Fair Rank Aggregation
Diptarka Chakraborty, Syamantak Das, Arindam Khan, Aditya, Subramanian

TL;DR
This paper develops fast algorithms for fair rank aggregation that ensure diverse representation across groups, applicable to various metrics and objectives, with provable approximation guarantees.
Contribution
It introduces exact algorithms for fair ranking under Kendall tau and Ulam metrics, and a versatile meta-algorithm for general fairness-aware rank aggregation with approximation guarantees.
Findings
Exact algorithms for Kendall tau and Ulam metrics under fairness constraints.
A meta-algorithm applicable to any generalized mean objective and fairness criteria.
Approximation algorithms with ratios of 3 and (3-ε) for center and median problems.
Abstract
Ranking algorithms find extensive usage in diverse areas such as web search, employment, college admission, voting, etc. The related rank aggregation problem deals with combining multiple rankings into a single aggregate ranking. However, algorithms for both these problems might be biased against some individuals or groups due to implicit prejudice or marginalization in the historical data. We study ranking and rank aggregation problems from a fairness or diversity perspective, where the candidates (to be ranked) may belong to different groups and each group should have a fair representation in the final ranking. We allow the designer to set the parameters that define fair representation. These parameters specify the allowed range of the number of candidates from a particular group in the top- positions of the ranking. Given any ranking, we provide a fast and exact algorithm for…
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Taxonomy
TopicsGame Theory and Voting Systems
