TopoMap: A 0-dimensional Homology Preserving Projection of High-Dimensional Data
Harish Doraiswamy, Julien Tierny, Paulo J. S. Silva, Luis, Gustavo Nonato, Claudio Silva

TL;DR
TopoMap is a novel high-dimensional data projection method that preserves topological invariants, specifically 0-dimensional persistence diagrams, enabling more reliable analysis of data structures like clusters and outliers.
Contribution
It introduces TopoMap, a projection technique that guarantees preservation of 0-dimensional topological features during dimensionality reduction.
Findings
Preserves connected components in high-dimensional data.
Enhances confidence in visual data analysis.
Assists in evaluating other projection methods.
Abstract
Multidimensional Projection is a fundamental tool for high-dimensional data analytics and visualization. With very few exceptions, projection techniques are designed to map data from a high-dimensional space to a visual space so as to preserve some dissimilarity (similarity) measure, such as the Euclidean distance for example. In fact, although adopting distinct mathematical formulations designed to favor different aspects of the data, most multidimensional projection methods strive to preserve dissimilarity measures that encapsulate geometric properties such as distances or the proximity relation between data objects. However, geometric relations are not the only interesting property to be preserved in a projection. For instance, the analysis of particular structures such as clusters and outliers could be more reliably performed if the mapping process gives some guarantee as to…
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