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A mean-field analysis of two-player zero-sum games

Carles Domingo-Enrich, Samy Jelassi, Arthur Mensch, Grant M. Rotskoff, Joan Bruna

2020Neural Information Processing Systems13 citations

Abstract

Finding Nash equilibria in two-player zero-sum continuous games is a central problem in machine learning, e.g. for training both GANs and robust models. The existence of pure Nash equilibria requires strong conditions which are not typically met in practice. Mixed Nash equilibria exist in greater generality and may be found using mirror descent. Yet this approach does not scale to high dimensions. To address this limitation, we parametrize mixed strategies as mixtures of particles, whose positions and weights are updated using gradient descent-ascent. We study this dynamics as an interacting gradient flow over measure spaces endowed with the Wasserstein-Fisher-Rao metric. We establish global convergence to an approximate equilibrium for the related Langevin gradient-ascent dynamic. We prove a law of large numbers that relates particle dynamics to mean-field dynamics. Our method identifies mixed equilibria in high dimensions and is demonstrably effective for training mixtures of GANs.

Topics & Concepts

Nash equilibriumLangevin dynamicsBalanced flowConvergence (economics)Gradient descentZero-sum gameMathematicsBest responseZero (linguistics)Applied mathematicsSymmetric gameGeneralityMetric (unit)Computer scienceMathematical optimizationRepeated gameGame theoryMathematical economicsNormal-form gameMathematical analysisArtificial neural networkArtificial intelligenceStatisticsLinguisticsEconomic growthOperations managementPsychologyPhilosophyPsychotherapistEconomicsMarkov Chains and Monte Carlo MethodsStochastic Gradient Optimization TechniquesAdversarial Robustness in Machine Learning
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