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A Unified Model for Community Detection of Multiplex Networks

机译:多重网络社区检测的统一模型

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Multiplex networks contain multiple simplex networks. Community detection of multiplex networks needs to deal with information from all the simplex networks. Most approaches aggregate all the links in different simplex networks treating them as being equivalent. However, such aggregation might ignore information of importance in simplex networks. In addition, for each simplex network, the aggregation only considers adjacency relation among nodes, which can't reflect real closeness among nodes very well. In order to solve the problems above, this paper presents a unified model to detect community structure by grouping the nodes based on a unified matrix transferred from multiplex network. In particular, we define importance and node similarity to describe respectively correlation difference of simplex networks and closeness among nodes in each simplex network. The experiment results show the higher accuracy of our model for community detection compared with competing methods on synthetic datasets and real world datasets.
机译:多重网络包含多个单一网络。复用网络的社区检测需要处理来自所有单工网络的信息。大多数方法将不同单纯形网络中的所有链接汇总在一起,将它们视为等效。但是,这种聚合可能会忽略单纯形网络中的重要信息。另外,对于每个单纯形网络,聚合仅考虑节点之间的邻接关系,不能很好地反映节点之间的真实紧密度。为了解决上述问题,本文提出了一个基于多路复用网络传输的统一矩阵,通过对节点进行分组来检测社区结构的统一模型。特别地,我们定义重要性和节点相似度以分别描述单纯形网络的相关性差异和每个单纯形网络中节点之间的紧密度。实验结果表明,与合成数据集和真实数据集上的竞争方法相比,我们的社区检测模型具有更高的准确性。

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