There has been a flurry of research in recent years on notions of fairness in ranking and recommender systems, particularly on how to evaluate if a recommender allocates exposure equally across groups of relevant items (also known as provider fairness). While this research has laid an important foundation, it gave rise to different approaches depending on whether relevant items are compared per-user/per-query or aggregated across users. Despite both being established and intuitive, we discover that these two notions can lead to opposite conclusions, a form of Simpson's Paradox. We reconcile these notions and show that the tension is due to differences in distributions of users where items are relevant, and break down the important factors of the user's recommendations. Based on this new understanding, practitioners might be interested in either notions, but might face challenges with the per-user metric due to partial observability of the relevance and user satisfaction, typical in real-world recommenders. We describe a technique based on distribution matching to estimate it in such a scenario. We demonstrate on simulated and real-world recommender data the effectiveness and usefulness of such an approach.
翻译:近年来,对排名和建议系统公平性概念进行了大量研究,特别是如何评价建议者是否在相关项目类别之间平等分配接触(又称“提供者公平性”),尽管这一研究打下了重要基础,但根据相关项目是否比较了每个用户/每个用户,或是否在用户之间汇总,产生了不同的做法。尽管这两个概念既有建立,也有直觉性,但我们发现这两个概念可能导致相反的结论,即Simpson's Paradox的一种形式。我们调和这两个概念,并表明这种紧张关系是由于相关项目用户分布上的差异造成的,并打破了用户建议的重要因素。根据这一新的理解,实践者可能对这两个概念都感兴趣,但可能因关联性和用户满意度的局部易懂性和用户满意度(在现实世界推荐人中是典型的)而面临挑战。我们描述了一种基于分配匹配来估计这种情景的技术。我们用模拟和实际推荐人的数据来证明这种方法的有效性和有用。