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Learning Closed-Loop Parametric Nash Equilibria of Multi-Agent Collaborative Field Coverage

Multiagent Systems 2025-10-07 v2 Computer Science and Game Theory Robotics

Abstract

Multi-agent reinforcement learning is a challenging and active field of research due to the inherent nonstationary property and coupling between agents. A popular approach to modeling the multi-agent interactions underlying the multi-agent RL problem is the Markov Game. There is a special type of Markov Game, termed Markov Potential Game, which allows us to reduce the Markov Game to a single-objective optimal control problem where the objective function is a potential function. In this work, we prove that a multi-agent collaborative field coverage problem, which is found in many engineering applications, can be formulated as a Markov Potential Game, and we can learn a parameterized closed-loop Nash Equilibrium by solving an equivalent single-objective optimal control problem. As a result, our algorithm is 10x faster during training compared to a game-theoretic baseline and converges faster during policy execution.

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Cite

@article{arxiv.2503.11829,
  title  = {Learning Closed-Loop Parametric Nash Equilibria of Multi-Agent Collaborative Field Coverage},
  author = {Jushan Chen and Santiago Paternain},
  journal= {arXiv preprint arXiv:2503.11829},
  year   = {2025}
}

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Updated license

R2 v1 2026-06-28T22:21:16.957Z