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Correcting for Omitted-Variable and Measurement-Error Bias in Autoregressive Model Estimation with Panel Data

机译:利用面板数据校正自回归模型估计中的遗漏变量和测量误差偏差

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The parameter estimates based on an econometric equation are biased and can also be inconsistent when relevant regressors are omitted from the equation or when included regressors are measured with error. This problem gets complicated when the 'true' functional form of the equation is unknown. Here, we demonstrate how auxiliary variables, called concomitants, can be used to remove omitted-variable and measurement-error biases from the coefficients of an equation with the unknown 'true' functional form. The method is specifically designed for panel data. Numerical algorithms for enacting this procedure are presented and an illustration is given using a practical example of forecasting small-area employment from nonlinear autoregressive models.
机译:当从方程中省略了相关的回归变量或当所测量的回归变量存在误差时,基于计量经济学方程的参数估计会产生偏差,并且也可能不一致。当方程的“真”函数形式未知时,此问题将变得复杂。在这里,我们演示了如何使用辅助变量(称为伴随变量)从具有未知“真实”函数形式的方程式系数中删除遗漏变量和测量误差偏差。该方法是专门为面板数据设计的。给出了用于执行此过程的数值算法,并使用了从非线性自回归模型预测小面积就业的实际示例进行了举例说明。

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