Taking Ethics, Fairness, and Bias Seriously in Machine Learning for Disaster Risk Management
Robert Soden, Dennis Wagenaar, Dave Luo, Annegien Tijssen

TL;DR
This paper emphasizes the importance of addressing ethics, fairness, and bias in deploying machine learning for disaster risk management, proposing a research agenda for responsible use.
Contribution
It highlights the need for careful assessment of negative impacts and discusses a research agenda to promote responsible machine learning deployment in DRM.
Findings
Identifies potential negative impacts of ML in DRM
Proposes a research agenda for ethical deployment
Highlights benefits of ML in disaster management
Abstract
This paper highlights an important, if under-examined, set of questions about the deployment of machine learning technologies in the field of disaster risk management (DRM). While emerging tools show promising capacity to support scientific efforts to better understand and mitigate the threats posed by disasters and climate change, our field must undertake a much more careful assessment of the potential negative impacts that machine learning technologies may create. We also argue that attention to these issues in the context of machine learning affords the opportunity to have discussions about potential ethics, bias, and fairness concerns within disaster data more broadly. In what follows, we first describe some of the uses and potential benefits of machine-learning technology in disaster risk management. We then draw on research from other fields to speculate about potential negative…
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Taxonomy
TopicsDisaster Management and Resilience · Ethics and Social Impacts of AI · Disaster Response and Management
