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Arabic Event Detection in Social Media

机译:社交媒体中的阿拉伯语事件检测

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摘要

Event detection is a concept that is crucial to the assurance of public safety surrounding real-world events. Decision makers use information from a range of terrestrial and online sources to help inform decisions that enable them to develop policies and react appropriately to events as they unfold. One such source of online information is social media. Twitter, as a form of social media, is a popular micro-blogging web application serving hundreds of millions of users. User-generated content can be utilized as a rich source of information to identify real-world events. In this paper, we present a novel detection framework for identifying such events, with a focus on 'disruptive' events using Twitter data. The approach is based on five steps; data collection, preprocessing, classification, clustering and summarization. We use a Naieve Bayes classification model and an Online Clustering method to validate our model over multiple real-world data sets. To the best of our knowledge, this study is the first effort to identify real-world events in Arabic from social media.
机译:事件检测是一个概念,对于确保围绕现实事件的公共安全至关重要。决策者使用来自各种地面和在线资源的信息来帮助制定决策,使他们能够制定政策并在事件发生时对事件做出适当的反应。此类在线信息来源之一是社交媒体。 Twitter作为一种社交媒体,是一种流行的微博客Web应用程序,为数亿用户提供服务。用户生成的内容可以用作识别现实事件的丰富信息源。在本文中,我们提出了一种用于识别此类事件的新颖检测框架,重点是使用Twitter数据的“破坏性”事件。该方法基于五个步骤。数据收集,预处理,分类,聚类和汇总。我们使用Naieve Bayes分类模型和在线聚类方法来验证我们在多个真实数据集上的模型。据我们所知,本研究是从社交媒体识别阿拉伯语中真实事件的第一项努力。

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