The Posterior Predictive Null
Gemma E. Moran, John P. Cunningham, David M. Blei

TL;DR
The paper introduces the posterior predictive null (PPN) check, a Bayesian model criticism method that compares models by testing if data from one model passes checks designed for another, aiding in model comparison and understanding.
Contribution
It presents the PPN method for comparing Bayesian models, enabling researchers to assess relationships and differences between models beyond traditional predictive checks.
Findings
PPN helps identify equivalent models and model differences.
Demonstrated PPN's utility in selecting mixture model components.
Applied PPN to understand relationships between linear and neural network models.
Abstract
Bayesian model criticism is an important part of the practice of Bayesian statistics. Traditionally, model criticism methods have been based on the predictive check, an adaptation of goodness-of-fit testing to Bayesian modeling and an effective method to understand how well a model captures the distribution of the data. In modern practice, however, researchers iteratively build and develop many models, exploring a space of models to help solve the problem at hand. While classical predictive checks can help assess each one, they cannot help the researcher understand how the models relate to each other. This paper introduces the posterior predictive null check (PPN), a method for Bayesian model criticism that helps characterize the relationships between models. The idea behind the PPN is to check whether data from one model's predictive distribution can pass a predictive check designed…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · Statistical Methods and Bayesian Inference · Statistical Methods and Inference
