Power of the Few: Analyzing the Impact of Influential Users in Collaborative Recommender Systems

Farzad Eskandanian, Nasim Sonboli, B. Mobasher
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引用次数: 8

Abstract

Like other social systems, in collaborative filtering a small number of "influential" users may have a large impact on the recommendations of other users, thus affecting the overall behavior of the system. Identifying influential users and studying their impact on other users is an important problem because it provides insight into how small groups can inadvertently or intentionally affect the behavior of the system as a whole. Modeling these influences can also shed light on patterns and relationships that would otherwise be difficult to discern, hopefully leading to more transparency in how the system generates personalized content. In this work we first formalize the notion of "influence" in collaborative filtering using an Influence Discrimination Model. We then empirically identify and characterize influential users and analyze their impact on the system under different underlying recommendation algorithms and across three different recommendation domains: job, movie and book recommendations. Insights from these experiments can help in designing systems that are not only optimized for accuracy, but are also tuned to mitigate the impact of influential users when it might lead to potential imbalance or unfairness in the system's outcomes.
少数人的力量:分析协作推荐系统中有影响力的用户的影响
与其他社会系统一样,在协同过滤中,少数“有影响力”的用户可能对其他用户的推荐产生很大的影响,从而影响系统的整体行为。识别有影响力的用户并研究他们对其他用户的影响是一个重要的问题,因为它提供了洞察小群体如何无意或有意地影响整个系统的行为。对这些影响进行建模还可以揭示难以辨别的模式和关系,希望能够使系统如何生成个性化内容更加透明。在这项工作中,我们首先使用影响判别模型形式化了协同过滤中“影响”的概念。然后,我们通过经验识别和表征有影响力的用户,并在不同的底层推荐算法和三个不同的推荐领域(工作、电影和书籍推荐)下分析他们对系统的影响。从这些实验中获得的见解可以帮助设计系统,这些系统不仅可以优化准确性,还可以在可能导致系统结果潜在不平衡或不公平的情况下,调整以减轻有影响力的用户的影响。
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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