To infer the treatment effect for a single treated unit using panel data, synthetic control methods search for a linear combination of control units' outcomes that mimics the treated unit's pre-treatment outcome trajectory. This linear combination is subsequently used to impute the counterfactual outcomes of the treated unit had it not been treated in the post-treatment period, and used to estimate the treatment effect. Existing synthetic control methods rely on correctly modeling certain aspects of the counterfactual outcome generating mechanism and may require near-perfect matching of the pre-treatment trajectory. Inspired by proximal causal inference, we obtain two novel nonparametric identifying formulas for the average treatment effect for the treated unit: one is based on weighting, and the other combines models for the counterfactual outcome and the weighting function. We develop two GMM-based treatment effect estimators based on these two formulas. One new estimator is doubly robust: it is consistent and asymptotically normal if at least one of the outcome and weighting models is correctly specified. We demonstrate the performance of the methods via simulations and apply them to evaluate the effect of Sweden's carbon tax on CO$_2$ emission.
翻译:合成控制方法旨在用小组数据推断单一处理单位的处理效果; 合成控制方法寻求对照单位结果的线性组合,以模拟处理单位的预处理结果轨迹; 这种线性组合随后用于对处理单位在后处理期间未处理的反事实结果进行估算,并用于估计治疗效果; 现有的合成控制方法依赖于正确模拟反事实结果生成机制的某些方面,可能需要接近于处理前轨道的完美匹配; 受初步因果推断的启发,我们获得了两个新型的非参数识别公式,用以模拟处理单位的平均处理效果:一个基于加权,另一个基于反事实结果和加权功能的组合模型; 我们根据这两个公式开发了两个基于GMM的治疗效果估计器; 一个新的估计器具有很强的强度:如果至少对结果和加权模型之一作出正确规定,它就具有一致性和不完全正常性。 我们通过模拟用美元来显示方法的性能,并应用这些模型来评估瑞典的CO2排放效果。