2022
DOI: 10.3389/frai.2022.826724
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Prediction, Knowledge, and Explainability: Examining the Use of General Value Functions in Machine Knowledge

Abstract: Within computational reinforcement learning, a growing body of work seeks to express an agent's knowledge of its world through large collections of predictions. While systems that encode predictions as General Value Functions (GVFs) have seen numerous developments in both theory and application, whether such approaches are explainable is unexplored. In this perspective piece, we explore GVFs as a form of explainable AI. To do so, we articulate a subjective agent-centric approach to explainability in sequential… Show more

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