Author:
England Peter D.,Verrall Richard J.,Wüthrich Mario V.
Abstract
AbstractWe consider the Bayesian over-dispersed Poisson (ODP) model for claims reserving in general insurance. We choose two different types of prior distributions for the parameters and then study the different Bayesian predictors. This study leads, on the one hand, to the classical chain ladder predictor and, on the other hand, to Bornhuetter & Ferguson predictors. We highlight (either analytically or numerically) how these predictors are obtained and how their prediction uncertainty can be determined.
Publisher
Cambridge University Press (CUP)
Subject
Statistics, Probability and Uncertainty,Economics and Econometrics,Statistics and Probability
Cited by
18 articles.
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1. Backtesting the Bayesian Bornhuetter-Ferguson method against traditional approaches in claims reserving;Journal of Statistics and Management Systems;2022-07-26
2. On unbalanced data and common shock models in stochastic loss reserving;Annals of Actuarial Science;2020-07-27
3. Stochastic Payments per Claim Incurred;North American Actuarial Journal;2019-01-02
4. Bornhuetter–Ferguson Method;Wiley StatsRef: Statistics Reference Online;2018-11-13
5. Introduction;Bayesian Claims Reserving Methods in Non-life Insurance with Stan;2018