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Replication Data for: A Bayesian Alternative to Synthetic Control for Comparative Case Studies

Harvard Dataverse (Africa Rice Center, Bioversity International, CCAFS, CIAT, IFPRI, IRRI and WorldFish)

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Title Replication Data for: A Bayesian Alternative to Synthetic Control for Comparative Case Studies
 
Identifier https://doi.org/10.7910/DVN/B6SWA1
 
Creator Pang, Xun
Liu, Licheng
Xu, Yiqing
 
Publisher Harvard Dataverse
 
Description This paper proposes a Bayesian alternative to the synthetic control method for comparative case studies with a single or multiple treated units. We adopt a Bayesian posterior predictive approach to Rubin's causal model, which allows researchers to make inferences about both individual and average treatment effects on treated observations based on the empirical posterior distributions of their counterfactuals. The prediction model we develop is a dynamic multilevel model with a latent factor term to correct biases induced by unit-specific time trends. It also considers heterogeneous and dynamic relationships between covariates and the outcome, thus improving precision of the causal estimates. To reduce model dependency, we adopt a Bayesian shrinkage method for model searching and factor selection. Monte Carlo exercises demonstrate that our method produces more precise causal estimates than existing approaches and achieves correct frequentist coverage rates even when the sample size is relatively small and rich heterogeneities are present in the data. We illustrate the method with two empirical examples from political economy.
 
Subject Social Sciences
 
Contributor Xu, Yiqing