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Analyzing User Relationships in Weibo Networks: A Bayesian Network Approach

机译:微博网络中的用户关系分析:贝叶斯网络方法

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In recent years, online social networks such as Facebook, Twitter and Sina Weibo are more and more popular and there is a highly increasing interest of studying the relationships among the large amount of microblogging users. In this paper, the link prediction method is utilized to analyze the relationships between Sina Weibo users. Firstly, the topological features of Weibo network are studied and the influence of topological structure features to the formation of Sina Weibo network is verified. Then the attribute features of Sina Weibo are also considered and analyzed. In this paper, a link prediction model is introduced based on Bayesian networks classifier combining the two types of features together. The experiments are conducted with the datasets crawled from Sina Weibo site. We compare the experiment results with and without the attribute features and rank the importance of features, finding out that the attribute features have a significant effect on the formation of Weibo users' relationships besides the topological structure features, and contribute significantly to the improvement of the predictive performance.
机译:近年来,诸如Facebook,Twitter和Sina Weibo之类的在线社交网络越来越受欢迎,研究大量微博用户之间的关系的兴趣也越来越高。本文采用链接预测方法对新浪微博用户之间的关系进行分析。首先,研究了微博网络的拓扑特征,验证了拓扑结构特征对新浪微博网络形成的影响。然后对新浪微博的属性特征进行了分析。本文提出了一种基于贝叶斯网络分类器的链接预测模型,将两种特征组合在一起。实验是使用从新浪微博站点抓取的数据集进行的。我们比较了具有和没有属性特征的实验结果,并对特征的重要性进行了排序,发现除了拓扑结构特征之外,属性特征还对微博用户关系的形成产生了显着影响,并且对改善微博用户关系做出了重要贡献。预测性能。

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