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

Meejoung Kim
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引用次数: 9

Abstract

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
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新冠肺炎疫苗接种后确诊病例预测:基于统计和深度学习模型
在本文中,我们基于两个统计模型和一个深度学习(DL)模型来分析和预测每日确诊的冠状病毒(新冠肺炎)病例数;自回归综合移动平均(ARIMA)、广义自回归条件异方差(GARCH)和堆叠长短期记忆深度神经网络(LSTM-DNN)。我们通过自相关函数和偏自相关函数找到统计模型的阶数,并通过穷举搜索找到DL模型的超参数,如LSTM细胞和细胞块的数量。实验中使用了10个数据集;世界卫生组织提供的2019年12月31日至2021年2月22日的9个国家和世界数据集。我们研究了数据大小和疫苗接种对性能的影响。数值结果表明,性能取决于所用数据的日期和疫苗接种情况。还表明,LSTM-DNN的预测效果优于两种统计模型。基于实验结果,与ARIMA和GARCH相比,LSTM DNN的平均绝对误差(均方根误差)分别提高了88.54%(86.63%)和90.15%(87.74%)。而ARIMA和GARCH的性能根据数据集的不同而不同。所获得的结果可以为新冠肺炎每日确诊病例的表现范围和预测准确性提供标准。Doi:10.28991/SciMedJ-2021-0302-7全文:PDF
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