Sampling networks with prescribed degree correlations

ORAL

Abstract

A feature of a network known to affect its structural and dynamical properties is the presence of correlations amongst the node degrees. Degree correlations are a measure of how much the connectivity of a node influences the connectivity of its neighbours, and they are fundamental in the study of processes such as the spreading of information or epidemics, the cascading failures of damaged systems and the evolution of social relations. We introduce a method, based on novel mathematical results, that allows the exact sampling of networks where the number of connections between nodes of any given connectivity is specified. Our algorithm provides a weight associated to each sample, thereby allowing network observables to be measured according to any desired distribution, and it is guaranteed to always terminate successfully in polynomial time. Thus, our new approach provides a preferred tool for scientists to model complex systems of current relevance, and enables researchers to precisely study correlated networks with broad societal importance.

Authors

  • Charo Del Genio

    University of Warwick

  • Kevin E. Bassler

    University of Houston, Department of Physics, University of Houston

  • P\'eter Erd\H{o}s

    Hungarian Academy of Science

  • Istv\'an Miklos

    Hungarian Academy of Science

  • Zolt\'an Toroczkai

    University of Notre Dame