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Distributionally Robust Losses for Latent Covariate Mixtures

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arxiv 2007.13982 v2 pith:73U3TRUZ submitted 2020-07-28 cs.LG stat.ML

Distributionally Robust Losses for Latent Covariate Mixtures

classification cs.LG stat.ML
keywords subpopulationsprocedurelossesmultipleworst-caseacrossaveragecomes
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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While modern large-scale datasets often consist of heterogeneous subpopulations -- for example, multiple demographic groups or multiple text corpora -- the standard practice of minimizing average loss fails to guarantee uniformly low losses across all subpopulations. We propose a convex procedure that controls the worst-case performance over all subpopulations of a given size. Our procedure comes with finite-sample (nonparametric) convergence guarantees on the worst-off subpopulation. Empirically, we observe on lexical similarity, wine quality, and recidivism prediction tasks that our worst-case procedure learns models that do well against unseen subpopulations.

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