Discussion Papers 2023

CIRJE-F-1212

"Solving Kolmogorov PDEs without the Curse of Dimensionality via Deep Learning and Asymptotic Expansion
with Malliavin Calculus"

Author Name

Takahashi, Akihiko and Toshihiro Yamada

Date

April 2023

Full Paper PDF file
Remarks

Published in Partial Differential Equations and Applications Vol.4, June 2023.

Abstract

This paper proposes a new spatial approximation method without the curse of dimensionality for solving high-dimensional partial differential equations (PDEs) by using an asymptotic expansion method with a deep learning-based algorithm. In particular, the mathematical justi cation
on the spatial approximation is provided. Numerical examples for high-dimensional Kolmogorov PDEs show effectiveness of our method.

Keywords: Asymptotic expansion, Deep learning, Kolmogorov PDEs, Malliavin calculus, Curse of dimensionality