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(Non-)robustness of maximum likelihood estimators for operational risk severity distributions
Authors:Sonja Huber
Institution:1. Department of Banking and Finance , Innsbruck University School of Management , Universitaetsstrasse 15, 6020 Innsbruck, Austria sonja.huber@uibk.ac.at
Abstract:The quality of operational risk data sets suffers from missing or contaminated data points. This may lead to implausible characteristics of the estimates. Outliers, especially, can make a modeler's task difficult and can result in arbitrarily large capital charges. Robust statistics provides ways to deal with these problems as well as measures for the reliability of estimators. We show that using maximum likelihood estimation can be misleading and unreliable assuming typical operational risk severity distributions. The robustness of the estimators for the Generalized Pareto distribution, and the Weibull and Lognormal distributions is measured considering both global and local reliability, which are represented by the breakdown point and the influence function of the estimate.
Keywords:Value at risk  Statistical methods  Downside risk  Extreme value statistical applications  Non-Gaussian distributions  Risk management  Risk measures
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