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MiS Preprint Repository

We have decided to discontinue the publication of preprints on our preprint server as of 1 March 2024. The publication culture within mathematics has changed so much due to the rise of repositories such as ArXiV (www.arxiv.org) that we are encouraging all institute members to make their preprints available there. An institute's repository in its previous form is, therefore, unnecessary. The preprints published to date will remain available here, but we will not add any new preprints here.

MiS Preprint
27/2019

Geometric and Probabilistic Limit Theorems in Topological Data Analysis

Sara Kališnik Verovšek, Christian Lehn and Vlada Limic

Abstract

We develop a general framework for the probabilistic analysis of random finite point clouds in the context of topological data analysis. We extend the notion of a barcode of a finite point cloud to compact metric spaces. Such a barcode lives in the completion of the space of barcodes with respect to the bottleneck distance, which is quite natural from an analytic point of view. As an application we prove that the barcodes of i.i.d. random variables sampled from a compact metric space converge to the barcode of the support of their distribution when the number of points goes to infinity. We also examine more quantitative convergence questions for uniform sampling from compact manifolds, including expectations of transforms of barcode valued random variables in Banach spaces. We believe that the methods developed here will serve as useful tools in studying more sophisticated questions in topological data analysis and related fields.

Received:
Mar 11, 2019
Published:
Mar 13, 2019

Related publications

inJournal
2021 Repository Open Access
Sara Kališnik Verovšek, Christian Lehn and Vlada Limic

Geometric and probabilistic limit theorems in topological data analysis

In: Advances in applied mathematics, 131 (2021), p. 102244