English

Exploration-Exploitation in Multi-Agent Competition: Convergence with Bounded Rationality

Computer Science and Game Theory 2021-06-25 v1 Machine Learning Multiagent Systems Theoretical Economics Dynamical Systems

Abstract

The interplay between exploration and exploitation in competitive multi-agent learning is still far from being well understood. Motivated by this, we study smooth Q-learning, a prototypical learning model that explicitly captures the balance between game rewards and exploration costs. We show that Q-learning always converges to the unique quantal-response equilibrium (QRE), the standard solution concept for games under bounded rationality, in weighted zero-sum polymatrix games with heterogeneous learning agents using positive exploration rates. Complementing recent results about convergence in weighted potential games, we show that fast convergence of Q-learning in competitive settings is obtained regardless of the number of agents and without any need for parameter fine-tuning. As showcased by our experiments in network zero-sum games, these theoretical results provide the necessary guarantees for an algorithmic approach to the currently open problem of equilibrium selection in competitive multi-agent settings.

Keywords

Cite

@article{arxiv.2106.12928,
  title  = {Exploration-Exploitation in Multi-Agent Competition: Convergence with Bounded Rationality},
  author = {Stefanos Leonardos and Georgios Piliouras and Kelly Spendlove},
  journal= {arXiv preprint arXiv:2106.12928},
  year   = {2021}
}
R2 v1 2026-06-24T03:33:09.111Z