In this thesis we present novel approaches to regression and causal inference using popular Bayesian nonparametric methods. Bayesian Additive Regression Trees (BART) is a Bayesian machine learning algorithm in which the conditional distribution is modeled as a sum of regression trees. We extend BART into a semiparametric generalized linear model framework so that a portion of the covariates are modeled nonparametrically using BART and a subset of the covariates have parametric form. This presents an attractive option for research in which only a few covariates are of scientific interest but there are other covariates must be controlled for. Under certain causal assumptions, this model can be used as a structural mean model. We demonstrate t...
We develop a semiparametric Bayesian approach for estimatingthe mean response in a missing data mode...
This paper presents a step-by-step tutorial to estimate causal effects in PISA 2012 by means of a n...
This paper presents a step-by-step tutorial to estimate causal effects in PISA 2012 by means of a n...
In this thesis we present novel approaches to regression and causal inference using popular Bayesian...
In this thesis we present novel approaches to regression and causal inference using popular Bayesian...
In this thesis we present novel approaches to regression and causal inference using popular Bayesian...
This body of work develops new Bayesian nonparametric (BNP) models for estimating causal effects wit...
This body of work develops new Bayesian nonparametric (BNP) models for estimating causal effects wit...
In many biomedical studies, the observed data may violate the assumptions of standard parametric met...
In many biomedical studies, the observed data may violate the assumptions of standard parametric met...
The Dirichlet process mixture regression (DPMR) method is a technique to produce a very flexible reg...
The Dirichlet process mixture regression (DPMR) method is a technique to produce a very flexible reg...
Propensity score methods (PSM) has become one of the most advanced and popular strategies for casual...
We develop a Bayesian “sum-of-trees” model where each tree is constrained by a regularization prior ...
Although networks are widely used in statistical models as a convenient representation of the relati...
We develop a semiparametric Bayesian approach for estimatingthe mean response in a missing data mode...
This paper presents a step-by-step tutorial to estimate causal effects in PISA 2012 by means of a n...
This paper presents a step-by-step tutorial to estimate causal effects in PISA 2012 by means of a n...
In this thesis we present novel approaches to regression and causal inference using popular Bayesian...
In this thesis we present novel approaches to regression and causal inference using popular Bayesian...
In this thesis we present novel approaches to regression and causal inference using popular Bayesian...
This body of work develops new Bayesian nonparametric (BNP) models for estimating causal effects wit...
This body of work develops new Bayesian nonparametric (BNP) models for estimating causal effects wit...
In many biomedical studies, the observed data may violate the assumptions of standard parametric met...
In many biomedical studies, the observed data may violate the assumptions of standard parametric met...
The Dirichlet process mixture regression (DPMR) method is a technique to produce a very flexible reg...
The Dirichlet process mixture regression (DPMR) method is a technique to produce a very flexible reg...
Propensity score methods (PSM) has become one of the most advanced and popular strategies for casual...
We develop a Bayesian “sum-of-trees” model where each tree is constrained by a regularization prior ...
Although networks are widely used in statistical models as a convenient representation of the relati...
We develop a semiparametric Bayesian approach for estimatingthe mean response in a missing data mode...
This paper presents a step-by-step tutorial to estimate causal effects in PISA 2012 by means of a n...
This paper presents a step-by-step tutorial to estimate causal effects in PISA 2012 by means of a n...