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Node Importance Ranking of Complex Network based on Degree and Network Density

机译:基于学位和网络密度的复杂网络节点重要性排名

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Node importance ranking of complex networks is of great significance to the study of network robustness. The classical centrality measure degree can reflect the number of neighbors of a node, but it ignores the information between its neighbors. In order to mine the important nodes in the network accurately and efficiently, a method of ranking the node importance of complex networks based on multi-attribute evaluation and node deletion is proposed in this paper. Based on the degree attributes of the target node and its neighbors, this method introduces two attributes, which are the local network density centered on the target node and the assortativity coefficient. It takes into account the characteristics of the scale, tightness, and topology of the local area network where the node and its neighbors are located. This paper conducts deliberate attack experiments on four real networks. Through a comparison between the experimental results of the maximal connected coefficient and network efficiency, our approach is proven to be valid and feasible.
机译:复杂网络的节点重要性对网络稳健性的研究具有重要意义。古典中心度测量度可以反映节点的邻居的数量,但它忽略了其邻居之间的信息。为了准确且有效地挖掘网络中的重要节点,在本文中提出了一种基于多属性评估和节点删除的复合网络的节点重要性的方法。基于目标节点及其邻居的程度属性,该方法引入了两个属性,该属性是居中在目标节点上的本地网络密度和assortity系数。它考虑了节点及其邻居所在的局域网的比例,紧密性和拓扑的特征。本文在四个真实网络中进行了刻意的攻击实验。通过比较最大连接系数和网络效率的实验结果,我们的方法被证明是有效和可行的。

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