The goal of causal inference is to understand the outcome of alternative courses of action. However, all causal inference requires assumptions. Such assumptions can be more influential than in typical tasks for probabilistic modeling, and testing those assumptions is important to assess the validity of causal inference. We develop model criticism for Bayesian causal inference, building on the idea of posterior predictive checks to assess model fit. Our approach involves decomposing the problem, separately criticizing the model of treatment assignments and the model of outcomes. Conditioned on the assumption of unconfoundedness---that the treatments are assigned independently of the potential outcomes---we show how to check any additional mo...
I propose a model to account for nonignorable missing data in a randomized experiment with noncompli...
In the development of Bayesian model specification for inference and prediction we focus on the con...
This paper exposits and develops Bayesian methods of model criticism and robustness analysis. The ob...
Although no universally accepted definition of causality exists, in practice one is often faced with...
This manuscript addresses two topics in Bayesian inference for causal effects. 1) Treatment noncomp...
Causal inference concerns finding the treatment effect on subjects along with causal links between t...
Two major approaches have developed within Bayesian statistics to address uncertainty in the prior d...
Two major approaches have developed within Bayesian statistics to address uncer-tainty in the prior ...
This thesis presents a set of methods unified around the theme of providing valid inference when dat...
Bayesian models of cognition are typically used to describe human learning and inference at the comp...
Gelman and Shalizi (2012) criticize what they call the usual story in Bayesian statistics: that the ...
A fundamental issue for theories of human induction is to specify constraints on potential inference...
A Bayesian model has two parts. The first part is a family of sampling distributions that could have...
Thesis (Ph.D.)--University of Washington, 2017-03This dissertation is composed of three major compon...
Problem statement: Assessing the plausibility of a posited model is always fundamental in order to e...
I propose a model to account for nonignorable missing data in a randomized experiment with noncompli...
In the development of Bayesian model specification for inference and prediction we focus on the con...
This paper exposits and develops Bayesian methods of model criticism and robustness analysis. The ob...
Although no universally accepted definition of causality exists, in practice one is often faced with...
This manuscript addresses two topics in Bayesian inference for causal effects. 1) Treatment noncomp...
Causal inference concerns finding the treatment effect on subjects along with causal links between t...
Two major approaches have developed within Bayesian statistics to address uncertainty in the prior d...
Two major approaches have developed within Bayesian statistics to address uncer-tainty in the prior ...
This thesis presents a set of methods unified around the theme of providing valid inference when dat...
Bayesian models of cognition are typically used to describe human learning and inference at the comp...
Gelman and Shalizi (2012) criticize what they call the usual story in Bayesian statistics: that the ...
A fundamental issue for theories of human induction is to specify constraints on potential inference...
A Bayesian model has two parts. The first part is a family of sampling distributions that could have...
Thesis (Ph.D.)--University of Washington, 2017-03This dissertation is composed of three major compon...
Problem statement: Assessing the plausibility of a posited model is always fundamental in order to e...
I propose a model to account for nonignorable missing data in a randomized experiment with noncompli...
In the development of Bayesian model specification for inference and prediction we focus on the con...
This paper exposits and develops Bayesian methods of model criticism and robustness analysis. The ob...