Reduced modelling and optimal control of epidemiological individual‐based models with contact heterogeneity

Summary Modelling epidemics using classical population‐based models suffers from shortcomings that so‐called individual‐based models are able to overcome, as they are able to take into account heterogeneity features, such as super‐spreaders, and describe the dynamics involved in small clusters. In r...

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Published inOptimal control applications & methods Vol. 45; no. 2; pp. 459 - 493
Main Authors Courtès, C., Franck, E., Lutz, K., Navoret, L., Privat, Y.
Format Journal Article
LanguageEnglish
Published Glasgow Wiley Subscription Services, Inc 01.03.2024
Wiley
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ISSN0143-2087
1099-1514
1099-1514
DOI10.1002/oca.2970

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Summary:Summary Modelling epidemics using classical population‐based models suffers from shortcomings that so‐called individual‐based models are able to overcome, as they are able to take into account heterogeneity features, such as super‐spreaders, and describe the dynamics involved in small clusters. In return, such models often involve large graphs which are expensive to simulate and difficult to optimize, both in theory and in practice. By combining the reinforcement learning philosophy with reduced models, we propose a numerical approach to determine optimal health policies for a stochastic individual‐based model taking into account heterogeneity in the population. More precisely, we introduce a deterministic reduced population‐based model involving a neural network, designed to faithfully mimic the local dynamics of the more complex individual‐based model. Then the optimal control is determined by sequentially training the network until an optimal strategy for the population‐based model succeeds in also containing the epidemic when simulated on the individual‐based model. After describing the practical implementation of the method, several numerical tests are proposed to demonstrate its ability to determine controls for models with contact heterogeneity.
Bibliography:Funding information
ANR Project TRECOS
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content type line 14
ISSN:0143-2087
1099-1514
1099-1514
DOI:10.1002/oca.2970