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Selecting Classification Features for Detection of Mass Emergency Events on Social Media

机译:选择分类特征以在社交媒体上检测大规模突发事件

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The paper addresses the problem of detecting eyewitness reports of mass emergencies on Twitter. This is the first work to conduct a large-scale comparative evaluation of classification features extracted from Twitter posts, using different learning algorithms and datasets representing a broad range of mass emergencies including both natural and technological disasters. We investigate the relative importance of different feature types as well as on the effect of several feature selection methods applied to this problem. Because the task of detecting mass emergencies is characterized by high heterogeneity of the data, our primary focus is on identifying those features that are capable of separating mass emergency reports from other messages, irrespective of the type of the disaster.
机译:该文件解决了在Twitter上检测到大量紧急情况的目击者报告的问题。这是对使用不同的学习算法和数据集(代表自然灾害和技术灾难)的大规模突发事件进行大规模比较评估的第一项工作,该评估对从Twitter帖子中提取的分类特征进行了评估。我们研究了不同特征类型的相对重要性,以及对几种适用于此问题的特征选择方法的影响。因为检测突发事件的任务的特点是数据的高度异构性,所以我们的主要重点是识别那些能够将突发事件报告与其他消息分开的功能,而与灾难的类型无关。

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