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Optimal interval clustering: Application to Bregman clustering and statistical mixture learning

Abstract

We present a generic dynamic programming method to compute the optimal clustering of nn scalar elements into kk pairwise disjoint intervals. This case includes 1D Euclidean kk-means, kk-medoids, kk-medians, kk-centers, etc. We extend the method to incorporate cluster size constraints and show how to choose the appropriate kk by model selection. Finally, we illustrate and refine the method on two case studies: Bregman clustering and statistical mixture learning maximizing the complete likelihood.

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