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Constant-Factor Approximation Algorithms for Socially Fair kk-Clustering

Abstract

We study approximation algorithms for the socially fair (p,k)(\ell_p, k)-clustering problem with mm groups, whose special cases include the socially fair kk-median (p=1p=1) and socially fair kk-means (p=2p=2) problems. We present (1) a polynomial-time (5+26)p(5+2\sqrt{6})^p-approximation with at most k+mk+m centers (2) a (5+26+ϵ)p(5+2\sqrt{6}+\epsilon)^p-approximation with kk centers in time n2O(p)m2n^{2^{O(p)}\cdot m^2}, and (3) a (15+66)p(15+6\sqrt{6})^p approximation with kk centers in time kmpoly(n)k^{m}\cdot\text{poly}(n). The first result is obtained via a refinement of the iterative rounding method using a sequence of linear programs. The latter two results are obtained by converting a solution with up to k+mk+m centers to one with kk centers using sparsification methods for (2) and via an exhaustive search for (3). We also compare the performance of our algorithms with existing bicriteria algorithms as well as exactly kk center approximation algorithms on benchmark datasets, and find that our algorithms also outperform existing methods in practice.

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