335
v1v2v3v4 (latest)

Approximation of Functionals by Neural Network without Curse of Dimensionality

Journal of Machine Learning (JML), 2022
Abstract

In this paper, we establish a neural network to approximate functionals, which are maps from infinite dimensional spaces to finite dimensional spaces. The approximation error of the neural network is O(1/m)O(1/\sqrt{m}) where mm is the size of networks, which overcomes the curse of dimensionality. The key idea of the approximation is to define a Barron spectral space of functionals.

View on arXiv
Comments on this paper