Publication | Open Access
Combining Expert Opinions in Prior Elicitation
115
Citations
29
References
2012
Year
Artificial IntelligenceBayesian StatisticEngineeringHierarchical Model AccountingCausal InferenceBayesian InferenceData ScienceProbabilistic ReasoningBayesian ModelingBiostatisticsPrior ElicitationPublic HealthDecision TheoryStatisticsBayesian Hierarchical ModelingCognitive ScienceIndirect Probit RegressionBayesian Statistical ApproachBayesian StatisticsAutomated ReasoningBelief MergingIntelligent Decision MakingStatistical InferenceDecision Science
We consider the problem of combining opinions from different experts in an explicitly model-based way to construct a valid subjective prior in a Bayesian statistical approach. We propose a generic approach by considering a hierarchical model accounting for various sources of variation as well as accounting for potential dependence between experts. We apply this approach to two problems. The first problem deals with a food risk assessment problem involving modelling dose-response for Listeria monocytogenes contamination of mice. Two hierarchical levels of variation are considered (between and within experts) with a complex mathematical situation due to the use of an indirect probit regression. The second concerns the time taken by PhD students to submit their thesis in a particular school. It illustrates a complex situation where three hierarchical levels of variation are modelled but with a simpler underlying probability distribution (log-Normal).
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