Unveiling Key Themes and Establishing a Hierarchical Taxonomy of Disaster-Related Tweets: A Text Mining Approach for Enhanced Emergency Management Planning

Inf. Comput. Pub Date : 2023-07-07 DOI:10.3390/info14070385
James Durham, Sudipta Chowdhury, Ammar Alzarrad
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Abstract

Effectively harnessing the power of social media data for disaster management requires sophisticated analysis methods and frameworks. This research focuses on understanding the contextual information present in social media posts during disasters and developing a taxonomy to effectively categorize and classify the diverse range of topics discussed. First, the existing literature on social media analysis in disaster management is explored, highlighting the limitations and gaps in current methodologies. Second, a dataset comprising real-time social media posts related to various disasters is collected and preprocessed to ensure data quality and reliability. Third, three well-established topic modeling techniques, namely Latent Dirichlet Allocation (LDA), Latent Semantic Analysis (LSA), and Non-Negative Matrix Factorization (NMF), are employed to extract and analyze the latent topics and themes present in the social media data. The contributions of this research lie in the development of a taxonomy that effectively categorizes and classifies disaster-related social media data, the identification of key latent topics and themes, and the extraction of valuable insights to support and enhance emergency management efforts. Overall, the findings of this research have the potential to transform the way emergency management and response are conducted by harnessing the power of social media data. By incorporating these insights into decision-making processes, emergency managers can make more informed and strategic choices, resulting in more efficient and effective emergency response strategies. This, in turn, leads to improved outcomes, better utilization of resources, and ultimately, the ability to save lives and mitigate the impacts of disasters.
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揭示关键主题并建立灾害相关推文的分层分类法:一种用于增强应急管理规划的文本挖掘方法
有效利用社会媒体数据的力量进行灾害管理需要复杂的分析方法和框架。本研究的重点是了解灾害期间社交媒体帖子中存在的上下文信息,并制定一种分类法,以有效地对所讨论的各种主题进行分类和分类。首先,对灾害管理中社交媒体分析的现有文献进行了探索,突出了当前方法的局限性和差距。其次,收集与各种灾害相关的实时社交媒体帖子数据集并进行预处理,以确保数据质量和可靠性。第三,利用潜在狄利克雷分配(LDA)、潜在语义分析(LSA)和非负矩阵分解(NMF)三种成熟的主题建模技术提取和分析社交媒体数据中存在的潜在话题和主题。这项研究的贡献在于制定了一种分类法,有效地对与灾害有关的社会媒体数据进行分类和分类,确定了关键的潜在主题和主题,并提取了宝贵的见解,以支持和加强应急管理工作。总的来说,这项研究的结果有可能通过利用社交媒体数据的力量来改变应急管理和响应的方式。通过将这些见解纳入决策过程,应急管理人员可以做出更明智和更具战略性的选择,从而制定更高效和有效的应急战略。这反过来又能改善成果,更好地利用资源,并最终提高拯救生命和减轻灾害影响的能力。
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