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Can We Predict a Riot? Disruptive Event Detection Using Twitter

机译:我们可以预测骚乱吗? 使用Twitter进行破坏事件检测

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摘要

In recent years, there has been increased interest in real-world event detection using publicly accessible data made available through Internet technology such as Twitter, Facebook, and YouTube. In these highly interactive systems, the general public are able to post real-time reactions to "real world" events, thereby acting as social sensors of terrestrial activity. Automatically detecting and categorizing events, particularly small-scale incidents, using streamed data is a non-trivial task but would be of high value to public safety organisations such as local police, who need to respond accordingly. To address this challenge, we present an end-to-end integrated event detection framework that comprises five main components: data collection, pre-processing, classification, online clustering, and summarization. The integration between classification and clustering enables events to be detected, as well as related smaller-scale "disruptive events,"smaller incidents that threaten social safety and security or could disrupt social order. We present an evaluation of the effectiveness of detecting events using a variety of features derived from Twitter posts, namely temporal, spatial, and textual content. We evaluate our framework on a large-scale, real-world dataset from Twitter. Furthermore, we apply our event detection system to a large corpus of tweets posted during the August 2011 riots in England. We use ground-truth data based on intelligence gathered by the London Metropolitan Police Service, which provides a record of actual terrestrial events and incidents during the riots, and show that our system can perform as well as terrestrial sources, and even better in some cases.
机译:近年来,使用互联网技术(如Twitter,Facebook和YouTube)提供的可公开访问数据,对现实世界事件检测有所增加。在这些高度互动的系统中,公众能够将实时反应发布到“现实世界”事件,从而充当陆地活动的社会传感器。自动检测和分类事件,特别是使用流数据的事件,使用流数据是非琐碎的任务,但对当地警察等公共安全组织的价值高,需要相应地回应。为了解决这一挑战,我们提供了一个端到端的集成事件检测框架,包括五个主要组件:数据收集,预处理,分类,在线聚类和摘要。分类和聚类之间的集成使得能够检测到事件,以及相关的较小规模的“中断事件”,威胁到社会安全和安全或可能会扰乱社会秩序的较小事件。我们介绍了使用从Twitter帖子的各种功能来检测事件的有效性,即时间,空间和文本内容。我们从Twitter上评估了大规模的现实数据集的框架。此外,我们将事件检测系统应用于英格兰2011年8月的骚乱期间发布的大型推文语料库。我们使用基于伦敦大都市警察局收集的智力的地面真理数据,该数据在骚乱中提供了实际的地面事件和事件的记录,并表明我们的系统可以在某些情况下表现和陆地来源,甚至更好。

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