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Nonparametric analysis of aggregate loss models
Authors:J. M. Vilar  R. Cao  C. González-Fragueiro
Affiliation:Department of Mathematics , Universidade da Coru?a , Spain
Abstract:
This paper describes a nonparametric approach to make inferences for aggregate loss models in the insurance framework. We assume that an insurance company provides a historical sample of claims given by claim occurrence times and claim sizes. Furthermore, information may be incomplete as claims may be censored and/or truncated. In this context, the main goal of this work consists of fitting a probability model for the total amount that will be paid on all claims during a fixed future time period. In order to solve this prediction problem, we propose a new methodology based on nonparametric estimators for the density functions with censored and truncated data, the use of Monte Carlo simulation methods and bootstrap resampling. The developed methodology is useful to compare alternative pricing strategies in different insurance decision problems. The proposed procedure is illustrated with a real dataset provided by the insurance department of an international commercial company.
Keywords:aggregate loss models  kernel estimator  Monte Carlo method  bootstrap  censored and truncated claims
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