Frontiers in Applied Mathematics and Statistics (Jul 2021)

Supervised Learning Using Homology Stable Rank Kernels

  • Jens Agerberg,
  • Ryan Ramanujam,
  • Ryan Ramanujam,
  • Martina Scolamiero,
  • Wojciech Chachólski

DOI
https://doi.org/10.3389/fams.2021.668046
Journal volume & issue
Vol. 7

Abstract

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Exciting recent developments in Topological Data Analysis have aimed at combining homology-based invariants with Machine Learning. In this article, we use hierarchical stabilization to bridge between persistence and kernel-based methods by introducing the so-called stable rank kernels. A fundamental property of the stable rank kernels is that they depend on metrics to compare persistence modules. We illustrate their use on artificial and real-world datasets and show that by varying the metric we can improve accuracy in classification tasks.

Keywords