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Interaction-Aware Topic Model for Microblog Conversations through Network Embedding and User Attention

机译:通过网络嵌入和用户注意力的微博对话的交互感知主题模型

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Traditional topic models are insufficient for topic extraction in social media. The existing methods only consider text information or simultaneously model the posts and the static characteristics of social media. They ignore that one discusses diverse topics when dynamically interacting with different people. Moreover, people who talk about the same topic have different effects on the topic. In this paper, we propose an Interaction-Aware Topic Model (IATM) for microblog conversations by integrating network embedding and user attention. A conversation network linking users based on reposting and replying relationship is constructed to mine the dynamic user behaviours. We model dynamic interactions and user attention so as to learn interaction-aware edge embeddings with social context. Then they arc incorporated into neural variational inference for generating the more consistent topics. The experiments on three real-world datasets show that our proposed model is effective.
机译:传统主题模型对于社交媒体中的主题提取不足。现有方法仅考虑文本信息或同时模拟社交媒体的帖子和静态特征。他们忽略了与不同人的动态交互时讨论多样化主题。此外,谈论同样主题的人对主题有不同的影响。在本文中,我们通过集成网络嵌入和用户注意力来提出用于微博对话的交互感知主题模型(IATM)。将基于转发和回复关系的对话网络连接用户进行链接,以挖掘动态用户行为。我们模拟动态交互和用户注意力,以便使用社交环境学习交互感知边缘嵌入。然后,它们被闪入神经变分的推理,以产生更一致的主题。三个真实数据集的实验表明我们所提出的模型是有效的。

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