Optimal Algorithms for Stochastic Complementary Composite Minimization

Alexandre Aspremont, Cristobal Guzman, Clement Lezane

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Abstract

Inspired by regularization techniques in statistics and machine learning, we study complementary composite minimization in the stochastic setting. This problem corresponds to the minimization of the sum of a (weakly) smooth function endowed with a stochastic first-order oracle and a structured uniformly convex (possibly nonsmooth and non-Lipschitz) regularization term. Despite intensive work on closely related settings, prior to our work no complexity bounds for this problem were known. We close this gap by providing novel excess risk bounds, both in expectation and with high probability. Our algorithms are nearly optimal, which we prove via novel lower complexity bounds for this class of problems. We conclude by providing numerical results comparing our methods to the state of the art.

Original languageEnglish
Pages (from-to)163-189
Number of pages27
JournalSIAM journal on optimization
Volume34
Issue number1
DOIs
Publication statusPublished - Mar 2024

Keywords

  • 2025 OA procedure
  • Non-Euclidean composite minimization
  • Regularization
  • Stochastic convex optimization
  • Accelerated first-order methods

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