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Community Division of Bipartite Network Based on Information Transfer Probability

机译:基于信息转移概率的二分网络社区划分

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Bipartite network is a performance of complex networks,The divided of unilateral node of bipartite network has important practical significance for the study of complex networks of community division. Based on the diffusion probability of information and modules ideas in the network,this paper presents a community divided clustering algorithm (IPS algorithm) for bipartite network unilateral nodes.The algorithm simulates the probability of information transfer in the network,through mutual support value between the nodes in network, selecting the max value as the basis for merger different communities. Follow the module of the definition for division after mapping the bipartite network nodes as a single department unilateral network.Finally,we use actual network test the performance of the algorithm.Experimental results show that,the algorithm can not only accurate divided the unilateral node of bipartite network,But also can get high quality community division.
机译:二角形网络是复杂网络的性能,除以二分网络的单侧节点对社区划分复杂网络的研究具有重要的实际意义。基于网络中信息和模块思想的扩散概率,本文介绍了双面网络单侧节点的社区分割聚类算法(IPS算法)。算法通过相互支持值模拟网络中信息传输的概率。网络中的节点,选择最大值作为合并不同社区的基础。按照定义的模块映射二分支网节点作为单侧单侧网络。最后,我们使用实际网络测试的算法性能。实验结果表明,算法不仅可以准确地分成单侧节点二分网络,也可以获得高质量的社区部门。

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