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Hot Topic Community Discovery on Cross Social Networks

机译:跨社交网络上的热门话题社区发现

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The rapid development of online social networks has allowed users to obtain information, communicate with each other and express different opinions. Generally, in the same social network, users tend to be influenced by each other and have similar views. However, on another social network, users may have opposite views on the same event. Therefore, research undertaken on a single social network is unable to meet the needs of research on hot topic community discovery. “Cross social network” refers to multiple social networks. The integration of information from multiple social network platforms forms a new unified dataset. In the dataset, information from different platforms for the same event may contain similar or unique topics. This paper proposes a hot topic discovery method on cross social networks. Firstly, text data from different social networks are fused to build a unified model. Then, we obtain latent topic distributions from the unified model using the Labeled Biterm Latent Dirichlet Allocation (LB-LDA) model. Based on the distributions, similar topics are clustered to form several topic communities. Finally, we choose hot topic communities based on their scores. Experiment result on data from three social networks prove that our model is effective and has certain application value.
机译:在线社交网络的迅速发展使用户能够获取信息,彼此交流并表达不同的意见。通常,在同一个社交网络中,用户往往会受到彼此的影响并具有相似的观点。但是,在另一个社交网络上,用户可能对同一事件有相反的看法。因此,在单个社交网络上进行的研究无法满足对热门话题社区发现的研究需求。 “跨社交网络”是指多个社交网络。来自多个社交网络平台的信息集成形成了一个新的统一数据集。在数据集中,来自同一事件的不同平台的信息可能包含相似或独特的主题。本文提出了跨社交网络的热门话题发现方法。首先,融合来自不同社交网络的文本数据以建立统一的模型。然后,我们使用标签双项潜在狄利克雷分配(LB-LDA)模型从统一模型中获取潜在主题分布。根据分布,将相似的主题聚类以形成几个主题社区。最后,我们根据得分来选择热门话题社区。对三个社交网络数据的实验结果证明,该模型是有效的,具有一定的应用价值。

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