Uniform error estimates for artificial neural network approximations for heat equations
Lukas Gonon, Philipp Grohs, Arnulf Jentzen, David Kofler, and David, \v{S}i\v{s}ka

TL;DR
This paper develops techniques to estimate the uniform approximation error of neural networks for heat equations, demonstrating that neural networks can overcome the curse of dimensionality in this context.
Contribution
It provides the first uniform $L^ty$-error estimates for neural network approximations of heat equations, showing polynomial growth in dimension and accuracy.
Findings
Neural networks can approximate heat equation solutions uniformly in high dimensions.
The number of parameters grows polynomially with dimension and inverse accuracy.
Results demonstrate overcoming the curse of dimensionality in this setting.
Abstract
Recently, artificial neural networks (ANNs) in conjunction with stochastic gradient descent optimization methods have been employed to approximately compute solutions of possibly rather high-dimensional partial differential equations (PDEs). Very recently, there have also been a number of rigorous mathematical results in the scientific literature which examine the approximation capabilities of such deep learning based approximation algorithms for PDEs. These mathematical results from the scientific literature prove in part that algorithms based on ANNs are capable of overcoming the curse of dimensionality in the numerical approximation of high-dimensional PDEs. In these mathematical results from the scientific literature usually the error between the solution of the PDE and the approximating ANN is measured in the -sense with respect to some and some probability…
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Taxonomy
TopicsModel Reduction and Neural Networks · Image and Signal Denoising Methods · Neural Networks and Applications
