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On the Representation of Solutions to Elliptic PDEs in Barron Spaces

14 June 2021
Ziang Chen
Jianfeng Lu
Yulong Lu
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Abstract

Numerical solutions to high-dimensional partial differential equations (PDEs) based on neural networks have seen exciting developments. This paper derives complexity estimates of the solutions of ddd-dimensional second-order elliptic PDEs in the Barron space, that is a set of functions admitting the integral of certain parametric ridge function against a probability measure on the parameters. We prove under some appropriate assumptions that if the coefficients and the source term of the elliptic PDE lie in Barron spaces, then the solution of the PDE is ϵ\epsilonϵ-close with respect to the H1H^1H1 norm to a Barron function. Moreover, we prove dimension-explicit bounds for the Barron norm of this approximate solution, depending at most polynomially on the dimension ddd of the PDE. As a direct consequence of the complexity estimates, the solution of the PDE can be approximated on any bounded domain by a two-layer neural network with respect to the H1H^1H1 norm with a dimension-explicit convergence rate.

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