Stochastic Approximation Proximal Subgradient Method for Stochastic Convex-Concave Minimax Optimization

Abstract

This paper presents a stochastic approximation proximal subgradient (SAPS) method for stochastic convex-concave minimax optimization. By accessing unbiased and variance bounded approximate subgradients, we show that this algorithm exhibits O(N-1/2) expected convergence rate of the minimax optimality measure if the parameters in the algorithm are properly chosen, where N denotes the number of iterations. Moreover, we show that the algorithm has O((N)N-1/2) minimax optimality measure bound with high probability. Further we study a specific stochastic convex-concave minimax optimization problems arising from stochastic convex conic optimization problems, which the the bounded subgradient condition is fail. To overcome the lack of the bounded subgradient conditions in convex-concave minimax problems, we propose a linearized stochastic approximation augmented Lagrange (LSAAL) method and prove that this algorithm exhibits O(N-1/2) expected convergence rate for the minimax optimality measure and O(2(N)N-1/2) minimax optimality measure bound with high probability as well. Preliminary numerical results demonstrate the effect of the SAPS and LSAAL methods.

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