Reweighting Improves Conditional Risk Bounds
Machine Learning
2025-01-07 v1 Machine Learning
Abstract
In this work, we study the weighted empirical risk minimization (weighted ERM) schema, in which an additional data-dependent weight function is incorporated when the empirical risk function is being minimized. We show that under a general ``balanceable" Bernstein condition, one can design a weighted ERM estimator to achieve superior performance in certain sub-regions over the one obtained from standard ERM, and the superiority manifests itself through a data-dependent constant term in the error bound. These sub-regions correspond to large-margin ones in classification settings and low-variance ones in heteroscedastic regression settings, respectively. Our findings are supported by evidence from synthetic data experiments.
Keywords
Cite
@article{arxiv.2501.02353,
title = {Reweighting Improves Conditional Risk Bounds},
author = {Yikai Zhang and Jiahe Lin and Fengpei Li and Songzhu Zheng and Anant Raj and Anderson Schneider and Yuriy Nevmyvaka},
journal= {arXiv preprint arXiv:2501.02353},
year = {2025}
}
Comments
33 pages