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Don’t Fall from the Saddle: the Importance of Higher Moments of Credit Loss Distributions

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  • J. ANNAERT
  • Crispiniano Garcia Joao Batista
  • J. LAMOOT
  • G. LANINE

Abstract

The original Panjer recursion of the CreditRisk+ model is said to be unstable and therefore to yield inaccurate results of the tail distribution of credit portfolios. A much-hailed solution for the flaws of the Panjer recursion is the saddlepoint approximation method. In this paper we show that the saddlepoint approximation is an accurate and robust tool only for relatively homogenous credit portfolios with low skewness and kurtosis of the loss distribution. However, often credit portfolios are heterogeneous with large skewness and kurtosis. We show that for such portfolios the commonly applied saddlepoint approximations (the Lugannani-Rice and the Barndorff-Nielsen formulas) are not reliable. Moreover, when applied to such credit portfolios, the Lugannani-Rice formula is fragile. We explain it by the dependence of the high-order standardized cumulants and the relative error on the saddlepoints. The more the cumulants and the relative error vary, the less accurate the saddlepoint approximation is. Hence, the saddlepoint approximation is not a universal substitute to the Panjer recursion algorithm.

Suggested Citation

  • J. ANNAERT & Crispiniano Garcia Joao Batista & J. LAMOOT & G. LANINE, 2006. "Don’t Fall from the Saddle: the Importance of Higher Moments of Credit Loss Distributions," Working Papers of Faculty of Economics and Business Administration, Ghent University, Belgium 06/367, Ghent University, Faculty of Economics and Business Administration.
  • Handle: RePEc:rug:rugwps:06/367
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