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An improved pagerank for identifying the influential nodes based on resource allocation in directed networks

机译:一种改进的PageRank,用于识别基于导向网络中资源分配的有影响力的节点

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Identifying the influential nodes in directed networks is one of the most promising domains. In this paper, we present an improved PageRank based on the resource allocation (IPRA) method to identify the influential nodes. Comparing with the results of the Susceptible Infected Recovered (SIR) model for four real networks, the IPRA method could identify influential nodes more accurately than the PageRank and ClusterRank. Specially, in the US air line network, the Kendall's tau could be enhanced 700% when the spreading rate is 0.2. In the Email network, the Kendall's tau could be enhanced 850% when the spreading rate is 0.01.
机译:识别有关网络中的有影响性节点是最有前途的域之一。在本文中,我们基于资源分配(IPRA)方法来介绍一种改进的PageRank来识别有影响性节点。与四个真实网络的敏感感染恢复(SIR)模型的结果相比,IPRA方法可以比PageRank和ClusterRank更准确地识别有影响力的节点。特别是,在美国航线网络中,当扩展率为0.2时,肯德尔的TAU可以增强700 %。在电子邮件网络中,当扩频率为0.01时,Kendall的Tau可以提高850 %。

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