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首页> 外文期刊>Journal of contingencies and crisis management >What happens where during disasters? A Workflow for the multifaceted characterization of crisis events based on Twitter data
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What happens where during disasters? A Workflow for the multifaceted characterization of crisis events based on Twitter data

机译:在灾难期间会发生什么?基于Twitter数据的危机事件多方面表征的工作流程

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摘要

Twitter data are a valuable source of information for rescue and helping activities in case of natural disasters and technical accidents. Several methods for disaster- and event-related tweet filtering and classification are available to analyse social media streams. Rather than processing single tweets, taking into account space and time is likely to reveal even more insights regarding local event dynamics and impacts on population and environment. This study focuses on the design and evaluation of a generic workflow for Twitter data analysis that leverages that additional information to characterize crisis events more comprehensively. The workflow covers data acquisition, analysis and visualization, and aims at the provision of a multifaceted and detailed picture of events that happen in affected areas. This is approached by utilizing agile and flexible analysis methods providing different and complementary views on the data. Utilizing state-of-the-art deep learning and clustering methods, we are interested in the question, whether our workflow is suitable to reconstruct and picture the course of events during major natural disasters from Twitter data. Experimental results obtained with a data set acquired during hurricane Florence in September 2018 demonstrate the effectiveness of the applied methods but also indicate further interesting research questions and directions.
机译:Twitter数据是救援和帮助在自然灾害和技术事故的情况下救援和帮助活动的有价值信息。有关灾难和事件相关的推文过滤和分类的几种方法可供分析社交媒体流。考虑到空间和时间,而不是处理单个推文,可能会揭示关于当地事件动态和对人口和环境影响的更多洞察力。本研究侧重于对Twitter数据分析的通用工作流程的设计和评估,利用该附加信息更全面地描述危机事件。工作流程涵盖数据采集,分析和可视化,并旨在提供在受影响地区发生的事件的多方面和详细的图片。这是通过利用敏捷和灵活的分析方法对数据提供不同和互补的视图来接近。利用最先进的深度学习和聚类方法,我们对该问题感兴趣,我们的工作流程是适合在推特数据的主要自然灾害期间重建和描绘事件的过程。 2018年9月普罗兰飓风期间获得的数据集获得了实验结果,证明了应用方法的有效性,但也表明了进一步有趣的研究问题和方向。

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