2024
DOI: 10.1073/pnas.2405451121
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Time-scale invariant contingency yields one-shot reinforcement learning despite extremely long delays to reinforcement

Charles R. Gallistel,
Timothy A. Shahan

Abstract: Reinforcement learning inspires much theorizing in neuroscience, cognitive science, machine learning, and AI. A central question concerns the conditions that produce the perception of a contingency between an action and reinforcement—the assignment-of-credit problem. Contemporary models of associative and reinforcement learning do not leverage the temporal metrics (measured intervals). Our information-theoretic approach formalizes contingency by time-scale invariant temporal mutual information. It predicts tha… Show more

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Cited by 2 publications
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