2022
DOI: 10.48550/arxiv.2210.08857
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On the convergence of policy gradient methods to Nash equilibria in general stochastic games

Abstract: Learning in stochastic games is a notoriously difficult problem because, in addition to each other's strategic decisions, the players must also contend with the fact that the game itself evolves over time, possibly in a very complicated manner. Because of this, the convergence properties of popular learning algorithms -like policy gradient and its variants -are poorly understood, except in specific classes of games (such as potential or two-player, zero-sum games). In view of this, we examine the long-run beha… Show more

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