Carnegie Mellon University
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On the Bootstrap for Persistence Diagrams and Landscapes

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posted on 2014-01-22, 00:00 authored by Frederic Chazal, Brittany Therese Fasy, Fabrizio Lecci, Alessandro Rinaldo, Aarti Singh, Larry Wasserman

Persistent homology probes topological properties from point clouds and functions. By looking at multiple scales simultaneously, one can record the births and deaths of topological features as the scale varies. In this paper we use a statistical technique, the empirical bootstrap, to separate topological signal from topological noise. In particular, we derive confidence sets for persistence diagrams and confidence bands for persistence landscapes.

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2014-01-22

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