Research Article

Modeling Covid-19 Infection Cases and Vaccine in 5 Countries Highly Vaccinations

Volume: 13 Number: 2 December 31, 2021
EN

Modeling Covid-19 Infection Cases and Vaccine in 5 Countries Highly Vaccinations

Abstract

COVID-19 has become the most important and crucial agenda in the world in the last year. COVID-19 has taken many lives around the world and millions of people have been infected. To get rid of this depression caused by COVID-19, many countries have started big campaigns for vaccine production. In this study, data on infection cases and vaccinations conducted in England, Germany, Israel, Russia, and the USA were analyzed from January 3, 2020, to March 3, 2021. We used univariate time series models, where the results are very accurate, rather than epmdicolgical models. In this article we used BATS, TBATS, Holt’s linear trend, and ARIMA models to recognize the pattern of spread of covid 19 infection cases. The best models are specified for all countries that have the least error according to MAPE. Findings obtained in this study have been reported extensively in England, Germany, Israel, Russia, and the USA with tables and figures. Using the results and forecasts obtained in this study, England, Germany, Israel, Russia, and the USA can take COVID-19 measures for the future.

Keywords

References

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Details

Primary Language

English

Subjects

Mathematical Sciences

Journal Section

Research Article

Publication Date

December 31, 2021

Submission Date

April 4, 2021

Acceptance Date

December 10, 2021

Published in Issue

Year 2021 Volume: 13 Number: 2

APA
Abotaleb, M., Makarovskikh, T., Yonar, H., Mishra, P., Badr, A., Karakaya, K., & Yonar, A. (2021). Modeling Covid-19 Infection Cases and Vaccine in 5 Countries Highly Vaccinations. Turkish Journal of Mathematics and Computer Science, 13(2), 403-417. https://doi.org/10.47000/tjmcs.905508
AMA
1.Abotaleb M, Makarovskikh T, Yonar H, et al. Modeling Covid-19 Infection Cases and Vaccine in 5 Countries Highly Vaccinations. TJMCS. 2021;13(2):403-417. doi:10.47000/tjmcs.905508
Chicago
Abotaleb, Mostafa, Tatiana Makarovskikh, Harun Yonar, et al. 2021. “Modeling Covid-19 Infection Cases and Vaccine in 5 Countries Highly Vaccinations”. Turkish Journal of Mathematics and Computer Science 13 (2): 403-17. https://doi.org/10.47000/tjmcs.905508.
EndNote
Abotaleb M, Makarovskikh T, Yonar H, Mishra P, Badr A, Karakaya K, Yonar A (December 1, 2021) Modeling Covid-19 Infection Cases and Vaccine in 5 Countries Highly Vaccinations. Turkish Journal of Mathematics and Computer Science 13 2 403–417.
IEEE
[1]M. Abotaleb et al., “Modeling Covid-19 Infection Cases and Vaccine in 5 Countries Highly Vaccinations”, TJMCS, vol. 13, no. 2, pp. 403–417, Dec. 2021, doi: 10.47000/tjmcs.905508.
ISNAD
Abotaleb, Mostafa - Makarovskikh, Tatiana - Yonar, Harun - Mishra, Pradeep - Badr, Amr - Karakaya, Kadir - Yonar, Aynur. “Modeling Covid-19 Infection Cases and Vaccine in 5 Countries Highly Vaccinations”. Turkish Journal of Mathematics and Computer Science 13/2 (December 1, 2021): 403-417. https://doi.org/10.47000/tjmcs.905508.
JAMA
1.Abotaleb M, Makarovskikh T, Yonar H, Mishra P, Badr A, Karakaya K, Yonar A. Modeling Covid-19 Infection Cases and Vaccine in 5 Countries Highly Vaccinations. TJMCS. 2021;13:403–417.
MLA
Abotaleb, Mostafa, et al. “Modeling Covid-19 Infection Cases and Vaccine in 5 Countries Highly Vaccinations”. Turkish Journal of Mathematics and Computer Science, vol. 13, no. 2, Dec. 2021, pp. 403-17, doi:10.47000/tjmcs.905508.
Vancouver
1.Mostafa Abotaleb, Tatiana Makarovskikh, Harun Yonar, Pradeep Mishra, Amr Badr, Kadir Karakaya, Aynur Yonar. Modeling Covid-19 Infection Cases and Vaccine in 5 Countries Highly Vaccinations. TJMCS. 2021 Dec. 1;13(2):403-17. doi:10.47000/tjmcs.905508

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