过度拟合
协变量
估计员
稳健性(进化)
数学
人口
结果(博弈论)
人工智能
平均处理效果
计算机科学
机器学习
计量经济学
数学优化
统计
医学
数理经济学
生物化学
化学
环境卫生
人工神经网络
基因
作者
Hugo Bodory,Martin Huber,Lukáš Lafférs
出处
期刊:Cornell University - arXiv
日期:2020-01-01
被引量:1
标识
DOI:10.48550/arxiv.2012.00370
摘要
We consider evaluating the causal effects of dynamic treatments, i.e. of multiple treatment sequences in various periods, based on double machine learning to control for observed, time-varying covariates in a data-driven way under a selection-on-observables assumption. To this end, we make use of so-called Neyman-orthogonal score functions, which imply the robustness of treatment effect estimation to moderate (local) misspecifications of the dynamic outcome and treatment models. This robustness property permits approximating outcome and treatment models by double machine learning even under high dimensional covariates and is combined with data splitting to prevent overfitting. In addition to effect estimation for the total population, we consider weighted estimation that permits assessing dynamic treatment effects in specific subgroups, e.g. among those treated in the first treatment period. We demonstrate that the estimators are asymptotically normal and $\sqrt{n}$-consistent under specific regularity conditions and investigate their finite sample properties in a simulation study. Finally, we apply the methods to the Job Corps study in order to assess different sequences of training programs under a large set of covariates.
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