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Published on 9 September 2022
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Guo,Y. (2022). A Systematic Discussion of the Main Epidemic Prediction Models for the Spreading of COVID-19. Theoretical and Natural Science,1,10-18.
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A Systematic Discussion of the Main Epidemic Prediction Models for the Spreading of COVID-19

Yiming Guo *,1,
  • 1 Ealing Internation School

* Author to whom correspondence should be addressed.

https://doi.org/10.54254/2753-8818/1/2022009

Abstract

Currently, many countries around the world are facing the crisis of COVID-19. Most of them cannot solve the problem of the spread of COVID-19. This study aims to analyze the four main pandemics’ prediction models through their advantages, shortages, the basic structures, appropriate scene as well as the improvement methods to ameliorate the whole statistical system of COVID-19. Today, the researchers have widely criticized the means and medium of data collection for the sake of pandemic spreading. Although the government has undertaken steps on the control of COVID-19, there were always many positive cases appeared at one time so that the viruses spread widely. In summary, this study offers new in sight for arranging the pandemic’s prediction method against the potential of the outbreak of all the epidemics.

Keywords

COVID-19, Prediction of pandemics, Statistics model

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Cite this article

Guo,Y. (2022). A Systematic Discussion of the Main Epidemic Prediction Models for the Spreading of COVID-19. Theoretical and Natural Science,1,10-18.

Data availability

The datasets used and/or analyzed during the current study will be available from the authors upon reasonable request.

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Series: Theoretical and Natural Science
Volume number: Vol.1
ISSN:2753-8818(Print) / 2753-8826(Online)

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