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Journal of Computer Science ; 16(9):1291-1305, 2020.
Article in English | Scopus | ID: covidwho-886213

ABSTRACT

The novel Coronavirus 2019 (COVID-19) has caused a pandemic disease over 200 countries, influencing billions of humans. In this consequence, it is very much essential to the identify factors that correlate with the spread of this virus. The detection of coronavirus spread factors open up new challenges to the research community. Artificial Intelligence (AI) driven methods can be useful to predict the parameters, risks and effects of such an epidemic. Such predictions can be helpful to control and prevent the spread of such diseases. In this study, we introduce two datasets, each of which consists of 25 country-level factors and covers 137 countries summarizing different domains. COVID-19STC aims to detect the increase of the total cases, whereas COVID-19STD aimed for total death detection. For each data set, we applied three feature selection algorithms (vis. correlation coefficient, information gain and gain ratio). We also apply feature selection by the Wrapper methods using four classifiers, namely, NaiveBayes, SMO, J48 and Random Forest. The GDP, GDP Per Capital, E-Government Index and Smoking Habit factors found to be the main factors for the total cases detection with accuracy of 73% using the J48 classifier. The GDP and E-Government Index are found to be the main factors for total deaths detection with accuracy of 71% using J48 classifier. © 2020 Rana Husni Al Mahmoud, Eman Omar, Khaled Taha, Mahmoud Al-Sharif and Abdullah Aref.

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