Numerical Complexity Analysis of Weak Approximation of Stochastic Differential Equations

The thesis consists of four papers on numerical complexityanalysis of weak approximation of ordinary and partialstochastic differential equations, including illustrativenumerical examples. Here by numerical complexity we mean thecomputational work needed by a numerical method to solve aproblem with...

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Main Author: Tempone Olariaga, Raul
Format: Doctoral Thesis
Language:English
Published: KTH, Numerisk analys och datalogi, NADA 2002
Subjects:
Online Access:http://urn.kb.se/resolve?urn=urn:nbn:se:kth:diva-3413
http://nbn-resolving.de/urn:isbn:91-7283-350-5
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spelling ndltd-UPSALLA1-oai-DiVA.org-kth-34132013-01-08T13:06:31ZNumerical Complexity Analysis of Weak Approximation of Stochastic Differential EquationsengTempone Olariaga, RaulKTH, Numerisk analys och datalogi, NADAStockholm : KTH2002Adaptive methodsa posteriori error estimatesstochastic differential equationsweak approximationMonte Carlo methodsMalliavin CalculusHJM modeloption pricebond marketstochastic elliptic equationKarhunen-Loeve expansionnumerical coNumerical analysisNumerisk analysThe thesis consists of four papers on numerical complexityanalysis of weak approximation of ordinary and partialstochastic differential equations, including illustrativenumerical examples. Here by numerical complexity we mean thecomputational work needed by a numerical method to solve aproblem with a given accuracy. This notion offers a way tounderstand the efficiency of different numerical methods. The first paper develops new expansions of the weakcomputational error for Itˆo stochastic differentialequations using Malliavin calculus. These expansions have acomputable leading order term in a posteriori form, and arebased on stochastic flows and discrete dual backward problems.Beside this, these expansions lead to efficient and accuratecomputation of error estimates and give the basis for adaptivealgorithms with either deterministic or stochastic time steps.The second paper proves convergence rates of adaptivealgorithms for Itˆo stochastic differential equations. Twoalgorithms based either on stochastic or deterministic timesteps are studied. The analysis of their numerical complexitycombines the error expansions from the first paper and anextension of the convergence results for adaptive algorithmsapproximating deterministic ordinary differential equations.Both adaptive algorithms are proven to stop with an optimalnumber of time steps up to a problem independent factor definedin the algorithm. The third paper extends the techniques to theframework of Itˆo stochastic differential equations ininfinite dimensional spaces, arising in the Heath Jarrow Mortonterm structure model for financial applications in bondmarkets. Error expansions are derived to identify differenterror contributions arising from time and maturitydiscretization, as well as the classical statistical error dueto finite sampling. The last paper studies the approximation of linear ellipticstochastic partial differential equations, describing andanalyzing two numerical methods. The first method generates iidMonte Carlo approximations of the solution by sampling thecoefficients of the equation and using a standard Galerkinfinite elements variational formulation. The second method isbased on a finite dimensional Karhunen- Lo`eve approximation ofthe stochastic coefficients, turning the original stochasticproblem into a high dimensional deterministic parametricelliptic problem. Then, adeterministic Galerkin finite elementmethod, of either h or p version, approximates the stochasticpartial differential equation. The paper concludes by comparingthe numerical complexity of the Monte Carlo method with theparametric finite element method, suggesting intuitiveconditions for an optimal selection of these methods. 2000Mathematics Subject Classification. Primary 65C05, 60H10,60H35, 65C30, 65C20; Secondary 91B28, 91B70. QC 20100825Doctoral thesis, comprehensive summaryinfo:eu-repo/semantics/doctoralThesistexthttp://urn.kb.se/resolve?urn=urn:nbn:se:kth:diva-3413urn:isbn:91-7283-350-5Trita-NA, 0348-2952 ; 0220application/pdfinfo:eu-repo/semantics/openAccess
collection NDLTD
language English
format Doctoral Thesis
sources NDLTD
topic Adaptive methods
a posteriori error estimates
stochastic differential equations
weak approximation
Monte Carlo methods
Malliavin Calculus
HJM model
option price
bond market
stochastic elliptic equation
Karhunen-Loeve expansion
numerical co
Numerical analysis
Numerisk analys
spellingShingle Adaptive methods
a posteriori error estimates
stochastic differential equations
weak approximation
Monte Carlo methods
Malliavin Calculus
HJM model
option price
bond market
stochastic elliptic equation
Karhunen-Loeve expansion
numerical co
Numerical analysis
Numerisk analys
Tempone Olariaga, Raul
Numerical Complexity Analysis of Weak Approximation of Stochastic Differential Equations
description The thesis consists of four papers on numerical complexityanalysis of weak approximation of ordinary and partialstochastic differential equations, including illustrativenumerical examples. Here by numerical complexity we mean thecomputational work needed by a numerical method to solve aproblem with a given accuracy. This notion offers a way tounderstand the efficiency of different numerical methods. The first paper develops new expansions of the weakcomputational error for Itˆo stochastic differentialequations using Malliavin calculus. These expansions have acomputable leading order term in a posteriori form, and arebased on stochastic flows and discrete dual backward problems.Beside this, these expansions lead to efficient and accuratecomputation of error estimates and give the basis for adaptivealgorithms with either deterministic or stochastic time steps.The second paper proves convergence rates of adaptivealgorithms for Itˆo stochastic differential equations. Twoalgorithms based either on stochastic or deterministic timesteps are studied. The analysis of their numerical complexitycombines the error expansions from the first paper and anextension of the convergence results for adaptive algorithmsapproximating deterministic ordinary differential equations.Both adaptive algorithms are proven to stop with an optimalnumber of time steps up to a problem independent factor definedin the algorithm. The third paper extends the techniques to theframework of Itˆo stochastic differential equations ininfinite dimensional spaces, arising in the Heath Jarrow Mortonterm structure model for financial applications in bondmarkets. Error expansions are derived to identify differenterror contributions arising from time and maturitydiscretization, as well as the classical statistical error dueto finite sampling. The last paper studies the approximation of linear ellipticstochastic partial differential equations, describing andanalyzing two numerical methods. The first method generates iidMonte Carlo approximations of the solution by sampling thecoefficients of the equation and using a standard Galerkinfinite elements variational formulation. The second method isbased on a finite dimensional Karhunen- Lo`eve approximation ofthe stochastic coefficients, turning the original stochasticproblem into a high dimensional deterministic parametricelliptic problem. Then, adeterministic Galerkin finite elementmethod, of either h or p version, approximates the stochasticpartial differential equation. The paper concludes by comparingthe numerical complexity of the Monte Carlo method with theparametric finite element method, suggesting intuitiveconditions for an optimal selection of these methods. 2000Mathematics Subject Classification. Primary 65C05, 60H10,60H35, 65C30, 65C20; Secondary 91B28, 91B70. === QC 20100825
author Tempone Olariaga, Raul
author_facet Tempone Olariaga, Raul
author_sort Tempone Olariaga, Raul
title Numerical Complexity Analysis of Weak Approximation of Stochastic Differential Equations
title_short Numerical Complexity Analysis of Weak Approximation of Stochastic Differential Equations
title_full Numerical Complexity Analysis of Weak Approximation of Stochastic Differential Equations
title_fullStr Numerical Complexity Analysis of Weak Approximation of Stochastic Differential Equations
title_full_unstemmed Numerical Complexity Analysis of Weak Approximation of Stochastic Differential Equations
title_sort numerical complexity analysis of weak approximation of stochastic differential equations
publisher KTH, Numerisk analys och datalogi, NADA
publishDate 2002
url http://urn.kb.se/resolve?urn=urn:nbn:se:kth:diva-3413
http://nbn-resolving.de/urn:isbn:91-7283-350-5
work_keys_str_mv AT temponeolariagaraul numericalcomplexityanalysisofweakapproximationofstochasticdifferentialequations
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