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Classifying Perspectives on Twitter: Immediate Observation, Affection, and Speculation

机译:在Twitter上对观点进行分类:即时观察,感情和推测

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Popular micro-blogging services such as Twitter enable users to effortlessly publish observations and thoughts about ongoing events. Such social sensing generates a very large pool of rich and up-to-date information. However, the large volume and a fast rate of posting make it very challenging to read through the posts and find out useful information in relevant tweets. In this paper, we propose an automated tweet classification approach that distinguishes three perspectives in which a Twitter user may compose messages, namely Immediate Observation, Affection, and Speculation. Using tweets made about the Ukraine Crisis in 2014, our experimental results show that, with the right choice of features and classifiers, we can generally obtain very satisfying results, with the classification precisions in many cases higher than 0.8. We show that the classification results can be used in event time and location detection, public sentiment analysis, and early rumor detection.
机译:诸如Twitter之类的流行微博客服务使用户可以毫不费力地发布有关正在进行的事件的观察和想法。这种社交感知会产生大量的丰富且最新的信息。但是,大量的发布和快速的发布速度使阅读通篇并在相关推文中找到有用的信息变得非常困难。在本文中,我们提出了一种自动推文分类方法,该方法区分了Twitter用户撰写消息的三种观点,即即时观察,感情和推测。使用2014年关于乌克兰危机的推文,我们的实验结果表明,通过正确选择特征和分类器,我们通常可以获得非常令人满意的结果,在许多情况下,分类精度都高于0.8。我们表明分类结果可用于事件时间和位置检测,公众情绪分析和早期谣言检测。

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