Leveraging population outcomes to improve the generalization of experimental results: Application to the JTPA study

Melody Y. Huang, Naoki Egami, E. Hartman, Luke W. Miratrix
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引用次数: 4

Abstract

Generalizing causal estimates in randomized experiments to a broader target population is essential for guiding decisions by policymakers and practitioners in the social and biomedical sciences. While recent papers developed various weighting estimators for the population average treatment effect (PATE), many of these methods result in large variance because the experimental sample often differs substantially from the target population, and estimated sampling weights are extreme. We investigate this practical problem motivated by an evaluation study of the Job Training Partnership Act (JTPA), where we examine how well we can generalize the causal effect of job training programs beyond a specific population of economically disadvantaged adults and youths. In particular, we propose post-residualized weighting in which we use the outcome measured in the observational population data to build a flexible predictive model (e.g., machine learning methods) and residualize the outcome in the experimental data before using conventional weighting methods. We show that the proposed PATE estimator is consistent under the same assumptions required for existing weighting methods, impor-tantly without assuming the correct specification of the predictive model. We demonstrate the efficiency gains from this approach through our JTPA application: we find a between 5 and 25% reduction in variance.
利用群体结果提高实验结果的泛化:在JTPA研究中的应用
将随机实验中的因果估计推广到更广泛的目标人群,对于指导社会和生物医学科学领域的决策者和从业者做出决策至关重要。虽然最近的论文为总体平均处理效应(PATE)开发了各种加权估计器,但由于实验样本通常与目标群体存在很大差异,并且估计的抽样权重非常大,因此许多这些方法都会导致很大的方差。我们通过对《就业培训伙伴法》(JTPA)的评估研究来调查这一实际问题,在该研究中,我们检验了我们在多大程度上可以将就业培训计划的因果效应推广到经济上处于不利地位的成年人和年轻人的特定人群之外。特别是,我们提出了后残差加权,其中我们使用观察人群数据中测量的结果来构建灵活的预测模型(例如机器学习方法),并在使用常规加权方法之前对实验数据中的结果进行残差化。我们表明,在现有加权方法所需的相同假设下,所提出的PATE估计量是一致的,重要的是没有假设预测模型的正确规范。我们通过JTPA应用程序演示了这种方法的效率增益:我们发现方差减少了5%到25%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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