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Estimating rating transition probabilites with missing data

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Abstract

In this article we provide a rigorous treatment of one of the central statistical issues of credit risk management. GivenK-1 rating categories, the rating of a corporate bond over a certain horizon may either stay the same or change to one of the remainingK-2 categories; in addition, it is usually the case that the rating of some bonds is withdrawn during the time interval considered in the analysis. When estimating transition probabilities, we have thus to consider aK-th category, called withdrawal, which contains (partially) missing data. We show how maximum likelihood estimation can be performed in this setup; whereas in discrete time our solution gives rigorous support to a solution often used in applications, in continuous time the maximum likelihood estimator of the transition matrix computed by means of the EM algorithm represents a significant improvement over existing methods.

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Bee, M. Estimating rating transition probabilites with missing data. Statistical Methods & Applications 14, 127–141 (2005). https://doi.org/10.1007/BF02511578

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  • DOI: https://doi.org/10.1007/BF02511578

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