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Detection of Microblog Overlapping Community Based on Multidimensional Information and Edge Distance Matrix

机译:基于多维信息和边缘距离矩阵的微博重叠界的检测

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The traditional community detection algorithms are often based on the network structure, without considering the unique characteristics of weibo (microblog) network. In this paper we proposed a weibo overlapping community detection algorithm, called MIEDM. It takes weibo network as research object and is based on multidimensional information and edge distance matrix. First, we established the weighted network topology graph integrating the weibo multidimensional information such as weibo user relationship, user behavior, weibo theme, and geographic location. Second, based on the edge-node-edge random walk model, we constructed the edge distance matrix. The matrix not only considers the distance of adjacent edges but also the distance of non-adjacent edges. Then, we improved the existing density peak clustering algorithm, and employed the improved algorithm to identify the initial communities with the edge distance matrix considered. In addition, the initial discovered communities arc merged and optimized according to the modularity increment. Final, the results of experiments on the weibo network and real networks show that this algorithm yields higher accuracy, stability and generality.
机译:传统的社区检测算法通常基于网络结构,而不考虑Weibo(微博)网络的独特特征。在本文中,我们提出了一种多博重叠的社区检测算法,称为Miedm。它将weibo网络作为研究对象,是基于多维信息和边缘距离矩阵。首先,我们建立了加权网络拓扑图,整合了Weibo多维信息,如微博用户关系,用户行为,微博主题和地理位置。其次,基于边缘节点边缘随机步道模型,我们构建了边缘距离矩阵。矩阵不仅考虑相邻边缘的距离,而且仅考虑非相邻边缘的距离。然后,我们改进了现有的密度峰聚类算法,并采用了改进的算法来识别具有边缘距离矩阵的初始社区。此外,初始发现的社区根据模块化增量合并和优化。决赛,微博网络和实际网络的实验结果表明,该算法产生更高的准确性,稳定性和一般性。

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