Publication | Open Access
Avoiding prior–data conflict in regression models via mixture priors
14
Citations
25
References
2021
Year
Bayesian StatisticBayesian StatisticsBayesian Decision TheoryEngineeringData ScienceBayesian‐80 ModelMixture AnalysisMixture PriorsAutomatic Prior ElicitationBayesian EconometricsBayesian ModelingStatistical InferenceBayesian MethodsPublic HealthStatisticsBayesian InferenceBayesian Hierarchical Modeling
The Bayesian‐80 model consists of the prior–likelihood pair. A prior–data conflict arises whenever the prior allocates most of its mass to regions of the parameter space where the likelihood is relatively low. Once a prior–data conflict is diagnosed, what to do next is a hard question to answer. We propose an automatic prior elicitation that involves a two‐component mixture of a diffuse and an informative prior distribution that favours the first component if a conflict emerges. Using various examples, we show that these mixture priors can be useful in regression models as a device for regularizing the estimates and retrieving useful inferential conclusions.
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