Dynamic centrality measures for cattle trade networks
Patrick Hoscheit, Éric Anthony, Elisabeta Vergu
Abstract
Abstract We study network centrality measures that take into account the specific structure of networks with time-stamped edges. In particular, we explore how such measures can be used to identify nodes most relevant for the spread of epidemics on directed, temporal contact networks. We present a percolation study on the French cattle trade network, proving that time-aware centrality measures such as the TempoRank significantly outperform measures defined on the static network. In order to make TempoRank amenable to large-scale networks, we show how it can be efficiently computed through direct simulation of time-respecting random walks.
Topics & Concepts
CentralityComputer sciencePercolation (cognitive psychology)Network scienceDynamic network analysisComplex networkOrder (exchange)Network theoryScale (ratio)Theoretical computer scienceMathematicsComputer networkGeographyEconomicsPsychologyStatisticsCartographyWorld Wide WebNeuroscienceFinanceComplex Network Analysis TechniquesSocial Capital and Networks