Model uncertainty, the COVID-19 pandemic, and the science-policy interface
Journal article, 2024

The COVID-19 pandemic illustrated many of the challenges with using science to guide planning and policymaking. One such challenge has to do with how to manage, represent and communicate uncertainties in epidemiological models. This is considerably complicated, we argue, by the fact that the models themselves are often instrumental in structuring the involved uncertainties. In this paper we explore how models 'domesticate' uncertainties and what this implies for science-for-policy. We analyse three examples of uncertainty domestication in models of COVID-19 and argue that we need to pay more attention to how uncertainties are domesticated in models used for policy support, and the many ways in which uncertainties are domesticated within particular models can fail to fit with the needs and demands of policymakers and planners.

science-policy interface

epidemiology

uncertainty

policy

COVID-19

Author

Henrik Thorén

Lund University

Philip Gerlee

Chalmers, Mathematical Sciences, Applied Mathematics and Statistics

Royal Society Open Science

2054-5703 (eISSN)

Vol. 11 2 230803

Predicting an uncertain future: improving the utility of computational models during a pandemic

Swedish Research Council (VR) (2022-06368), 2023-01-01 -- 2025-12-31.

Subject Categories

Philosophy

Computational Mathematics

Environmental Sciences

DOI

10.1098/rsos.230803

More information

Latest update

3/1/2024 8