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Community Division of Bipartite Network Based on Information Transfer Probability

机译:基于信息传递概率的二元网络社区划分

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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 net-work,selecting the max value as the basis for merger different communi-ties.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:二分网络是复杂网络的一种表现,二分网络单边节点的划分对于研究复杂的社区划分网络具有重要的现实意义。基于信息和模块思想在网络中的传播概率,提出了一种针对两方网络单边节点的社区划分聚类算法(IPS算法)。该算法通过网络之间的相互支持值来模拟网络中信息传递的概率。网络中的节点,选择最大值作为合并不同社区的基础。将两方网络的节点映射为一个部门的单边网络后,按照划分定义的模块进行。最后,使用实际网络测试性能实验结果表明,该算法不仅可以精确划分二分网络的单边节点,而且可以得到高质量的社区划分。

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