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Approximation Algorithms for Fair Range Clustering

2023-06-11Unverified0· sign in to hype

Sèdjro S. Hotegni, Sepideh Mahabadi, Ali 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 k 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 n points in a metric space (P,d) where each point belongs to one of the different demographics (i.e., P = P_1 P_2 P_) and a set of intervals [_1, _1], , [_, _] on desired number of centers from each group, the goal is to pick a set of k centers C with minimum _p-clustering cost (i.e., (_v P d(v,C)^p)^1/p) such that for each group i , |C P_i| [_i, _i]. In particular, the fair range _p-clustering captures fair range k-center, k-median and k-means as its special cases. In this work, we provide efficient constant factor approximation algorithms for fair range _p-clustering for all values of p [1,).

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