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Estimating the Tails of Loss Severity Distributions Using Extreme Value Theory

Published online by Cambridge University Press:  29 August 2014

Alexander J. McNeil*
Affiliation:
Departement Mathematik, ETE Zentrum, CH-8092 Zürich March 7, 1997
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Abstract

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Good estimates for the tails of loss severity distributions are essential for pricing or positioning high-excess loss layers in reinsurance. We describe parametric curve-fitting methods for modelling extreme historical losses. These methods revolve around the generalized Pareto distribution and are supported by extreme value theory. We summarize relevant theoretical results and provide an extensive example of their application to Danish data on large fire insurance losses.

Type
Workshop
Copyright
Copyright © International Actuarial Association 1997

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