Non-parametric Models for Univariate Claim Severity Distributions - an approach using R

Publication date

2016-05-09T14:51:28Z

2016-05-09T14:51:28Z

2014

Abstract

This paper presents an analysis of motor vehicle insurance claims relating to vehicle damage and to associated medical expenses. We use univariate severity distributions estimated with non-parametric methods. The methods are implemented using the statistical package R. The nonparametric analysis presented involves kernel density estimation. We illustrate the benefits of applying transformations to data prior to employing kernel based methods. We use a log-transformation and an optimal transformation amongst a class of transformations that produces symmetry in the data. The central aim of this paper is to provide educators with material that can be used in the classroom to teach statistical estimation methods, goodness of fit analysis and importantly statistical computing in the context of insurance and risk management. To this end, we have included in the Appendix of this paper all the R code that has been used in the analysis so that readers, both students and educators, can fully explore the techniques described.

Document Type

Working document

Language

English

Publisher

Universitat de Barcelona. Riskcenter

Related items

Reproducció del document publicat a: http://www.ub.edu/riskcenter/research/WP/UBriskcenterWP201401.pdf

UB Riskcenter Working Paper Series, 2014/01

[WP E-RC14/01]

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Rights

cc-by-nc-nd, (c) Bolancé et al., 2014

http://creativecommons.org/licenses/by-nc-nd/3.0/es/

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