首页> 外文期刊>International Journal of Modern Physics, B. Condensed Matter Physics, Statistical Physics, Applied Physics >Uncovering community structure in networks via hybrid clustering using cascading failure dynamics and topological metric functions
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Uncovering community structure in networks via hybrid clustering using cascading failure dynamics and topological metric functions

机译:通过使用级联失败动态和拓扑度量函数通过混合聚类揭示网络中的社区结构

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摘要

Many networks have community structure — groups of nodes within which connections are dense but between which they are sparser. While there exists a range of algorithms for community detection in networks, most of them try to discover this important mesoscale structure from a topological point of view solely. Here we develop a hybrid clustering approach for uncovering the community structure in a network using a combination of information on local topology of the network and on the dynamics of the cascading failures. The originality of the proposed approach is that we introduce a novel fusion of the dynamic behaviors of the cascading failures and topological metric functions in the kth-nearest neighbor density scheme, which integrates both the global and local structural information of a given network for community detection. The experimental results on both artificial random and real-world benchmark networks indicate the effectiveness and reliability of our approach.
机译:许多网络都有社区结构 - 其中连接的节点组密集,但它们之间是稀疏。 虽然存在一系列社区检测的算法,但大多数人都尝试从单独的拓扑观点发现这个重要的Mescle结构。 在这里,我们使用关于网络的当地拓扑信息的信息和级联故障的动态来开发一种混合聚类方法,用于揭示网络中的社区结构。 所提出的方法的原创性是我们介绍了kth-chirst邻密度方案中的级联故障和拓扑度量函数的动态行为的新融合,这集成了给定网络的全局和局部结构信息进行社区检测 。 人工随机和现实世界基准网络的实验结果表明了我们方法的有效性和可靠性。

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