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A Novel Complex Networks Clustering Algorithm Based on the Core Influence of Nodes

机译:基于节点核心影响的复杂网络聚类算法

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摘要

In complex networks, cluster structure, identified by the heterogeneity of nodes, has become a common and important topological property. Network clustering methods are thus significant for the study of complex networks. Currently, many typical clustering algorithms have some weakness like inaccuracy and slow convergence. In this paper, we propose a clustering algorithm by calculating the core influence of nodes. The clustering process is a simulation of the process of cluster formation in sociology. The algorithm detects the nodes with core influence through their betweenness centrality, and builds the cluster's core structure by discriminant functions. Next, the algorithm gets the final cluster structure after clustering the rest of the nodes in the network by optimizing method. Experiments on different datasets show that the clustering accuracy of this algorithm is superior to the classical clustering algorithm (Fast-Newman algorithm). It clusters faster and plays a positive role in revealing the real cluster structure of complex networks precisely.
机译:在复杂的网络中,由节点的异构性标识的集群结构已成为一种常见且重要的拓扑属性。因此,网络聚类方法对于研究复杂网络具有重要意义。当前,许多典型的聚类算法都有一些缺点,例如不准确和收敛缓慢。本文通过计算节点的核心影响力提出了一种聚类算法。聚类过程是对社会学中聚类形成过程的模拟。该算法通过中间性检测具有核心影响的节点,并通过判别函数构建集群的核心结构。接下来,通过优化方法对网络中的其余节点进行聚类,从而获得最终的聚类结构。在不同数据集上的实验表明,该算法的聚类精度优于经典聚类算法(Fast-Newman算法)。它的聚类速度更快,并在准确揭示复杂网络的真实聚类结构方面发挥了积极作用。

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