2023
DOI: 10.48550/arxiv.2302.01377
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Learning with Exposure Constraints in Recommendation Systems

Abstract: Recommendation systems are dynamic economic systems that balance the needs of multiple stakeholders. A recent line of work studies incentives from the content providers' point of view. Content providers, e.g., vloggers and bloggers, contribute fresh content and rely on user engagement to create revenue and finance their operations. In this work, we propose a contextual multi-armed bandit setting to model the dependency of content providers on exposure. In our model, the system receives a user context in every … Show more

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References 37 publications
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