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arxiv: 1512.04303 · v1 · pith:OIANN3T3new · submitted 2015-12-14 · 💻 cs.CG · cs.DS

Kinetic Clustering of Points on the Line

classification 💻 cs.CG cs.DS
keywords pointsclusteringlineminimizingalgorithmsapproximationassumptionsclassical
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The problem of clustering a set of points moving on the line consists of the following: given positive integers n and k, the initial position and the velocity of n points, find an optimal k-clustering of the points. We consider two classical quality measures for the clustering: minimizing the sum of the clusters diameters and minimizing the maximum diameter of a cluster. For the former, we present polynomial-time algorithms under some assumptions and, for the latter, a (2.71 + epsilon)-approximation.

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