A Novel Tree Visualization to Guide Interactive Exploration of Multi-dimensional Topological Hierarchies
Yarden Livnat, Dan Maljovec, Attila Gyulassy, Dr Baptiste Mouginot,, Valerio Pascucci

TL;DR
This paper introduces a new tree visualization technique that summarizes the entire hierarchy of topological features in multi-dimensional data, facilitating interactive exploration across multiple scales.
Contribution
The novel tree visualization captures the full hierarchy of topological features, enabling more comprehensive and nuanced data exploration compared to previous single-threshold methods.
Findings
Provides a concise overview of topological feature distribution, size, and stability.
Allows feature selection across multiple scales for detailed analysis.
Demonstrates effectiveness with examples from various scientific domains.
Abstract
Understanding the response of an output variable to multi-dimensional inputs lies at the heart of many data exploration endeavours. Topology-based methods, in particular Morse theory and persistent homology, provide a useful framework for studying this relationship, as phenomena of interest often appear naturally as fundamental features. The Morse-Smale complex captures a wide range of features by partitioning the domain of a scalar function into piecewise monotonic regions, while persistent homology provides a means to study these features at different scales of simplification. Previous works demonstrated how to compute such a representation and its usefulness to gain insight into multi-dimensional data. However, exploration of the multi-scale nature of the data was limited to selecting a single simplification threshold from a plot of region count. In this paper, we present a novel…
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Taxonomy
TopicsTopological and Geometric Data Analysis · Data Visualization and Analytics
