时变系数的合成控制:一种结合贝叶斯收缩的状态空间方法

Synthetic Control with Time Varying Coefficients A State Space Approach with Bayesian Shrinkage

Journal of Business & Economic Statistics · 2022
被引 6
人大 AABS 4

中文导读

提出一种状态空间框架结合贝叶斯收缩的方法,处理合成控制法中因对照单元动态特征(如时间变化关系)导致的反事实估计问题,通过蒙特卡洛模拟和经典案例验证其有效性。

Abstract

Synthetic control methods are a popular tool for measuring the effects of policy interventions on a single treated unit. In practice, researchers create a counterfactual using a linear combination of untreated units that closely mimic the treated unit. Oftentimes, creating a synthetic control is not possible due to untreated units’ dynamic characteristics such as integrated processes or a time varying relationship. These are cases in which viewing the counterfactual estimation problem as a cross-sectional one fails. In this article, I investigate a new approach to estimate the synthetic control counterfactual incorporating time varying parameters to handle such situations. This is done using a state space framework and Bayesian shrinkage. The dynamics allow for a closer pretreatment fit leading to a more accurate counterfactual estimate. Monte Carlo simulations are performed showcasing the usefulness of the proposed model in a synthetic control setting. I then compare the proposed model to existing approaches in a classic synthetic control case study.

合成控制法时变参数状态空间模型贝叶斯收缩