Inference for Synthetic Controls via Refined Placebo Tests
Lihua Lei, Timothy Sudijono

TL;DR
This paper introduces a new inference method for synthetic control studies that improves accuracy and power in small samples by using a leave-two-out approach, addressing limitations of traditional placebo tests.
Contribution
The paper proposes a novel leave-two-out inference procedure that enhances Type-I error control and power in synthetic control analysis, especially with small sample sizes.
Findings
Higher power for large effect sizes
Maintains finite-sample Type-I error guarantees
Effective in small sample regimes
Abstract
The synthetic control method is often applied to problems with one treated unit and a small number of control units. A common inferential task in this setting is to test null hypotheses regarding the average treatment effect on the treated. Inference procedures that are justified asymptotically are often unsatisfactory due to (1) small sample sizes that render large-sample approximation fragile and (2) simplification of the estimation procedure that is implemented in practice. An alternative is permutation inference, which is related to a common diagnostic called the placebo test. It has provable Type-I error guarantees in finite samples without simplification of the method, when the treatment is uniformly assigned. Despite this robustness, the placebo test suffers from low resolution since the null distribution is constructed from only reference estimates, where is the sample…
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Taxonomy
TopicsStatistical Methods in Clinical Trials · Advanced Causal Inference Techniques · Machine Learning and Algorithms
