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Loss Reserving Using Estimation Methods Designed for Error Reduction
Author(s) -
Gary Venter
Publication year - 2018
Publication title -
ssrn electronic journal
Language(s) - English
Resource type - Journals
ISSN - 1556-5068
DOI - 10.2139/ssrn.3096178
Subject(s) - estimation , reduction (mathematics) , statistics , computer science , mathematics , engineering , systems engineering , geometry
Maximum likelihood estimation has been the workhorse of statistics for decades, but alternative methods, going under the name “regularization,” are proving to have lower predictive variance. Regularization shrinks fitted values towards the overall mean, much like credibility does. There is good software available. Particularly packages for Bayesian regularization also make it easy to fit more complex models. One example given is a combined additive-multiplicative reserve model. Also probability distributions not available in GLM are tried for residuals. These can improve range estimates. By applying heteroscedasticity adjustments to standard distributions, the variance-mean relationship as well as skewness etc. are explored. Use of software packages is discussed, with sample coding and output. The focus is on methodology, so projection to fill out the triangle is not addressed, but this is usually straightforward.

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