用向量自回归模型预测时间序列

Q4 Mathematics
Lemya Taha Abdullah
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引用次数: 1

摘要

本研究采用向量自回归模型分析两个时间序列之间的关系,并进行预测。我们使用了两个金融时间序列,分别是2015年1月至2019年6月期间以美元计算的全球月度油价和全球月度黄金价格。它有54个月的值,其中的数据已经转移到平稳性,对平稳性进行了Diekey Fuller检验。通过标准赤池信息AIC确定了模型的最佳3阶,分别为VAR(7)、VAR(8)和VAR(10)。在精度度量和均方误差(MSE)的基础上,对AIC所选订单进行了比较。结果表明,VAR(10)模型的MSE值较小。对所选模型进行拉格朗日乘数、Portmanteau、Jarque - Bera等残差检验,对VAR(10)模型进行2019年6月至2021年6月的预测,为24个月值。结果表明,石油价格序列预测值的MSE小于VAR(7)模型,黄金价格序列预测值的MSE小于VAR(10)模型。通过Stata程序对结果进行了计算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting time series using Vector Autoregressive Model
In this study, a vector Autoregressive model was used to analysis the relationship between two time series as well as forecasting. Two financial time series have been used, which are a series of global monthly oil price and global monthly gold price in dollars for a period from January 2015 to Jun 2019. It has 54 monthly values, where the data has been transferred to get the Stationarity, Diekey Fuller test for the Stationarity was conducted. The best three order for model was determined through a standard Akaike information AIC, it is VAR(7) , VAR(8) and VAR(10) respectively. The comparison was made between selected orders by AIC based on the accuracy measure and mean square error (MSE). It turns out that less MSE value of the VAR(10) model. Some tests were conducted like Lagrange-multiplier, Portmanteau, Jarque - Bera to residuals for the selected model, with forecasting for the VAR(10) model for the period from Jun 2019 to Jun 2021 , It is 24 monthly value. It turns out that less MSE for forecasting value for oil price series is to VAR(7) model and less MSE for forecasting value for gold price series is VAR(10) model. The results have been computed through the Stata program.
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