A Normalized Bottleneck Distance on Persistence Diagrams and Homology Preservation under Dimension Reduction
Nathan H. May, Bala Krishnamoorthy, and Patrick Gambill

TL;DR
This paper introduces a scale-invariant normalized bottleneck distance for persistence diagrams, providing stability bounds under dimension reduction techniques like Johnson-Lindenstrauss and mMDS, and demonstrating improved clustering performance.
Contribution
The paper defines the normalized bottleneck distance, develops a metric decomposition framework, and derives new stability bounds for popular dimension reduction methods in topological data analysis.
Findings
Normalized bottleneck distance is scale-invariant and stable under dimension reduction.
New bounds for homology preservation under Johnson-Lindenstrauss projections.
Enhanced clustering effectiveness using the normalized bottleneck distance.
Abstract
Persistence diagrams (PDs) are used as signatures of point cloud data. Two clouds of points can be compared using the bottleneck distance d_B between their PDs. A potential drawback of this pipeline is that point clouds sampled from topologically similar manifolds can have arbitrarily large d_B when there is a large scaling between them. This situation is typical in dimension reduction frameworks. We define, and study properties of, a new scale-invariant distance between PDs termed normalized bottleneck distance, d_N. In defining d_N, we develop a broader framework called metric decomposition for comparing finite metric spaces of equal cardinality with a bijection. We utilize metric decomposition to prove a stability result for d_N by deriving an explicit bound on the distortion of the bijective map. We then study two popular dimension reduction techniques, Johnson-Lindenstrauss (JL)…
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Taxonomy
TopicsTopological and Geometric Data Analysis
