Publication | Open Access
Temporal information gathering process for node ranking in time-varying networks
37
Citations
33
References
2019
Year
EngineeringNetwork AnalysisTemporal Information GatheringNetwork DynamicDynamic NetworkComputational Social ScienceNetwork EvolutionInformation RetrievalData ScienceSystems EngineeringTemporal InformationCombinatorial OptimizationNetwork OptimizationSocial Network AnalysisKnowledge DiscoveryComputer ScienceReal WorldNetwork ScienceGraph TheoryNetwork AlgorithmBusinessTemporal NetworkNode Ranking
Many systems are dynamic and time-varying in the real world. Discovering the vital nodes in temporal networks is more challenging than that in static networks. In this study, we proposed a temporal information gathering (TIG) process for temporal networks. The TIG-process, as a node's importance metric, can be used to do the node ranking. As a framework, the TIG-process can be applied to explore the impact of temporal information on the significance of the nodes. The key point of the TIG-process is that nodes' importance relies on the importance of its neighborhood. There are four variables: temporal information gathering depth n, temporal distance matrix D, initial information c, and weighting function f. We observed that the TIG-process can degenerate to classic metrics by a proper combination of these four variables. Furthermore, the fastest arrival distance based TIG-process ( fad-tig) is performed optimally in quantifying nodes' efficiency and nodes' spreading influence. Moreover, for the fad-tig process, we can find an optimal gathering depth n that makes the TIG-process perform optimally when n is small.
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