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    Clustering with diversity

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    We consider the {\em clustering with diversity} problem: given a set of colored points in a metric space, partition them into clusters such that each cluster has at least β„“\ell points, all of which have distinct colors. We give a 2-approximation to this problem for any β„“\ell when the objective is to minimize the maximum radius of any cluster. We show that the approximation ratio is optimal unless P=NP\mathbf{P=NP}, by providing a matching lower bound. Several extensions to our algorithm have also been developed for handling outliers. This problem is mainly motivated by applications in privacy-preserving data publication.Comment: Extended abstract accepted in ICALP 2010. Keywords: Approximation algorithm, k-center, k-anonymity, l-diversit
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