识别和排序复杂网络中有影响力的传播者

Zong-Wen Liang, Jian-ping Li
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引用次数: 6

摘要

识别有影响的传播者是控制信息传播的重要基础工作。先前的文献提出了许多基于中心性度量的方法,如度中心性、中间中心性、接近中心性和特征向量中心性,并证明了k壳分解在寻找网络中有影响力的传播者方面具有压倒性的性能。然而,由于前三种方法的性能都不太理想,而且k壳分解不能对同一k核中的节点进行排序,如何找到有影响力的传播者仍然是一个悬而未决的挑战。本文考虑了μ跳邻域对节点的影响,提出了一个新的度量,即μ跳邻域的k-壳值(μ- nks)来估计网络中每个k-壳节点的传播影响。实验结果表明,与其他排序方法相比,该方法可以更准确地量化节点影响,并提供更单调的排序列表。
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Identifying and ranking influential spreaders in complex networks
Identifying influential spreaders is an important and fundamental work in control information diffusion. Many methods based on centrality measures such as degree centrality, the betweenness centrality, closeness centrality and eigenvector centrality are proposed in the previous literatures, and it has proved that the k-shell decomposition plays overwhelming performance to find influential spreaders in networks. However, as the performance of former three methods is not satisfying enough and k-shell decomposition cannot rank nodes in the same k-core how to find the influential spreaders is still an open challenge. In this paper, we concerned about the influence of μ hop neighborhoods on a node and propose a novel metric, k-shell values of μ hop neighborhoods (μ-NKS), to estimate the spreading influence of nodes of each k- shell in networks. Our experimental results show that the proposed method can quantify the node influence more accurately and provide a more monotonic ranking list than other ranking methods.
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