April 2023 Deep nonparametric regression on approximate manifolds: Nonasymptotic error bounds with polynomial prefactors
Yuling Jiao, Guohao Shen, Yuanyuan Lin, Jian Huang
Author Affiliations +
Ann. Statist. 51(2): 691-716 (April 2023). DOI: 10.1214/23-AOS2266

Abstract

We study the properties of nonparametric least squares regression using deep neural networks. We derive nonasymptotic upper bounds for the excess risk of the empirical risk minimizer of feedforward deep neural regression. Our error bounds achieve minimax optimal rate and improve over the existing ones in the sense that they depend polynomially on the dimension of the predictor, instead of exponentially on dimension. We show that the neural regression estimator can circumvent the curse of dimensionality under the assumption that the predictor is supported on an approximate low-dimensional manifold or a set with low Minkowski dimension. We also establish the optimal convergence rate under the exact manifold support assumption. We investigate how the prediction error of the neural regression estimator depends on the structure of neural networks and propose a notion of network relative efficiency between two types of neural networks, which provides a quantitative measure for evaluating the relative merits of different network structures. To establish these results, we derive a novel approximation error bound for the Hölder smooth functions using ReLU activated neural networks, which may be of independent interest. Our results are derived under weaker assumptions on the data distribution and the neural network structure than those in the existing literature.

Funding Statement

Y. Jiao is supported by the National Science Foundation of China grant 11871474 and by the research fund of KLATASDSMOE of China.
Y. Lin is supported by the Hong Kong Research Grants Council (Grant No. 14306219 and 14306620), the National Natural Science Foundation of China (Grant No. 11961028) and Direct Grants for Research, The Chinese University of Hong Kong.
J. Huang is partially supported by the research grant P0042888 from The Hong Kong Polytechnic University.

Acknowledgments

The authors wish to thank the Editors, the Associate Editor and three anonymous reviewers for their insightful comments and constructive suggestions that helped improve the paper significantly. We are especially grateful to them for their suggestions to consider ReLU network approximation for higher-order Hölder smooth functions, the generalization error bound under an exact manifold assumption and when data is supported on a set with a low Minkowski dimension, which led to Theorems 3.3, 6.2 and 6.3.

Yuling Jiao and Guohao Shen contributed equally to this work.

Yuanyunan Lin and Jian Huang are co-corresponding authors.

Citation

Download Citation

Yuling Jiao. Guohao Shen. Yuanyuan Lin. Jian Huang. "Deep nonparametric regression on approximate manifolds: Nonasymptotic error bounds with polynomial prefactors." Ann. Statist. 51 (2) 691 - 716, April 2023. https://doi.org/10.1214/23-AOS2266

Information

Received: 1 March 2022; Revised: 1 January 2023; Published: April 2023
First available in Project Euclid: 13 June 2023

zbMATH: 07714177
MathSciNet: MR4600998
Digital Object Identifier: 10.1214/23-AOS2266

Subjects:
Primary: 62G05 , 62G08
Secondary: 68T07

Keywords: Approximation error , curse of dimensionality , deep neural network , low-dimensional manifolds , network relative efficiency , nonasymptotic error bound

Rights: Copyright © 2023 Institute of Mathematical Statistics

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Vol.51 • No. 2 • April 2023
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