Combining the preferences of many rankers into one single consensus ranking is critical for consequential applications from hiring and admissions to lending. While group fairness has been extensively studied for classification, group fairness in rankings and in particular rank aggregation remains in its infancy. Recent work introduced the concept of fair rank aggregation for combining rankings but restricted to the case when candidates have a single binary protected attribute, i.e., they fall into two groups only. Yet it remains an open problem how to create a consensus ranking that represents the preferences of all rankers while ensuring fair treatment for candidates with multiple protected attributes such as gender, race, and nationality. In this work, we are the first to define and solve this open Multi-attribute Fair Consensus Ranking (MFCR) problem. As a foundation, we design novel group fairness criteria for rankings, called MANI-RANK, ensuring fair treatment of groups defined by individual protected attributes and their intersection. Leveraging the MANI-RANK criteria, we develop a series of algorithms that for the first time tackle the MFCR problem. Our experimental study with a rich variety of consensus scenarios demonstrates our MFCR methodology is the only approach to achieve both intersectional and protected attribute fairness while also representing the preferences expressed through many base rankings. Our real-world case study on merit scholarships illustrates the effectiveness of our MFCR methods to mitigate bias across multiple protected attributes and their intersections. This is an extended version of "MANI-Rank: Multiple Attribute and Intersectional Group Fairness for Consensus Ranking", to appear in ICDE 2022.
翻译:将许多军士的偏好合并为单一的共识等级对于从聘用到接受贷款等相关申请而言至关重要。虽然对集团公平性进行了广泛的分类研究,但排名、特别是排名汇总的公平性仍然处于初级阶段。最近的工作引入了将排名合并的公平级别汇总概念,但仅限于候选人具有单一的二进制保护属性,即他们只属于两个组的情况。然而,如何建立代表所有军士的偏好的协商一致排名,同时确保对具有多重受保护属性的候选人,如性别、种族和国籍的公平待遇,仍然是个未决问题。在这项工作中,我们首先定义和解决这个公开的多分配公平共识评级(MFCR)问题。作为一个基础,我们为排名设计了新的集团公平性标准,称为MNI-RANK,确保公平对待个人受保护属性及其交叉点所定义的群体。尽管采用MANI-RANK标准,但我们开发了一系列的算法,首次解决了MFCR问题。我们实验性研究中表达的多种共识情景表明我们的MFR公平性,但我们的排名方法仅体现着全球级级的公平性,而我们通过分级原则研究,我们通过分级原则,也只是衡量了我们的分级的分级的公平性原则,从分级的分级原则,而体现了我们的分级原则。我们为分级的分级的分级的分级的分级原则,我们为分级的分级的分级性原则,我们为分级的分级的分级性原则,只是分级性原则,我们为分级性原则的分级的分级的分级性原则,我们为分级制的分级制的分级制的分级制的分级的分级制的分级制的分级法制的分级性研究。