1. AI-Enabled COVID-19 Outbreak Analysis and Prediction: Indian States vs. Union Territories.
- Author
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Gupta, Meenu, Jain, Rachna, Arora, Simrann, Gupta, Akash, Awan, Mazhar Javed, Chaudhary, Gopal, and Nobanee, Haitham
- Subjects
COVID-19 pandemic ,COVID-19 ,RANDOM forest algorithms ,DEATH forecasting ,STANDARD deviations ,ARTIFICIAL intelligence - Abstract
The COVID-19 disease has already spread to more than 213 countries and territories with infected (confirmed) cases of more than 27 million people throughout the world so far, while the numbers keep increasing. In India, this deadly disease was first detected on January 30, 2020, in a student of Kerala who returned from Wuhan. Because of India’s high population density, different cultures, and diversity, it is a good idea to have a separate analysis of each state. Hence, this paper focuses on the comprehensive analysis of the effect of COVID-19 on Indian states and Union Territories and the development of a regression model to predict the number of discharge patients and deaths in each state. The performance of the proposed prediction framework is determined by using three machine learning regression algorithms, namely Polynomial Regression (PR), Decision Tree Regression, and Random Forest (RF) Regression. The results show a comparative analysis of the states and union territories having more than 1000 cases, and the trained model is validated by testing it on further dates. The performance is evaluated using the RMSE metrics. The results show that the Polynomial Regression with an RMSE value of 0.08, shows the best performance in the prediction of the discharged patients. In contrast, in the case of prediction of deaths, Random Forest with a value of 0.14, shows a better performance than other techniques. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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