TL;DR
This paper introduces a method using Shapley values to explain cooperative strategies in multi-agent reinforcement learning, demonstrating its effectiveness and limitations through experiments in social dilemma environments.
Contribution
It applies Shapley values to multi-agent RL for interpretability and evaluates their effectiveness and computational feasibility in cooperative settings.
Findings
Shapley values effectively estimate agent contributions in multi-agent RL.
Monte Carlo sampling reduces computational overhead of Shapley value calculation.
Shapley values provide general explanations but cannot justify specific actions or individual episodes.
Abstract
While Explainable Artificial Intelligence (XAI) is increasingly expanding more areas of application, little has been applied to make deep Reinforcement Learning (RL) more comprehensible. As RL becomes ubiquitous and used in critical and general public applications, it is essential to develop methods that make it better understood and more interpretable. This study proposes a novel approach to explain cooperative strategies in multiagent RL using Shapley values, a game theory concept used in XAI that successfully explains the rationale behind decisions taken by Machine Learning algorithms. Through testing common assumptions of this technique in two cooperation-centered socially challenging multi-agent environments environments, this article argues that Shapley values are a pertinent way to evaluate the contribution of players in a cooperative multi-agent RL context. To palliate the high…
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