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Community mining with new node similarity by incorporating both global and local topological knowledge in a constrained random walk

机译:通过将全球和本地拓扑知识合并到受约束的随机游走中,以具有新节点相似性的社区挖掘

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摘要

Detection of community is a crucial step to understand the structure and dynamics of complex networks. Most of conventional community detection methods focus on optimizing a certain,objective function or on clustering nodes based on their similarities, which leads to a phenomenon that they have preference for specific types of networks but are not general. Using constrained random walk, we exploit global and local topology structures of network to propose a modified transition matrix and further to define a new similarity metric (named ISIM) between two nodes. In contrast to the existing similarities, ISIM does not work directly on the observed data, but in a convergent stable space. This feature makes ISIM robust to the observed noisy data in real-world networks. ISIM not only measures node's distance, but also captures node's topology structure in network. Experiments on synthetic and real-world networks demonstrate that ISIM can be successfully applied to community detection in broader types of networks and outperforms other community detection methods. (C) 2015 Elsevier B.V. All rights reserved.
机译:社区检测是了解复杂网络的结构和动态的关键步骤。大多数传统的社区检测方法都专注于优化某些目标功能或基于它们的相似性对节点进行聚类,这导致了一种现象,即它们偏爱特定类型的网络,但并不通用。使用受约束的随机游走,我们利用网络的全局和局部拓扑结构来提出修改的过渡矩阵,并进一步定义两个节点之间的新相似性度量(称为ISIM)。与现有的相似性相反,ISIM不能直接在观测数据上工作,而是在收敛的稳定空间中工作。此功能使ISIM对现实网络中观察到的噪声数据具有鲁棒性。 ISIM不仅可以测量节点的距离,还可以捕获网络中节点的拓扑结构。综合和现实网络上的实验表明,ISIM可以成功地应用于更广泛类型的网络中的社区检测,并且胜过其他社区检测方法。 (C)2015 Elsevier B.V.保留所有权利。

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