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arxiv 2502.09780 v1 pith:W76G6GIW submitted 2025-02-13 cs.LG cs.AIcs.GTmath.OC

Incentivize without Bonus: Provably Efficient Model-based Online Multi-agent RL for Markov Games

classification cs.LG cs.AIcs.GTmath.OC
keywords gamesmarkovplayersapproximationequilibriumfunctionenvironmentexploration
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Multi-agent reinforcement learning (MARL) lies at the heart of a plethora of applications involving the interaction of a group of agents in a shared unknown environment. A prominent framework for studying MARL is Markov games, with the goal of finding various notions of equilibria in a sample-efficient manner, such as the Nash equilibrium (NE) and the coarse correlated equilibrium (CCE). However, existing sample-efficient approaches either require tailored uncertainty estimation under function approximation, or careful coordination of the players. In this paper, we propose a novel model-based algorithm, called VMG, that incentivizes exploration via biasing the empirical estimate of the model parameters towards those with a higher collective best-response values of all the players when fixing the other players' policies, thus encouraging the policy to deviate from its current equilibrium for more exploration. VMG is oblivious to different forms of function approximation, and permits simultaneous and uncoupled policy updates of all players. Theoretically, we also establish that VMG achieves a near-optimal regret for finding both the NEs of two-player zero-sum Markov games and CCEs of multi-player general-sum Markov games under linear function approximation in an online environment, which nearly match their counterparts with sophisticated uncertainty quantification.

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