治疗效果
差异中的差异
推论
非参数统计
平均处理效果
贫穷
计量经济学
计算机科学
显著性差异
机器学习
空间异质性
人工智能
统计
经济
数学
倾向得分匹配
医学
经济增长
生物
传统医学
生态学
作者
Julia Hatamyar,Noémi Kreif,Rudi Rocha,Martin Huber
出处
期刊:Cornell University - arXiv
日期:2023-01-01
标识
DOI:10.48550/arxiv.2310.11962
摘要
We combine two recently proposed nonparametric difference-in-differences methods, extending them to enable the examination of treatment effect heterogeneity in the staggered adoption setting using machine learning. The proposed method, machine learning difference-in-differences (MLDID), allows for estimation of time-varying conditional average treatment effects on the treated, which can be used to conduct detailed inference on drivers of treatment effect heterogeneity. We perform simulations to evaluate the performance of MLDID and find that it accurately identifies the true predictors of treatment effect heterogeneity. We then use MLDID to evaluate the heterogeneous impacts of Brazil's Family Health Program on infant mortality, and find those in poverty and urban locations experienced the impact of the policy more quickly than other subgroups.
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