The synthetic control method is a an econometric tool to evaluate causal effects when only one unit is treated. While initially aimed at evaluating the effect of large-scale macroeconomic changes with very few available control units, it has increasingly been used in place of more well-known microeconometric tools in a broad range of applications, but its properties in this context are unknown. This paper introduces an alternative to the synthetic control method, which is developed both in the usual asymptotic framework and in the high-dimensional scenario. We propose an estimator of average treatment effect that is doubly robust, consistent and asymptotically normal. It is also immunized against first-step selection mistakes. We illustrate these properties using Monte Carlo simulations and applications to both standard and potentially high-dimensional settings, and offer a comparison with the synthetic control method.
翻译:合成控制方法是一个计量经济学工具,用于在只处理一个单位时评价因果关系。最初的目的是评估大规模宏观经济变化的影响,现有控制单位很少。虽然该方法最初旨在评估大规模宏观经济变化的影响,但现在越来越多地用于取代在广泛应用中更广为人知的微计量工具,但其特性尚不为人所知。本文介绍了合成控制方法的替代方法,该方法在通常的单一控制框架和高维情景中开发。我们提出了一个平均处理效果的估算标准,该估计标准具有双重性强、一致性和零星性。它也为第一步选择错误提供了免疫。我们用蒙特卡洛模拟和各种应用标准或可能高维环境来说明这些特性,并提供了与合成控制方法的比较。