An Accelerated Minimax Algorithm for Convex-concave Saddle Point Problems with Nonsmooth Coupling Function
Overview
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In this work we aim to solve a convex-concave saddle point problem, where the convex-concave coupling function is smooth in one variable and nonsmooth in the other and assumed to be linear in either. The problem is augmented by a nonsmooth regulariser in the smooth component. We propose and investigate a novel algorithm under the name of , consisting of an step in the smooth variable coupled with a proximal step of the regulariser, and which is alternated with a in the nonsmooth component of the coupling function. We consider the situations convex-concave, convex-strongly concave and strongly convex-strongly concave related to the saddle point problem under investigation. Regarding iterates we obtain (weak) convergence, a convergence rate of order and linear convergence like with , respectively. In terms of function values we obtain ergodic convergence rates of order , and with , respectively. We validate our theoretical considerations on a nonsmooth-linear saddle point problem, the training of multi kernel support vector machines and a classification problem incorporating minimax group fairness.