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Consistent procedures for cluster tree estimation and pruning

2014-06-05Unverified0· sign in to hype

Kamalika Chaudhuri, Sanjoy Dasgupta, Samory Kpotufe, Ulrike Von Luxburg

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Abstract

For a density f on R^d, a high-density cluster is any connected component of : f(x) \, for some > 0. The set of all high-density clusters forms a hierarchy called the cluster tree of f. We present two procedures for estimating the cluster tree given samples from f. The first is a robust variant of the single linkage algorithm for hierarchical clustering. The second is based on the k-nearest neighbor graph of the samples. We give finite-sample convergence rates for these algorithms which also imply consistency, and we derive lower bounds on the sample complexity of cluster tree estimation. Finally, we study a tree pruning procedure that guarantees, under milder conditions than usual, to remove clusters that are spurious while recovering those that are salient.

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