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首页> 外文期刊>Journal of software >A New Vertex Similarity Metric for Community Discovery: A Local Flow Model
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A New Vertex Similarity Metric for Community Discovery: A Local Flow Model

机译:用于社区发现的新顶点相似性度量:本地流模型

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The hierarchical clustering methods based on vertex similarity have the advantage that global evaluation can be incorporated for community discovery. Vertex similarity metric is the most important part of these methods. However, the existing methods do not perform well for community discovery compared with the state-of-the-art algorithms. In this paper, we propose a new vertex similarity metric based on local flow model, called Local Flow Metric (LFM), for community discovery. LFM considers both the number of connecting paths and the local edge density which are essential measures in community structure. Compared with the existing metrics of vertex similarity, LFM outperforms 'substantially in community discovery quality and the computing time. Furthermore, our LFM algorithm is superior to the state-of-the-art algorithms in some aspects.
机译:基于顶点相似性的分层聚类方法的优点是可以合并全局评估以进行社区发现。顶点相似性度量是这些方法中最重要的部分。但是,与最新算法相比,现有方法在社区发现方面表现不佳。在本文中,我们提出了一种基于局部流动模型的新的顶点相似性度量,称为局部流动度量(LFM),用于社区发现。 LFM同时考虑了连接路径的数量和局部边缘密度,这是社区结构中必不可少的指标。与现有的顶点相似性度量相比,LFM在社区发现质量和计算时间方面明显优于'。此外,在某些方面,我们的LFM算法优于最新算法。

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