基于设计的综合控制方法研究

L. Bottmer, G. Imbens, Jann Spiess, Merrill Warnick
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引用次数: 12

摘要

自Abadie和Gardeazabal(2003)引入合成控制(SC)方法以来,SC方法已迅速成为在具有面板数据的观察性研究中估计因果效应的主要方法之一。正式的讨论通常通过假设潜在的结果是由一个因素模型产生的来激励SC方法。在这里,我们从基于设计的角度研究SC方法,假设一个模型来选择处理单元和周期。我们证明了标准SC估计量在随机分配下一般是有偏的。我们提出了一种改进的无偏综合控制(MUSC)估计器,它保证随机分配下的无偏性,并推导出其精确的、基于随机化的有限样本方差。我们也提出了这个方差的无偏估计量。我们记录了在随机分配的真实数据设置下,sc型估计器的均方根误差大大低于其他常见估计器。我们表明,如果治疗期与其他期相似,例如,如果治疗期是随机选择的,则这种改善是弱保证的。虽然我们的结果只直接适用于随机分配治疗的情况,但我们相信它们可以补充基于模型的方法,甚至可以用于观察性研究。
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A Design-Based Perspective on Synthetic Control Methods
Since their introduction in Abadie and Gardeazabal (2003), Synthetic Control (SC) methods have quickly become one of the leading methods for estimating causal effects in observational studies in settings with panel data. Formal discussions often motivate SC methods by the assumption that the potential outcomes were generated by a factor model. Here we study SC methods from a design-based perspective, assuming a model for the selection of the treated unit(s) and period(s). We show that the standard SC estimator is generally biased under random assignment. We propose a Modified Unbiased Synthetic Control (MUSC) estimator that guarantees unbiasedness under random assignment and derive its exact, randomization-based, finite-sample variance. We also propose an unbiased estimator for this variance. We document in settings with real data that under random assignment, SC-type estimators can have root mean-squared errors that are substantially lower than that of other common estimators. We show that such an improvement is weakly guaranteed if the treated period is similar to the other periods, for example, if the treated period was randomly selected. While our results only directly apply in settings where treatment is assigned randomly, we believe that they can complement model-based approaches even for observational studies.
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