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Improved variance estimation of maximum likelihood estimators in stable first-order dynamic regression models

机译:稳定的一阶动态回归模型中最大似然估计的改进方差估计

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摘要

In dynamic regression models conditional maximum likelihood (least-squares) coefficient and variance estimators are biased. Using expansion techniques an approximation is obtained to the bias in variance estimation yielding a bias corrected variance estimator. This is achieved for both the standard and a bias corrected coefficient estimator enabling a comparison of their mean squared errors to second order. Sufficient conditions for admissibility of these approximations are formally derived. Illustrative numerical and simulation results are presented on bias reduction of coefficient and variance estimation for three relevant classes of first-order autoregressive models, supplemented by effects on mean squared errors, test size and size corrected power. These indicate that substantial biases do occur in moderately large samples, but these can be mitigated considerably and may also yield mean squared error reduction. Crude asymptotic tests are cursed by huge size distortions. However, operational bias corrections of both the estimates of coefficients and their estimated variance (for which software is provided) are shown to curb type I errors reasonably well.
机译:在动态回归模型中,条件最大似然(最小二乘)系数和方差估计量有偏差。使用扩展技术,可以得到方差估计中的偏差的近似值,从而得到偏差校正的方差估计器。对于标准和偏差校正系数估计器都可以实现这一点,从而可以将其均方误差与二阶比较。正式推导了适用于这些近似的充分条件。给出了说明性的数值和模拟结果,说明了三类相关一阶自回归模型的系数偏差减小和方差估计,并辅以对均方误差,测试大小和大小校正后的幂的影响。这些表明在中等大小的样本中确实会出现明显的偏差,但是可以大大缓解这些偏差,并且还可以减少均方误差。粗略的渐近测试因巨大的尺寸失真而受到诅咒。但是,对系数的估计值及其估计的方差(提供软件)的操作偏差校正显示出可以很好地抑制I型错误。

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