Author: Mohan, Senthilkumar; A, John; Abugabah, Ahed; M, Adimoolam; Kumar Singh, Shubham; kashif Bashir, Ali; Sanzogni, Louis
Title: An approach to forecast impact of Covidâ€19 using supervised machine learning model Cord-id: m84nwqsw Document date: 2021_4_1
ID: m84nwqsw
Snippet: The Covidâ€19 pandemic has emerged as one of the most disquieting worldwide public health emergencies of the 21st century and has thrown into sharp relief, among other factors, the dire need for robust forecasting techniques for disease detection, alleviation as well as prevention. Forecasting has been one of the most powerful statistical methods employed the world over in various disciplines for detecting and analyzing trends and predicting future outcomes based on which timely and mitigating
Document: The Covidâ€19 pandemic has emerged as one of the most disquieting worldwide public health emergencies of the 21st century and has thrown into sharp relief, among other factors, the dire need for robust forecasting techniques for disease detection, alleviation as well as prevention. Forecasting has been one of the most powerful statistical methods employed the world over in various disciplines for detecting and analyzing trends and predicting future outcomes based on which timely and mitigating actions can be undertaken. To that end, several statistical methods and machine learning techniques have been harnessed depending upon the analysis desired and the availability of data. Historically speaking, most predictions thus arrived at have been short term and countryâ€specific in nature. In this work, multimodel machine learning technique is called EAMA for forecasting Covidâ€19 related parameters in the longâ€term both within India and on a global scale have been proposed. This proposed EAMA hybrid model is wellâ€suited to predictions based on past and present data. For this study, two datasets from the Ministry of Health & Family Welfare of India and Worldometers, respectively, have been exploited. Using these two datasets, longâ€term data predictions for both India and the world have been outlined, and observed that predicted data being very similar to realâ€time values. The experiment also conducted for statewise predictions of India and the countrywise predictions across the world and it has been included in the Appendix.
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