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Explaining Reinforcement Learning with Shapley Values

Shapley Values for Explaining Reinforcement Learning (SVERL) provides a principled framework for interpreting agent performance in reinforcement learning domains.

Year
2023
Venue
arXiv 2023
Authors
3
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arxiv.org/abs/2306.05810ARXIV-DEFAULT
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Abstract

For reinforcement learning systems to be widely adopted, their users must understand and trust them. We present a theoretical analysis of explaining reinforcement learning using Shapley values, following a principled approach from game theory for identifying the contribution of individual players to the outcome of a cooperative game. We call this general framework Shapley Values for Explaining Reinforcement Learning (SVERL). Our analysis exposes the limitations of earlier uses of Shapley values in reinforcement learning. We then develop an approach that uses Shapley values to explain agent performance. In a variety of domains, SVERL produces meaningful explanations that match and supplement human intuition.

Authors

3