Abstract

In “Asynchronous Schemes for Stochastic and Misspecified Potential Games and Nonconvex Optimization,” Lei and Shanbhag consider a class of convex stochastic Nash games, possibly corrupted by parametric misspecification and characterized by a possibly nonconvex potential function. The authors present an asynchronous inexact proximal best-response (BR) scheme in which, at any step, a randomly selected player computes an inexact BR step (via stochastic approximation) and other players keep their strategies invariant. Misspecification is addressed by a simultaneous learning process reliant on an increasing batch size of sampled gradients. Almost-sure convergence guarantees are provided to the set of Nash equilibria, and such claims can be extended to delay-afflicted regimes, generalized potential games (with coupled strategy sets), and weighted potential games. In fact, equilibria of this potential game are stationary points of the potential function and asynchronous inexact BR schemes are, in essence, randomized block-coordinate schemes for a subclass of stochastic nonconvex optimization problems.

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