Article ID Journal Published Year Pages File Type
5077222 Insurance: Mathematics and Economics 2011 8 Pages PDF
Abstract

This paper focuses on modelling the severity distribution. We directly model the small, moderate and large losses with the Pareto Positive Stable (PPS) distribution and thus it is not necessary to fix a threshold for the tail behaviour. Estimation with the method of moments is straightforward. Properties, graphical tests and expressions for value-at risk and tail value-at-risk are presented. Furthermore, we show that the PPS distribution can be used to construct a statistical test for the Pareto distribution and to determine the threshold for the Pareto shape if required. An application to loss data is presented. We conclude that the PPS distribution can perform better than commonly used distributions when modelling a single loss distribution for moderate and large losses. This approach avoids the pitfalls of cut-off selection and it is very simple to implement for quantitative risk analysis.

► The Pareto Positive Stable (PPS) distribution can be useful for modelling loss data. ► The PPS model fits losses in the whole domain, keeping a Pareto shape in the tail. ► We propose a statistical test based on the PPS model to locate the Pareto tail. ► An empirical application, with motor insurance claims data, is given.

Related Topics
Physical Sciences and Engineering Mathematics Statistics and Probability
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