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Identifying Evolutionary Topic Temporal Patterns Based on Bursty Phrase Clustering

机译:基于Bussty短语群集识别进化主题模式模式

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We discuss a temporal text mining task on finding evolutionary patterns of topics from a collection of article revisions. To reveal the evolution of topics, we propose a novel method for finding key phrases that are bursty and significant in terms of revision histories. Then we show a time series clustering method to group phrases that have similar burst histories, where additions and deletions are separately considered, and time series is abstracted by burst detection. In clustering, we use dynamic time warping to measure the distance between time sequences of phrase frequencies. Experimental results show that our method clusters phrases into groups that actually share similar bursts which can be explained by real-world events.
机译:我们讨论了一个时间文本挖掘任务,就查找文章修订集中的主题的进化模式。为了揭示主题的演变,我们提出了一种新的方法,用于查找在修订历史方面突出和显着的关键短语。然后,我们将时间序列聚类方法显示为具有类似突发历史的组短语,其中单独考虑添加和删除,并通过突发检测提示时间序列。在聚类中,我们使用动态时间翘曲来测量短语频率的时间序列之间的距离。实验结果表明,我们的方法将短语集群分为实际上共享类似突发的组,这可以通过现实世界的事件来解释。

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