Evaluating (weighted) dynamic treatment effects by double machine learning

被引:17
|
作者
Bodory, Hugo [1 ]
Huber, Martin [2 ]
Laffers, Lukas [3 ]
机构
[1] Univ St Gallen, Vice Presidents Board Res & Fac, Varnbuelstr 14, CH-9000 St Gallen, Switzerland
[2] Univ Fribourg, Dept Econ, Bd Perolles 90, CH-1700 Fribourg, Switzerland
[3] Matej Bel Univ, Dept Math, Tajovskeho 40, Banska Bystrica 97401, Slovakia
来源
ECONOMETRICS JOURNAL | 2022年 / 25卷 / 03期
关键词
Dynamic treatment effects; double machine learning; efficient score; CAUSAL INFERENCE; ROBUST ESTIMATION; MEDIATION ANALYSIS; MODELS; EXPOSURE;
D O I
10.1093/ectj/utac018
中图分类号
F [经济];
学科分类号
02 ;
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. 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 root 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.
引用
收藏
页码:628 / 648
页数:21
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