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Fast community detection based on sector edge aggregation metric model in hyperbolic space

机译:双曲空间中基于扇区边缘聚集度量模型的快速社区检测

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By studying the edge aggregation characteristic of nodes in hyperbolic space, Sector Edge Aggregation Metric (SEAM) model is proposed and theoretically proved in this paper. In hyperbolic disk SEAM model determines the minimum angular range of a sector which possesses the maximal edge aggregation of nodes. The set of nodes within such sector has dense internal links, which corresponds with the characteristic of community structure. Based on SEAM model, we propose a fast community detection algorithm called Greedy Optimization Modularity Algorithm (GOMA) which employs greedy optimization strategy and hyperbolic coordinates. GOMA firstly divides initial communities according to the quantitative results of sector edge aggregation given by SEAM and the nodes' hyperbolic coordinates, then based on greedy optimization strategy, only merges the two angular neighboring communities in hyperbolic disk to optimize the network modularity function, and consequently obtains high-quality community detection. The strategies of initial community partition and merger in hyperbolic space greatly improve the speed of searching the most optimal modularity. Experimental results indicate that GOMA is able to detect out high-quality community structure in synthetic and real networks, and performs better when applied to the large-scale and dense networks with strong clustering. (C) 2016 Elsevier B.V. All rights reserved.
机译:通过研究双曲空间中节点的边缘聚集特性,提出了扇区边缘聚集度量模型(SEAM),并在理论上进行了证明。在双曲磁盘中,SEAM模型确定具有节点最大边缘聚集的扇区的最小角度范围。该扇区内的节点集具有密集的内部链接,这与社区结构的特征相对应。基于SEAM模型,提出了一种贪婪优化策略和双曲线坐标的快速社区检测算法,称为贪婪优化模块算法(GOMA)。 GOMA首先根据SEAM给出的扇区边缘聚集的量化结果和节点的双曲坐标对初始社区进行划分,然后基于贪婪优化策略,仅将双角度磁盘中的两个角相邻社区合并,以优化网络模块化功能,因此获得高质量的社区检测。双曲空间中初始社区划分和合并的策略大大提高了搜索最佳模块性的速度。实验结果表明,GOMA能够在合成网络和真实网络中检测出高质量的社区结构,并且在应用于具有强聚类的大规模密集网络时表现更好。 (C)2016 Elsevier B.V.保留所有权利。

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