Litcius/Paper detail

Hypergraph reconstruction from network data

Jean-Gabriel Young, Giovanni Petri, Tiago P. Peixoto

2021Communications Physics100 citationsDOIOpen Access PDF

Abstract

Abstract Networks can describe the structure of a wide variety of complex systems by specifying which pairs of entities in the system are connected. While such pairwise representations are flexible, they are not necessarily appropriate when the fundamental interactions involve more than two entities at the same time. Pairwise representations nonetheless remain ubiquitous, because higher-order interactions are often not recorded explicitly in network data. Here, we introduce a Bayesian approach to reconstruct latent higher-order interactions from ordinary pairwise network data. Our method is based on the principle of parsimony and only includes higher-order structures when there is sufficient statistical evidence for them. We demonstrate its applicability to a wide range of datasets, both synthetic and empirical.

Topics & Concepts

Pairwise comparisonTheoretical computer scienceBayesian networkVariety (cybernetics)Computer scienceHypergraphRange (aeronautics)Bayesian probabilityData miningMathematicsArtificial intelligenceStatistical modelAlgorithmProbabilistic logicSimple (philosophy)Complex networkNetwork modelSet (abstract data type)Complex systemGraphical modelData structureSynthetic dataComplex Network Analysis TechniquesFunctional Brain Connectivity StudiesAdvanced Graph Neural Networks