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Drago: Primal-Dual Coupled Variance Reduction for Faster Distributionally Robust Optimization

16 March 2024
Ronak R. Mehta
Jelena Diakonikolas
Zaïd Harchaoui
ArXiv (abs)PDFHTMLGithub
Main:9 Pages
6 Figures
Bibliography:3 Pages
6 Tables
Appendix:38 Pages
Abstract

We consider the penalized distributionally robust optimization (DRO) problem with a closed, convex uncertainty set, a setting that encompasses learning using fff-DRO and spectral/LLL-risk minimization. We present Drago, a stochastic primal-dual algorithm that combines cyclic and randomized components with a carefully regularized primal update to achieve dual variance reduction. Owing to its design, Drago enjoys a state-of-the-art linear convergence rate on strongly convex-strongly concave DRO problems with a fine-grained dependency on primal and dual condition numbers. Theoretical results are supported by numerical benchmarks on regression and classification tasks.

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