In this paper models for claim frequency and average claim size in non-life insurance are considered. Both covariates and spatial random effects are included allowing the modelling
of a spatial dependency pattern. We assume a Poisson model for the number of claims, while claim size is modelled using a Gamma distribution. However, in contrast to the usual
compound Poisson model, we allow for dependencies between claim size and claim frequency. A fully Bayesian approach is followed, parameters are estimated using Markov Chain Monte
Carlo (MCMC). The issue of model comparison is thoroughly addressed. Besides the deviance information criterion and the predictive model choice criterion, we suggest the use of proper
scoring rules based on the posterior predictive distribution for comparing models. We give an application to a comprehensive data set from a German car insurance company. The inclusion of spatial effects significantly improves the models for both claim frequency and
claim size and also leads to more accurate predictions of the total claim sizes. Further we detect significant dependencies between the number of claims and claim size. Both spatial
and number of claims effects are interpreted and quantified from an actuarial point of view.
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In this paper models for claim frequency and average claim size in non-life insurance are considered. Both covariates and spatial random effects are included allowing the modelling
of a spatial dependency pattern. We assume a Poisson model for the number of claims, while claim size is modelled using a Gamma distribution. However, in contrast to the usual
compound Poisson model, we allow for dependencies between claim size and claim frequency. A fully Bayesian approach is followed, parameters a...
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