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A novel method for online bursty event detection on Twitter

机译:一种在Twitter上进行在线突发事件检测的新方法

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As one of the most popular social media platforms, Twitter has become a tool that people widely used to share their contents, their interests and events with friends. Meanwhile, we are facing a big challenge to find the bursty events from the large volume of continuous text streams quickly and accurately due to millions of data produced every day. In this paper, we proposed a BBW (Basic-Burst Weight) method based on the Time Window to extract bursty words, then we exploit these bursty words to detect the meaningful bursty events combined with hierarchical clustering algorithm. Our experiments on a large twitter dataset show that our method can detect bursty events timely and precisely.
机译:作为最受欢迎的社交媒体平台之一,Twitter已成为人们广泛用于与朋友分享其内容,兴趣和事件的工具。同时,由于每天产生数百万个数据,因此要快速,准确地从大量连续文本流中找到突发事件,我们面临着巨大的挑战。本文提出了一种基于时间窗口的BBW(基本突发权重)方法来提取突发词,然后结合分层聚类算法,利用这些突发词来检测有意义的突发事件。我们在大型Twitter数据集上的实验表明,我们的方法可以及时,准确地检测突发事件。

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