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EventStory: Event Detection Using Twitter Stream Based on Locality

机译:EventStory:使用基于位置的Twitter流进行事件检测

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Increased popularity of social media sites such as Twitter, Facebook, Flickr, etc. have produced an enormous amount of spatio-temporal data. One of the application of this type of data is event detection. Most of event detection techniques have focused on temporal feature of data for detecting an event. However, location associated with data has to be taken into consideration to detect locality based event (local event) such as local festival, sporting event or emergency situations. Users in proximity of the location of an event are more likely to post messages about an event compared to users distant from the locar tion of that event. In this paper, we are proposing a framework, called EventStory. Our framework first identifies locally significant key-words (LSK) by monitoring changes in the bursty nature of keywords in both local and global regions. Candidate event clusters are created based on co-occurrence of locally significant keywords (LSK) in the each keyword cluster. A cluster scoring scheme is used which uses the features of cluster to filter irrelevant clusters. A case study is presented to show effectiveness of our approach.
机译:诸如Twitter,Facebook,Flickr等社交媒体网站的日益普及,产生了大量的时空数据。此类数据的一种应用是事件检测。大多数事件检测技术都集中在用于检测事件的数据的时间特征上。但是,必须考虑与数据关联的位置,以检测基于地点的事件(本地事件),例如本地节日,体育赛事或紧急情况。与远离该事件发生地的用户相比,靠近事件发生地的用户更有可能发布有关该事件的消息。在本文中,我们提出了一个名为EventStory的框架。我们的框架首先通过监视本地和全球区域中关键字突发性的变化来识别本地重要关键字(LSK)。候选事件群集是基于每个关键字群集中本地有效关键字(LSK)的同时出现而创建的。使用聚类评分方案,该方案使用聚类的特征来过滤不相关的聚类。案例研究表明了我们方法的有效性。

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