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Hot Topic Discovery in Online Community using Topic Labels and Hot Features

机译:使用主题标签和热门功能在在线社区中发现热门话题

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With huge volumes of information on Internet, how to extract user-concerned hot topics quickly and effectively has become a fundamental task for information processing on Internet. Generally, hot topic detection includes two tasks, the first one is topic discovery and the other is its hotness evaluation. In this paper, we propose a hot topic detection method. For topic discovery, topics are identified by clustering based on extracted topic labels. For hotness evaluation, the proposed model has fully considered the internal and external dual features and combined them together. The experimental results over TianYa BBS demonstrate the efficiency of the proposed method: compared with topic discovery based on latent semantic indexing, the improved vector space model based on topic labels gets better results and the identified topics are more accurate. Moreover, the proposed hotness features could reflect the popularity of a topic, and hence have obtained better hot topic results finally.
机译:随着Internet上海量信息的产生,如何快速有效地提取用户关注的热点话题已成为Internet信息处理的基本任务。通常,热点检测包括两个任务,第一个任务是主题发现,另一个任务是热点评估。在本文中,我们提出了一种热门话题检测方法。对于主题发现,通过基于提取的主题标签进行聚类来标识主题。对于热度评估,提出的模型充分考虑了内部和外部双重特征并将它们组合在一起。在天涯论坛上的实验结果证明了该方法的有效性:与基于潜在语义索引的主题发现相比,基于主题标签的改进向量空间模型取得了更好的结果,所识别出的主题更加准确。此外,提出的热点特征可以反映话题的受欢迎程度,从而最终获得更好的热点话题结果。

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