基于图聚类的Twitter数据流新兴事件检测

Bundit Manaskasemsak, Bodin Chinthanet, A. Rungsawang
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引用次数: 12

摘要

在线社交媒体的事件检测在危机通知、卫生疫情识别和趋势话题提取等许多领域都很重要。为了解决这个问题,本文提出了一种从Twitter数据流中捕获新事件的新方法。我们定义了一个tweet图,将tweet术语向量表示为与其内容相似度相关的顶点。基于一个事件表示一组相似推文的假设,因此我们在推文图上使用马尔可夫聚类算法对相关推文进行分组。然后,在连续的时间间隔内,将相似的事件连接起来,形成一条事件趋势线。最后,这些关联事件中的第一个将被视为新兴事件。对所提出的方法进行了为期30天的提取Twitter数据流的性能评估。15名志愿者以70-80%的准确率对检测到的新兴事件的结果进行了研究和评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Graph Clustering-Based Emerging Event Detection from Twitter Data Stream
Event detection from online social media is nowadays important to many fields, such as crisis notification, health epidemic identification, and trending topic extraction. To deal with the problem, in this paper we propose a new methodology to capture emerging events from Twitter data stream. We define a tweet graph representing tweet term vectors as vertices associated by their content similarities. Based on the assumption that an event denotes a set of similar tweets, we therefore employ the Markov clustering algorithm on the tweet graph to group related tweets. Then, the connected of similar events between consecutive time intervals are classified as an event trend line. Finally, the first one of those connected events will be considered as the emerging event. Performance evaluation of the proposed approach has been done on thirty days of extracted Twitter data stream. The results of detected emerging events have been studied and evaluated by fifteen volunteers with 70-80% precision.
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