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On weakly informative prior distributions for the heterogeneity parameter in Bayesian random-effects meta-analysis

Christian Röver, Ralf Bender, Sofia Dias, Christopher H. Schmid, Heinz Schmidli, Sibylle Sturtz, Sebastian Weber, Tim Friede

2021White Rose Research Online (University of Leeds, The University of Sheffield, University of York)96 citations

Abstract

Abstract The normal‐normal hierarchical model (NNHM) constitutes a simple and widely used framework for meta‐analysis. In the common case of only few studies contributing to the meta‐analysis, standard approaches to inference tend to perform poorly, and Bayesian meta‐analysis has been suggested as a potential solution. The Bayesian approach, however, requires the sensible specification of prior distributions. While noninformative priors are commonly used for the overall mean effect, the use of weakly informative priors has been suggested for the heterogeneity parameter, in particular in the setting of (very) few studies. To date, however, a consensus on how to generally specify a weakly informative heterogeneity prior is lacking. Here we investigate the problem more closely and provide some guidance on prior specification.

Topics & Concepts

Bayesian probabilityMeta-analysisRandom effects modelComputer scienceBayes' theoremBayesian statisticsPrior probabilityEconometricsStatisticsBayesian inferenceArtificial intelligenceMathematicsInternal medicineMedicineStatistical Methods and Bayesian InferenceStatistical Methods and InferenceAdvanced Statistical Methods and Models
On weakly informative prior distributions for the heterogeneity parameter in Bayesian random-effects meta-analysis | Litcius