Efficient Graph Reconstruction and Representation Using Augmented Persistence Diagrams
Persistent homology is a tool that can be employed to summarize the shape of data by quantifying homological features. When the data is an object in $\mathbb{R}^d$, the (augmented) persistent homology transform ((A)PHT) is a family of persistence diagrams, parameterized by directions in the ambient...
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Zusammenfassung: | Persistent homology is a tool that can be employed to summarize the shape of
data by quantifying homological features. When the data is an object in
$\mathbb{R}^d$, the (augmented) persistent homology transform ((A)PHT) is a
family of persistence diagrams, parameterized by directions in the ambient
space. A recent advance in understanding the PHT used the framework of
reconstruction in order to find finite a set of directions to faithfully
represent the shape, a result that is of both theoretical and practical
interest. In this paper, we improve upon this result and present an improved
algorithm for graph -- and, more generally one-skeleton -- reconstruction. The
improvement comes in reconstructing the edges, where we use a radial binary
(multi-)search. The binary search employed takes advantage of the fact that the
edges can be ordered radially with respect to a reference plane, a feature
unique to graphs. |
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DOI: | 10.48550/arxiv.2212.13206 |