Generalization Bounds for Dependent Data using Online-to-Batch Conversion.

Published: 22 Jan 2025, Last Modified: 06 Mar 2025AISTATS 2025 PosterEveryoneRevisionsBibTeXCC BY 4.0
TL;DR: We give generalization error bounds for statistical learning algorithms trained on non-i.i.d. data in the Online-to-Batch setting.
Abstract: In this work, we give generalization bounds of statistical learning algorithms trained on samples drawn from a dependent data source both in expectation and with high probability, using the Online-to-Batch conversion paradigm. We show that the generalization error of statistical learners in the dependent data setting is equivalent to the generalization error of statistical learners in the i.i.d. setting up to a term that depends on the decay rate of the underlying mixing stochastic process, and is independent of the complexity of the statistical learner. Our proof techniques involve defining a new notion of stability of online learning algorithms based on Wasserstein distances, and employing ”near-martingale” concentration bounds for dependent random variables to arrive at appropriate upper bounds for the generalization error of statistical learners trained on dependent data. Finally, we prove that the Exponential Weighted Averages (EWA) algorithm satisfies our new notion of stability, and instantiate our bounds using the EWA algorithm.
Submission Number: 719
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