Litcius/Paper detail

Scaling up real networks by geometric branching growth

Muhua Zheng, Guillermo García-Pérez, Marián Boguñá, M. Ángeles Serrano

2021Proceedings of the National Academy of Sciences41 citationsDOIOpen Access PDF

Abstract

Real networks often grow through the sequential addition of new nodes that connect to older ones in the graph. However, many real systems evolve through the branching of fundamental units, whether those be scientific fields, countries, or species. Here, we provide empirical evidence for self-similar growth of network structure in the evolution of real systems-the journal-citation network and the world trade web-and present the geometric branching growth model, which predicts this evolution and explains the symmetries observed. The model produces multiscale unfolding of a network in a sequence of scaled-up replicas preserving network features, including clustering and community structure, at all scales. Practical applications in real instances include the tuning of network size for best response to external influence and finite-size scaling to assess critical behavior under random link failures.

Topics & Concepts

Branching (polymer chemistry)ScalingPreferential attachmentComputer scienceStatistical physicsComplex networkNetwork modelMetric (unit)Branching processGeometric networksTheoretical computer scienceBiological systemAlgorithmMathematicsData miningPhysicsBiologyGeometryOperations managementComposite materialWorld Wide WebMaterials scienceEconomicsComplex Network Analysis TechniquesOpinion Dynamics and Social InfluenceTheoretical and Computational Physics
Scaling up real networks by geometric branching growth | Litcius