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Identifying a set of influential spreaders in complex networks

机译:识别复杂网络中的一组有影响力的吊具

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Identifying a set of influential spreaders in complex networks plays a crucial role in effective information spreading. A simple strategy is to choose top-r ranked nodes as spreaders according to influence ranking method such as PageRank, ClusterRank and k-shell decomposition. Besides, some heuristic methods such as hill-climbing, SPIN, degree discount and independent set based are also proposed. However, these approaches suffer from a possibility that some spreaders are so close together that they overlap sphere of influence or time consuming. In this report, we present a simply yet effectively iterative method named VoteRank to identify a set of decentralized spreaders with the best spreading ability. In this approach, all nodes vote in a spreader in each turn, and the voting ability of neighbors of elected spreader will be decreased in subsequent turn. Experimental results on four real networks show that under Susceptible-Infected-Recovered (SIR) and Susceptible-Infected (SI) models, VoteRank outperforms the traditional benchmark methods on both spreading rate and final affected scale. What's more, VoteRank has superior computational efficiency.
机译:识别复杂网络中的一组有影响力的传播者在有效的信息传播中起着至关重要的作用。一种简单的策略是根据影响力排序方法(例如PageRank,ClusterRank和k-shell分解)选择排名最高的r节点作为扩展器。此外,还提出了基于爬山,SPIN,度数折扣和独立集的启发式方法。但是,这些方法存在以下可能性,即某些吊具过于靠近以至于它们重叠影响范围或耗时。在此报告中,我们提出了一种简单而有效的迭代方法,称为VoteRank,用于识别一组具有最佳扩展能力的分散式扩展器。在这种方法中,所有的节点投票在每回合一个吊具,并选举吊具邻居的投票能力将在随后依次降低。在四个真实网络上的实验结果表明,在敏感感染恢复(SIR)和敏感感染(SI)模型下,VoteRank在传播速度和最终影响范围方面均优于传统基准方法。而且,VoteRank具有出色的计算效率。

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