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首页> 外文期刊>Journal of Econometrics >Three-stage semi-parametric inference: Control variables and differentiability
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Three-stage semi-parametric inference: Control variables and differentiability

机译:三阶段半导体推断:控制变量和可分辨率

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We show the usefulness of the path-derivative calculations that were introduced in econometrics by Newey (1994) for multi-step semi-parametric estimators. These estimators estimate a finite-dimensional parameter using moment conditions that depend on nonparametric regressions on observed and estimated regressors that are estimated in the second and first step of the estimation procedure, respectively. Our earlier paper showed that Newey's calculations can be extended to three-step estimators. In the current paper we consider the control variable (CV) estimator and related statistics in semi-parametric econometric models with non-separable errors and regressors that are correlated with these errors. Non-separable econometric models with endogenous regressors are often identified by average moment restrictions that average over control variables, and these control variables are estimated in a first stage by (non)parametric regression. We study aspects of inference for such estimators where we focus on a finite-dimensional parameter vector or statistic. The asymptotic distribution and a closed-form expression for the asymptotic variance of the CV estimator were not available until now. Our path derivative calculations are much simpler than the derivation of the asymptotic distribution by a stochastic expansion that is particularly complicated for multi-step semi-parametric estimators. We also consider just- and overidentification of the parameters and we propose a diagnostic test for overidentifying restrictions in models with non-separable errors and endogenous regressors. Finally, the path-derivative calculation breaks down if the moment condition is not differentiable. In an example we show that non-differentiability is associated with irregular behavior of the estimator. (C) 2018 Elsevier B.V. All rights reserved.
机译:我们展示了Newey(1994)在多步半参数估计中引入的路径衍生物计算的有用性。这些估计器利用依赖于在估计过程的第二和第一步骤的第二和第一步骤中估计的观察和估计的回归的非参数来估计有限维参数。我们之前的论文显示纽约的计算可以扩展到三步估计。在目前的论文中,我们考虑控制变量(CV)估计器和相关统计,具有与这些错误相关的不可分配的错误和回归。具有内源性回归器的不可分离的计量模型通常通过平均控制变量的平均矩限制,并且这些控制变量在第一阶段估计(非)参数回归。我们研究了我们专注于有限维参数向量或统计数据的估计者的推断。直到现在,不可用CV估计器的渐近差异的渐近分布和闭合形式表达。我们的路径衍生计算比通过随机扩展的渐近分布的推导来推导出对多步半参数估计器特别复杂的转换。我们还考虑了参数的步骤和过度识别,我们提出了一种诊断测试,以便在具有不可分离的误差和内源性回归流器中的模型中过度识别的诊断测试。最后,如果片刻条件不可分辨率,则路径衍生物计算会破坏。在一个示例中,我们表明不差异性与估计器的不规则行为相关联。 (c)2018 Elsevier B.v.保留所有权利。

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