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A Center in Your Neighborhood: Fairness in Facility Location

23 August 2019
Christopher Jung
Sampath Kannan
Neil Lutz
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Abstract

When selecting locations for a set of facilities, standard clustering algorithms may place unfair burden on some individuals and neighborhoods. We formulate a fairness concept that takes local population densities into account. In particular, given kkk facilities to locate and a population of size nnn, we define the "neighborhood radius" of an individual iii as the minimum radius of a ball centered at iii that contains at least n/kn/kn/k individuals. Our objective is to ensure that each individual has a facility within at most a small constant factor of her neighborhood radius. We present several theoretical results: We show that optimizing this factor is NP-hard; we give an approximation algorithm that guarantees a factor of at most 2 in all metric spaces; and we prove matching lower bounds in some metric spaces. We apply a variant of this algorithm to real-world address data, showing that it is quite different from standard clustering algorithms and outperforms them on our objective function and balances the load between facilities more evenly.

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