Efficient and accurate approximate Bayesian inference with an application to insurance data

Efficient and accurate Bayesian Markov chain Monte Carlo methodology is proposed for the estimation of event rates under an overdispersed Poisson distribution. An approximate Gibbs sampling method and an exact independence-type Metropolis–Hastings algorithm are derived, based on a log-normal/gamma m...

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Bibliographic Details
Published in:Computational statistics & data analysis Vol. 52; no. 5; pp. 2604 - 2622
Main Authors: Streftaris, George, Worton, Bruce J.
Format: Journal Article
Language:English
Published: Amsterdam Elsevier B.V 20.01.2008
Elsevier Science
Elsevier
Series:Computational Statistics & Data Analysis
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ISSN:0167-9473, 1872-7352
Online Access:Get full text
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Summary:Efficient and accurate Bayesian Markov chain Monte Carlo methodology is proposed for the estimation of event rates under an overdispersed Poisson distribution. An approximate Gibbs sampling method and an exact independence-type Metropolis–Hastings algorithm are derived, based on a log-normal/gamma mixture density that closely approximates the conditional distribution of the Poisson parameters. This involves a moment matching process, with the exact conditional moments obtained employing an entropy distance minimisation (Kullback–Liebler divergence) criterion. A simulation study is conducted and demonstrates good Bayes risk properties and robust performance for the proposed estimators, as compared with other estimating approaches under various loss functions. Actuarial data on insurance claims are used to illustrate the methodology. The approximate analysis displays superior Markov chain Monte Carlo mixing efficiency, whilst providing almost identical inferences to those obtained with exact methods.
ISSN:0167-9473
1872-7352
DOI:10.1016/j.csda.2007.09.006