Controlling Polarization in Personalization: An Algorithmic Framework

L. E. Celis, Sayash Kapoor, Farnood Salehi, Nisheeth K. Vishnoi
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引用次数: 76

Abstract

Personalization is pervasive in the online space as it leads to higher efficiency for the user and higher revenue for the platform by individualizing the most relevant content for each user. However, recent studies suggest that such personalization can learn and propagate systemic biases and polarize opinions; this has led to calls for regulatory mechanisms and algorithms that are constrained to combat bias and the resulting echo-chamber effect. We propose a versatile framework that allows for the possibility to reduce polarization in personalized systems by allowing the user to constrain the distribution from which content is selected. We then present a scalable algorithm with provable guarantees that satisfies the given constraints on the types of the content that can be displayed to a user, but -- subject to these constraints -- will continue to learn and personalize the content in order to maximize utility. We illustrate this framework on a curated dataset of online news articles that are conservative or liberal, show that it can control polarization, and examine the trade-off between decreasing polarization and the resulting loss to revenue. We further exhibit the flexibility and scalability of our approach by framing the problem in terms of the more general diverse content selection problem and test it empirically on both a News dataset and the MovieLens dataset.
控制个性化中的极化:一个算法框架
个性化在在线空间中非常普遍,因为它通过为每个用户个性化最相关的内容,为用户带来更高的效率,并为平台带来更高的收入。然而,最近的研究表明,这种个性化可以学习和传播系统性偏见和两极分化的意见;这导致了对监管机制和算法的呼吁,这些机制和算法受到限制,以对抗偏见和由此产生的回声室效应。我们提出了一个通用的框架,通过允许用户约束选择内容的分布,可以减少个性化系统中的两极分化。然后,我们提出了一种可扩展的算法,具有可证明的保证,满足可以显示给用户的内容类型的给定约束,但是——受这些约束的约束——将继续学习和个性化内容,以最大化效用。我们在保守或自由的在线新闻文章的策划数据集上说明了这个框架,表明它可以控制两极分化,并检查两极分化减少与由此导致的收入损失之间的权衡。我们进一步展示了我们方法的灵活性和可扩展性,方法是根据更一般的多样化内容选择问题来构建问题,并在News数据集和MovieLens数据集上进行经验测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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