Abstract
AbstractThe distribution-free chain ladder of Mack justified the use of the chain ladder predictor and enabled Mack to derive an estimator of conditional mean squared error of prediction for the chain ladder predictor. Classical insurance loss models, that is of compound Poisson type, are not consistent with Mack’s distribution-free chain ladder. However, for a sequence of compound Poisson loss models indexed by exposure (e.g., number of contracts), we show that the chain ladder predictor and Mack’s estimator of conditional mean squared error of prediction can be derived by considering large exposure asymptotics. Hence, quantifying chain ladder prediction uncertainty can be done with Mack’s estimator without relying on the validity of the model assumptions of the distribution-free chain ladder.
Publisher
Cambridge University Press (CUP)
Reference20 articles.
1. A comparison of stochastic models that reproduce chain ladder reserve estimates;Mack;Insurance: Mathematics and Economics,2000
2. Mikosch, T. (2009) Non-life Insurance Mathematics. Berlin Heidelberg: Springer.
3. Estimation of conditional mean squared error of prediction for claims reserving;Lindholm;Annals of Actuarial Science,2020
4. Mack, T. (1994) Measuring the variability of chain ladder reserve estimates. In CAS E-Forum Spring 1994, pp. 101–182. https://www.casact.org/sites/default/files/database/forum_94spforum_94spf101.pdf
5. Gut, A. (2009) Stopped Random Walks. Springer Series in Operations Research and Financial Engineering. New York: Springer.
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