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Poster

RTD-Lite: Scalable Topological Analysis for Comparing Weighted Graphs in Learning Tasks

Danqi Liao · Eduard Tulchinskii · Evgeny Burnaev · Serguei Barannikov


Abstract:

Topological methods for comparing weighted graphs are valuable in various learning tasks but often suffer from computational inefficiency on large datasets. We introduce RTD-Lite, a scalable algorithm that efficiently compares topological features, specifically connectivity or cluster structures at arbitrary scales, of two weighted graphs with one-to-one correspondence between vertices. By leveraging minimal spanning trees in auxiliary graphs, RTD-Lite captures topological discrepancies with O(n^2) time and memory complexity. This efficiency enables its application in tasks like dimensionality reduction and neural network training. Experiments on synthetic and real-world datasets demonstrate that RTD-Lite effectively identifies topological differences while significantly reducing computation time compared to existing methods. Moreover, integrating RTD-Lite into neural network training as a loss function component enhances the preservation of topological structures in learned representations. Our code is publicly available at https://github.com/ArGintum/RTD-Lite.

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