论文标题
mani级:共识排名的多个属性和交叉组公平性
MANI-Rank: Multiple Attribute and Intersectional Group Fairness for Consensus Ranking
论文作者
论文摘要
将许多排名者的偏好结合到一个单一共识排名中对于从招聘和入学到贷款的结果应用至关重要。尽管已经对群体公平进行分类进行了广泛的研究,但排名,尤其是等级聚合的群体公平仍处于起步阶段。最近的工作介绍了合并排名的公平等级聚合的概念,但仅限于候选人具有单个二进制保护属性的情况,即仅分为两组。然而,如何建立共识排名仍然是一个开放的问题,该排名代表了所有排名者的偏好,同时确保对具有多个受保护属性的候选人(例如性别,种族和国籍)进行公平待遇。在这项工作中,我们是第一个定义和解决此开放的多属性公平共识排名(MFCR)问题的人。作为基础,我们为名为Mani-Rank的排名设计了新颖的团体公平标准,以确保对由个体受保护属性及其相交定义的群体进行公平处理。利用摩尼级标准,我们开发了一系列算法,这些算法首次解决了MFCR问题。我们对各种共识情景的实验研究表明,我们的MFCR方法是实现交叉和受保护属性公平的唯一方法,同时也代表了通过许多基本排名表达的偏好。我们对绩效奖学金的真实案例研究说明了我们的MFCR方法减轻多个受保护属性及其交叉点的偏见的有效性。这是出现在ICDE 2022中的“ Mani-Rank:Mani-Rank:多个属性和交叉组公平性”的扩展版本。
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.