Identifying heterogeneity in a population's response to a health or policy intervention is crucial for evaluating and informing policy decisions. We propose a novel heterogeneous treatment effect estimator in the difference-in-differences design with repeated cross sectional data, where we observe different samples of a population at two time periods separated by the onset of a policy intervention, as well as samples of a population that serves as the control. Our estimator has orthogonality properties that enable fast rates on learning the treatment effect while allowing slower rates for estimating nuisance components. Our proposal shows promising empirical performance across a variety of simulation setups.
翻译:确定人口对健康或政策干预的反应的异质性,对于评估和通报政策决定至关重要。我们提议在差异差异设计中采用新的不同治疗效果估计器,反复提供跨部门数据,通过政策干预开始后的两个时间段观察不同的人口样本,以及作为控制对象的人口样本。我们的估算器具有异质性能,能够快速了解治疗效果,同时允许更慢地估计骚扰成分。我们的建议显示,在各种模拟组合中,有良好的实证表现。