使用监督学习技术的推文相关性评估:挖掘紧急相关推文进行自动相关性分类

Matthias Habdank, N. Rodehutskors, R. Koch
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引用次数: 17

摘要

社交媒体提供了丰富的信息,这些信息对应急服务至关重要。特别是在大规模紧急情况和灾害期间,这方面的信息量增加得更多,应急服务部门难以找到能够支持其当前业务的相关信息。本文中描述的方法使用Twitter从2016年10月德国路德维希港事件中生成的数据来评估紧急情况下社交媒体内容相关性评估的机器学习方法。不仅考虑了不同的分类器,而且考虑了几种矢量器和n-图的使用。研究发现,机器学习方法在自动相关性分类方面取得了很好的效果,并提供了为应急服务提供实时质量评估的技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Relevancy assessment of tweets using supervised learning techniques: Mining emergency related tweets for automated relevancy classification
Social media provides an abundance of information that can be vital to emergency services. Especially during large-scale emergencies and disasters this amount of information rises even more and emergency services struggle to find relevant information that can support their current operations. The approach described in this paper uses Twitter generated data from an incident in Ludwigshafen, Germany in October 2016 to evaluate machine learning approaches for the relevancy assessment of social media content during emergencies. Not only different classifiers, but also several vectorizers and the use of n-grams are regarded. It is found that machine learning approaches can achieve very good results in the automatic relevancy classification and offer techniques that provide realtime quality assessments to emergency-services.
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