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Approximation Algorithms for Fair Range Clustering

11 June 2023
S. S. Hotegni
S. Mahabadi
A. Vakilian
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Abstract

This paper studies the fair range clustering problem in which the data points are from different demographic groups and the goal is to pick kkk centers with the minimum clustering cost such that each group is at least minimally represented in the centers set and no group dominates the centers set. More precisely, given a set of nnn points in a metric space (P,d)(P,d)(P,d) where each point belongs to one of the ℓ\ellℓ different demographics (i.e., P=P1⊎P2⊎⋯⊎PℓP = P_1 \uplus P_2 \uplus \cdots \uplus P_\ellP=P1​⊎P2​⊎⋯⊎Pℓ​) and a set of ℓ\ellℓ intervals [α1,β1],⋯ ,[αℓ,βℓ][\alpha_1, \beta_1], \cdots, [\alpha_\ell, \beta_\ell][α1​,β1​],⋯,[αℓ​,βℓ​] on desired number of centers from each group, the goal is to pick a set of kkk centers CCC with minimum ℓp\ell_pℓp​-clustering cost (i.e., (∑v∈Pd(v,C)p)1/p(\sum_{v\in P} d(v,C)^p)^{1/p}(∑v∈P​d(v,C)p)1/p) such that for each group i∈ℓi\in \elli∈ℓ, ∣C∩Pi∣∈[αi,βi]|C\cap P_i| \in [\alpha_i, \beta_i]∣C∩Pi​∣∈[αi​,βi​]. In particular, the fair range ℓp\ell_pℓp​-clustering captures fair range kkk-center, kkk-median and kkk-means as its special cases. In this work, we provide efficient constant factor approximation algorithms for fair range ℓp\ell_pℓp​-clustering for all values of p∈[1,∞)p\in [1,\infty)p∈[1,∞).

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