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Nonparametric regression with selectively missing covariates

机译:非参数回归与选择性缺少协变量

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We consider the problem of regression with selectively observed covariates in a nonparametric framework. Our approach relies on instrumental variables that explain variation in the latent covariates but have no direct effect on selection. The regression function of interest is shown to be a weighted version of observed conditional expectation where the weighting function is a fraction of selection probabilities. Nonparametric identification of the fractional probability weight (FPW) function is achieved via a partial completeness assumption. We provide primitive functional form assumptions for partial completeness to hold. The identification result is constructive for the FPW series estimator. We derive the rate of convergence and also the pointwise asymptotic distribution. In both cases, the asymptotic performance of the FPW series estimator does not suffer from the inverse problem which derives from the nonparametric instrumental variable approach. In a Monte Carlo study, we analyze the finite sample properties of our estimator and we compare our approach to inverse probability weighting, which can be used alternatively for unconditional moment estimation. In the empirical application, we focus on two different applications. We estimate the association between income and health using linked data from the SHARE survey and administrative pension information and use pension entitlements as an instrument. In the second application we revisit the question how income affects the demand for housing based on data from the German Socio-Economic Panel Study (SOEP). In this application we use regional income information on the residential block level as an instrument. In both applications we show that income is selectively missing and we demonstrate that standard methods that do not account for the nonrandom selection process lead to significantly biased estimates for individuals with low income. (C) 2020 Elsevier B.V. All rights reserved.
机译:在非参数框架下,我们考虑具有选择性观测协变量的回归问题。我们的方法依赖于解释潜在协变量变化的工具变量,但对选择没有直接影响。感兴趣的回归函数是观察到的条件期望的加权版本,其中加权函数是选择概率的一小部分。分数概率权重(FPW)函数的非参数辨识是通过部分完备性假设实现的。我们为部分完整性提供了原始函数形式假设。辨识结果对FPW序列估计具有建设性意义。我们推导了收敛速度和逐点渐近分布。在这两种情况下,FPW序列估计的渐近性能不受非参数辅助变量方法产生的反问题的影响。在Monte Carlo研究中,我们分析了估计量的有限样本性质,并将我们的方法与逆概率加权进行了比较,逆概率加权可用于无条件矩估计。在实证应用中,我们关注两种不同的应用。我们使用股票调查和管理养老金信息中的关联数据估计收入和健康之间的关联,并使用养老金权利作为工具。在第二个应用程序中,我们根据德国社会经济小组研究(SOEP)的数据重新探讨了收入如何影响住房需求的问题。在本应用程序中,我们使用住宅区层面的区域收入信息作为工具。在这两个应用中,我们都证明了收入是选择性缺失的,并且我们证明了不考虑非随机选择过程的标准方法会导致对低收入个体的显著偏差估计。(C) 2020爱思唯尔B.V.版权所有。

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