Single Proxy Synthetic Control
Chan Park, Eric Tchetgen Tchetgen

TL;DR
This paper introduces a novel single proxy synthetic control method that improves treatment effect estimation by using a single type of proxy, accommodating complex models and enabling inference with limited post-treatment data.
Contribution
It proposes a new identification and estimation framework for synthetic controls using only one proxy, enhancing practical applicability over existing methods.
Findings
The method performs well in simulations.
It effectively estimates treatment effects in real-world data.
It accommodates time-varying covariates and nonlinear models.
Abstract
Synthetic control methods are widely used to estimate the treatment effect on a single treated unit in time-series settings. A common approach to estimate synthetic control weights is to regress the treated unit's pre-treatment outcome and covariates' time series measurements on those of untreated units via ordinary least squares. However, this approach can perform poorly if the pre-treatment fit is not near perfect, whether the weights are normalized or not. In this paper, we introduce a single proxy synthetic control approach, which views the outcomes of untreated units as proxies of the treatment-free potential outcome of the treated unit, a perspective we leverage to construct a valid synthetic control. Under this framework, we establish an alternative identification strategy and corresponding estimation methods for synthetic controls and the treatment effect on the treated unit.…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Statistical Methods and Inference · Statistical Methods and Bayesian Inference
