Aidoo Eric N, Ampofo Richard T, Awashie Gaston E, Appiah Simon K, Adebanji Atinuke O
KNUST-Laboratory for Interdisciplinary Statistical Analysis, Department of Statistics and Actuarial Science, Kwame Nkrumah University of Science and Technology, Kumasi, Ghana.
Department of Statistics and Actuarial Science, Kwame Nkrumah University of Science and Technology, Kumasi, Ghana.
Model Earth Syst Environ. 2022;8(1):961-966. doi: 10.1007/s40808-021-01136-1. Epub 2021 Feb 26.
Prediction of COVID-19 incidence and transmissibility rates are essential to inform disease control policy and allocation of limited resources (especially to hotspots), and also to prepare towards healthcare facilities demand. This study demonstrates the capabilities of nonlinear smooth transition autoregressive (STAR) model for improved forecasting of COVID-19 incidence in the Africa sub-region were investigated. Data used in the study were daily confirmed new cases of COVID-19 from February 25 to August 31, 2020. The results from the study showed the nonlinear STAR-type model with logistic transition function aptly captured the nonlinear dynamics in the data and provided a better fit for the data than the linear model. The nonlinear STAR-type model further outperformed the linear autoregressive model for predicting both in-sample and out-of-sample incidence.
预测新冠病毒疾病(COVID-19)的发病率和传播率对于制定疾病控制政策以及分配有限资源(特别是分配到热点地区)至关重要,同时对于应对医疗设施需求也很关键。本研究探讨了非线性平滑转换自回归(STAR)模型在改进非洲次区域COVID-19发病率预测方面的能力。该研究使用的数据为2020年2月25日至8月31日每日确诊的COVID-19新病例。研究结果表明,具有逻辑转换函数的非线性STAR型模型能够恰当地捕捉数据中的非线性动态,并且比线性模型更能拟合数据。在预测样本内和样本外发病率方面,非线性STAR型模型的表现也优于线性自回归模型。