COVID-19: A Comparison of Time Series Methods to Forecast Percentage of Active Cases per Population
Título
COVID-19: A Comparison of Time Series Methods to Forecast Percentage of Active Cases per Population
Autor
Sotiris Kotsiantis, Vasilis Papastefanopoulos, Pantelis Linardatos
Descripción
The ongoing COVID-19 pandemic has caused worldwide socioeconomic unrest, forcing governments to introduce extreme measures to reduce its spread. Being able to accurately forecast when the outbreak will hit its peak would significantly diminish the impact of the disease, as it would allow governments to alter their policy accordingly and plan ahead for the preventive steps needed such as public health messaging, raising awareness of citizens and increasing the capacity of the health system. This study investigated the accuracy of a variety of time series modeling approaches for coronavirus outbreak detection in ten different countries with the highest number of confirmed cases as of 4 May 2020. For each of these countries, six different time series approaches were developed and compared using two publicly available datasets regarding the progression of the virus in each country and the population of each country, respectively. The results demonstrate that, given data produced using actual testing for a small portion of the population, machine learning time series methods can learn and scale to accurately estimate the percentage of the total population that will become affected in the future.
Fecha
2020
Materia
machine learning, statistics, time series, coronavirus, Pandemic, COVID-19
Identificador
DOI: 10.3390/app10113880
Fuente
Applied Sciences
Editor
MDPI AG
Cobertura
Biology (General), Technology, Physics, Chemistry, Engineering (General). Civil engineering (General)
Colección
Citación
Sotiris Kotsiantis, Vasilis Papastefanopoulos, Pantelis Linardatos, “COVID-19: A Comparison of Time Series Methods to Forecast Percentage of Active Cases per Population,” SOCICT Open, consulta 18 de abril de 2026, https://socictopen.socict.org/items/show/3605.
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