Jan. 1, 2023, midnight | Berkay Anahtarci, Can Deha Kariksiz, Naci Saldi

JMLR www.jmlr.org

We consider learning approximate Nash equilibria for discrete-time mean-field games with stochastic nonlinear state dynamics subject to both average and discounted costs. To this end, we introduce a mean-field equilibrium (MFE) operator, whose fixed point is a mean-field equilibrium, i.e., equilibrium in the infinite population limit. We first prove that this operator is a contraction, and propose a learning algorithm to compute an approximate mean-field equilibrium by approximating the MFE operator with a random one. Moreover, using the contraction property …

algorithm analysis compute costs dynamics equilibria equilibrium error games mean population property random state stochastic

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