Multi-agent Inverse Reinforcement Learning for Certain General-sum Stochastic Games
Xiaomin Lin, Stephen C. Adams, Peter A. Beling

TL;DR
This paper develops methods for multi-agent inverse reinforcement learning in general-sum stochastic games, addressing different equilibrium concepts and validating approaches on benchmark grid-world games.
Contribution
It introduces novel inverse learning algorithms for five types of equilibria in multi-agent stochastic games, expanding the scope of MIRL techniques.
Findings
Effective algorithms for uCS-MIRL, uCE-MIRL, and uNE-MIRL.
Validation on benchmark grid-world games shows promising results.
Solutions efficiently handle different equilibrium assumptions.
Abstract
This paper addresses the problem of multi-agent inverse reinforcement learning (MIRL) in a two-player general-sum stochastic game framework. Five variants of MIRL are considered: uCS-MIRL, advE-MIRL, cooE-MIRL, uCE-MIRL, and uNE-MIRL, each distinguished by its solution concept. Problem uCS-MIRL is a cooperative game in which the agents employ cooperative strategies that aim to maximize the total game value. In problem uCE-MIRL, agents are assumed to follow strategies that constitute a correlated equilibrium while maximizing total game value. Problem uNE-MIRL is similar to uCE-MIRL in total game value maximization, but it is assumed that the agents are playing a Nash equilibrium. Problems advE-MIRL and cooE-MIRL assume agents are playing an adversarial equilibrium and a coordination equilibrium, respectively. We propose novel approaches to address these five problems under the assumption…
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