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SEMIPARAMETRIC ESTIMATORS FOR LIMITED DEPENDENT VARIABLE (LDV) MODELS WITH ENDOGENOUS REGRESSORS

机译:具有内生反演器的有限相关变量(LDV)模型的半参数估计器

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This article reviews semiparametric estimators for limited dependent variable (LDV) models with endogenous regressors, where nonlinearity and nonseparability pose difficulties. We first introduce six main approaches in the linear equation system literature to handle endogenous regressors with linear projections: (ⅰ) 'substitution' replacing the endogenous regressors with their projected versions on the system exogenous regressors x, (ⅱ) instrumental variable estimator (IVE) based on E{(error) ×x)=0, (ⅲ) 'model-projection' turning the original model into a model in terms of only x-projected variables, (ⅳ) 'system reduced form (RF)' finding RF parameters first and then the structural form (SF) parameters, (ⅴ) 'artificial instrumental regressor' using instruments as artificial regressors with zero coefficients, and (ⅵ) 'control function' adding an extra term as a regressor to control for the endogeneity source. We then check if these approaches are applicable to LDV models using conditional mean/quantiles instead of linear projection. The six approaches provide a convenient forum on which semiparametric estimators in the literature can be categorized, although there are a few exceptions. The pros and cons of the approaches are discussed, and a small-scale simulation study is provided for some reviewed estimators.
机译:本文回顾了具有内生回归变量的有限因变量(LDV)模型的半参数估计量,其中非线性和不可分性造成了困难。我们首先在线性方程系统文献中介绍六种主要方法来处理具有线性投影的内生回归变量:(ⅰ)用系统外生回归变量x上的投影版本替换内生回归变量,(ⅱ)工具变量估计量(IVE)基于E {(error)×x)= 0,(ⅲ)'model-projection'将仅基于x投影变量的原始模型转换为模型,(ⅳ)'RF系统'(RF)查找RF首先是参数,然后是结构形式(SF)参数,(ⅴ)使用仪器作为零系数的人工回归器的“人工工具回归器”,以及(ⅵ)“控制功能”添加一个额外项作为回归器来控制内生性源。然后,我们使用条件均值/分位数而不是线性投影来检查这些方法是否适用于LDV模型。这六种方法提供了一个方便的论坛,可以对文献中的半参数估计量进行分类,尽管有一些例外。讨论了这些方法的优缺点,并为一些经过评估的估计器提供了小规模的仿真研究。

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