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Optimistic Gradient Descent Ascent in Zero-Sum and General-Sum Bilinear Games

Published 5 Aug 2022 in math.OC | (2208.03085v2)

Abstract: We study the convergence of Optimistic Gradient Descent Ascent in unconstrained bilinear games. In a first part, we consider the zero-sum case and extend previous results by Daskalakis et al. in 2018, Liang and Stokes in 2019, and others: we prove, for any payoff matrix, the exponential convergence of OGDA to a saddle point and also provide a new, optimal, geometric ratio for the convergence. We also characterize the step sizes inducing convergence, and are able to deduce the optimal step size for the speed of convergence. In a second part, we introduce OGDA for general-sum bilinear games: we show that in an interesting class of games, either OGDA converges exponentially fast to a Nash equilibrium, or the payoffs for both players converge exponentially fast to $+\infty$ (which might be interpreted as endogenous emergence of coordination, or cooperation, among players). We also give sufficient conditions for convergence of OGDA to a Nash equilibrium. These conditions are used to increase the speed of convergence of a min-max problem involving a matrix $A$, by introducing a general-sum game using the Moore-Penrose inverse matrix of $A$. This shows for the first time, at our knowledge, that general-sum games can be used to optimally improve algorithms designed for min-max problems. We finally illustrate our results on simple examples of Generative Adversarial Networks.

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