Prediction of COVID-19 Confirmed Cases after Vaccination: Based on Statistical and Deep Learning Models

In this paper, we analyze and predict the number of daily confirmed cases of coronavirus (COVID-19) based on two statistical models and a deep learning (DL) model; the autoregressive integrated moving average (ARIMA), the generalized autoregressive conditional heteroscedasticity (GARCH), and the sta...

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Main Author: Meejoung Kim
Format: Article
Language:English
Published: Ital Publication 2021-06-01
Series:SciMedicine Journal
Subjects:
Online Access:https://www.scimedjournal.org/index.php/SMJ/article/view/314
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spelling doaj-83e001431f844631be2c4aa703ee17342021-06-26T10:51:15ZengItal PublicationSciMedicine Journal2704-98332021-06-013215316510.28991/SciMedJ-2021-0302-774Prediction of COVID-19 Confirmed Cases after Vaccination: Based on Statistical and Deep Learning ModelsMeejoung Kim0Research Institute for Information and Communication Technology, Korea University, Seoul,In this paper, we analyze and predict the number of daily confirmed cases of coronavirus (COVID-19) based on two statistical models and a deep learning (DL) model; the autoregressive integrated moving average (ARIMA), the generalized autoregressive conditional heteroscedasticity (GARCH), and the stacked long short-term memory deep neural network (LSTM DNN). We find the orders of the statistical models by the autocorrelation function and the partial autocorrelation function, and the hyperparameters of the DL model, such as the numbers of LSTM cells and blocks of a cell, by the exhaustive search. Ten datasets are used in the experiment; nine countries and the world datasets, from Dec. 31, 2019, to Feb. 22, 2021, provided by the WHO. We investigate the effects of data size and vaccination on performance. Numerical results show that performance depends on the used data's dates and vaccination. It also shows that the prediction by the LSTM DNN is better than those of the two statistical models. Based on the experimental results, the percentage improvements of LSTM DNN are up to 88.54% (86.63%) and 90.15% (87.74%) compared to ARIMA and GARCH, respectively, in mean absolute error (root mean squared error). While the performances of ARIMA and GARCH are varying according to the datasets. The obtained results may provide a criterion for the performance ranges and prediction accuracy of the COVID-19 daily confirmed cases. Doi: 10.28991/SciMedJ-2021-0302-7 Full Text: PDFhttps://www.scimedjournal.org/index.php/SMJ/article/view/314covid-19predictive modelnon-linear fittinglong short-term memory deep neural networkautoregressive integrated moving averagegeneralized autoregressive conditional heteroscedasticity.
collection DOAJ
language English
format Article
sources DOAJ
author Meejoung Kim
spellingShingle Meejoung Kim
Prediction of COVID-19 Confirmed Cases after Vaccination: Based on Statistical and Deep Learning Models
SciMedicine Journal
covid-19
predictive model
non-linear fitting
long short-term memory deep neural network
autoregressive integrated moving average
generalized autoregressive conditional heteroscedasticity.
author_facet Meejoung Kim
author_sort Meejoung Kim
title Prediction of COVID-19 Confirmed Cases after Vaccination: Based on Statistical and Deep Learning Models
title_short Prediction of COVID-19 Confirmed Cases after Vaccination: Based on Statistical and Deep Learning Models
title_full Prediction of COVID-19 Confirmed Cases after Vaccination: Based on Statistical and Deep Learning Models
title_fullStr Prediction of COVID-19 Confirmed Cases after Vaccination: Based on Statistical and Deep Learning Models
title_full_unstemmed Prediction of COVID-19 Confirmed Cases after Vaccination: Based on Statistical and Deep Learning Models
title_sort prediction of covid-19 confirmed cases after vaccination: based on statistical and deep learning models
publisher Ital Publication
series SciMedicine Journal
issn 2704-9833
publishDate 2021-06-01
description In this paper, we analyze and predict the number of daily confirmed cases of coronavirus (COVID-19) based on two statistical models and a deep learning (DL) model; the autoregressive integrated moving average (ARIMA), the generalized autoregressive conditional heteroscedasticity (GARCH), and the stacked long short-term memory deep neural network (LSTM DNN). We find the orders of the statistical models by the autocorrelation function and the partial autocorrelation function, and the hyperparameters of the DL model, such as the numbers of LSTM cells and blocks of a cell, by the exhaustive search. Ten datasets are used in the experiment; nine countries and the world datasets, from Dec. 31, 2019, to Feb. 22, 2021, provided by the WHO. We investigate the effects of data size and vaccination on performance. Numerical results show that performance depends on the used data's dates and vaccination. It also shows that the prediction by the LSTM DNN is better than those of the two statistical models. Based on the experimental results, the percentage improvements of LSTM DNN are up to 88.54% (86.63%) and 90.15% (87.74%) compared to ARIMA and GARCH, respectively, in mean absolute error (root mean squared error). While the performances of ARIMA and GARCH are varying according to the datasets. The obtained results may provide a criterion for the performance ranges and prediction accuracy of the COVID-19 daily confirmed cases. Doi: 10.28991/SciMedJ-2021-0302-7 Full Text: PDF
topic covid-19
predictive model
non-linear fitting
long short-term memory deep neural network
autoregressive integrated moving average
generalized autoregressive conditional heteroscedasticity.
url https://www.scimedjournal.org/index.php/SMJ/article/view/314
work_keys_str_mv AT meejoungkim predictionofcovid19confirmedcasesaftervaccinationbasedonstatisticalanddeeplearningmodels
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