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A refined efficiency rate for ordinary least squares and generalized least squares estimators for a linear trend with autoregressive errors

机译:具有自回归误差的线性趋势的普通最小二乘估计和广义最小二乘估计的精确效率

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摘要

When a straight line is fitted to time series data, generalized least squares (GLS) estimators of the trend slope and intercept are attractive as they are unbiased and of minimum variance. However, computing GLS estimators is laborious as their form depends on the autocovariances of the regression errors. On the other hand, ordinary least squares (OLS) estimators are easy to compute and do not involve the error autocovariance structure. It has been known for 50 years that OLS and GLS estimators have the same asymptotic variance when the errors are second-order stationary. Hence, little precision is gained by using GLS estimators in stationary error settings. This article revisits this classical issue, deriving explicit expressions for the GLS estimators and their variances when the regression errors are drawn from an autoregressive process. These expressions are used to show that OLS methods are even more efficient than previously thought. Specifically, we show that the convergence rate of variance differences is one polynomial degree higher than that of least squares estimator variances. We also refine Grenander's (1954) variance ratio. An example is presented where our new rates cannot be improved upon. Simulations show that the results change little when the autoregressive parameters are estimated.
机译:当将一条直线拟合到时间序列数据时,趋势斜率和截距的广义最小二乘(GLS)估计量就很有吸引力,因为它们是无偏的并且具有最小的方差。但是,计算GLS估计量很费力,因为它们的形式取决于回归误差的自协方差。另一方面,普通最小二乘(OLS)估计量易于计算,并且不涉及误差自协方差结构。已知50年以来,当误差为二阶平稳时,OLS和GLS估计量具有相同的渐近方差。因此,在固定误差设置中使用GLS估计器几乎无法获得精确度。本文回顾了这个经典问题,当从自回归过程中得出回归误差时,将为GLS估计量及其方差推导明确的表达式。这些表达式用于表明OLS方法比以前认为的更为有效。具体而言,我们表明方差差异的收敛速度比最小二乘估计方差的收敛速度高一个多项式。我们还完善了Grenander(1954)的方差比。给出了一个示例,其中我们的新费率无法提高。仿真表明,当估计自回归参数时,结果几乎不变。

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