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Fast detection of community structures using graph traversal in social networks

机译:在社交网络中使用图形遍历的社区结构的快速检测

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摘要

Finding community structures in social networks is considered to be a challenging task as many of the proposed algorithms are computationally expensive and does not scale well for large graphs. Most of the community detection algorithms proposed till date are unsuitable for applications that would require detection of communities in real time, especially for massive networks. The Louvain method, which uses modularity maximization to detect clusters, is usually considered to be one of the fastest community detection algorithms even without any provable bound on its running time. We propose a novel graph traversal-based community detection framework, which not only runs faster than the Louvain method but also generates clusters of better quality for most of the benchmark datasets. We show that our algorithms run in O(|V|+|E|) time to create an initial cover before using modularity maximization to get the final cover.
机译:在社交网络中寻找社区结构被认为是一个具有挑战性的任务,因为许多所提出的算法是计算昂贵的并且对于大图来说并不符合速度。 迄今为止提出的大多数社区检测算法都不适用于需要实时检测社区的应用,特别是对于大规模网络。 使用模块化最大化来检测集群的Louvain方法通常被认为是即使在运行时间上没有任何可证实的限制,也是最快的社区检测算法之一。 我们提出了一种新颖的基于遍历的遍历遍历的社区检测框架,这不仅比Louvain方法更快地运行,而且还为大多数基准数据集生成更好质量的集群。 我们展示我们的算法在O(| v | + | |)时间在使用模块化最大化以获得最终封面之前创建初始封面。

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