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Parameter Uncertainty in Exponential Family Tail Estimation


Zinoviy Landsman


University of Haifa, Department of Statistics

Andreas Tsanakas


City University London - Cass Business School

October 26, 2011


Abstract:     
Actuaries are often faced with the task of estimating tails of loss distributions from just a few observations. Thus estimates of tail probabilities (reinsurance prices) and percentiles (solvency capital requirements) are typically subject to substantial parameter uncertainty. We study the bias and MSE of estimators of tail probabilities and percentiles, with focus on 1-parameter exponential families. Using asymptotic arguments it is shown that tail estimates are subject to significant positive bias. Moreover, the use of bootstrap predictive distributions, which has been proposed in the actuarial literature as a way of addressing parameter uncertainty, is seen to double the estimation bias. A bias corrected estimator is thus proposed. It is then shown that the MSE of the MLE, the parametric bootstrap and the bias corrected estimators only differ in terms of order $O(n^{-2})$, which provides decision-makers with some flexibility as to which estimator to use. The accuracy of asymptotic methods, even for small samples, is demonstrated exactly for the exponential and related distributions, while other 1-parameter distributions are considered in a simulation study. We argue that the presence of positive bias may be desirable in solvency capital calculations, though not necessarily in pricing problems.

Number of Pages in PDF File: 34

Keywords: reinsurance pricing, VAR, parameter uncertainty, bias, bootstrap, exponential families

JEL Classification: C13, D8

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Date posted: June 29, 2011 ; Last revised: January 26, 2012

Suggested Citation

Landsman, Zinoviy and Tsanakas, Andreas, Parameter Uncertainty in Exponential Family Tail Estimation (October 26, 2011). Available at SSRN: http://ssrn.com/abstract=1874043 or http://dx.doi.org/10.2139/ssrn.1874043

Contact Information

Zinoviy Landsman
University of Haifa, Department of Statistics ( email )
Haifa, 31905
Israel
+972-4-8249003 (Phone)
HOME PAGE: http://stat.haifa.ac.il/~landsman
Andreas Tsanakas (Contact Author)
City University London - Cass Business School ( email )
106 Bunhill Row
London, EC1Y 8TZ
United Kingdom
Feedback to SSRN (Beta)


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