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Approximating and reducing bias in 2SLS estimation of dynamic simultaneous equation models

机译:动态联立方程模型的2SLS估计中的近似偏差和减小偏差

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An order O(1/T) approximation is made to the bias in 2SLS estimation of a dynamic simultaneous equation model, building on similar large-T moment approximations for non dynamic models. The expression is long because it contains two distinct parts: a part due to the simultaneity which is directly related to the Nagar bias and a part due to the dynamics which has many component terms. However, the analytically corrected 2SLS estimators resulting from this approximation perform well in terms of remaining estimation bias. The biases of these estimators are compared with the Quenouille half-sample jackknife and the residual bootstrap for 2SLS in dynamic models, and are found to be competitive. The Monte Carlo and bias approximation also suggest that the bias in estimating endogenous variable coefficients in dynamic simultaneous equation models is non monotonic in the sample size, contrary to the well known theoretical result for static models. The effect of using weaker instruments on our numerical and Monte Carlo results is explored. (C) 2015 Elsevier B.V. All rights reserved.
机译:基于非动态模型的类似大T矩近似,对动态联立方程模型的2SLS估计中的偏差进行了O(1 / T)阶近似。该表达式之所以长,是因为它包含两个截然不同的部分:一部分是由于与Nagar偏差直接相关的同时性,一部分是由于动力学具有许多组成项。但是,从这种近似得到的经过分析校正的2SLS估计器在剩余估计偏差方面表现良好。在动态模型中,将这些估计量的偏差与Quenouille半样本折刀和2SLS的剩余自举进行了比较,发现它们具有竞争力。蒙特卡洛和偏差近似还表明,在动态联立方程模型中估算内生变量系数时,偏差在样本量上不是单调的,这与静态模型的众所周知的理论结果相反。探索了使用较弱的工具对我们的数值结果和蒙特卡洛结果的影响。 (C)2015 Elsevier B.V.保留所有权利。

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