Techniques for Generalized Colorful $k$-Center Problems
Georg Anegg, Laura Vargas Koch, Rico Zenklusen

TL;DR
This paper develops a versatile framework for colorful $k$-center problems with facility constraints, achieving new approximation guarantees for various constrained clustering variants, including matroid and knapsack constraints.
Contribution
It introduces a unified approach combining existing and new techniques to handle facility constraints in colorful clustering, providing the first constant-factor approximations for certain variants.
Findings
First constant-factor approximations for Colorful Matroid and Knapsack Suppliers.
Achieves an $O(2^ ext{γ})$-approximation for constant number of colors.
Provides a 7-approximation for Colorful Knapsack Supplier independent of the number of colors.
Abstract
Fair clustering enjoyed a surge of interest recently. One appealing way of integrating fairness aspects into classical clustering problems is by introducing multiple covering constraints. This is a natural generalization of the robust (or outlier) setting, which has been studied extensively and is amenable to a variety of classic algorithmic techniques. In contrast, for the case of multiple covering constraints (the so-called colorful setting), specialized techniques have only been developed recently for -Center clustering variants, which is also the focus of this paper. While prior techniques assume covering constraints on the clients, they do not address additional constraints on the facilities, which has been extensively studied in non-colorful settings. In this paper, we present a quite versatile framework to deal with various constraints on the facilities in the colorful…
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