The Art of Probability-of-Default Curve Calibration
Journal of Credit Risk 9(4), 63-103, 2013
35 Pages Posted: 16 Dec 2012 Last revised: 22 Jan 2014
Date Written: November 26, 2013
Abstract
PD curve calibration refers to the transformation of a set of rating grade level probabilities of default (PDs) to another average PD level that is determined by a change of the underlying portfolio-wide PD. This paper presents a framework that allows to explore a variety of calibration approaches and the conditions under which they are fit for purpose. We test the approaches discussed by applying them to publicly available datasets of agency rating and default statistics that can be considered typical for the scope of application of the approaches. We show that the popular 'scaled PDs' approach is theoretically questionable and identify an alternative calibration approach ('scaled likelihood ratio') that is both theoretically sound and performs better on the test datasets.
Keywords: probability of default, calibration, likelihood ratio, Bayes' formula, rating profile, binary classification
JEL Classification: C13, G21
Suggested Citation: Suggested Citation