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강건성 합성 통제 방법×인과관계에 대한 민감도 분석×
분야인과추론인과추론
계열Regression modelRegression model
기원 연도20211983–2002
창시자Cattaneo, Feng & Titiunik (2021); building on Abadie, Diamond & Hainmueller (2010)Paul R. Rosenbaum (hidden-bias framework); extended by Cinelli & Hazlett (omitted-variable approach)
유형Quasi-experimental causal inferenceDiagnostic / robustness check
원전Cattaneo, M. D., Feng, Y., & Titiunik, R. (2021). Prediction Intervals for Synthetic Control Methods. Journal of the American Statistical Association, 116(536), 1865-1880. DOI ↗Rosenbaum, P. R. (2002). Observational Studies (2nd ed.). Springer. ISBN: 978-0387989679
별칭Robust SCM, Inference-robust synthetic control, Synthetic control with valid inference, SCM with prediction intervalssensitivity analysis, hidden-bias sensitivity analysis, Rosenbaum sensitivity analysis, omitted-variable sensitivity
관련54
요약The robust synthetic control method extends the classic synthetic control estimator by providing statistically valid uncertainty quantification and inference. Developed by Cattaneo, Feng and Titiunik (2021), it addresses a core limitation of the original approach — the lack of formal prediction intervals — making causal conclusions more defensible when only a single treated unit is observed.Sensitivity analysis for causality assesses how robust a causal conclusion is to unobserved confounding. Rather than assuming all confounders are controlled, it asks: how strong would an unmeasured variable need to be to overturn the estimated effect? It is an indispensable robustness check after any quasi-experimental or observational causal analysis.
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ScholarGate방법 비교: Robust Synthetic Control Method · Sensitivity Analysis for Causality. 2026-06-17에 다음에서 검색함: https://scholargate.app/ko/compare