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Learning User Preferences to Incentivize Exploration in the Sharing Economy

机译:学习用户偏好以激励分享经济中的探索

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摘要

We study platforms in the sharing economy and discuss the need for incentivizing users to explore options that otherwise would not be chosen. For instance, rental platforms such as Airbnb typically rely on customer reviews to provide users with relevant information about different options. Yet, often a large fraction of options does not have any reviews available. Such options are frequently neglected as viable choices, and in turn are unlikely to be evaluated, creating a vicious cycle. Platforms can engage users to deviate from their preferred choice by offering monetary incentives for choosing a different option instead. To efficiently learn the optimal incentives to offer, we consider structural information in user preferences and introduce a novel algorithm - Coordinated Online Learning (CoOL) - for learning with structural information modeled as convex constraints. We provide formal guarantees on the performance of our algorithm and test the viability of our approach in a user study with data of apartments on Airbnb. Our findings suggest that our approach is well-suited to learn appropriate incentives and increase exploration on the investigated platform.
机译:我们研究共享经济的平台,并讨论了激励用户探索否则不会被选中的选项的必要性。例如,Airbnb等租赁平台通常依赖客户审查,以为用户提供有关不同选项的相关信息。然而,通常大部分选项没有任何可用的评论。这些选项经常被忽视为可行的选择,反过来不太可能进行评估,创造恶性循环。平台可以通过提供用于选择不同的选择来选择单项式激励来偏离他们的首选。为了有效地学习提供的最佳激励,我们考虑在用户偏好中的结构信息,并介绍一种新颖的算法 - 协调在线学习(COOL) - 以凸起约束建模的结构信息学习。我们提供了对我们算法表现的正式保障,并在用户在Airbnb上的Apartments数据进行用户学习中测试我们的方法的可行性。我们的研究结果表明,我们的方法非常适合了解对调查平台的适当激励和增加探索。

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