TY - JOUR
T1 - A variance reduction method for parametrized stochastic differential equations using the reduced basis paradigm
AU - Boyaval, Sébastien
AU - Leliévre, Tony
PY - 2010/1/1
Y1 - 2010/1/1
N2 - In this work, we develop a reduced-basis approach for the ecient computation of parametrized expected values, for a large number of parameter values, using the control variate method to reduce the variance. Two algorithms are proposed to compute online, through a cheap reduced-basis approximation, the control variates for the computation of a large number of expectations of a functional of a parametrized Itô stochastic process (solution to a parametrized stochastic dierential equation). For each algorithm, a reduced basis of control variates is pre-computed offline, following a so-called greedy procedure, which minimizes the variance among a trial sample of the output parametrized expectations. Numerical results in situations relevant to practical applications (calibration of volatility in option pricing, and parameter-driven evolution of a vectorld following a Langevin equation from kinetic theory) illustrate the eciency of the method.
AB - In this work, we develop a reduced-basis approach for the ecient computation of parametrized expected values, for a large number of parameter values, using the control variate method to reduce the variance. Two algorithms are proposed to compute online, through a cheap reduced-basis approximation, the control variates for the computation of a large number of expectations of a functional of a parametrized Itô stochastic process (solution to a parametrized stochastic dierential equation). For each algorithm, a reduced basis of control variates is pre-computed offline, following a so-called greedy procedure, which minimizes the variance among a trial sample of the output parametrized expectations. Numerical results in situations relevant to practical applications (calibration of volatility in option pricing, and parameter-driven evolution of a vectorld following a Langevin equation from kinetic theory) illustrate the eciency of the method.
KW - Reduced-basis methods
KW - Stochastic dierential equations
KW - Variance reduction
UR - https://www.scopus.com/pages/publications/77954678113
U2 - 10.4310/CMS.2010.v8.n3.a7
DO - 10.4310/CMS.2010.v8.n3.a7
M3 - Article
AN - SCOPUS:77954678113
SN - 1539-6746
VL - 8
SP - 735
EP - 762
JO - Communications in Mathematical Sciences
JF - Communications in Mathematical Sciences
IS - 3
ER -