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Semantic Twitter: Analyzing Tweets for Real-Time Event Notification

机译:语义Twitter:分析实时事件通知的推文

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摘要

Twitter, a popular microblog service, has received much attention recently. An important characteristic of Twitter is its real-time nature. However, to date, integration of semantic processing and the real-time nature of Twitter has not been well studied. As described herein, we propose an event notification system that monitors tweet (Twitter messages) and delivers semantically relevant tweets if they meet a user's information needs. As an example, we construct an earthquake prediction system targeting Japanese tweets. Because of numerous earthquakes in Japan and because of the vast number of Twitter users throughout the country, it is sometimes possible to detect an earthquake by monitoring tweets before an earthquake actually arrives. (An earthquake is transmitted through the earth's crust at about 3-7 km/s. Consequently, a person has about 20 s before its arrival at a point that is 100 km distant.) Other examples are detection of rainbows in the sky, and detection of traffic jams in cities. We first prepare training data and apply a support vector machine to classify a tweet into positive and negative classes, which corresponds to the detection of a target event. Features for the classification are constructed using the keywords in a tweet, the number of words, the context of event words, and so on. In the evaluation, we demonstrate that every recent large earthquake has been detected by our system. Actually, notification is delivered much faster than the announcements broadcast by the Japan Meteorological Agency.
机译:Twitter是一种流行的微博客服务,最近受到了广泛关注。 Twitter的一个重要特征是其实时性。但是,到目前为止,还没有很好地研究语义处理与Twitter实时性的集成。如本文所述,我们提出了一种事件通知系统,该系统监视推文(Twitter消息),并在满足用户信息需求的情况下传递与语义相关的推文。例如,我们构建了针对日本推文的地震预测系统。由于日本发生了多次地震,并且全国各地都有大量Twitter用户,因此有时有可能在地震真正到达之前通过监视推文来检测地震。 (地震以大约3-7 km / s的速度通过地壳传播。因此,一个人在到达100公里以外的点之前大约有20 s。)其他示例包括检测天空中的彩虹,以及检测城市交通拥堵。我们首先准备训练数据,然后应用支持向量机将推文分类为肯定和否定类别,这与目标事件的检测相对应。使用推文中的关键字,单词数,事件单词的上下文等构造分类的功能。在评估中,我们证明了我们的系统已检测到每个最近的大地震。实际上,通知的发送速度比日本气象厅广播的通知要快得多。

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