Litcius/Paper detail

Growing scale-free simplices

Kirill Kovalenko, I. Sendiña–Nadal, Nagi Khalil, Alex Dainiak, Daniil Musatov, А. М. Райгородский, K. Alfaro-Bittner, Baruch Barzel, Stefano Boccaletti

2021Communications Physics68 citationsDOIOpen Access PDF

Abstract

Abstract The past two decades have seen significant successes in our understanding of networked systems, from the mapping of real-world networks to the establishment of generative models recovering their observed macroscopic patterns. These advances, however, are restricted to pairwise interactions and provide limited insight into higher-order structures. Such multi-component interactions can only be grasped through simplicial complexes, which have recently found applications in social, technological, and biological contexts. Here we introduce a model to grow simplicial complexes of order two, i.e., nodes, links, and triangles, that can be straightforwardly extended to structures containing hyperedges of larger order. Specifically, through a combination of preferential and/or nonpreferential attachment mechanisms, the model constructs networks with a scale-free degree distribution and an either bounded or scale-free generalized degree distribution. We arrive at a highly general scheme with analytical control of the scaling exponents to construct ensembles of synthetic complexes displaying desired statistical properties.

Topics & Concepts

Scale-free networkBounded functionPairwise comparisonDegree distributionConstruct (python library)Scale (ratio)Theoretical computer scienceDegree (music)Computer scienceScalingPreferential attachmentOrder (exchange)Component (thermodynamics)Generative grammarMathematicsComplex networkCombinatoricsArtificial intelligenceGeographyPhysicsCartographyGeometryMathematical analysisFinanceProgramming languageAcousticsEconomicsThermodynamicsComplex Network Analysis TechniquesData Visualization and AnalyticsTopological and Geometric Data Analysis