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Preferential attachment hypergraph with high modularity

Frédéric Giroire, Nicolas Nisse, Thibaud Trolliet, Małgorzata Sulkowska

2022Network Science11 citationsDOIOpen Access PDF

Abstract

Abstract Numerous works have been proposed to generate random graphs preserving the same properties as real-life large-scale networks. However, many real networks are better represented by hypergraphs. Few models for generating random hypergraphs exist, and also, just a few models allow to both preserve a power-law degree distribution and a high modularity indicating the presence of communities. We present a dynamic preferential attachment hypergraph model which features partition into communities. We prove that its degree distribution follows a power-law, and we give theoretical lower bounds for its modularity. We compare its characteristics with a real-life co-authorship network and show that our model achieves good performances. We believe that our hypergraph model will be an interesting tool that may be used in many research domains in order to reflect better real-life phenomena.

Topics & Concepts

HypergraphPreferential attachmentModularity (biology)Degree distributionPartition (number theory)Computer scienceTheoretical computer scienceRandom graphComplex networkDegree (music)MathematicsGraphDiscrete mathematicsCombinatoricsPhysicsWorld Wide WebBiologyAcousticsGeneticsComplex Network Analysis TechniquesPeer-to-Peer Network TechnologiesBioinformatics and Genomic Networks
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