The Dimension Strikes Back with Gradients: Generalization of Gradient Methods in Stochastic Convex Optimization

Matan Schliserman, Uri Sherman, Tomer Koren

Research output: Contribution to journalConference articlepeer-review

Abstract

We study the generalization performance of gradient methods in the fundamental stochastic convex optimization setting, focusing on its dimension dependence. First, for full-batch gradient descent (GD) we give a construction of a learning problem in dimension d = O(n2), where the canonical version of GD (tuned for optimal performance on the empirical risk) trained with n training examples converges, with constant probability, to an approximate empirical risk minimizer with Ω(1) population excess risk. Our bound translates to a lower bound of Ω(√d) on the number of training examples required for standard GD to reach a non-trivial test error, answering an open question raised by Feldman (2016) and Amir, Koren and Livni (2021) and showing that a non-trivial dimension dependence is unavoidable. Furthermore, for standard one-pass stochastic gradient descent (SGD), we show that an application of the same construction technique provides a similar Ω(√d) lower bound for the sample complexity of SGD to reach a non-trivial empirical error, despite achieving optimal test performance. This again provides for an exponential improvement in the dimension dependence compared to previous work (Koren et al., 2022), resolving an open question left therein.

Original languageEnglish
Pages (from-to)1041-1107
Number of pages67
JournalProceedings of Machine Learning Research
Volume272
StatePublished - 2025
Event36th International Conference on Algorithmic Learning Theory, ALT 2025 - Milan, Italy
Duration: 24 Feb 202527 Feb 2025

Funding

FundersFunder number
Blavatnik Family Foundation
Aegis Foundation
European Research Council
Horizon 2020882396, 101078075
Israel Science Foundation2549/19, 3174/23

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