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GMM nonparametric correction methods for logistic regression with error-contaminated covariates and partially observed instrumental variables

机译:GMM非参数校正方法,具有错误污染的协变量和部分观察到的仪器变量的逻辑回归

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摘要

We consider logistic regression with covariate measurement error. Most existing approaches require certain replicates of the error-contaminated covariates, which may not be available in the data. We propose generalized method of moments (GMM) nonparametric correction approaches that use instrumental variables observed in a calibration subsample. The instrumental variable is related to the underlying true covariates through a general nonparametric model, and the probability of being in the calibration subsample may depend on the observed variables. We first take a simple approach adopting the inverse selection probability weighting technique using the calibration subsample. We then improve the approach based on the GMM using the whole sample. The asymptotic properties are derived, and the finite sample performance is evaluated through simulation studies and an application to a real data set.
机译:我们考虑使用Covariate测量误差的逻辑回归。大多数现有方法需要某些复制的错误污染的协变量,这可能无法在数据中使用。我们提出了使用在校准子样本中观察到的仪器变量的时刻(GMM)非参数校正方法的普遍化方法。乐器变量与通过一般非参数模型的底层真正的协变量相关,并且在校准子样本中的概率可以取决于观察到的变量。我们首先采用一种简单的方法,采用校准子样本采用逆选择概率加权技术。然后,我们使用整个样本改进基于GMM的方法。导出渐近性质,通过模拟研究和应用于真实数据集的应用来评估有限的样本性能。

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