A Topological Approach to Spectral Clustering

06/08/2015
by   Antonio Rieser, et al.
0

We propose a clustering algorithm which, for input, takes data assumed to be sampled from a uniform distribution supported on a metric space X, and outputs a clustering of the data based on a topological estimate of the connected components of X. The algorithm works by choosing a weighted graph on the samples from a natural one-parameter family of graphs using an error based on the heat operator on the graphs. The estimated connected components of X are identified as the support of the eigenfunctions of the heat operator with eigenvalue 1, which allows the algorithm to work without requiring the number of expected clusters as input.

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