Elsevier

Journal of Symbolic Computation

Volume 78, January–February 2017, Pages 91-114
Journal of Symbolic Computation

A persistence landscapes toolbox for topological statistics

https://doi.org/10.1016/j.jsc.2016.03.009Get rights and content
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Abstract

Topological data analysis provides a multiscale description of the geometry and topology of quantitative data. The persistence landscape is a topological summary that can be easily combined with tools from statistics and machine learning. We give efficient algorithms for calculating persistence landscapes, their averages, and distances between such averages. We discuss an implementation of these algorithms and some related procedures. These are intended to facilitate the combination of statistics and machine learning with topological data analysis. We present an experiment showing that the low-dimensional persistence landscapes of points sampled from spheres (and boxes) of varying dimensions differ.

Keywords

Topological data analysis
Persistent homology
Statistical topology
Topological machine learning
Intrinsic dimension

Cited by (0)

PB is supported by AFOSR grant FA9550-13-1-0115. PD is supported by the Advanced Grant of the European Research Council GUDHI 339025 (Geometric Understanding in Higher Dimensions), DARPA grant FA9550-12-1-0416 and AFOSR grant FA9550-14-1-0012.