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Revisiting Priority kkk-Center: Fairness and Outliers

4 March 2021
Tanvi Bajpai
Deeparnab Chakrabarty
C. Chekuri
Maryam Negahbani
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Abstract

In the Priority kkk-Center problem, the input consists of a metric space (X,d)(X,d)(X,d), an integer kkk, and for each point v∈Xv \in Xv∈X a priority radius r(v)r(v)r(v). The goal is to choose kkk-centers S⊆XS \subseteq XS⊆X to minimize max⁡v∈X1r(v)d(v,S)\max_{v \in X} \frac{1}{r(v)} d(v,S)maxv∈X​r(v)1​d(v,S). If all r(v)r(v)r(v)'s are uniform, one obtains the kkk-Center problem. Plesn\ík [Plesn\ík, Disc. Appl. Math. 1987] introduced the Priority kkk-Center problem and gave a 222-approximation algorithm matching the best possible algorithm for kkk-Center. We show how the problem is related to two different notions of fair clustering [Harris et al., NeurIPS 2018; Jung et al., FORC 2020]. Motivated by these developments we revisit the problem and, in our main technical contribution, develop a framework that yields constant factor approximation algorithms for Priority kkk-Center with outliers. Our framework extends to generalizations of Priority kkk-Center to matroid and knapsack constraints, and as a corollary, also yields algorithms with fairness guarantees in the lottery model of Harris et al [Harris et al, JMLR 2019].

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