Comparison of single ARIMA model and ARIMA model based on seasonal decomposition for prediction of incidence rate of hepatitis C
LIU Tian1, YAO Meng-lei1, CHEN Hong-ying2, HUANG Shu-qiong2, HUANG Ji-gui1, MAO An-lu1, YANG Wen-wen2, CAI Jing2, LIU Yu-xi1
1.Jingzhou Municipal Center for Disease Control and Prevention, Jingzhou, Hubei 434000, China; 2.Hubei Provincial Center for Disease Control and Prevention, Wuhan, Hubei 430079, China
Abstract:Objective To explore the application of single autoregressive integrated moving average (ARIMA) model and ARIMA model based on seasonal decomposition to fitting and predicting the incidence rate of hepatitis C. Methods We collected the data concerning the monthly incidence rates of hepatitis C in Jingzhou City from 2007 to 2015, and then established single ARIMA model and ARIMA model based on seasonal decomposition. The monthly incidence rates of hepatitis C in 2016 were introduced back to the established models to evaluate their predictive capacity. The indexes of fitting and predicting efficiency of the two models included relative error (RE), mean relative error (MRE), mean error rate (MER), mean square error (MSE) and mean absolute error (MAE). Results The MRE, MER, MSE and MAE were 17.868, 16.367, 0.225 and 0.177 for single ARIMA fitting model; 14.090, 15.057, 0.343 and 0.284 for single ARIMA predictive model; 14.732, 13.556, 0.201 and 0.151 for ARIMA fitting model based on seasonal decomposition; and 11.778, 12.353, 0.277 and 0.229 for ARIMA predictive model based on seasonal decomposition. Conclusion ARIMA model based on seasonal decomposition is superior to single ARIMA model in fitting and predicting the incidence rate of hepatitis C.
刘天, 姚梦雷, 陈红缨, 黄淑琼, 黄继贵, 毛安禄, 杨雯雯, 蔡晶, 刘予希. 单纯ARIMA模型和基于季节性分解的ARIMA模型在丙肝发病率中的预测效果比较[J]. 实用预防医学, 2019, 26(3): 278-281.
LIU Tian, YAO Meng-lei, CHEN Hong-ying, HUANG Shu-qiong, HUANG Ji-gui, MAO An-lu, YANG Wen-wen, CAI Jing, LIU Yu-xi. Comparison of single ARIMA model and ARIMA model based on seasonal decomposition for prediction of incidence rate of hepatitis C. , 2019, 26(3): 278-281.
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