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A Community Detection Algorithm Based on Topology Potential and Spectral Clustering

机译:基于拓扑势和谱聚类的社区检测算法

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摘要

Community detection is of great value for complex networks in understanding their inherent law and predicting their behavior. Spectral clustering algorithms have been successfully applied in community detection. This kind of methods has two inadequacies: one is that the input matrixes they used cannot provide sufficient structural information for community detection and the other is that they cannot necessarily derive the proper community number from the ladder distribution of eigenvector elements. In order to solve these problems, this paper puts forward a novel community detection algorithm based on topology potential and spectral clustering. The new algorithm constructs the normalized Laplacian matrix with nodes' topology potential, which contains rich structural information of the network. In addition, the new algorithm can automatically get the optimal community number from the local maximum potential nodes. Experiments results showed that the new algorithm gave excellent performance on artificial networks and real world networks and outperforms other community detection methods.
机译:社区检测对于了解复杂网络的内在规律和预测其行为具有重要价值。光谱聚类算法已成功应用于社区检测。这种方法有两个不足之处:一个是它们使用的输入矩阵不能为社区检测提供足够的结构信息,另一个是它们不一定从特征向量元素的阶梯分布中得出正确的社区数。为了解决这些问题,本文提出了一种基于拓扑势和谱聚类的新型社区检测算法。新算法构造了具有节点拓扑势的归一化拉普拉斯矩阵,该矩阵包含丰富的网络结构信息。另外,新算法可以从本地最大潜在节点自动获得最佳社区号。实验结果表明,该算法在人工网络和现实网络中均具有良好的性能,优于其他社区检测方法。

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