Recommendations and user agency: the reachability of collaboratively-filtered information

Sarah Dean, Sarah Rich, B. Recht
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引用次数: 42

Abstract

Recommender systems often rely on models which are trained to maximize accuracy in predicting user preferences. When the systems are deployed, these models determine the availability of content and information to different users. The gap between these objectives gives rise to a potential for unintended consequences, contributing to phenomena such as filter bubbles and polarization. In this work, we consider directly the information availability problem through the lens of user recourse. Using ideas of reachability, we propose a computationally efficient audit for top-N linear recommender models. Furthermore, we describe the relationship between model complexity and the effort necessary for users to exert control over their recommendations. We use this insight to provide a novel perspective on the user cold-start problem. Finally, we demonstrate these concepts with an empirical investigation of a state-of-the-art model trained on a widely used movie ratings dataset.
推荐和用户代理:协同过滤信息的可达性
推荐系统通常依赖于经过训练的模型,以最大限度地准确预测用户偏好。在部署系统时,这些模型确定内容和信息对不同用户的可用性。这些目标之间的差距可能会产生意想不到的后果,导致过滤气泡和两极分化等现象。在这项工作中,我们从用户追索权的角度直接考虑了信息可用性问题。利用可达性的思想,我们提出了一种计算效率高的top-N线性推荐模型审计方法。此外,我们还描述了模型复杂性与用户控制其推荐所需的努力之间的关系。我们利用这一见解为用户冷启动问题提供了一种新的视角。最后,我们通过对在广泛使用的电影评级数据集上训练的最先进模型的实证调查来证明这些概念。
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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