Decorated Merge Trees for Persistent Topology
This paper introduces decorated merge trees (DMTs) as a novel invariant for persistent spaces. DMTs combine both $\pi_0$ and $H_n$ information into a single data structure that distinguishes filtrations that merge trees and persistent homology cannot distinguish alone. Three variants on DMTs, which...
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Zusammenfassung: | This paper introduces decorated merge trees (DMTs) as a novel invariant for
persistent spaces. DMTs combine both $\pi_0$ and $H_n$ information into a
single data structure that distinguishes filtrations that merge trees and
persistent homology cannot distinguish alone. Three variants on DMTs, which
emphasize category theory, representation theory and persistence barcodes,
respectively, offer different advantages in terms of theory and computation.
Two notions of distance -- an interleaving distance and bottleneck distance --
for DMTs are defined and a hierarchy of stability results that both refine and
generalize existing stability results is proved here. To overcome some of the
computational complexity inherent in these distances, we provide a novel use of
Gromov-Wasserstein couplings to compute optimal merge tree alignments for a
combinatorial version of our interleaving distance which can be tractably
estimated. We introduce computational frameworks for generating, visualizing
and comparing decorated merge trees derived from synthetic and real data.
Example applications include comparison of point clouds, interpretation of
persistent homology of sliding window embeddings of time series, visualization
of topological features in segmented brain tumor images and topology-driven
graph alignment. |
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DOI: | 10.48550/arxiv.2103.15804 |