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Stochastic Gradient Descent-Ascent: Unified Theory and New Efficient Methods

Authors :
Beznosikov, Aleksandr
Gorbunov, Eduard
Berard, Hugo
Loizou, Nicolas
Publication Year :
2022
Publisher :
arXiv, 2022.

Abstract

Stochastic Gradient Descent-Ascent (SGDA) is one of the most prominent algorithms for solving min-max optimization and variational inequalities problems (VIP) appearing in various machine learning tasks. The success of the method led to several advanced extensions of the classical SGDA, including variants with arbitrary sampling, variance reduction, coordinate randomization, and distributed variants with compression, which were extensively studied in the literature, especially during the last few years. In this paper, we propose a unified convergence analysis that covers a large variety of stochastic gradient descent-ascent methods, which so far have required different intuitions, have different applications and have been developed separately in various communities. A key to our unified framework is a parametric assumption on the stochastic estimates. Via our general theoretical framework, we either recover the sharpest known rates for the known special cases or tighten them. Moreover, to illustrate the flexibility of our approach we develop several new variants of SGDA such as a new variance-reduced method (L-SVRGDA), new distributed methods with compression (QSGDA, DIANA-SGDA, VR-DIANA-SGDA), and a new method with coordinate randomization (SEGA-SGDA). Although variants of the new methods are known for solving minimization problems, they were never considered or analyzed for solving min-max problems and VIPs. We also demonstrate the most important properties of the new methods through extensive numerical experiments.<br />Comment: AISTATS 2023. 65 pages, 5 figures, 3 tables. Changes in v2: new results were added (Theorem 2.5 and its corollaries), few typos were fixed, more clarifications were added. Changes in v3: AISTATS formatting was applied, small clarifications were added. Code: https://github.com/hugobb/sgda

Details

Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....9ccb3a320e03f7aee9fb5836badd83f8
Full Text :
https://doi.org/10.48550/arxiv.2202.07262