Persistence Barcodes Versus Kolmogorov Signatures: Detecting Modes of One-Dimensional Signals

Ulrich Bauer, Axel Munk, Hannes Sieling, Max Wardetzky

Research output: Contribution to journalArticlepeer-review

3 Scopus citations

Abstract

We investigate the problem of estimating the number of modes (i.e., local maxima)—a well-known question in statistical inference—and we show how to do so without presmoothing the data. To this end, we modify the ideas of persistence barcodes by first relating persistence values in dimension one to distances (with respect to the supremum norm) to the sets of functions with a given number of modes, and subsequently working with norms different from the supremum norm. As a particular case, we investigate the Kolmogorov norm. We argue that this modification has certain statistical advantages. We offer confidence bands for the attendant Kolmogorov signatures, thereby allowing for the selection of relevant signatures with a statistically controllable error. As a result of independent interest, we show that taut strings minimize the number of critical points for a very general class of functions. We illustrate our results by several numerical examples.

Original languageEnglish
Pages (from-to)1-33
Number of pages33
JournalFoundations of Computational Mathematics
Volume17
Issue number1
DOIs
StatePublished - 1 Feb 2017

Keywords

  • Exponential deviation bound
  • Mode hunting
  • Partial sum process
  • Persistent homology
  • Taut strings

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