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Community Discovery Algorithm Based on User Behavior Similarity

机译:基于用户行为相似度的社区发现算法

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With the rapid development of Weibo network, community discovery has become an emerging research hotspot. It is found that community networks help operators understand the network model structure and user characteristics and provide personalized services for users. At present, most researches on Weibo community mining only focus on the network structure and the connection of edge nodes, while ignoring the content generated by users, resulting in a lower accuracy rate of community discovery algorithms in practical applications. This paper comprehensively considers the network structure and community user node content, and proposes a community discovery algorithm based on user behavior similarity. After the text data is preprocessed, the topic feature mining is performed according to the LDA, the user behavior information is extracted, the user topic feature words are extracted from the Weibo text, and the attribute characteristics of the user behavior similarity are increased. Taking this eigenvalue as one of the evaluation indexes of the similarity module function, combining the connection relationship and behavior similarity between users, clustering them based on similarity, finally obtaining the community structure and experimenting on the real data set. The experimental results show that the optimization algorithm has strong adaptability in social network systems, and the community partitioning effect is better.
机译:随着微博网络的快速发展,社区发现已成为新兴的研究热点。发现社区网络可以帮助运营商了解网络模型结构和用户特征,并为用户提供个性化服务。目前,对微博社区挖掘的研究大多只关注网络结构和边缘节点的连接,而忽略了用户生成的内容,导致实际应用中社区发现算法的准确率较低。本文综合考虑了网络结构和社区用户节点内容,提出了一种基于用户行为相似度的社区发现算法。对文本数据进行预处理后,根据LDA进行主题特征挖掘,提取用户行为信息,从微博文本中提取用户主题特征词,增加用户行为相似度的属性特征。以该特征值作为相似度模块功能的评价指标之一,结合用户之间的联系关系和行为相似度,基于相似度进行聚类,最终获得社区结构并在真实数据集上进行实验。实验结果表明,该优化算法在社交网络系统中具有较强的适应性,社区划分效果更好。

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