Computational social science of disasters: Opportunities and challenges

Annetta Burger, Talha Oz, William G. Kennedy, Andrew T. Crooks

Research output: Contribution to journalReview articlepeer-review

16 Scopus citations

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 At the same time, some of the early research regarding social responses to disasters have become outdated as social, cultural, and political norms have changed.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.

Original languageEnglish
Article number103
JournalFuture Internet
Volume11
Issue number5
DOIs
StatePublished - May 1 2019
Externally publishedYes

Funding

Funding: This work has been partially sponsored by the Defense Threat Reduction Agency (DTRA) grant DTRA1–16–1-0043. The Center for Social Complexity at George Mason University also supported this work. This work has been partially sponsored by the Defense Threat Reduction Agency (DTRA) grant DTRA1-16-1-0043. The Center for Social Complexity at George Mason University also supported this work.

FundersFunder number
Defense Threat Reduction AgencyDTRA1–16–1-0043
Defense Threat Reduction Agency
George Mason University

    Keywords

    • Big data
    • Computational social science
    • Crisis informatics
    • Crowdsourcing
    • Disaster modeling
    • Disasters
    • Social media
    • Volunteered geographical information
    • Web 2.0

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