The Limit Points of (Optimistic) Gradient Descent in Min-Max Optimization
Daskalakis, Constantinos, Panageas, Ioannis
–Neural Information Processing Systems
Motivated by applications in Optimization, Game Theory, and the training of Generative Adversarial Networks, the convergence properties of first order methods in min-max problems have received extensive study. It has been recognized that they may cycle, and there is no good understanding of their limit points when they do not. When they converge, do they converge to local min-max solutions? We characterize the limit points of two basic first order methods, namely Gradient Descent/Ascent (GDA) and Optimistic Gradient Descent Ascent (OGDA). We show that both dynamics avoid unstable critical points for almost all initializations.
Neural Information Processing Systems
Feb-14-2020, 20:41:53 GMT
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