过度拟合
估计员
协变量
工具变量
选择偏差
样本量测定
结果(博弈论)
计算机科学
机器学习
人工智能
可见的
选择(遗传算法)
随机试验
取样偏差
样品(材料)
统计
计量经济学
数学
物理
数理经济学
量子力学
人工神经网络
色谱法
化学
作者
Michela Bia,Martin Huber,Lukáš Lafférs
标识
DOI:10.1080/07350015.2023.2271071
摘要
This article considers the evaluation of discretely distributed treatments when outcomes are only observed for a subpopulation due to sample selection or outcome attrition. For identification, we combine a selection-on-observables assumption for treatment assignment with either selection-on-observables or instrumental variable assumptions concerning the outcome attrition/sample selection process. We also consider dynamic confounding, meaning that covariates that jointly affect sample selection and the outcome may (at least partly) be influenced by the treatment. To control in a data-driven way for a potentially high dimensional set of pre- and/or post-treatment covariates, we adapt the double machine learning framework for treatment evaluation to sample selection problems. We make use of (a) Neyman-orthogonal, doubly robust, and efficient score functions, which imply the robustness of treatment effect estimation to moderate regularization biases in the machine learning-based estimation of the outcome, treatment, or sample selection models and (b) sample splitting (or cross-fitting) to prevent overfitting bias. We demonstrate that the proposed estimators are asymptotically normal and root-n consistent and investigate their finite sample properties in a simulation study. We also apply our proposed methodology to the Job Corps data. The estimator is available in the causalweight package for the statistical software R.
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