Hypothesis testing for shapes using vectorized persistence diagrams

Author:

Moon Chul1ORCID,Lazar Nicole A2

Affiliation:

1. Department of Statistical Science, Southern Methodist University , Dallas, TX 75205 , USA

2. Department of Statistics and Huck Institutes of the Life Sciences, Pennsylvania State University , University Park, PA 16802 , USA

Abstract

Abstract Topological data analysis involves the statistical characterization of the shape of data. Persistent homology is a primary tool of topological data analysis, which can be used to analyze topological features and perform statistical inference. In this paper, we present a two-stage hypothesis test for vectorized persistence diagrams. The first stage filters vector elements in the vectorized persistence diagrams to enhance the power of the test. The second stage consists of multiple hypothesis tests, with false positives controlled by false discovery rates. We demonstrate the flexibility of our method by applying it to a variety of simulated and real-world data types. Our results show that the proposed hypothesis test enables accurate and informative inferences on the shape of data compared to the existing hypothesis testing methods for persistent homology.

Publisher

Oxford University Press (OUP)

Subject

Statistics, Probability and Uncertainty,Statistics and Probability

Reference80 articles.

1. Persistence images: A stable vector representation of persistent homology;Adams;Journal of Machine Learning Research,2017

2. The ring of algebraic functions on persistence bar codes;Adcock;Homology, Homotopy and Applications,2016

3. Topology data analysis using mean persistence landscapes in financial crashes;Aguilar;Journal of Mathematical Finance,2020

4. Topological and statistical behavior classifiers for tracking applications;Bendich;IEEE Transactions on Aerospace and Electronic Systems,2016

5. Persistent homology analysis of brain artery trees;Bendich;Annals of Applied Statistics,2016

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