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Automatic extraction of persistent topics from social text streams

机译:自动从社交文本流中提取永久主题

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摘要

Microblogging services allow users to publish their thoughts, activities, and interests in the form of text streams and to share them with others in a social network. A user's text stream in a microblogging service is temporally composed of the posts the user has written or republished from other socially connected users. In this context, most research on the microblogging service has primarily focused on social graph or topic extraction from the text streams, and in particular, several studies attempted to discover user's topics of interests from a text stream since the topics play a crucial role in user search, friend recommendation, and contextual advertisement. Yet, they did not yet fully address unique properties of the stream. In this paper, we study a problem of detecting the topics of long-term steady interests to a user from a text stream, considering its dynamic and social characteristics, and propose a graph-based topic extraction model. Extensive experiments have been carried out to investigate the effects of the proposed approach by using a real-world dataset, and the proposed model is shown to produce better performance than the existing alternatives.
机译:微博服务允许用户以文本流的形式发布他们的思想,活动和兴趣,并在社交网络中与他人共享。微博服务中用户的文本流在时间上由用户已从其他社交连接的用户撰写或重新发布的帖子组成。在这种情况下,大多数关于微博服务的研究主要集中在从文本流中提取社交图或主题,尤其是,一些研究试图从文本流中发现用户感兴趣的主题,因为这些主题在用户中起着至关重要的作用。搜索,朋友推荐和内容相关广告。但是,它们尚未完全解决流的独特属性。在本文中,我们研究了一种从文本流中检测用户长期稳定兴趣的主题的问题,并考虑其动态和社会特征,并提出了一种基于图的主题提取模型。通过使用真实的数据集,已经进行了广泛的实验来研究所提出的方法的效果,并且所提出的模型显示出比现有替代方法更好的性能。

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