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The localization of non-backtracking centrality in networks and its physical consequences

Romualdo Pastor-Satorras, Claudio Castellano

2020Scientific Reports45 citationsDOIOpen Access PDF

Abstract

The spectrum of the non-backtracking matrix plays a crucial role in determining various structural and dynamical properties of networked systems, ranging from the threshold in bond percolation and non-recurrent epidemic processes, to community structure, to node importance. Here we calculate the largest eigenvalue of the non-backtracking matrix and the associated non-backtracking centrality for uncorrelated random networks, finding expressions in excellent agreement with numerical results. We show however that the same formulas do not work well for many real-world networks. We identify the mechanism responsible for this violation in the localization of the non-backtracking centrality on network subgraphs whose formation is highly unlikely in uncorrelated networks, but rather common in real-world structures. Exploiting this knowledge we present an heuristic generalized formula for the largest eigenvalue, which is remarkably accurate for all networks of a large empirical dataset. We show that this newly uncovered localization phenomenon allows to understand the failure of the message-passing prediction for the percolation threshold in many real-world structures.

Topics & Concepts

CentralityUncorrelatedNode (physics)HeuristicPercolation (cognitive psychology)Computer scienceStatistical physicsEigenvalues and eigenvectorsPercolation thresholdMatrix (chemical analysis)Complex networkNetwork theoryPercolation theoryTheoretical computer scienceRandom matrixNetwork scienceMathematicsMechanism (biology)Work (physics)PhenomenonBiological networkProbability and statisticsTopology (electrical circuits)AlgorithmDirected percolationRangingStochastic block modelComplex Network Analysis TechniquesMental Health Research TopicsOpinion Dynamics and Social Influence