Data-driven decision making for modelling covid-19 and its implications: A cross-country study
Date
2023Author
Sariyer Gorkem:: Mangla Sachin Kumar:: Kazancoglu Yigit:: Jain Vranda:: Ataman Mustafa Gokalp
Metadata
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Grounded in big data analytics capabilities this study aims to model the COVID-19 spread globally by considering various factors such as demographic cultural health system economic technological and policy-based. Classified values on each country's case death and recovery numbers (per 1000000 population) were used to represent COVID-19 spread. Data sets also included 29 input variables for the corresponding six factors containing data from 159 countries. The proposed model used a Multilayer Perceptron algorithm. The results show that each of the pre-mentioned factors significantly affects disease spread. Urban population median age life expectancy numbers of medical doctors and nursing personnel current health expenditure as a % of GDP international health regulations capacity score continent literacy rate governmental response stringency index testing policy internet usage % human development index and GDP per capita were identified as significant. Taking early measures and adopting open public testing policies were recommended to policymakers in fighting pandemic diseases since the created scenarios on policy-based factors revealed their importance.
URI
http://dx.doi.org/10.1016/j.techfore.2023.122886https://dspace.yasar.edu.tr/handle/20.500.12742/19201
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