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Resumen de A Hybrid System For Pandemic Evolution Prediction

Lilia Muñoz, María Alonso García, Vladimir Villarreal Árbol académico, Guillermo Hernández González, Mel Nielsen, Francisco Pinto Santos, Amilkar Abdiel Saavedra Suñé, Mariana Areiza, Juan Montenegro, Inés Sittón Candanedo, Yen Air Caballero González, Saber Trabelsi, Juan Manuel Corchado Rodríguez Árbol académico

  • The areas of data science and data engineering have experienced strong advances in recent years. This has had a particular impact on areas such as healthcare, where, as a result of the pandemic caused by the COVID-19 virus, technological development has accelerated. This has led to a need to produce solutions that enable the collection, integration and efficient use of information for decision making scenarios. This is evidenced by the proliferation of monitoring, data collection, analysis, and prediction systems aimed at controlling the pandemic. To go beyond current epidemic prediction possibilities, this article proposes a hybrid model that combines the dynamics of epidemiological processes with the predictive capabilities of artificial neural networks. In addition, the system allows for the introduction of additional information through an expert system, thus allowing the incorporation of additional hypotheses on the adoption of containment measures.


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