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基于时间序列模型与灰色模型的组合预测模型的研究
引用本文:单锐,王淑花,高东莲,高敬辉.基于时间序列模型与灰色模型的组合预测模型的研究[J].燕山大学学报,2012,36(1):79-83.
作者姓名:单锐  王淑花  高东莲  高敬辉
作者单位:燕山大学理学院,河北秦皇岛,066004
基金项目:河北省教育厅科学研究计划资助项目(2009159)
摘    要:为了能有效地提高预测模型的精度,提出了组合预测模型.本文首先利用APdMA模型对时间序列数据进行模型的识别和拟合,然后由比较可知优化后的GM(1,1)模型拟合和预测效果好于GM(1,1)模型,最后通过赋予合理权重结合ARIMA模型和优化后的GM(1,1)模型两种方法得到ARIMA-GM的组合预测模型.预测结果表明:组合模型的预测准确性高于各个模型单独使用时的准确性,组合模型发挥了各个单一模型的优势.

关 键 词:时间序列  ARIMA模型  GM模型  组合预测模型

Research of combined forecasting model based on time series model and gray model
SHAN Rui , WANG Shu-hua , GAO Dong-lian , GAO Jing-hui.Research of combined forecasting model based on time series model and gray model[J].Journal of Yanshan University,2012,36(1):79-83.
Authors:SHAN Rui  WANG Shu-hua  GAO Dong-lian  GAO Jing-hui
Institution:(College of Sciences,Yanshan University,Qinhuangdao,Hebei 066004,China)
Abstract:In order to effectively improve the accuracy of the prediction model,the combined forecasting model is proposed.Firstly,ARIMA model is used to distinguish and fit the time series data in the paper.And then the fitting and predictive effect of the optimized GM(1,1) model is better than the GM(1,1) model.Finally,the ARIMA-GM combined forecasting model is obtained by giving reasonable weights.The results show that prediction accuracy of the combined forecasting model is higher than other single prediction models,which takes advantage of the superiority of single models.
Keywords:time series  ARIMA model  GM model  combined forecasting model
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