Space-time error estimates for deep neural network approximations for differential equations
This work addresses a theoretical gap for researchers in numerical analysis and machine learning by offering rigorous error bounds for DNN-based PDE solvers, though it is incremental as it builds on prior spatial error estimates.
The paper tackles the problem of approximating solutions to partial differential equations (PDEs) using deep neural networks (DNNs) by providing space-time error estimates for Euler approximations of perturbed differential equations, filling a gap in existing literature that only offered spatial error estimates.
Over the last few years deep artificial neural networks (DNNs) have very successfully been used in numerical simulations for a wide variety of computational problems including computer vision, image classification, speech recognition, natural language processing, as well as computational advertisement. In addition, it has recently been proposed to approximate solutions of partial differential equations (PDEs) by means of stochastic learning problems involving DNNs. There are now also a few rigorous mathematical results in the scientific literature which provide error estimates for such deep learning based approximation methods for PDEs. All of these articles provide spatial error estimates for neural network approximations for PDEs but do not provide error estimates for the entire space-time error for the considered neural network approximations. It is the subject of the main result of this article to provide space-time error estimates for DNN approximations of Euler approximations of certain perturbed differential equations. Our proof of this result is based (i) on a certain artificial neural network (ANN) calculus and (ii) on ANN approximation results for products of the form $[0,T]\times \mathbb{R}^d\ni (t,x)\mapsto tx\in \mathbb{R}^d$ where $T\in (0,\infty)$, $d\in \mathbb{N}$, which we both develop within this article.