Proximal Causal Inference for Synthetic Control with Surrogates

08/18/2023
by   Jizhou Liu, et al.
0

The synthetic control method (SCM) has become a popular tool for estimating causal effects in policy evaluation, where a single treated unit is observed, and a heterogeneous set of untreated units with pre- and post-policy change data are also observed. However, the synthetic control method faces challenges in accurately predicting post-intervention potential outcome had, contrary to fact, the treatment been withheld, when the pre-intervention period is short or the post-intervention period is long. To address these issues, we propose a novel method that leverages post-intervention information, specifically time-varying correlates of the causal effect called "surrogates", within the synthetic control framework. We establish conditions for identifying model parameters using the proximal inference framework and apply the generalized method of moments (GMM) approach for estimation and inference about the average treatment effect on the treated (ATT). Interestingly, we uncover specific conditions under which exclusively using post-intervention data suffices for estimation within our framework. Moreover, we explore several extensions, including covariates adjustment, relaxing linearity assumptions through non-parametric identification, and incorporating so-called "contaminated" surrogates, which do not exactly satisfy conditions to be valid surrogates but nevertheless can be incorporated via a simple modification of the proposed approach. Through a simulation study, we demonstrate that our method can outperform other synthetic control methods in estimating both short-term and long-term effects, yielding more accurate inferences. In an empirical application examining the Panic of 1907, one of the worst financial crises in U.S. history, we confirm the practical relevance of our theoretical results.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/31/2023

Single Proxy Synthetic Control

Synthetic control methods are widely used to estimate the treatment effe...
research
09/26/2019

Identify More, Observe Less: Mediation Analysis Synthetic Control

The Synthetic Control Method (SCM) allows estimating the causal effect o...
research
05/28/2020

Synthetic control method with convex hull restrictions: A Bayesian maximum a posteriori approach

Synthetic control methods have gained popularity among causal studies wi...
research
08/13/2022

Optimal Recovery for Causal Inference

It is crucial to successfully quantify causal effects of a policy interv...
research
02/12/2022

scpi: Uncertainty Quantification for Synthetic Control Estimators

The synthetic control method offers a way to estimate the effect of an a...
research
02/13/2020

Using Simulation to Analyze Interrupted Time Series Designs

We are sometimes forced to use the Interrupted Time Series (ITS) design ...
research
02/23/2022

Distributional Counterfactual Analysis in High-Dimensional Setup

In the context of treatment effect estimation, this paper proposes a new...

Please sign up or login with your details

Forgot password? Click here to reset