2022
DOI: 10.48550/arxiv.2205.12449
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MAVIPER: Learning Decision Tree Policies for Interpretable Multi-Agent Reinforcement Learning

Abstract: Many recent breakthroughs in multi-agent reinforcement learning (MARL) require the use of deep neural networks, which are challenging for human experts to interpret and understand. On the other hand, existing work on interpretable RL has shown promise in extracting more interpretable decision tree-based policies, but only in the single-agent setting. To fill this gap, we propose the first set of algorithms that extract interpretable decision-tree policies from neural networks trained with MARL. The first algor… Show more

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