Prior research on exposure fairness in the context of recommender systems has focused mostly on disparities in the exposure of individual or groups of items to individual users of the system. The problem of how individual or groups of items may be systemically under or over exposed to groups of users, or even all users, has received relatively less attention. However, such systemic disparities in information exposure can result in observable social harms, such as withholding economic opportunities from historically marginalized groups (allocative harm) or amplifying gendered and racialized stereotypes (representational harm). Previously, Diaz et al. developed the expected exposure metric -- that incorporates existing user browsing models that have previously been developed for information retrieval -- to study fairness of content exposure to individual users. We extend their proposed framework to formalize a family of exposure fairness metrics that model the problem jointly from the perspective of both the consumers and producers. Specifically, we consider group attributes for both types of stakeholders to identify and mitigate fairness concerns that go beyond individual users and items towards more systemic biases in recommendation. Furthermore, we study and discuss the relationships between the different exposure fairness dimensions proposed in this paper, as well as demonstrate how stochastic ranking policies can be optimized towards said fairness goals.
翻译:在建议者系统中,关于接触公平性的先前研究主要侧重于个人或群体接触系统个人用户的接触程度的差异;个人或群体接触系统下或过度接触用户群体,甚至所有用户的问题相对较少受到注意;然而,这种系统性接触的差别可能造成可见的社会伤害,例如剥夺历史上边缘化群体的经济机会(减轻伤害)或扩大性别偏见和种族偏见(代表性伤害); Diaz等人制定了预期的接触标准 -- -- 其中包括以前为信息检索开发的现有用户浏览模式 -- -- 研究内容接触个人用户的公平性;我们扩大拟议框架,以正式确定从消费者和生产者的角度共同构建问题的暴露公平度标准系列。具体地说,我们考虑两类利益攸关方的团体属性,以确定和减轻公平性关切,超越个人用户和项目,走向更系统性的偏见。此外,我们研究并讨论本文件提出的不同接触公平性层面之间的关系,并表明如何优化分类政策,以实现上述目标的公平性。