基于节点评分和边界节点同步标签更新的社交网络社区检测

M. Zarezade, E. Nourani, Asgarali Bouyer
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引用次数: 10

摘要

群落结构对于发现复杂网络的重要结构和潜在性质至关重要。近年来,由于线性时间复杂性和适用于大规模网络的优势,本地社区检测方法的质量不断提高,已成为复杂网络研究的热点。然而,这些方法存在许多缺点,如不稳定、精度低、随机性等。G-CN算法是一种与LPA方法使用相同标签传播的局部方法,但与LPA不同的是,每次迭代只更新边界节点的标签,从而减少了执行时间。然而,它存在分辨率限制和精度低的问题。为了克服这些问题,本文提出了一种改进的社区检测方法,称为SD-GCN,该方法使用混合节点评分和边界节点的同步标签更新,并在初始更新中禁用随机标签更新。在第一阶段,它使用基于度中心性和公共邻居度量获得的分数,以同步的方式更新边界节点的标签。此外,我们在第二阶段定义了一种新的社区合并方法,该方法比基于模块化的方法更快。进行了大量的实验来评估SD-GCN在小型和大型真实世界网络和人工网络上的性能。这些实验验证了社区检测方法的准确性和稳定性的显著提高,同时在线性时间复杂性中缩短了执行时间。
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Community Detection using a New Node Scoring and Synchronous Label Updating of Boundary Nodes in Social Networks
Community structure is vital to discover the important structures and potential property of complex networks. In recent years, the increasing quality of local community detection approaches has become a hot spot in the study of complex network due to the advantages of linear time complexity and applicable for large-scale networks. However, there are many shortcomings in these methods such as instability, low accuracy, randomness, etc. The G-CN algorithm is one of local methods that uses the same label propagation as the LPA method, but unlike the LPA, only the labels of boundary nodes are updated at each iteration that reduces its execution time. However, it has resolution limit and low accuracy problem. To overcome these problems, this paper proposes an improved community detection method called SD-GCN which uses a hybrid node scoring and synchronous label updating of boundary nodes, along with disabling random label updating in initial updates. In the first phase, it updates the label of boundary nodes in a synchronous manner using the obtained score based on degree centrality and common neighbor measures. In addition, we defined a new method for merging communities in second phase which is faster than modularity-based methods. Extensive set of experiments are conducted to evaluate performance of the SD-GCN on small and large-scale real-world networks and artificial networks. These experiments verify significant improvement in the accuracy and stability of community detection approaches in parallel with shorter execution time in a linear time complexity.
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