Fair Labeled Clustering
Seyed A. Esmaeili, Sharmila Duppala, John P. Dickerson, Brian Brubach

TL;DR
This paper introduces efficient algorithms for fair clustering that ensure proportional group representation in outcomes, addressing downstream decision-making applications like hiring, and explores computational complexity and practical effectiveness.
Contribution
It extends group fairness in clustering to downstream decision contexts, providing algorithms that are computationally efficient and adaptable to various constraints.
Findings
Algorithms achieve fair outcomes efficiently in downstream decision settings.
The problem exhibits phase transitions from hard to easy with different constraints.
Experimental results validate the effectiveness of proposed algorithms.
Abstract
Numerous algorithms have been produced for the fundamental problem of clustering under many different notions of fairness. Perhaps the most common family of notions currently studied is group fairness, in which proportional group representation is ensured in every cluster. We extend this direction by considering the downstream application of clustering and how group fairness should be ensured for such a setting. Specifically, we consider a common setting in which a decision-maker runs a clustering algorithm, inspects the center of each cluster, and decides an appropriate outcome (label) for its corresponding cluster. In hiring for example, there could be two outcomes, positive (hire) or negative (reject), and each cluster would be assigned one of these two outcomes. To ensure group fairness in such a setting, we would desire proportional group representation in every label but not…
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Taxonomy
TopicsFacility Location and Emergency Management · Advanced Clustering Algorithms Research
