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22
11

A Stochastic Alternating Balance kkk-Means Algorithm for Fair Clustering

29 May 2021
Suyun Liu
Luis Nunes Vicente
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Abstract

In the application of data clustering to human-centric decision-making systems, such as loan applications and advertisement recommendations, the clustering outcome might discriminate against people across different demographic groups, leading to unfairness. A natural conflict occurs between the cost of clustering (in terms of distance to cluster centers) and the balance representation of all demographic groups across the clusters, leading to a bi-objective optimization problem that is nonconvex and nonsmooth. To determine the complete trade-off between these two competing goals, we design a novel stochastic alternating balance fair kkk-means (SAfairKM) algorithm, which consists of alternating classical mini-batch kkk-means updates and group swap updates. The number of kkk-means updates and the number of swap updates essentially parameterize the weight put on optimizing each objective function. Our numerical experiments show that the proposed SAfairKM algorithm is robust and computationally efficient in constructing well-spread and high-quality Pareto fronts both on synthetic and real datasets.

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