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Community Detection in Complex Networks

机译:复杂网络中的社区检测

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With the rapidly growing evidence that various systems in nature and society can be modeled as complex networks, community detection in networks becomes a hot research topic in physics, sociology, computer society, etc. Although this investigation of community structures has motivated many diverse algorithms, most of them are unsuitable when dealing with large networks due to their computational cost. In this paper, we present a faster algorithm ComTector, which is more efficient for the community detection in large complex networks based on the nature of overlapping cliques. This algorithm does not require any priori knowledge about the number or the original division of the communities. With respect to practical applications, ComTector is challenging with five different types of networks including the classic Zachary Karate Club, Scientific Collaboration Network, South Florida Free Word Association Network, Urban Traffic Network, North America Power Grid and the Telecommunication Call Network. Experimental results show that our algorithm can discover meaningful communities that meet both the objective basis and our intuitions.
机译:越来越多的证据表明,可以将自然和社会中的各种系统建模为复杂的网络,网络中的社区检测已成为物理学,社会学,计算机社会等领域的热门研究课题。尽管对社区结构的研究激发了许多不同的算法,它们中的大多数由于其计算成本而不适用于大型网络。在本文中,我们提出了一种更快的算法ComTector,该算法基于重叠集团的性质,对于大型复杂网络中的社区检测更为有效。该算法不需要任何有关社区数量或原始划分的先验知识。在实际应用方面,ComTector面临着五种不同类型的网络的挑战,这些网络包括经典的Zachary空手道俱乐部,科学协作网络,南佛罗里达自由词协会网络,城市交通网络,北美电网和电信呼叫网络。实验结果表明,我们的算法可以发现符合客观基础和直觉的有意义的社区。

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