English

Homology-Preserving Multi-Scale Graph Skeletonization Using Mapper on Graphs

Social and Information Networks 2023-09-20 v5 Machine Learning

Abstract

Node-link diagrams are a popular method for representing graphs that capture relationships between individuals, businesses, proteins, and telecommunication endpoints. However, node-link diagrams may fail to convey insights regarding graph structures, even for moderately sized data of a few hundred nodes, due to visual clutter. We propose to apply the mapper construction -- a popular tool in topological data analysis -- to graph visualization, which provides a strong theoretical basis for summarizing the data while preserving their core structures. We develop a variation of the mapper construction targeting weighted, undirected graphs, called {\mog}, which generates homology-preserving skeletons of graphs. We further show how the adjustment of a single parameter enables multi-scale skeletonization of the input graph. We provide a software tool that enables interactive explorations of such skeletons and demonstrate the effectiveness of our method for synthetic and real-world data.

Keywords

Cite

@article{arxiv.1804.11242,
  title  = {Homology-Preserving Multi-Scale Graph Skeletonization Using Mapper on Graphs},
  author = {Paul Rosen and Mustafa Hajij and Bei Wang},
  journal= {arXiv preprint arXiv:1804.11242},
  year   = {2023}
}
R2 v1 2026-06-23T01:40:10.056Z