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Malliavin calculus

In probability theory and related fields, Malliavin calculus is a set of mathematical techniques and ideas that extend the mathematical field of calculus of variations from deterministic functions to stochastic processes. In particular, it allows the computation of derivatives of random variables. Malliavin calculus is also called the stochastic calculus of variations. P. Malliavin first initiated the calculus on infinite dimensional space. Then, the significant contributors such as S. Kusuoka, D. Stroock, J-M. Bismut, Shinzo Watanabe, I. Shigekawa, and so on finally completed the foundations.

Malliavin calculus is named after Paul Malliavin whose ideas led to a proof that Hörmander's condition implies the existence and smoothness of a density for the solution of a stochastic differential equation; Hörmander's original proof was based on the theory of partial differential equations. The calculus has been applied to stochastic partial differential equations as well.

The calculus allows integration by parts with random variables; this operation is used in mathematical finance to compute the sensitivities of financial derivatives. The calculus has applications in, for example, stochastic filtering.

Overview and history edit

Malliavin introduced Malliavin calculus to provide a stochastic proof that Hörmander's condition implies the existence of a density for the solution of a stochastic differential equation; Hörmander's original proof was based on the theory of partial differential equations. His calculus enabled Malliavin to prove regularity bounds for the solution's density. The calculus has been applied to stochastic partial differential equations.

Invariance principle edit

The usual invariance principle for Lebesgue integration over the whole real line is that, for any real number ε and integrable function f, the following holds

  and hence  

This can be used to derive the integration by parts formula since, setting f = gh, it implies

 

A similar idea can be applied in stochastic analysis for the differentiation along a Cameron-Martin-Girsanov direction. Indeed, let   be a square-integrable predictable process and set

 

If   is a Wiener process, the Girsanov theorem then yields the following analogue of the invariance principle:

 

Differentiating with respect to ε on both sides and evaluating at ε=0, one obtains the following integration by parts formula:

 

Here, the left-hand side is the Malliavin derivative of the random variable   in the direction   and the integral appearing on the right hand side should be interpreted as an Itô integral.

Gaussian probability space edit

The toy model of Malliavin calculus is an irreducible Gaussian probability space  . This is a (complete) probability space   together with a closed subspace[disambiguation needed]   such that all   are mean zero Gaussian variables and  . If one chooses a basis for   then one calls   a numerical model. On the other hand, for any separable Hilbert space   exists a canonical irreducible Gaussian probability space   named the Segal model having   as its Gaussian subspace. Properties of a Gaussian probability space that do not depend on the particular choice of basis are called intrinsic and such that do depend on the choice extrensic.[1] We denote the countably infinite product of real spaces as  .

Let   be the canonical Gaussian measure, by transferring the Cameron-Martin theorem from   into a numerical model  , the additive group of   will define a quasi-automorphism group on  . A construction can be done as follows: choose an orthonormal basis in  , let   denote the translation on   by  , denote the map into the Cameron-Martin space by  , denote

  and  

we get a canonical representation of the additive group   acting on the endomorphisms by defining

 

One can show that the action of   is extrinsic meaning it does not depend on the choice of basis for  , further   for   and for the infinitesimal generator of   that

 

where   is the identity operator and   denotes the multiplication operator by the random variable on   associated to   (acting on the endomorphisms).[2]

Clark–Ocone formula edit

One of the most useful results from Malliavin calculus is the Clark–Ocone theorem, which allows the process in the martingale representation theorem to be identified explicitly. A simplified version of this theorem is as follows:

Consider the standard Wiener measure on the canonical space  , equipped with its canonical filtration. For   satisfying   which is Lipschitz and such that F has a strong derivative kernel, in the sense that for   in C[0,1]

 

then

 

where H is the previsible projection of F'(x, (t,1]) which may be viewed as the derivative of the function F with respect to a suitable parallel shift of the process X over the portion (t,1] of its domain.

This may be more concisely expressed by

 

Much of the work in the formal development of the Malliavin calculus involves extending this result to the largest possible class of functionals F by replacing the derivative kernel used above by the "Malliavin derivative" denoted   in the above statement of the result. [citation needed]

Skorokhod integral edit

The Skorokhod integral operator which is conventionally denoted δ is defined as the adjoint of the Malliavin derivative in the white noise case when the Hilbert space is an   space, thus for u in the domain of the operator which is a subset of  , for F in the domain of the Malliavin derivative, we require

 

where the inner product is that on   viz

 

The existence of this adjoint follows from the Riesz representation theorem for linear operators on Hilbert spaces.

It can be shown that if u is adapted then

 

where the integral is to be understood in the Itô sense. Thus this provides a method of extending the Itô integral to non adapted integrands.

Applications edit

The calculus allows integration by parts with random variables; this operation is used in mathematical finance to compute the sensitivities of financial derivatives. The calculus has applications for example in stochastic filtering.

References edit

  1. ^ Malliavin, Paul (1997). Stochastic Analysis. Grundlehren der mathematischen Wissenschaften. Berlin, Heidelberg: Springer. pp. 4–15. ISBN 3-540-57024-1.
  2. ^ Malliavin, Paul (1997). Stochastic Analysis. Grundlehren der mathematischen Wissenschaften. Berlin, Heidelberg: Springer. pp. 20–22. ISBN 3-540-57024-1.
  • Kusuoka, S. and Stroock, D. (1981) "Applications of Malliavin Calculus I", Stochastic Analysis, Proceedings Taniguchi International Symposium Katata and Kyoto 1982, pp 271–306
  • Kusuoka, S. and Stroock, D. (1985) "Applications of Malliavin Calculus II", J. Faculty Sci. Uni. Tokyo Sect. 1A Math., 32 pp 1–76
  • Kusuoka, S. and Stroock, D. (1987) "Applications of Malliavin Calculus III", J. Faculty Sci. Univ. Tokyo Sect. 1A Math., 34 pp 391–442
  • Malliavin, Paul and Thalmaier, Anton. Stochastic Calculus of Variations in Mathematical Finance, Springer 2005, ISBN 3-540-43431-3
  • Nualart, David (2006). The Malliavin calculus and related topics (Second ed.). Springer-Verlag. ISBN 978-3-540-28328-7.
  • Bell, Denis. (2007) The Malliavin Calculus, Dover. ISBN 0-486-44994-7; ebook
  • Sanz-Solé, Marta (2005) Malliavin Calculus, with applications to stochastic partial differential equations. EPFL Press, distributed by CRC Press, Taylor & Francis Group.
  • Schiller, Alex (2009) . Thesis, Department of Mathematics, Princeton University
  • Øksendal, Bernt K.(1997) . Lecture Notes, Dept. of Mathematics, University of Oslo (Zip file containing Thesis and addendum)
  • Di Nunno, Giulia, Øksendal, Bernt, Proske, Frank (2009) "Malliavin Calculus for Lévy Processes with Applications to Finance", Universitext, Springer. ISBN 978-3-540-78571-2

External links edit

  •   Quotations related to Malliavin calculus at Wikiquote
  • Friz, Peter K. (2005-04-10). (PDF). Archived from the original (PDF) on 2007-04-17. Retrieved 2007-07-23. Lecture Notes, 43 pages
  • Zhang, H. (2004-11-11). "The Malliavin Calculus" (PDF). Retrieved 2004-11-11. Thesis, 100 pages

malliavin, calculus, probability, theory, related, fields, mathematical, techniques, ideas, that, extend, mathematical, field, calculus, variations, from, deterministic, functions, stochastic, processes, particular, allows, computation, derivatives, random, va. In probability theory and related fields Malliavin calculus is a set of mathematical techniques and ideas that extend the mathematical field of calculus of variations from deterministic functions to stochastic processes In particular it allows the computation of derivatives of random variables Malliavin calculus is also called the stochastic calculus of variations P Malliavin first initiated the calculus on infinite dimensional space Then the significant contributors such as S Kusuoka D Stroock J M Bismut Shinzo Watanabe I Shigekawa and so on finally completed the foundations Malliavin calculus is named after Paul Malliavin whose ideas led to a proof that Hormander s condition implies the existence and smoothness of a density for the solution of a stochastic differential equation Hormander s original proof was based on the theory of partial differential equations The calculus has been applied to stochastic partial differential equations as well The calculus allows integration by parts with random variables this operation is used in mathematical finance to compute the sensitivities of financial derivatives The calculus has applications in for example stochastic filtering Contents 1 Overview and history 2 Invariance principle 3 Gaussian probability space 4 Clark Ocone formula 5 Skorokhod integral 6 Applications 7 References 8 External linksOverview and history editMalliavin introduced Malliavin calculus to provide a stochastic proof that Hormander s condition implies the existence of a density for the solution of a stochastic differential equation Hormander s original proof was based on the theory of partial differential equations His calculus enabled Malliavin to prove regularity bounds for the solution s density The calculus has been applied to stochastic partial differential equations Invariance principle editThe usual invariance principle for Lebesgue integration over the whole real line is that for any real number e and integrable function f the following holds f x d l x f x e d l x displaystyle int infty infty f x d lambda x int infty infty f x varepsilon d lambda x nbsp and hence f x d l x 0 displaystyle int infty infty f x d lambda x 0 nbsp This can be used to derive the integration by parts formula since setting f gh it implies 0 f d l g h d l g h d l g h d l displaystyle 0 int infty infty f d lambda int infty infty gh d lambda int infty infty gh d lambda int infty infty g h d lambda nbsp A similar idea can be applied in stochastic analysis for the differentiation along a Cameron Martin Girsanov direction Indeed let h s displaystyle h s nbsp be a square integrable predictable process and set f t 0 t h s d s displaystyle varphi t int 0 t h s ds nbsp If X displaystyle X nbsp is a Wiener process the Girsanov theorem then yields the following analogue of the invariance principle E F X e f E F X exp e 0 1 h s d X s 1 2 e 2 0 1 h s 2 d s displaystyle E F X varepsilon varphi E left F X exp left varepsilon int 0 1 h s dX s frac 1 2 varepsilon 2 int 0 1 h s 2 ds right right nbsp Differentiating with respect to e on both sides and evaluating at e 0 one obtains the following integration by parts formula E D F X f E F X 0 1 h s d X s displaystyle E langle DF X varphi rangle E Bigl F X int 0 1 h s dX s Bigr nbsp Here the left hand side is the Malliavin derivative of the random variable F displaystyle F nbsp in the direction f displaystyle varphi nbsp and the integral appearing on the right hand side should be interpreted as an Ito integral Gaussian probability space editMain article Gaussian probability space The toy model of Malliavin calculus is an irreducible Gaussian probability space X W F P H displaystyle X Omega mathcal F P mathcal H nbsp This is a complete probability space W F P displaystyle Omega mathcal F P nbsp together with a closed subspace disambiguation needed H L 2 W F P displaystyle mathcal H subset L 2 Omega mathcal F P nbsp such that all H H displaystyle H in mathcal H nbsp are mean zero Gaussian variables and F s H H H displaystyle mathcal F sigma H H in mathcal H nbsp If one chooses a basis for H displaystyle mathcal H nbsp then one calls X displaystyle X nbsp a numerical model On the other hand for any separable Hilbert space G displaystyle mathcal G nbsp exists a canonical irreducible Gaussian probability space Seg G displaystyle operatorname Seg mathcal G nbsp named the Segal model having G displaystyle mathcal G nbsp as its Gaussian subspace Properties of a Gaussian probability space that do not depend on the particular choice of basis are called intrinsic and such that do depend on the choice extrensic 1 We denote the countably infinite product of real spaces as R N i 1 R displaystyle mathbb R mathbb N prod limits i 1 infty mathbb R nbsp Let g displaystyle gamma nbsp be the canonical Gaussian measure by transferring the Cameron Martin theorem from R N B R N g N n N g displaystyle mathbb R mathbb N mathcal B mathbb R mathbb N gamma mathbb N otimes n in mathbb N gamma nbsp into a numerical model X displaystyle X nbsp the additive group of H displaystyle mathcal H nbsp will define a quasi automorphism group on W displaystyle Omega nbsp A construction can be done as follows choose an orthonormal basis in H displaystyle mathcal H nbsp let t a x x a displaystyle tau alpha x x alpha nbsp denote the translation on R N displaystyle mathbb R mathbb N nbsp by a displaystyle alpha nbsp denote the map into the Cameron Martin space by j H ℓ 2 displaystyle j mathcal H to ell 2 nbsp denote L 0 W F P p lt L p W F P displaystyle L infty 0 Omega mathcal F P bigcap limits p lt infty L p Omega mathcal F P quad nbsp and q L 0 R N B R N g N L 0 W F P displaystyle quad q L infty 0 mathbb R mathbb N mathcal B mathbb R mathbb N gamma mathbb N to L infty 0 Omega mathcal F P nbsp we get a canonical representation of the additive group r H End L 0 W F P displaystyle rho mathcal H to operatorname End L infty 0 Omega mathcal F P nbsp acting on the endomorphisms by defining r h q t j h q 1 displaystyle rho h q circ tau j h circ q 1 nbsp One can show that the action of r displaystyle rho nbsp is extrinsic meaning it does not depend on the choice of basis for H displaystyle mathcal H nbsp further r h h r h r h displaystyle rho h h rho h rho h nbsp for h h H displaystyle h h in mathcal H nbsp and for the infinitesimal generator of r h h displaystyle rho h h nbsp that lim e 0 r e h I e M h displaystyle lim limits varepsilon to 0 frac rho varepsilon h I varepsilon M h nbsp where I displaystyle I nbsp is the identity operator and M h displaystyle M h nbsp denotes the multiplication operator by the random variable on W displaystyle Omega nbsp associated to h H displaystyle h in mathcal H nbsp acting on the endomorphisms 2 Clark Ocone formula editMain article Clark Ocone theorem One of the most useful results from Malliavin calculus is the Clark Ocone theorem which allows the process in the martingale representation theorem to be identified explicitly A simplified version of this theorem is as follows Consider the standard Wiener measure on the canonical space C 0 1 displaystyle C 0 1 nbsp equipped with its canonical filtration For F C 0 1 R displaystyle F C 0 1 to mathbb R nbsp satisfying E F X 2 lt displaystyle E F X 2 lt infty nbsp which is Lipschitz and such that F has a strong derivative kernel in the sense that for f displaystyle varphi nbsp in C 0 1 lim e 0 1 e F X e f F X 0 1 F X d t f t a e X displaystyle lim varepsilon to 0 frac 1 varepsilon F X varepsilon varphi F X int 0 1 F X dt varphi t mathrm a e X nbsp then F X E F X 0 1 H t d X t displaystyle F X E F X int 0 1 H t dX t nbsp where H is the previsible projection of F x t 1 which may be viewed as the derivative of the function F with respect to a suitable parallel shift of the process X over the portion t 1 of its domain This may be more concisely expressed by F X E F X 0 1 E D t F F t d X t displaystyle F X E F X int 0 1 E D t F mid mathcal F t dX t nbsp Much of the work in the formal development of the Malliavin calculus involves extending this result to the largest possible class of functionals F by replacing the derivative kernel used above by the Malliavin derivative denoted D t displaystyle D t nbsp in the above statement of the result citation needed Skorokhod integral editMain article Skorokhod integral The Skorokhod integral operator which is conventionally denoted d is defined as the adjoint of the Malliavin derivative in the white noise case when the Hilbert space is an L 2 displaystyle L 2 nbsp space thus for u in the domain of the operator which is a subset of L 2 0 W displaystyle L 2 0 infty times Omega nbsp for F in the domain of the Malliavin derivative we require E D F u E F d u displaystyle E langle DF u rangle E F delta u nbsp where the inner product is that on L 2 0 displaystyle L 2 0 infty nbsp viz f g 0 f s g s d s displaystyle langle f g rangle int 0 infty f s g s ds nbsp The existence of this adjoint follows from the Riesz representation theorem for linear operators on Hilbert spaces It can be shown that if u is adapted then d u 0 u t d W t displaystyle delta u int 0 infty u t dW t nbsp where the integral is to be understood in the Ito sense Thus this provides a method of extending the Ito integral to non adapted integrands Applications editThe calculus allows integration by parts with random variables this operation is used in mathematical finance to compute the sensitivities of financial derivatives The calculus has applications for example in stochastic filtering This article includes a list of references related reading or external links but its sources remain unclear because it lacks inline citations Please help improve this article by introducing more precise citations June 2011 Learn how and when to remove this message References edit Malliavin Paul 1997 Stochastic Analysis Grundlehren der mathematischen Wissenschaften Berlin Heidelberg Springer pp 4 15 ISBN 3 540 57024 1 Malliavin Paul 1997 Stochastic Analysis Grundlehren der mathematischen Wissenschaften Berlin Heidelberg Springer pp 20 22 ISBN 3 540 57024 1 Kusuoka S and Stroock D 1981 Applications of Malliavin Calculus I Stochastic Analysis Proceedings Taniguchi International Symposium Katata and Kyoto 1982 pp 271 306 Kusuoka S and Stroock D 1985 Applications of Malliavin Calculus II J Faculty Sci Uni Tokyo Sect 1A Math 32 pp 1 76 Kusuoka S and Stroock D 1987 Applications of Malliavin Calculus III J Faculty Sci Univ Tokyo Sect 1A Math 34 pp 391 442 Malliavin Paul and Thalmaier Anton Stochastic Calculus of Variations in Mathematical Finance Springer 2005 ISBN 3 540 43431 3 Nualart David 2006 The Malliavin calculus and related topics Second ed Springer Verlag ISBN 978 3 540 28328 7 Bell Denis 2007 The Malliavin Calculus Dover ISBN 0 486 44994 7 ebook Sanz Sole Marta 2005 Malliavin Calculus with applications to stochastic partial differential equations EPFL Press distributed by CRC Press Taylor amp Francis Group Schiller Alex 2009 Malliavin Calculus for Monte Carlo Simulation with Financial Applications Thesis Department of Mathematics Princeton University Oksendal Bernt K 1997 An Introduction To Malliavin Calculus With Applications To Economics Lecture Notes Dept of Mathematics University of Oslo Zip file containing Thesis and addendum Di Nunno Giulia Oksendal Bernt Proske Frank 2009 Malliavin Calculus for Levy Processes with Applications to Finance Universitext Springer ISBN 978 3 540 78571 2External links edit nbsp Quotations related to Malliavin calculus at Wikiquote Friz Peter K 2005 04 10 An Introduction to Malliavin Calculus PDF Archived from the original PDF on 2007 04 17 Retrieved 2007 07 23 Lecture Notes 43 pages Zhang H 2004 11 11 The Malliavin Calculus PDF Retrieved 2004 11 11 Thesis 100 pages Retrieved from https en wikipedia org w index php title Malliavin calculus amp oldid 1218610400, wikipedia, wiki, book, books, library,

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