Posterior Belief Assessment: Extracting Meaningful Subjective Judgements from Bayesian Analyses with Complex Statistical Models
Daniel Williamson, Michael Goldstein

TL;DR
This paper introduces posterior belief assessment, a method for extracting meaningful subjective judgments from complex Bayesian analyses by considering multiple alternative models to better approximate true beliefs.
Contribution
It proposes a novel approach that combines multiple Bayesian analyses to improve the interpretation of results in complex models, addressing limitations of traditional Bayesian methods.
Findings
Posterior belief assessments are closer to true beliefs than single Bayesian analyses.
The method remains tractable even with infinitely many alternative analyses.
Application to ocean model calibration demonstrates practical utility.
Abstract
In this paper, we are concerned with attributing meaning to the results of a Bayesian analysis for a problem which is sufficiently complex that we are unable to assert a precise correspondence between the expert probabilistic judgements of the analyst and the particular forms chosen for the prior specification and the likelihood for the analysis. In order to do this, we propose performing a finite collection of additional Bayesian analyses under alternative collections of prior and likelihood modelling judgements that we may also view as representative of our prior knowledge and the problem structure, and use these to compute posterior belief assessments for key quantities of interest. We show that these assessments are closer to our true underlying beliefs than the original Bayesian analysis and use the temporal sure preference principle to establish a probabilistic relationship…
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