2022
DOI: 10.48550/arxiv.2203.01855
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Reasoning about Counterfactuals to Improve Human Inverse Reinforcement Learning

Abstract: To collaborate well with robots, we must be able to understand their decision making. Humans naturally infer other agents' beliefs and desires by reasoning about their observable behavior in a way that resembles inverse reinforcement learning (IRL). Thus, robots can convey their beliefs and desires by providing demonstrations that are informative for a human's IRL. An informative demonstration is one that differs strongly from the learner's expectations of what the robot will do given their current understandi… Show more

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