part of a function, 310 quasi-left continuous process, 232 Radon measure, 22 Radon-Nikodym theorem, 19 random measure, Poisson, 142 random variable, 12 random variable - admissible, 27 - complex-valued, 12 - equi-integrable, 40 - independent, 25 - n-dimensional, 12 - real-valued, 12 - uncorrelated, 26 real Meixner process, 418 recurrent - in the restricted sense, 302 - process, 302 - set, 307 reduced function, 346 reflected diffusion, 370 regional fractional Laplacian, 385 regular - J>,p-space, 265 - A-.-set, 348 - elliptic boundary value problem, 369 - point, 238, 336
Subject Index - set, 336 resolutive function, 334 Riemann-Liouville - fractional derivative, 356 - fractional integral, 355 Riesz-type decomposition, 309 right-continuous - filtration, 13 - martingale, 36 - path, 42 - process, 72 - sub-martingale, 36 - super-martingale, 36 cr-field, 10 cr-field, Borel, 22 cr-field, complete, 13 cr-field, generated by, 10 cr-field, product, 11 cr-field, terminal events, 25 cr-field, trace, 11 cr-finite measure, 12 a-finite measure space, 12 cr-stable cone, 331 sample path, 71 Schilling's theorem, see Theorem Schilling Schrodinger operator, 389 selection, measurable, 183 semigroup - C6-Fel]er, 289 - Feller, strong, 289 - Markovian kernels, 55 - normal, 55 - recurrent, 302 - sub-Markovian kernels, 55 - transient, 300 semipolar set, 247
471 sequence - admissible, 396 - almost increasing, 395 - bounded growth, 396 - strongly increasing, 395 set - ^-measurable, 10 - A-regular, 348 - M-invariant, 250 - essential, 94 - exceptional, 303 - finely open, 249 - invariant, 250 - measure zero, 10 - negligible, 14 - null, 14 - polar, 247 - potential zero, 247 - recurrent, 307 - regular, 336 - semipolar, 247 - thin, 247 - totally bounded, 162 - transient, 307 - universally measruable, 14, 101, 228 shift operator, 97, 231 simple function, 13 Skorohod - metric, 77 - space, 78 - topology, 78 solution - balayage Dirichlet problem, 365 - generalized, 404 - lower generalized, 335 - upper generalized, 335 - variational, 345
472
Subject Index
- weak, 345 - well-behaved, 335 space - balayage, 332 - Besov, generalized smoothness, 397
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Besov, weighted, 150 Polish, 22 Skorohod, 78 state, 42 Triebel-Lizorkin, generalized smoothness, 397 spatially homogeneous transition function, 55 spectral synthesis for Dirichlet spaces, 348 spectrum A-, 348 standard process, 232 state space, 42 stationary increment, 117 stochastic - continuous, 70 - convergence, 20 stochastic process, 42 stochastic process, see: process, stopped martingale problem, 199 stopped process, 43 stopping time - bounded, 36 - discrete, 37 - finite, 36 strong Markov process, 99 strongly increasing sequence, 395 sub- Markov kernel, 52 - martingale, 33 - probability measure, 12
subordinate - Levy process, 125 - process, 132 subordinator, 132 super- a-_- median function, 89, 262, 263, 292
- harmonic function, 334 - martingale, 33 - median function, 292 support of a measure, 23 symbol - continuous negative definite, 175 - of a Markov process, 148 - of a Levy process, 124 - Meixner-type, 387 symmetric - process, 303 - stable process, 135 terminal event, 25 Theorem - Bliedtner-Hansen, 332 - Blumenthal 0-1 law, 105, 238 - Borel 0-1 law, 25 - Caratheodory extension, 15 - Doob inequality, 35 - Fukushima, 275 - Hahn-Banach, 23 - Hoh, existence for D n -martingale problem, 175 - Hoh, uniqueness for •Z>n-martingale problem, 194 - Hoh, well-posedness for "Dn-martingale problem, 214 - Hoh, Feller property of solution to X>n-martingale problem,
Subiect Index 218, 220 - Hunt's switching result, 316 - Kolmogorov 0-1 law, 25, 27 - Kolmogorov on projective limits, 50 - Kolmogorov on canonical process, 51 - Levy-Ito-decomposition, 144 - monotone class, 11 - optional sampling, 39 - optional stopping, 39 - Prohorov, 162 - Radon-Nikodym, 19 - Schilling, path properties, 321 - Schilling, symbol and conservativeness, 321 - spectral synthesis, 348 - transformation, 18 thin set, 247 tight - measure, 162 - family, 162 time - boundary local time, 378 - entry, 38 - explosion, 126 - first contact, 39 - first hitting, 38 - life, 231 - local, 370 - stopping, 36, 230 time parameter set, 42 topology - Bernoulli, 158 - fine, 249 - Skorohod, 78 - weak, 158 - W-fine, 331
473 totally bounded set, 162 trace operator, 370 trace a-field, 11 transformation theorem, 18 transient - L p -energy form, 399 - process, 300 - process in the restricted sense, 300 - semigroup, 300 - set, 307 transition function - Markovian, 55 - spatially homogeneous, 55 - translation invariant, 55 translation invariant transition function, 55 Triebel-Lizorkin space, generalized smoothness, 397 truncated Levy process, 417 uncorrelated random variables, 26 uniformally integrable, 40 universal - Markov process, 85 - Markov property, 86, 97 - strong Markov process, 99 universally measurable, 14, 101, 228 upcrossing, 35 usual - conditions, 13, 101 - hypothesis, 13 variance, 26 variance gamma process, 417 variational solution, 345 version of a process, 72
474 weak equals strong result, 65 weak - solution, 345 - topology, 158 weakly regular, .7>,p-space, 265
Subject Index weighted Besov space, 150 well-behaved solution, 335 well-posed martingale problem, 112, 199 W-fine topology, 331