Approximation Algorithms for Clustering Problems with Lower Bounds and Outliers
Sara Ahmadian, Chaitanya Swamy

TL;DR
This paper introduces the first approximation algorithms for clustering problems with non-uniform lower bounds and outliers, achieving significant approximation guarantees for these complex problems.
Contribution
It provides the first approximation algorithms for clustering with non-uniform lower bounds and outliers, using a novel primal-dual approach that overcomes standard limitations.
Findings
Approximation factor of 12.365 for LBKSO with outliers.
Approximation factor of 3.83 for LBKSO without outliers.
First known approximation bounds for min-sum-of-radii with lower bounds and outliers.
Abstract
We consider clustering problems with {\em non-uniform lower bounds and outliers}, and obtain the {\em first approximation guarantees} for these problems. We have a set of facilities with lower bounds and a set of clients located in a common metric space , and bounds , . A feasible solution is a pair , where specifies the client assignments, such that , for all , and . In the {\em lower-bounded min-sum-of-radii with outliers} (\lbksro) problem, the objective is to minimize , and in the {\em lower-bounded -supplier with outliers} (\lbkso) problem, the objective is to minimize . We…
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