Litcius/Paper detail

Ranking influential nodes in networks from aggregate local information

Silvia Bartolucci, Fabio Caccioli, Francesco Caravelli, Pierpaolo Vivo

2023Physical Review Research29 citationsDOIOpen Access PDF

Abstract

Many complex systems exhibit a natural hierarchy in which elements can be ranked according to a notion of ``influence''. While the complete and accurate knowledge of the interactions between constituents is ordinarily required for the computation of nodes' influence, using a low-rank approximation we show that---in a variety of contexts---local and aggregate information about the neighborhoods of nodes is enough to reliably estimate how influential they are without the need to infer or reconstruct the whole map of interactions. Our framework is successful in approximating with high accuracy different incarnations of influence in systems as diverse as the WWW PageRank, trophic levels of ecosystems, upstreamness of industrial sectors in complex economies, and centrality measures of social networks, as long as the underlying network is not exceedingly sparse. We also discuss the implications of this ``emerging locality'' on the approximate calculation of nonlinear network observables.

Topics & Concepts

CentralityPageRankAggregate (composite)Computer scienceLocalityHierarchyVariety (cybernetics)Ranking (information retrieval)Rank (graph theory)Network scienceTheoretical computer scienceData scienceComplex networkComputationNetwork theoryData miningArtificial intelligenceMathematicsAlgorithmStatisticsEconomicsLinguisticsWorld Wide WebComposite materialPhilosophyMarket economyMaterials scienceCombinatoricsComplex Network Analysis TechniquesOpinion Dynamics and Social InfluenceBioinformatics and Genomic Networks