Quantifying edge relevance for epidemic spreading via the semi-metric topology of complex networks
David Soriano Pa\~nos, Felipe Xavier Costa, Luis M. Rocha

TL;DR
This paper introduces a semi-metric based sparsification method for complex networks that better preserves epidemic spreading dynamics and shortest paths than existing techniques, by removing edges with high semi-metric distortion.
Contribution
The authors propose a novel semi-metric distortion sparsification approach that outperforms existing methods in preserving epidemic dynamics and network topology.
Findings
Semi-metric backbone recovers epidemic dynamics effectively.
Removing edges with high semi-metric distortion improves sparsification.
Semi-metric distortion surpasses edge betweenness in relevance ranking.
Abstract
Sparsification aims at extracting a reduced core of associations that best preserves both the dynamics and topology of networks while reducing the computational cost of simulations. We show that the semi-metric topology of complex networks yields a natural and algebraically-principled sparsification that outperforms existing methods on those goals. Weighted graphs whose edges represent distances between nodes are semi-metric when at least one edge breaks the triangle inequality (transitivity). We first confirm with new experiments that the metric backbonea unique subgraph of all edges that obey the triangle inequality and thus preserve all shortest pathsrecovers Susceptible-Infected dynamics over the original non-sparsified graph. This recovery is improved when we remove only those edges that break the triangle inequality significantly, i.e., edges with…
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Taxonomy
TopicsComplex Network Analysis Techniques · COVID-19 epidemiological studies · Data-Driven Disease Surveillance
