logistic部分线性模型的双/去偏机器学习

Molei Liu, Yi Zhang, D. Zhou
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引用次数: 12

摘要

我们提出双/去偏机器学习方法来推断(以参数率)具有二进制响应的逻辑部分线性模型的参数成分,该模型遵循一些关键(暴露)协变量的低维线性参数函数的条件逻辑模型和调整其他协变量混杂效应的非参数函数。我们考虑一个Neyman正交(双鲁棒)分数方程,它由两个干扰函数组成:逻辑模型中的非参数分量和其他协变量上暴露的条件平均值,并且响应固定。为了估计干扰模型,我们分别考虑使用高维(HD)稀疏参数模型和更一般的(通常是非参数的)机器学习(ML)方法。在HD情况下,我们推导了一定的矩方程来校准干扰模型的一阶偏差,并赋予我们的方法模型双鲁棒性,即当至少一个干扰模型被正确指定并且两个模型都是超稀疏的时候,我们的估计器达到了理想的率。在ML的情况下,logit链接的非线性使得使用任意条件平均学习算法来估计逻辑模型的讨厌成分比部分线性设置要困难得多。我们通过一种新颖的全模型重构过程来处理这一障碍,该过程易于实现,并且有助于在我们的框架中使用非参数ML算法。在与Chernozhukov等人(2018a)相同的意义上,我们的ML估计器具有倍率鲁棒性。我们通过模拟研究评估了我们的方法,并将其应用于2008年智利政策改革中评估紧急避孕药(EC)对早孕胎儿的影响(Bentancor和Clarke, 2017)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Double/debiased machine learning for logistic partially linear model
We propose double/debiased machine learning approaches to infer (at the parametric rate) the parametric component of a logistic partially linear model with the binary response following a conditional logistic model of a low dimensional linear parametric function of some key (exposure) covariates and a nonparametric function adjusting for the confounding effect of other covariates. We consider a Neyman orthogonal (doubly robust) score equation consisting of two nuisance functions: nonparametric component in the logistic model and conditional mean of the exposure on the other covariates and with the response fixed. To estimate the nuisance models, we separately consider the use of high dimensional (HD) sparse parametric models and more general (typically nonparametric) machine learning (ML) methods. In the HD case, we derive certain moment equations to calibrate the first-order bias of the nuisance models and grant our method a model double robustness property in the sense that our estimator achieves the desirable rate when at least one of the nuisance models is correctly specified and both of them are ultra-sparse. In the ML case, the non-linearity of the logit link makes it substantially harder than the partially linear setting to use an arbitrary conditional mean learning algorithm to estimate the nuisance component of the logistic model. We handle this obstacle through a novel full model refitting procedure that is easy-to-implement and facilitates the use of nonparametric ML algorithms in our framework. Our ML estimator is rate doubly robust in the same sense as Chernozhukov et al. (2018a). We evaluate our methods through simulation studies and apply them in assessing the effect of emergency contraceptive (EC) pill on early gestation foetal with a policy reform in Chile in 2008 (Bentancor and Clarke, 2017).
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