Solving high-dimensional eigenvalue problems using deep neural networks: A diffusion Monte Carlo like approach
Solving high-dimensional eigenvalue problems using deep neural networks: A diffusion Monte Carlo like approach
We propose a new method to solve eigenvalue problems for linear and semilinear second order differential operators in high dimensions based on deep neural networks. The eigenvalue problem is reformulated as a fixed point problem of the semigroup flow induced by the operator, whose solution can be represented by Feynman-Kac formula in terms of forward-backward stochastic differential equations. The method shares a similar spirit with diffusion Monte Carlo but augments a direct approximation to the eigenfunction through neural-network ansatz. The criterion of fixed point provides a natural loss function to search for parameters via optimization. Our approach is able to provide accurate eigenvalue and eigenfunction approximations in several numerical examples, including Fokker-Planck operator and the linear and nonlinear Schr\"odinger operators in high dimensions.
Jianfeng Lu、Mo Zhou、Jiequn Han
数学物理学计算技术、计算机技术
Jianfeng Lu,Mo Zhou,Jiequn Han.Solving high-dimensional eigenvalue problems using deep neural networks: A diffusion Monte Carlo like approach[EB/OL].(2020-02-06)[2025-07-17].https://arxiv.org/abs/2002.02600.点此复制
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