Exploiting topic tracking in real-time tweet streams

Yihong Hong, Yue Fei, Jianwu Yang
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引用次数: 8

Abstract

Microblogs such as Twitter have become an increasingly popular source of real-time information.Users tend to keep up-to-date with the developments of topics they are interested in. In this paper, we present an effective real-time tweets filtering system to exploit topic tracking in social media streams. We combine background corpus with foreground corpus to handle the cold start problem. Then we build the Content Model to describe the characteristics of tweets, in which we utilize the link information to expand tweets' content aiming at enriching the semantic information of tweets, and we also analyze the influence of tweet's quality measured by a group of well-defined symbols. Moreover, the Pseudo Relevance Feedback approach triggered by a fixed-width temporal sliding window is employed to adapt our system to the alteration of topics over time. Experimental results on Tweet11 corpus indicate that our system achieves good performance in both T11SU and F-0.5 metrics, and the proposed system has better performance than the best one of TREC2012 real-time filtering pilot task.
利用实时tweet流中的主题跟踪
像Twitter这样的微博已经成为越来越受欢迎的实时信息来源。用户倾向于了解他们感兴趣的主题的最新发展。在本文中,我们提出了一个有效的实时推文过滤系统来利用社交媒体流中的主题跟踪。我们将后台语料库与前台语料库相结合来解决冷启动问题。然后,我们建立了内容模型来描述推文的特征,其中我们利用链接信息来扩展推文的内容,旨在丰富推文的语义信息,并分析了一组定义良好的符号对推文质量的影响。此外,采用由固定宽度的时间滑动窗口触发的伪相关反馈方法使我们的系统适应主题随时间的变化。在Tweet11语料库上的实验结果表明,我们的系统在T11SU和F-0.5指标上都取得了良好的性能,并且该系统的性能优于TREC2012实时滤波先导任务的最佳系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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