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Universal Weak Coreset

Abstract

Coresets for kk-means and kk-median problems yield a small summary of the data, which preserve the clustering cost with respect to any set of kk centers. Recently coresets have also been constructed for constrained kk-means and kk-median problems. However, the notion of coresets has the drawback that (i) they can only be applied in settings where the input points are allowed to have weights, and (ii) in general metric spaces, the size of the coresets can depend logarithmically on the number of points. The notion of weak coresets, which have less stringent requirements than coresets, has been studied in the context of classical kk-means and kk-median problems. A weak coreset is a pair (J,S)(J,S) of subsets of points, where SS acts as a summary of the point set and JJ as a set of potential centers. This pair satisfies the properties that (i) SS is a good summary of the data as long as the kk centers are chosen from JJ only, and (ii) there is a good choice of kk centers in JJ with cost close to the optimal cost. We develop this framework, which we call universal weak coresets, for constrained clustering settings. In conjunction with recent coreset constructions for constrained settings, our designs give greater data compression, are conceptually simpler, and apply to a wide range of constrained kk-median and kk-means problems.

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