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Primal Dual Alternating Proximal Gradient Algorithms for Nonsmooth Nonconvex Minimax Problems with Coupled Linear Constraints

9 December 2022
Hui-Li Zhang
Junlin Wang
Zi Xu
Y. Dai
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Abstract

Nonconvex minimax problems have attracted wide attention in machine learning, signal processing and many other fields in recent years. In this paper, we propose a primal-dual alternating proximal gradient (PDAPG) algorithm for solving nonsmooth nonconvex-(strongly) concave minimax problems with coupled linear constraints, respectively. The iteration complexity of the two algorithms are proved to be O(ε−2)\mathcal{O}\left( \varepsilon ^{-2} \right)O(ε−2) (resp. O(ε−4)\mathcal{O}\left( \varepsilon ^{-4} \right)O(ε−4)) under nonconvex-strongly concave (resp. nonconvex-concave) setting to reach an ε\varepsilonε-stationary point. To our knowledge, it is the first algorithm with iteration complexity guarantees for solving the nonconvex minimax problems with coupled linear constraints.

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