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Title: Semiparametric Bayesian Estimation for Marginal Parametric Potential Outcome Modeling: Application to Causal Inference
Resulting in 1 citation.
1. Hoshino, Takahiro
Semiparametric Bayesian Estimation for Marginal Parametric Potential Outcome Modeling: Application to Causal Inference
Journal of the American Statistical Association 108,504 (2013): 1189-1204.
Also: http://www.tandfonline.com/doi/full/10.1080/01621459.2013.835656#.UtVUBxBwjpU
Cohort(s): NLSY79
Publisher: American Statistical Association
Keyword(s): Bayesian; Modeling; Wages

We propose a new semiparametric Bayesian model for causal inference in which assignment to treatment depends on a potential outcomes. The model uses the probit stick-breaking process mixture (PSBPM) proposed by Chung and Dunson (2009), a variant of the Dirichlet process mixture (DPM) modeling. In contrast to previous Bayesian models, the proposed model directly estimates the parameters of the marginal parametric model of potential outcomes, while it relaxes the strong ignorability assumption, and requires no parametric model assumption for the assignment model and conditional distribution of the covariate vector. The proposed estimation method is more robust than maximum likelihood estimation, in that it does not require knowledge of the full joint distribution of potential outcomes, covariates, and assignments. In addition, the method is more efficient than fully nonparametric Bayes methods. We apply this model to infer the differential effects of cognitive and noncognitive skills on the wages of production and non-production workers using panel data from the National Longitudinal Survey of Youth in 1979. The study also presents the causal effect of online word-of-mouth on website browsing behavior.
Bibliography Citation
Hoshino, Takahiro. "Semiparametric Bayesian Estimation for Marginal Parametric Potential Outcome Modeling: Application to Causal Inference." Journal of the American Statistical Association 108,504 (2013): 1189-1204.