Feb. 12, 2024, 5:43 a.m. | Matthew J. Holland

cs.LG updates on arXiv.org arxiv.org

Under losses which are potentially heavy-tailed, we consider the task of minimizing sums of the loss mean and standard deviation, without trying to accurately estimate the variance. By modifying a technique for variance-free robust mean estimation to fit our problem setting, we derive a simple learning procedure which can be easily combined with standard gradient-based solvers to be used in traditional machine learning workflows. Empirically, we verify that our proposed approach, despite its simplicity, performs as well or better than …

cs.lg deviation free loss losses mean risk robust scaling simple standard stat.ml variance

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