| Literature DB >> 35756161 |
Matias D Cattaneo1, Yingjie Feng2, Rocio Titiunik3.
Abstract
Uncertainty quantification is a fundamental problem in the analysis and interpretation of synthetic control (SC) methods. We develop conditional prediction intervals in the SC framework, and provide conditions under which these intervals offer finite-sample probability guarantees. Our method allows for covariate adjustment and non-stationary data. The construction begins by noting that the statistical uncertainty of the SC prediction is governed by two distinct sources of randomness: one coming from the construction of the (likely misspecified) SC weights in the pre-treatment period, and the other coming from the unobservable stochastic error in the post-treatment period when the treatment effect is analyzed. Accordingly, our proposed prediction intervals are constructed taking into account both sources of randomness. For implementation, we propose a simulation-based approach along with finite-sample-based probability bound arguments, naturally leading to principled sensitivity analysis methods. We illustrate the numerical performance of our methods using empirical applications and a small simulation study. Python, R and Stata software packages implementing our methodology are available.Entities:
Keywords: causal inference; non-asymptotic inference; prediction intervals; synthetic controls
Year: 2021 PMID: 35756161 PMCID: PMC9231822 DOI: 10.1080/01621459.2021.1979561
Source DB: PubMed Journal: J Am Stat Assoc ISSN: 0162-1459 Impact factor: 4.369