结合基于lda和密度-轮廓聚类方法的Twitter事件跟踪

Yongli Zhang, C. Eick
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引用次数: 7

摘要

如今,Twitter已经成为发展最快的微博服务之一;因此,分析这些丰富且不断由用户生成的内容可以揭示出前所未有的有价值的知识。在本文中,我们提出了一种新的两阶段系统,通过集成基于潜在狄利克雷分配(Latent Dirichlet Allocation, LDA)的方法和基于密度轮廓的高效时空聚类方法来检测和跟踪推文中的事件。在该系统中,我们首先将地理标记的tweet流划分为多个时间窗口;接下来,使用基于lda的主题发现步骤将事件识别为tweet中的主题;然后,为每条tweet分配一个事件标签;其次,采用基于密度轮廓的时空聚类方法对时空事件聚类进行识别。在我们的方法中,通过计算主题之间的kl -散度来建立主题连续性,通过一系列新制定的空间聚类距离函数来建立时空连续性。此外,提出的密度-轮廓聚类方法考虑了两种类型的密度:“绝对”密度和“相对”密度,以识别事件推文密度高或事件推文百分比高的事件聚类。我们使用从Twitter收集的真实数据来评估我们的方法,实验结果表明,所提出的系统不仅可以有效地检测和跟踪事件,还可以从地理标记的tweet中发现有趣的模式。
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Tracking Events in Twitter by Combining an LDA-Based Approach and a Density-Contour Clustering Approach
Nowadays, Twitter has become one of the fastest-growing microblogging services; consequently, analyzing this rich and continuously user-generated content can reveal unprecedentedly valuable knowledge. In this paper, we propose a novel two-stage system to detect and track events from tweets by integrating a Latent Dirichlet Allocation (LDA)-based approach and an efficient density–contour-based spatio-temporal clustering approach. In the proposed system, we first divide the geotagged tweet stream into temporal time windows; next, events are identified as topics in tweets using an LDA-based topic discovery step; then, each tweet is assigned an event label; next, a density–contour-based spatio-temporal clustering approach is employed to identify spatio-temporal event clusters. In our approach, topic continuity is established by calculating KL-divergences between topics and spatio-temporal continuity is established by a family of newly formulated spatial cluster distance functions. Moreover, the proposed density–contour clustering approach considers two types of densities: “absolute” density and “relative” density to identify event clusters where either there is a high density of event tweets or there is a high percentage of event tweets. We evaluate our approach using real-world data collected from Twitter, and the experimental results show that the proposed system can not only detect and track events effectively but also discover interesting patterns from geotagged tweets.
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