Bayesian modeling helps applied researchers articulate assumptions about their data and develop models tailored for specific applications. Thanks to good methods for approximate posterior inference, researchers can now easily build, use, and revise complicated Bayesian models for large and rich data. These capabilities, however, bring into focus the problem of model criticism. Researchers need tools to diagnose the fitness of their models, to understand where they fall short, and to guide their revision. In this paper we develop a new method for Bayesian model criticism, the population predictive check (Pop-PC). Pop-PCs are built on posterior predictive checks (PPCs), a seminal method that checks a model by assessing the posterior predictiv...
The goal of causal inference is to understand the outcome of alternative courses of action. However,...
Two major approaches have developed within Bayesian statistics to address uncertainty in the prior d...
Many facets of Bayesian Modelling are firmly established in Machine Learning and give rise to state-...
Bayesian model criticism is an important part of the practice of Bayesian statistics. Traditionally,...
Problem statement: Assessing the plausibility of a posited model is always fundamental in order to e...
Checking how well a fitted model explains the data is one of the most fundamental parts of a Bayesia...
We define an extension of the posterior predictive $p$-value for multiple test statistics and establ...
Use of noninformative priors with the Posterior Predictive Checks (PPC) method requires more attenti...
Bayesian statistics is an approach to data analysis based on Bayes’ theorem, where available knowled...
Gelman and Shalizi (2012) criticize what they call the usual story in Bayesian statistics: that the ...
This article addresses issues of model choice in Bayesian contexts, and focusses on the use of the s...
The predominant model checking method used in Bayesian item response theory (IRT) models has been th...
We analyze the behavior of approximate Bayesian computation (ABC) when the model generating the simu...
This paper exposits and develops Bayesian methods of model criticism and robustness analysis. The ob...
Two procedures for checking Bayesian models are compared using a simple test problem based on the lo...
The goal of causal inference is to understand the outcome of alternative courses of action. However,...
Two major approaches have developed within Bayesian statistics to address uncertainty in the prior d...
Many facets of Bayesian Modelling are firmly established in Machine Learning and give rise to state-...
Bayesian model criticism is an important part of the practice of Bayesian statistics. Traditionally,...
Problem statement: Assessing the plausibility of a posited model is always fundamental in order to e...
Checking how well a fitted model explains the data is one of the most fundamental parts of a Bayesia...
We define an extension of the posterior predictive $p$-value for multiple test statistics and establ...
Use of noninformative priors with the Posterior Predictive Checks (PPC) method requires more attenti...
Bayesian statistics is an approach to data analysis based on Bayes’ theorem, where available knowled...
Gelman and Shalizi (2012) criticize what they call the usual story in Bayesian statistics: that the ...
This article addresses issues of model choice in Bayesian contexts, and focusses on the use of the s...
The predominant model checking method used in Bayesian item response theory (IRT) models has been th...
We analyze the behavior of approximate Bayesian computation (ABC) when the model generating the simu...
This paper exposits and develops Bayesian methods of model criticism and robustness analysis. The ob...
Two procedures for checking Bayesian models are compared using a simple test problem based on the lo...
The goal of causal inference is to understand the outcome of alternative courses of action. However,...
Two major approaches have developed within Bayesian statistics to address uncertainty in the prior d...
Many facets of Bayesian Modelling are firmly established in Machine Learning and give rise to state-...