Forecasting COVID-19 new cases through the Mixed Generalized Inverse Weibull Distribution and time series model

In this paper, the MGIW-ARIMA model is proposed to predict the newly diagnosed cases of COVID-19. The MGIW model is used to predict the trend components, and the ARIMA model is used to predict the random components. Finally, the prediction results of trend components and random components are added...

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Veröffentlicht in:Chaos, solitons and fractals solitons and fractals, 2023-10, Vol.175, p.114015, Article 114015
Hauptverfasser: Chang, Yiming, Tao, YinYing, Shan, Wei, Yu, Xiangyuan
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Sprache:eng
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Zusammenfassung:In this paper, the MGIW-ARIMA model is proposed to predict the newly diagnosed cases of COVID-19. The MGIW model is used to predict the trend components, and the ARIMA model is used to predict the random components. Finally, the prediction results of trend components and random components are added together to get the estimation results. The data of COVID-19 in the United States is used to verify and evaluate the model. In the short-term prediction, the combined model of MGIW-ARIMA is better than the single MGIW model. In the long-term prediction, the prediction accuracy of the MGIW model is slightly higher than that of the MGIW-ARIMA model. The MGIW-ARIMA model proposed in this paper makes up for the shortcoming of the lack of randomness in the estimated values of the MGIW model. The combination model can effectively capture the short-term changes of the epidemic while grasping the long-term development trend.
ISSN:0960-0779
1873-2887
DOI:10.1016/j.chaos.2023.114015