Splitting an Ordering into a Partition to Minimize Diameter |
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Authors: | Charles J. Alpert Andrew B. Kahng |
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Affiliation: | (1) Austin Research Laboratory, IBM,;(2) University of California at Los Angeles, |
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Abstract: | k consisting of k clusters, with k > 2. Bottom-up agglomerative approaches are also commonly used to construct partitions, and we discuss these in terms of worst-case performance for metric data sets. Our main contribution derives from a new restricted partition formulation that requires each cluster to be an interval of a given ordering of the objects being clustered. Dynamic programming can optimally split such an ordering into a partition Pk for a large class of objectives that includes min-diameter. We explore a variety of ordering heuristics and show that our algorithm, when combined with an appropriate ordering heuristic, outperforms traditional algorithms on both random and non-random data sets. |
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