Reweighting Improves Conditional Risk Bounds

Zhang, Yikai, Lin, Jiahe, Li, Fengpei, Zheng, Songzhu, Raj, Anant, Schneider, Anderson, Nevmyvaka, Yuriy

arXiv.org Machine Learning 

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.

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