Publication | Open Access
Scaling up Mean Field Games with Online Mirror Descent
10
Citations
30
References
2021
Year
Artificial IntelligenceEngineeringMean Field GamesGame TheoryComputational Game TheoryOnline ProblemData ScienceStochastic GameRobot LearningMechanism DesignOnline AlgorithmComputer ScienceGamesComputational ScienceMean Field GameBusinessOnline Mirror DescentNash EquilibriumAlgorithmic Game Theory
We address scaling up equilibrium computation in Mean Field Games (MFGs) using Online Mirror Descent (OMD). We show that continuous-time OMD provably converges to a Nash equilibrium under a natural and well-motivated set of monotonicity assumptions. This theoretical result nicely extends to multi-population games and to settings involving common noise. A thorough experimental investigation on various single and multi-population MFGs shows that OMD outperforms traditional algorithms such as Fictitious Play (FP). We empirically show that OMD scales up and converges significantly faster than FP by solving, for the first time to our knowledge, examples of MFGs with hundreds of billions states. This study establishes the state-of-the-art for learning in large-scale multi-agent and multi-population games.
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