Publication | Open Access
The Prior Can Often Only Be Understood in the Context of the Likelihood
463
Citations
29
References
2017
Year
Bayesian StatisticBayesian Decision TheoryEngineeringPrior Can OftenInfluence InferenceBayesian EconometricsReference PriorsBayesian InferenceData ScienceUncertainty QuantificationManagementBayesian ModelingBayesian MethodsProbabilistic ModelingStatisticsBayesian Hierarchical ModelingCognitive ScienceMaximum Entropy PriorsProbability TheoryBe UnderstoodBayesian NetworksBayesian StatisticsUniform PriorsStatistical EvidenceStatistical InferenceApproximate Bayesian Computation
A key sticking point of Bayesian analysis is the choice of prior distribution, and there is a vast literature on potential defaults including uniform priors, Jeffreys’ priors, reference priors, maximum entropy priors, and weakly informative priors. These methods, however, often manifest a key conceptual tension in prior modeling: a model encoding true prior information should be chosen without reference to the model of the measurement process, but almost all common prior modeling techniques are implicitly motivated by a reference likelihood. In this paper we resolve this apparent paradox by placing the choice of prior into the context of the entire Bayesian analysis, from inference to prediction to model evaluation.
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