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Towards Stratification Learning through Homology Inference

Publication ,  Journal Article
Bendich, P; Mukherjee, S; Wang, B
August 20, 2010

A topological approach to stratification learning is developed for point cloud data drawn from a stratified space. Given such data, our objective is to infer which points belong to the same strata. First we define a multi-scale notion of a stratified space, giving a stratification for each radius level. We then use methods derived from kernel and cokernel persistent homology to cluster the data points into different strata, and we prove a result which guarantees the correctness of our clustering, given certain topological conditions; some geometric intuition for these topological conditions is also provided. Our correctness result is then given a probabilistic flavor: we give bounds on the minimum number of sample points required to infer, with probability, which points belong to the same strata. Finally, we give an explicit algorithm for the clustering, prove its correctness, and apply it to some simulated data.

Duke Scholars

Publication Date

August 20, 2010
 

Citation

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Bendich, P., Mukherjee, S., & Wang, B. (2010). Towards Stratification Learning through Homology Inference.
Bendich, Paul, Sayan Mukherjee, and Bei Wang. “Towards Stratification Learning through Homology Inference,” August 20, 2010.
Bendich P, Mukherjee S, Wang B. Towards Stratification Learning through Homology Inference. 2010 Aug 20;
Bendich P, Mukherjee S, Wang B. Towards Stratification Learning through Homology Inference. 2010 Aug 20;

Publication Date

August 20, 2010