The predictive accuracy of credit ratings: Measurement and statistical inference

The predictive accuracy of credit ratings: Measurement and statistical inference

0.00 Avg rating0 Votes
Article ID: iaor20133318
Volume: 28
Issue: 1
Start Page Number: 288
End Page Number: 296
Publication Date: Jan 2012
Journal: International Journal of Forecasting
Authors:
Keywords: forecasting: applications, statistics: inference
Abstract:

Credit ratings are ordinal predictions of the default risk of an obligor. The most commonly used measure for evaluating their predictive accuracy is the Accuracy Ratio, or equivalently, the area under the ROC curve. The disadvantages of these measures are that they treat default as a binary variable, thus neglecting the timing of default events, and they fail to use all of the information available from censored observations. We present an alternative measure which is related to the Accuracy Ratio but does not suffer from these drawbacks. As a second contribution, we study statistical inference for the Accuracy Ratio and the proposed measure in the case of multiple cohorts of obligors with overlapping lifetimes. We derive methods which use more sample information and lead to tests which are more powerful than alternatives which filter just the independent part of the dataset. All procedures are illustrated in the empirical section using a dataset of S&P Credit Ratings.

Reviews

Required fields are marked *. Your email address will not be published.