2023
DOI: 10.48550/arxiv.2302.03561
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Optimizing Audio Recommendations for the Long-Term: A Reinforcement Learning Perspective

Abstract: We study the problem of optimizing a recommender system for outcomes that occur over several weeks or months. We begin by drawing on reinforcement learning to formulate a comprehensive model of users' recurring relationships with a recommender system. Measurement, attribution, and coordination challenges complicate algorithm design. We describe careful modeling-including a new representation of user state and key conditional independence assumptions-which overcomes these challenges and leads to simple, testabl… Show more

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References 54 publications
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