Users worldwide access massive amounts of curated data in the form of rankings on a daily basis. The societal impact of this ease of access has been studied and work has been done to propose and enforce various notions of fairness in rankings. Current computational methods for fair item ranking rely on disclosing user data to a centralized server, which gives rise to privacy concerns for the users. This work is the first to advance research at the conjunction of producer (item) fairness and consumer (user) privacy in rankings by exploring the incorporation of privacy-preserving techniques; specifically, differential privacy and secure multi-party computation. Our work extends the equity of amortized attention ranking mechanism to be privacy-preserving, and we evaluate its effects with respect to privacy, fairness, and ranking quality. Our results using real-world datasets show that we are able to effectively preserve the privacy of users and mitigate unfairness of items without making additional sacrifices to the quality of rankings in comparison to the ranking mechanism in the clear.
翻译:目前,公平项目排名的计算方法依赖于向中央服务器披露用户数据,这引起了用户对隐私的关切。这项工作是第一个通过探索采用隐私保护技术,具体地说,不同隐私和安全的多党计算,促进生产者(项目)公平性和消费者(用户)隐私在排名中的结合研究,探索采用隐私保护技术;具体地说,差异性隐私和安全性多党计算。我们的工作扩大了摊销关注排名机制的公平性,以保持隐私,我们评估其在隐私、公平性和排名质量方面的影响。我们使用现实世界数据集的结果表明,我们能够有效保护用户的隐私,减轻项目不公的不公现象,同时又不为排名质量作出额外的牺牲,而与明确的排名机制相比。</s>