It is one of the most challenging problems in applied mathematics to approximatively solve high-dimensional partial differential equations (PDEs). Recently, several deep learning-based approximation algorithms for attacking this problem have been proposed and tested numerically on a number of examples of high-dimensional PDEs. This has given rise to a lively field of research in which deep learning-based methods and related Monte Carlo methods are applied to the approximation of high-dimensional PDEs. In this article we offer an introduction to this field of research by revisiting selected mathematical results related to deep learning approximation methods for PDEs and reviewing the main ideas of their proofs. We also provide a short overview of the recent literature in this area of research.
翻译:这是应用数学解决高维部分差异方程式(PDEs)的最具挑战性的问题之一。最近,为解决这一问题,提出了若干基于深学习的近似算法,并在数字上以一些高维PDE为例进行了测试。这引起了一个活跃的研究领域,在这个领域,深学习方法和相关的蒙特卡洛方法适用于高维PDEs的近似。在本条中,我们通过重新审视与PDEs深度学习近似法有关的某些数学结果,并审查其证据中的主要观点,对这一领域的研究进行了介绍。我们还简要概述了这一研究领域的最新文献。