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Poster

Cluster Trees on Manifolds

Sivaraman Balakrishnan · Srivatsan Narayanan · Alessandro Rinaldo · Aarti Singh · Larry Wasserman

Harrah's Special Events Center, 2nd Floor

Abstract: We investigate the problem of estimating the cluster tree for a density f supported on or near a smooth d-dimensional manifold M isometrically embedded in RD. We study a k-nearest neighbor based algorithm recently proposed by Chaudhuri and Dasgupta. Under mild assumptions on f and M, we obtain rates of convergence that depend on d only but not on the ambient dimension D. We also provide a sample complexity lower bound for a natural class of clustering algorithms that use D-dimensional neighborhoods.

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