Publication | Closed Access
A Hellinger distance approach to MCMC diagnostics
36
Citations
24
References
2012
Year
Bayesian StatisticEngineeringData SciencePosterior DistributionUncertainty QuantificationDiagnostic SystemAbstractbayesian AnalysisDiagnosisBiostatisticsStatistical InferenceMarkov Chain Monte CarloApproximate Bayesian ComputationMcmc DiagnosticsMedicineStatisticsBayesian InferenceBayesian Hierarchical ModelingHellinger Distance Approach
AbstractBayesian analysis often requires the researcher to employ Markov Chain Monte Carlo (MCMC) techniques to draw samples from a posterior distribution which in turn is used to make inferences. Currently, several approaches to determine convergence of the chain as well as sensitivities of the resulting inferences have been developed. This work develops a Hellinger distance approach to MCMC diagnostics. An approximation to the Hellinger distance between two distributions f and g based on sampling is introduced. This approximation is studied via simulation to determine the accuracy. A criterion for using this Hellinger distance for determining chain convergence is proposed as well as a criterion for sensitivity studies. These criteria are illustrated using a dataset concerning the Anguilla australis, an eel native to New Zealand.Keywords: Hellinger distancekernel density estimationMarkov chain Monte CarloBayesian robustness
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