A universal approximation theorem of deep neural networks for expressing probability distributions

Yulong Lu, Jianfeng Lu

Research output: Contribution to journalConference articlepeer-review

84 Scopus citations

Abstract

This paper studies the universal approximation property of deep neural networks for representing probability distributions. Given a target distribution p and a source distribution pz both defined on Rd, we prove under some assumptions that there exists a deep neural network g : Rd?R with ReLU activation such that the push-forward measure (?g)#pz of pz under the map ?g is arbitrarily close to the target measure p. The closeness are measured by three classes of integral probability metrics between probability distributions: 1-Wasserstein distance, maximum mean distance (MMD) and kernelized Stein discrepancy (KSD). We prove upper bounds for the size (width and depth) of the deep neural network in terms of the dimension d and the approximation error e with respect to the three discrepancies. In particular, the size of neural network can grow exponentially in d when 1-Wasserstein distance is used as the discrepancy, whereas for both MMD and KSD the size of neural network only depends on d at most polynomially. Our proof relies on convergence estimates of empirical measures under aforementioned discrepancies and semi-discrete optimal transport.

Original languageEnglish (US)
JournalAdvances in Neural Information Processing Systems
Volume2020-December
StatePublished - 2020
Externally publishedYes
Event34th Conference on Neural Information Processing Systems, NeurIPS 2020 - Virtual, Online
Duration: Dec 6 2020Dec 12 2020

Bibliographical note

Publisher Copyright:
© 2020 Neural information processing systems foundation. All rights reserved.

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