Fast Identification of Topic Burst Patterns Based on Temporal Clustering

Zhuoyang Xu, M. Iwaihara
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引用次数: 0

Abstract

Temporal text mining is widely used in summarization and tracking of evolutionary topic trends. In online collaborative systems like Wikipedia, edit history of each article is stored as revisions. Topics of articles or categories grow and fade over time and retain evolutionary information in edit history. This paper studies a particular temporal text mining task: quickly finding burst patterns of topics from phrases extracted from edit history of Wikipedia articles. We first extract several candidate phrases from edit history by specific features and build time series with edit frequency. Temporal clustering of burst patterns of phrases reveals bursts of topics. However, distance measure for temporal clustering, such as dynamic time warping (DTW), is often costly. In this paper, we propose segmented DTW which decomposes time series into proper segments and computes DTW distance within segments separately. Our segmented DTW shows reasonable speed up over DTW, while the proposed method can identify interesting evolutionary topic burst patterns effectively. Research so far can be applied in domains like trend tracking, temporal relatedness of phrases and popular topic discovery.
基于时间聚类的主题突发模式快速识别
时态文本挖掘广泛应用于主题演化趋势的总结和跟踪。在像维基百科这样的在线协作系统中,每篇文章的编辑历史都以修订的形式存储。文章或类别的主题随着时间的推移而增长和消失,并在编辑历史中保留进化信息。本文研究了一种特殊的时态文本挖掘任务:从维基百科条目编辑历史中提取的短语中快速找到主题的突发模式。我们首先根据特定的特征从编辑历史中提取几个候选短语,并构建具有编辑频率的时间序列。短语突发模式的时间聚类揭示了话题的突发。然而,时间聚类的距离度量,如动态时间规整(DTW),通常是昂贵的。本文提出了分段DTW,将时间序列分解成适当的段,并分别计算段内的DTW距离。我们所提出的方法在识别有趣的进化主题突发模式的同时,具有较好的速度提升。目前的研究可以应用于趋势跟踪、短语时间相关性和热门话题发现等领域。
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