Atchadé Mintodê Nicodème, Tchanati P Paul
National Higher School of Mathematics Genius and Modelization, National University of Sciences, Technologies, Engineering and Mathematics, Abomey, Benin.
University of Abomey-Calavi/International Chair in Mathematical Physics and Applications (ICMPA: UNESCO-Chair), 072 BP 50 Cotonou, Benin.
Heliyon. 2022 Oct 12;8(10):e11057. doi: 10.1016/j.heliyon.2022.e11057. eCollection 2022 Oct.
This paper develops a method for nonlinear regression models estimation that is robust to heteroscedasticity and autocorrelation of errors. Using nonlinear least squares estimation, four popular growth models (Exponential, Gompertz, Verhulst, and Weibull) were computed. Some assumptions on the errors of these models (independence, normality, and homoscedasticity) being violated, the estimates are improved by modeling the residuals using the ETS method. For an application purpose, this approach has been used to predict the daily cumulative number of novel coronavirus (COVID-19) cases in Africa for the study period, from March 13, 2020, to June 26, 2021. The comparison of the proposed model to the competitors was done using statistical metrics such as MAPE, MAE, RMSE, AIC, BIC, and AICc. The findings revealed that the modified Gompertz model is the most accurate in forecasting the total number of COVID-19 cases in Africa. Moreover, the developed approach will be useful for researchers and policymakers for predicting purpose and for better decision making in different fields of its applications.
本文提出了一种非线性回归模型估计方法,该方法对误差的异方差性和自相关性具有稳健性。使用非线性最小二乘法估计,计算了四种常用的增长模型(指数模型、冈珀茨模型、逻辑斯蒂模型和威布尔模型)。由于这些模型的误差的一些假设(独立性、正态性和同方差性)被违反,通过使用ETS方法对残差进行建模来改进估计。出于应用目的,该方法已被用于预测2020年3月13日至2021年6月26日研究期间非洲新型冠状病毒(COVID-19)病例的每日累计数量。使用MAPE、MAE、RMSE、AIC、BIC和AICc等统计指标对所提出的模型与竞争对手进行了比较。研究结果表明,改进的冈珀茨模型在预测非洲COVID-19病例总数方面最为准确。此外,所开发的方法将有助于研究人员和政策制定者进行预测,并在其应用的不同领域做出更好的决策。