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Community detection in networks via a spectral heuristic based on the clustering coefficient

机译:网络中基于聚类系数的光谱启发式社区检测

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摘要

The community detection problem in networks consists of determining a clustering of "related" vertices in a graph or network. Nowadays, studies involving this problem are primarily composed of modularity maximization based heuristics. In this paper, the author proposes a spectral heuristic based on a measure known as clustering coefficient to detect communities in networks. This measure favors clusterings with a strong neighborhood structure inside clusters, apparently, overcoming the scale deficiency of the modularity maximization problem. The computational experiments indicate a very successful performance by the proposed heuristic in comparison with other community detection heuristics in the literature.
机译:网络中的社区检测问题包括确定图形或网络中“相关”顶点的聚类。如今,涉及此问题的研究主要由基于模块化最大化的启发式方法组成。在本文中,作者提出了一种基于称为聚类系数的度量的频谱启发法,以检测网络中的社区。这种措施有利于集群内部具有强邻域结构的集群,显然可以克服模块化最大化问题的规模不足。计算实验表明,与文献中的其他社区检测启发式方法相比,所提出的启发式方法具有非常成功的性能。

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