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Interpretable Local Tree Surrogate Policies

16 September 2021
John Mern
Sidhart Krishnan
Anil Yildiz
Kyle Hatch
Mykel J. Kochenderfer
    OffRL
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Abstract

High-dimensional policies, such as those represented by neural networks, cannot be reasonably interpreted by humans. This lack of interpretability reduces the trust users have in policy behavior, limiting their use to low-impact tasks such as video games. Unfortunately, many methods rely on neural network representations for effective learning. In this work, we propose a method to build predictable policy trees as surrogates for policies such as neural networks. The policy trees are easily human interpretable and provide quantitative predictions of future behavior. We demonstrate the performance of this approach on several simulated tasks.

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