Universal College Bangladesh (Monash College), Dhaka, Bangladesh.
School of Science, Monash University Malaysia, Bandar Sunway, Selangor D. E., Malaysia.
Sci Rep. 2022 Mar 24;12(1):5083. doi: 10.1038/s41598-022-08486-5.
The challenge of accurately short-term forecasting demand is due to model selection and the nature of data trends. In this study, the prediction model was determined based on data patterns (trend data without seasonality) and the accuracy of prediction measurement. The cumulative number of COVID-19 affected people in some ASEAN countries had been collected from the Worldometers database. Three models [Holt's method, Wright's modified Holt's method, and unreplicated linear functional relationship model (ULFR)] had been utilized to identify an efficient model for short-time prediction. Moreover, different smoothing parameters had been tested to find the best combination of the smoothing parameter. Nevertheless, using the day-to-day reported cumulative case data and 3-days and 7-days in advance forecasts of cumulative data. As there was no missing data, Holt's method and Wright's modified Holt's method showed the same result. The text-only result corresponds to the consequences of the models discussed here, where the smoothing parameters (SP) were roughly estimated as a function of forecasting the number of affected people due to COVID-19. Additionally, the different combinations of SP showed diverse, accurate prediction results depending on data volume. Only 1-day forecasting illustrated the most efficient prediction days (1 day, 3 days, 7 days), which was validated by the Nash-Sutcliffe efficiency (NSE) model. The study also validated that ULFR was an efficient forecasting model for the efficient model identifying. Moreover, as a substitute for the traditional R-squared, the study applied NSE and R-squared (ULFR) for model selection. Finally, the result depicted that the prediction ability of ULFR was superior to Holt's when it is compared to the actual data.
准确预测短期需求的挑战源于模型选择和数据趋势的性质。在本研究中,预测模型是根据数据模式(无季节性趋势数据)和预测测量的准确性来确定的。从 Worldometers 数据库中收集了一些东盟国家受 COVID-19 影响的人数的累计数据。利用三种模型[Holt 方法、Wright 修正的 Holt 方法和未复制的线性函数关系模型(ULFR)]来确定用于短期预测的有效模型。此外,还测试了不同的平滑参数,以找到最佳的平滑参数组合。然而,使用每日报告的累计病例数据和提前 3 天和 7 天的累计数据预测。由于没有缺失数据,因此 Holt 方法和 Wright 修正的 Holt 方法得出了相同的结果。纯文本结果对应于这里讨论的模型的结果,其中平滑参数(SP)大致估计为预测 COVID-19 受影响人数的函数。此外,不同的 SP 组合根据数据量显示出不同的准确预测结果。只有 1 天的预测说明了最有效的预测天数(1 天、3 天、7 天),这通过纳什-苏特克里夫效率(NSE)模型得到了验证。该研究还验证了 ULFR 是一种有效的预测模型,可用于识别有效模型。此外,作为传统 R 平方的替代品,该研究应用 NSE 和 R 平方(ULFR)进行模型选择。最后,结果表明,与实际数据相比,ULFR 的预测能力优于 Holt。