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Node Conductance: A Scalable Node Centrality Measure on Big Networks

机译:节点电导:大型网络上的可扩展节点中心度度量

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Node centralities such as Degree and Betweenness help detecting influential nodes from local or global view. Existing global centrality measures suffer from the high computational complexity and unrealistic assumptions, limiting their applications on real-world applications. In this paper, we propose a new centrality measure, Node Conductance, to effectively detect spanning structural hole nodes and predict the formation of new edges. Node Conductance is the sum of the probability that node i is revisited at r-th step, where r is an integer between 1 and infinity. Moreover, with the help of node embedding techniques, Node Conductance is able to be approximately calculated on big networks effectively and efficiently. Thorough experiments present the differences between existing centralities and Node Conductance, its outstanding ability of detecting influential nodes on both static and dynamic network, and its superior efficiency compared with other global centralities.
机译:诸如“度”和“中间性”之类的节点中心性有助于从本地或全局视图检测有影响力的节点。现有的全球中心性度量标准存在计算复杂性高和不切实际的假设,从而限制了它们在实际应用中的应用。在本文中,我们提出了一种新的中心度度量,即“节点电导”,以有效地检测跨越结构的孔节点并预测新边缘的形成。节点电导率是节点i在第r步被重新访问的概率之和,其中r是1到无穷大之间的整数。此外,借助节点嵌入技术,可以在大型网络上高效地近似计算节点电导率。全面的实验显示了现有中心点和节点电导率之间的差异,其在静态和动态网络上检测有影响的节点的出色能力以及与其他全局中心点相比优越的效率。

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