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Data analysis of COVID-2019 epidemic using machine learning methods: a case study
of India
#MMPMID32838124
Yadav RS
Int J Inf Technol
2020[]; 12
(4
): 1321-1330
PMID32838124
show ga
At this time, COVID-2019 is spreading its foot in the form of a huge epidemic for
the world. This epidemic is spreading its foot very fast in India too. One of the
World Health Organization states that COVID-2019 is a serious disease that
spreads from one person to another at very fast speed through contact routes and
respiratory drops. On this day, India and the world should rise to an effective
step to analyze this disease and eliminate the effects of this epidemic. In this
paper presented, the growing database of COVID-2019 has been analyzed from March
1, 2020, to April 11, 2020, and the next one is predicted for the number of
patients suffering from the rising COVID-2019. Different regression analysis
models have been utilized for data analysis of COVID-2019 of India based on data
stored by Kaggle in between 1 March 2020 to 11 April 2020. In this study, we have
been utilized six regression analysis based models namely quadratic, third
degree, fourth degree, fifth degree, sixth degree, and exponential polynomial
respectively for the COVID-2019 dataset. We have calculated the root mean square
of these six regression analysis models. In these six models, the root mean
square error of sixth degree polynomial is very less in compared other like
quadratic, third degree, fourth degree, fifth degree, and exponential polynomial.
Therefore the sixth degree polynomial regression model is very good models for
forecasting the next 6 days for COVID-2019 data analysis in India. In this study,
we have found that the sixth degree polynomial regression models will help Indian
doctors and the Government in preparing their plans in the next 7 days. Based on
further regression analysis study, this model can be tuned for forecasting over
long term intervals.