Time Series Regression Modeling with AR(1) Errors

B. Modu, A. Inuwa
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Abstract

When ordinary regression analysis is performed using time-series variables, it is common for the errors (residuals) to have a time-series structure. This violates the usual assumption of independent errors in ordinary least squares (OLS) regressions. Consequently, the estimates of the coefficients and their standard errors are incorrect if the time-series structure of the errors is ignored. In this study, an investigation of a regression model with time-series variables, particularly a simple case, was conducted using the conventional method. The ‘AirPassengers Dataset’ was downloaded from the R repository used for the analysis. Ordinary least squares and Cochrane-Orcutt procedures were used as methodologies. The results show that the adjusted regression model with autoregressive errors outperformed the ordinary regression model.
具有AR(1)误差的时间序列回归模型
当使用时间序列变量执行普通回归分析时,误差(残差)通常具有时间序列结构。这违背了普通最小二乘(OLS)回归中独立误差的通常假设。因此,如果忽略误差的时间序列结构,则系数及其标准误差的估计是不正确的。本文以一个简单的实例为例,采用常规方法对一个具有时间序列变量的回归模型进行了研究。“航空乘客数据集”是从用于分析的R存储库下载的。方法采用普通最小二乘法和Cochrane-Orcutt程序。结果表明,带自回归误差的调整后回归模型优于普通回归模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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