Minimum Sum of Squares Clustering in a Low Dimensional Space |
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Authors: | Hansen Pierre Jaumard Brigitte Mladenovic Nenad |
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Affiliation: | (1) GERAD, CA |
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Abstract: | Clustering with a criterion which minimizes the sum of squared distances to cluster centroids is usually done in a heuristic way. An exact polynomial algorithm, with a complexity in O(N p+1 logN), is proposed for minimum sum of squares hierarchical divisive clustering of points in a p-dimensional space with small p. Empirical complexity is one order of magnitude lower. Data sets with N = 20000 for p = 2, N = 1000 for p = 3, and N = 200 for p = 4 are clustered in a reasonable computing time. |
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