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Learning with Abandonment

机译:放弃学习

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摘要

Consider a platform that wants to learn a personalized policy for each user, but the platform faces the risk of a user abandoning the platform if they are dissatisfied with the actions of the platform. For example, a platform is interested in personalizing the number of newsletters it sends, but faces the risk that the user unsubscribes forever. We propose a general thresholded learning model for scenarios like this, and discuss the structure of optimal policies. We describe salient features of optimal personalization algorithms and how feedback the platform receives impacts the results. Furthermore, we investigate how the platform can efficiently learn the heterogeneity across users by interacting with a population and provide performance guarantees.
机译:考虑一个平台,该平台希望为每个用户学习个性化策略,但是如果用户对平台的操作不满意,则该平台将面临用户放弃该平台的风险。例如,一个平台有兴趣个性化其发送的新闻通讯的数量,但面临着用户永远退订的风险。我们针对此类情况提出了一种通用的阈值学习模型,并讨论了最优政策的结构。我们描述了最佳个性化算法的显着特征,以及平台收到的反馈如何影响结果。此外,我们研究了该平台如何通过与总体交互有效地了解用户之间的异质性并提供性能保证。

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