Early evidence during the first phase of the COVID-19 outbreak shows that individuals facing the risk of infection increased their levels of physical distancing even before relevant measures were imposed. Not taking individual behaviour into account can lead policy makers to overestimate the infection risks in absence of physical distancing measures and underestimate the effectiveness of measures. This paper proposes a behavioural-compartmental-epidemiological model with heterogenous agents who take physical distancing measures to reduce the risk of becoming infected. The level of these measures depends on the government’s regulations and the daily new cases and is influenced by the individual perception of the infection risk. This approach can account for two important factors: (i) the limited information about the exact infection risks and (ii) the heterogeneity across individuals with regards to physical distancing decisions. We find that the intensity of measures required to reduce infections is directly related to the public perception of the risk of infection, and that harsher late measures are in general less effective than milder ones imposed earlier. The model demonstrates that the feedback effects between contagion dynamics and individual decisions make the extrapolation of out-of-sample forecasts from past data dangerous, in particular in a context with high uncertainty.
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4 April 2022
Research Article|
April 04 2022
A Behavioural SIR Model: Implications for Physical Distancing Decisions
Corrado Di Guilmi;
Corrado Di Guilmi
University of Technology Sydney
– PO Box 123, Broadway, NSW 2007, Australia
Centre for Applied Macroeconomic Analysis,
Australian National University
Center for Computational Social Science,
Kobe University
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Giorgos Galanis;
Giorgos Galanis
Centre for Applied Macroeconomic Analysis,
Australian National University
Goldsmiths,
University of London
, New Cross, London, SE14 6NW, London, UK
CRETA,
University of Warwick
, UK
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Giorgos Baskozos
Giorgos Baskozos
Nuffield Department of Clinical Neurosciences,
University of Oxford
, John Radcliffe Hospital, West Wing Level 6, OX3 9DU, UK
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*
Funding: This research did not receive any funding. Conflicts of interest/Competing interests: None. Availability of data and material: The data used are publicly available at https://yougov.co.uk. Code availability: Codes available upon request.
Online ISSN: 2326-6201
Print ISSN: 2326-6198
© 2022 C. Di Guilmi, G. Galanis and G. Baskozos
2022
C. Di Guilmi, G. Galanis and G. Baskozos
Licensed re-use rights only
Review of Behavioral Economics (2022) 9 (1): 45–63.
Citation
Guilmi CD, Galanis G, Baskozos G (2022), "A Behavioural SIR Model: Implications for Physical Distancing Decisions". Review of Behavioral Economics, Vol. 9 No. 1 pp. 45–63, doi: https://doi.org/10.1561/105.00000149
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