Computational Social Science of Disasters: Opportunities and Challenges

Annetta Burger, Talha Oz, W. Kennedy, A. Crooks
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引用次数: 14

Abstract

Disaster events and their economic impacts are trending, and climate projection studies suggest that the risks of disaster will continue to increase in the near future. Despite the broad and increasing social effects of these events, the empirical basis of disaster research is often weak, partially due to the natural paucity of observed data. At the same time, some of the early research regarding social responses to disasters have become outdated as social, cultural, and political norms have changed. The digital revolution, the open data trend, and the advancements in data science provide new opportunities for social science disaster research. We introduce the term computational social science of disasters (CSSD), which can be formally defined as the systematic study of the social behavioral dynamics of disasters utilizing computational methods. In this paper, we discuss and showcase the opportunities and the challenges in this new approach to disaster research. Following a brief review of the fields that relate to CSSD, namely traditional social sciences of disasters, computational social science, and crisis informatics, we examine how advances in Internet technologies offer a new lens through which to study disasters. By identifying gaps in the literature, we show how this new field could address ways to advance our understanding of the social and behavioral aspects of disasters in a digitally connected world. In doing so, our goal is to bridge the gap between data science and the social sciences of disasters in rapidly changing environments.
灾害的计算社会科学:机遇与挑战
灾害事件及其经济影响呈趋势,气候预测研究表明,灾害风险在不久的将来将继续增加。尽管这些事件具有广泛和日益增加的社会影响,但灾害研究的经验基础往往薄弱,部分原因是观测数据的自然缺乏。与此同时,随着社会、文化和政治规范的改变,一些关于社会对灾难反应的早期研究已经过时了。数字革命、开放数据趋势和数据科学的进步为社会科学灾害研究提供了新的机遇。我们引入了灾害计算社会科学(CSSD)这一术语,它可以正式定义为利用计算方法对灾害的社会行为动力学进行系统研究。在本文中,我们讨论并展示了这种灾害研究新方法的机遇和挑战。在简要回顾了与人文社会科学相关的领域,即传统的灾害社会科学、计算社会科学和危机信息学之后,我们研究了互联网技术的进步如何为研究灾害提供了一个新的视角。通过识别文献中的空白,我们展示了这个新领域如何解决方法,以提高我们对数字连接世界中灾害的社会和行为方面的理解。在这样做的过程中,我们的目标是在快速变化的环境中弥合数据科学与灾害社会科学之间的差距。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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