2022
DOI: 10.48550/arxiv.2209.09079
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MSVIPER: Improved Policy Distillation for Reinforcement-Learning-Based Robot Navigation

Abstract: We present Multiple Scenario Verifiable Reinforcement Learning via Policy Extraction (MSVIPER), a new method for policy distillation to decision trees for improved robot navigation. MSVIPER learns an "expert" policy using any Reinforcement Learning (RL) technique involving learning a state-action mapping and then uses imitation learning to learn a decision-tree policy from it. We demonstrate that MSVIPER results in efficient decision trees and can accurately mimic the behavior of the expert policy. Moreover, w… Show more

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