Improvement on Forecasting of Propagation of the COVID-19 Pandemic through Combining Oscillations in ARIMA Models

Eunju Hwang
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引用次数: 0

Abstract

Daily data on COVID-19 infections and deaths tend to possess weekly oscillations. The purpose of this work is to forecast COVID-19 data with partially cyclical fluctuations. A partially periodic oscillating ARIMA model is suggested to enhance the predictive performance. The model, optimized for improved prediction, characterizes and forecasts COVID-19 time series data marked by weekly oscillations. Parameter estimation and out-of-sample forecasting are carried out with data on daily COVID-19 infections and deaths between January 2021 and October 2022 in the USA, Germany, and Brazil, in which the COVID-19 data exhibit the strongest weekly cycle behaviors. Prediction accuracy measures, such as RMSE, MAE, and HMAE, are evaluated, and 95% prediction intervals are constructed. It was found that predictions of daily COVID-19 data can be improved considerably: a maximum of 55–65% in RMSE, 58–70% in MAE, and 46–60% in HMAE, compared to the existing models. This study provides a useful predictive model for the COVID-19 pandemic, and can help institutions manage their healthcare systems with more accurate statistical information.
通过结合 ARIMA 模型中的振荡改善对 COVID-19 大流行传播的预测
COVID-19 的每日感染和死亡数据往往具有周波动性。这项工作的目的是预测具有部分周期性波动的 COVID-19 数据。建议采用部分周期性振荡的 ARIMA 模型来提高预测性能。该模型经过优化,可对具有周振荡特征的 COVID-19 时间序列数据进行特征描述和预测,从而提高预测效果。利用 2021 年 1 月至 2022 年 10 月期间美国、德国和巴西的 COVID-19 每日感染和死亡数据进行了参数估计和样本外预测,其中 COVID-19 数据表现出最强的周周期行为。对 RMSE、MAE 和 HMAE 等预测精度指标进行了评估,并构建了 95% 的预测区间。结果发现,与现有模型相比,每日 COVID-19 数据的预测结果有了显著改善:RMSE 最大值为 55-65%,MAE 最大值为 58-70%,HMAE 最大值为 46-60%。这项研究为 COVID-19 大流行提供了一个有用的预测模型,可帮助医疗机构利用更准确的统计信息管理其医疗系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
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