Convergence Rates for Persistence Diagram Estimation in Topological Data Analysis

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TitreConvergence Rates for Persistence Diagram Estimation in Topological Data Analysis
Type de publicationJournal Article
Year of Publication2015
AuteursChazal F, Glisse M, Labruere C, Michel B
JournalJOURNAL OF MACHINE LEARNING RESEARCH
Volume16
Pagination3603-3635
Date PublishedDEC
Type of ArticleArticle
ISSN1532-4435
Mots-clésconvergence rates, persistent homology, topological data analysis
Résumé

Computational topology has recently seen an important development toward data analysis, giving birth to the field of topological data analysis. Topological persistence, or persistent homology, appears as a fundamental tool in this field. In this paper, we study topological persistence in general metric spaces, with a statistical approach. We show that the use of persistent homology can be naturally considered in general statistical frameworks and that persistence diagrams can be used as statistics with interesting convergence properties. Some numerical experiments are performed in various contexts to illustrate our results.