Augmenting classical epidemiological models with information from the social sciences helps unveil the interplay between contagion dynamics and social responses. However, multidisciplinary integration of social analysis and epidemiological modelling is often challenging, due to scarcity of vast and reliable data sources and because ad hoc modelling assumptions may not reproduce empirically observed patters. Here, we test the hypothesis that awareness and information spreading straightforwardly translate into behavioural responses, analysing empirical data to generate insights about their dynamics and relationships. We employ such results to build a data-informed behavioural-epidemiological model that elucidates the impact of compliant behaviours and the role of centralised regulations in mitigating epidemics. We investigate the model properties and its benefits in integrating theoretical modelling and data.
Data Informed Epidemiological-Behavioural Modelling / Proverbio, Daniele; Tessarin, Riccardo; Giordano, Giulia. - (2025), pp. 279-289. ( GIMC SIMAI YOUNG 2024 Gruppo Italiano di Meccanica Computazionale and Società Italiana di Matematica Applicata e Industriale joint workshop for young scientists Naples, Italy 10th-12th July 2024) [10.1007/978-3-031-76591-9_26].
Data Informed Epidemiological-Behavioural Modelling
Proverbio, Daniele
Primo
;Giordano, GiuliaUltimo
2025-01-01
Abstract
Augmenting classical epidemiological models with information from the social sciences helps unveil the interplay between contagion dynamics and social responses. However, multidisciplinary integration of social analysis and epidemiological modelling is often challenging, due to scarcity of vast and reliable data sources and because ad hoc modelling assumptions may not reproduce empirically observed patters. Here, we test the hypothesis that awareness and information spreading straightforwardly translate into behavioural responses, analysing empirical data to generate insights about their dynamics and relationships. We employ such results to build a data-informed behavioural-epidemiological model that elucidates the impact of compliant behaviours and the role of centralised regulations in mitigating epidemics. We investigate the model properties and its benefits in integrating theoretical modelling and data.| File | Dimensione | Formato | |
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