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Time-Sensitive Topic Derivation in Twitter

机译:Twitter中的时间敏感主题派生

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摘要

Much research has been concerned with deriving topics from Twitter and applying the outcomes in a variety of real life applications such as emergency management, business advertisements and corporate/government communication. These activities have used mostly Twitter content to derive topics. More recently, tweet interactions have also been considered, leading to better topics. Given the dynamic aspect of Twitter, we hypothesize that temporal features could further improve topic derivation on a Twitter collection. In this paper, we first perform experiments to characterize the temporal features of the interactions in Twitter. We then propose a time-sensitive topic derivation method. The proposed method incorporates temporal features when it clusters the tweets and identifies the representative terms for each topic. Our experimental results show that the inclusion of temporal features into topic derivation results in a significant improvement for both topic clustering accuracy and topic coherence comparing to existing baseline methods.
机译:许多研究都关注于从Twitter派生话题并将结果应用于各种现实生活中的应用程序,例如紧急情况管理,商业广告和公司/政府沟通。这些活动主要使用Twitter内容来派生主题。最近,还考虑了鸣叫互动,从而带来了更好的话题。考虑到Twitter的动态方面,我们假设时间特征可以进一步改善Twitter集合上的主题派生。在本文中,我们首先进行实验以表征Twitter中互动的时间特征。然后,我们提出了一种对时间敏感的主题派生方法。所提出的方法在对推文进行聚类并标识每个主题的代表性术语时会包含时间特征。我们的实验结果表明,与现有基准方法相比,将时间特征包含到主题派生中可以显着提高主题聚类的准确性和主题连贯性。

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