This study examines machine learning methods used in crisis management. Analyzing detected patterns from a crisis involves the collection and evaluation of historical or near-real-time datasets through automated means. This paper utilized the meta-review method to analyze scientific literature that utilized machine learning techniques to evaluate human actions during crises. Selected studies were condensed into themes and emerging trends using a systematic literature evaluation of published works accessed from three scholarly databases. Results show that data from social media was prominent in the evaluated articles with 27% usage, followed by disaster management, health (COVID) and crisis informatics, amongst many other themes. Additionally, the supervised machine learning method, with an application of 69% across the board, was predominant. The classification technique stood out among other machine learning tasks with 41% usage. The algorithms that played major roles were the Support Vector Machine, Neural Networks, Naive Bayes, and Random Forest, with 23%, 16%, 15%, and 12% contributions, respectively.
翻译:这项研究研究了危机管理中使用的机器学习方法。分析从危机中发现的模式涉及通过自动化手段收集和评估历史或近实时数据集。本文使用元审查方法分析利用机器学习技术评价危机期间人类行动的科学文献。部分研究利用三个学术数据库对出版作品的系统文献评估,压缩为主题和新趋势。研究结果显示,社会媒体的数据在评价文章中占有显著地位,使用率为27%,其次是灾害管理、保健(COVID)和危机信息学等许多其他主题。此外,监督的机器学习方法,全面应用69%,占主导地位。分类技术在41%的其他机器学习任务中占有突出地位。主要作用的算法是辅助矢量机、神经网络、纳米湾和随机森林,分别占23%、16%、15%和12%。