MANI-Rank: Multiple Attribute and Intersectional Group Fairness for Consensus Ranking
Kathleen Cachel, Elke Rundensteiner, and Lane Harrison

TL;DR
This paper introduces MANI-Rank, a novel approach for creating fair consensus rankings that account for multiple protected attributes and their intersections, addressing a key gap in fair ranking research.
Contribution
It defines the Multi-attribute Fair Consensus Ranking (MFCR) problem and proposes the first algorithms to ensure intersectional and attribute fairness in rankings.
Findings
MFCR achieves fairness across multiple protected attributes.
Algorithms effectively mitigate bias in real-world ranking scenarios.
Method outperforms existing approaches in fairness and preference representation.
Abstract
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…
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Taxonomy
TopicsGame Theory and Voting Systems
MethodsBalanced Selection
