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Community Detection Algorithm Combining Stochastic Block Model and Attribute Data Clustering

机译:随机块模型与属性数据聚类相结合的社区检测算法

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摘要

We propose a new algorithm to detect the community structure in a network that utilizes both the network structure and vertex attribute data. Suppose we have the network structure together with the vertex attribute data, that is, the information assigned to each vertex associated with the community to which it belongs. The problem addressed this paper is the detection of the community structure from the information of both the network structure and the vertex attribute data. Our approach is based on the Bayesian approach that models the posterior probability distribution of the community labels. The detection of the community structure in our method is achieved by using belief propagation and an EM algorithm. We numerically verified the performance of our method using computer-generated networks and real-world networks.
机译:我们提出了一种新的算法来检测网络中的社区结构,该算法同时利用网络结构和顶点属性数据。假设我们具有网络结构以及顶点属性数据,也就是分配给与它所属的社区关联的每个顶点的信息。本文解决的问题是从网络结构和顶点属性数据的信息中检测社区结构。我们的方法基于贝叶斯方法,该方法对社区标签的后验概率分布建模。我们的方法中的社区结构的检测是通过使用信念传播和EM算法来实现的。我们使用计算机生成的网络和真实世界的网络对我们的方法的性能进行了数值验证。

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