Hybrid Deep Learning-Based Epidemic Prediction Framework of COVID-19: South Korea Case

Título

Hybrid Deep Learning-Based Epidemic Prediction Framework of COVID-19: South Korea Case

Autor

Firda Rahmadani, Hyunsoo Lee

Descripción

The emergence of COVID-19 and the pandemic have changed and devastated every aspect of our lives. Before effective vaccines are widely used, it is important to predict the epidemic patterns of COVID-19. As SARS-CoV-2 is transferred primarily by droplets of infected people, the incorporation of human mobility is crucial in epidemic dynamics models. This study expands the susceptible–exposed–infected–recovered compartment model by considering human mobility among a number of regions. Although the expanded meta-population epidemic model exhibits better performance than general compartment models, it requires a more accurate estimation of the extended modeling parameters. To estimate the parameters of these epidemic models, the meta-population model is incorporated with deep learning models. The combined deep learning model generates more accurate modeling parameters, which are used for epidemic meta-population modeling. In order to demonstrate the effectiveness of the proposed hybrid deep learning framework, COVID-19 data in South Korea were tested, and the forecast of the epidemic patterns was compared with other estimation methods.

Fecha

2020

Materia

covid-19, epidemic modeling, human mobility, hybrid deep learning, meta-population model

Identificador

10.3390/app10238539

Fuente

Epidemiology and Health

Editor

Korean Society of Epidemiology

Cobertura

Biology (General), Chemistry, Engineering (General). Civil engineering (General), Technology, Physics

Archivos

https://socictopen.socict.org/files/to_import/pdfs/86549ab680af065fc6bcf38cd8c70c1f.pdf

Colección

Citación

Firda Rahmadani, Hyunsoo Lee, “Hybrid Deep Learning-Based Epidemic Prediction Framework of COVID-19: South Korea Case,” SOCICT Open, consulta 21 de abril de 2026, https://www.socictopen.socict.org/items/show/5970.

Formatos de Salida

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