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An Improved Spectral Clustering Community Detection Algorithm Based on Probability Matrix

机译:一种基于概率矩阵的改进的谱聚类群落检测算法

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The similarity graphs of most spectral clustering algorithms carry lots of wrong community information. In this paper, we propose a probability matrix and a novel improved spectral clustering algorithm based on the probability matrix for community detection. First, the Markov chain is used to calculate the transition probability between nodes, and the probability matrix is constructed by the transition probability. Then, the similarity graph is constructed with the mean probability matrix. Finally, community detection is achieved by optimizing the NCut objective function. The proposed algorithm is compared with SC, WT, FG, FluidC, and SCRW on artificial networks and real networks. Experimental results show that the proposed algorithm can detect communities more accurately and has better clustering performance.
机译:大多数光谱聚类算法的相似性图具有许多错误的社区信息。本文提出了一种基于概率矩阵的概率矩阵和新颖的改进的谱聚类算法进行群落检测。首先,马尔可夫链用于计算节点之间的转换概率,并且概率矩阵由转换概率构成。然后,使用平均概率矩阵构成相似性图。最后,通过优化NCUT目标函数来实现社区检测。将所提出的算法与人工网络和真实网络上的SC,WT,FG,FluidC和ScR进行比较。实验结果表明,该算法可以更准确地检测社区并具有更好的聚类性能。

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