Evolution of Real-world Hypergraphs: Patterns and Models without Oracles
Yunbum Kook, Jihoon Ko, Kijung Shin

TL;DR
This paper investigates structural and dynamical patterns in real-world hypergraphs, introduces new measures, compares them to null models, and proposes extsc{HyperFF}, a simple, realistic, and self-contained hypergraph generative model based on local dynamics.
Contribution
It extends graph properties to hypergraphs, introduces new measures, and presents extsc{HyperFF}, a novel model that reproduces observed patterns without external oracles.
Findings
extbf{HyperFF} reproduces all seven observed patterns.
HyperFF does not rely on external oracles and uses only two parameters.
The study reveals significant structural and dynamical patterns in real hypergraphs.
Abstract
What kind of macroscopic structural and dynamical patterns can we observe in real-world hypergraphs? What can be underlying local dynamics on individuals, which ultimately lead to the observed patterns, beyond apparently random evolution? Graphs, which provide effective ways to represent pairwise interactions among entities, fail to represent group interactions (e.g., collaboration of three or more researchers, etc.). Regarded as a generalization of graphs, hypergraphs allowing for various sizes of edges prove fruitful in addressing this limitation. The increased complexity, however, makes it challenging to understand hypergraphs as thoroughly as graphs. In this work, we closely examine seven structural and dynamical properties of real hypergraphs from six domains. To this end, we define new measures, extend notions of common graph properties to hypergraphs, and assess the…
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Taxonomy
TopicsComplex Network Analysis Techniques · Data Visualization and Analytics · Mental Health Research Topics
