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Null Model and Community Structure in Heterogeneous Networks

机译:异构网络中的空模型和社区结构

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Finding different types of communities has become a research hot spot in network science. Plenty of the real-world systems containing different types of objects and relationships can be perfectly described as the heterogeneous networks. However, most of the current research on community detection is applied for the homogeneous networks, while there is no effective function to quantify the quality of the community structure in heterogeneous networks. In this paper, we first propose the null model with the same heterogeneous node degree distribution of the original heterogeneous networks. The probability of there being an edge between two nodes is given to build the modularity function of the heterogeneous networks. Based on our modularity function, a fast algorithm of community detection is proposed for the large scale heterogeneous networks. We use the algorithm to detect the communities in the real-world twitter event networks. The experimental results show that our method perform better than other exciting algorithms and demonstrate that the modularity function of the heterogeneous networks is an effective parameter that can be used to quantify the quality of the community structure in heterogeneous networks.
机译:发现不同类型的社区已成为网络科学的研究热点。包含不同类型对象和关系的大量现实系统可以完美地描述为异构网络。然而,大多数关于社区检测的研究是对均质网络的研究,而没有有效的功能来量化异构网络中的社区结构的质量。在本文中,我们首先提出了具有原始异构网络的相同异构节点分布的空模型。给出两个节点之间的边缘的概率来构建异构网络的模块化函数。基于我们的模块化函数,提出了一种快速的社区检测算法,用于大规模异构网络。我们使用该算法检测真实世界推特事件网络中的社区。实验结果表明,我们的方法比其他励磁算法更好,并且证明异构网络的模块函数是一种有效参数,可用于量化异构网络中的社区结构的质量。

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