Generalization Error Analysis of Deep Backward Dynamic Programming for Solving Nonlinear PDEs

Abstract

We explore the application of the quasi-Monte Carlo (QMC) method in deep backward dynamic programming (DBDP) (Hure et al. 2020) for numerically solving high-dimensional nonlinear partial differential equations (PDEs). Our study focuses on examining the generalization error as a component of the total error in the DBDP framework, discovering that the rate of convergence for the generalization error is influenced by the choice of sampling methods. Specifically, for a given batch size m, the generalization error under QMC methods exhibits a convergence rate of O(m-1+), where can be made arbitrarily small. This rate is notably more favorable than that of the traditional Monte Carlo (MC) methods, which is O(m-1/2+). Our theoretical analysis shows that the generalization error under QMC methods achieves a higher order of convergence than their MC counterparts. Numerical experiments demonstrate that QMC indeed surpasses MC in delivering solutions that are both more precise and stable.

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