Local Transformation Kernel Density Estimation of Loss Distributions
Author(s) -
Jim Gustafsson,
Matthias Hagmann-von Arx,
Olivier Scaillet,
Jens Perch Nielsen
Publication year - 2006
Publication title -
ssrn electronic journal
Language(s) - English
Resource type - Journals
ISSN - 1556-5068
DOI - 10.2139/ssrn.947105
Subject(s) - kernel density estimation , multivariate kernel density estimation , estimation , transformation (genetics) , variable kernel density estimation , statistics , mathematics , kernel (algebra) , density estimation , econometrics , computer science , economics , kernel method , artificial intelligence , estimator , biology , combinatorics , biochemistry , management , support vector machine , gene
We develop a tailor made semiparametric asymmetric kernel density estimator for the estimation of actuarial loss distributions. The estimator is obtained by transforming the data with the generalized Champernowne distribution initially fitted to the data. Then the density of the transformed data is estimated by use of local asymmetric kernel methods to obtain superior estimation properties in the tails. We find in a vast simulation study that the proposed semiparametric estimation procedure performs well relative to alternative estimators. An application to operational loss data illustrates the proposed method.
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