2021
DOI: 10.48550/arxiv.2106.06075
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A Decentralized Adaptive Momentum Method for Solving a Class of Min-Max Optimization Problems

Babak Barazandeh,
Tianjian Huang,
George Michailidis

Abstract: Min-max saddle point games have recently been intensely studied, due to their wide range of applications, including training Generative Adversarial Networks (GANs). However, most of the recent efforts for solving them are limited to special regimes such as convex-concave games. Further, it is customarily assumed that the underlying optimization problem is solved either by a single machine or in the case of multiple machines connected in centralized fashion, wherein each one communicates with a central node. Th… Show more

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