2022
DOI: 10.48550/arxiv.2203.13553
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Preprocessing Reward Functions for Interpretability

Abstract: In many real-world applications, the reward function is too complex to be manually specified. In such cases, reward functions must instead be learned from human feedback. Since the learned reward may fail to represent user preferences, it is important to be able to validate the learned reward function prior to deployment. One promising approach is to apply interpretability tools to the reward function to spot potential deviations from the user's intention. Existing work has applied general-purpose interpretabi… Show more

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