Content area

Abstract

Analysts often find themselves working with less than perfect development and/or validation samples, and data issues typically affect the interpretation of default prediction validation tests. Discriminatory power and calibration of default probabilities are two key aspects of validating default probability models. This paper considers how data issues affect three important power tests: the accuracy ratio, the Kolmogorov-Smirnov test and the conditional information entropy ratio. The effect of data issues upon the Hosmer-Lemeshow test, a default probability calibration test, is also considered. A simulation approach is employed that allows the impact of data issues on model performance, when the exact nature of the data issue is known, to be assessed. We obtain several results from the tests of discriminatory power. For example, we find that random missing defaults have little impact on model power, while false defaults have a large impact on power. As with other common level calibration test statistics, the Hosmer-Lemeshow test statistic simply indicates to what degree the level calibration passes or fails. We find that the presence of any data issue tends to cause this test to fail, and, thus, we introduce additional statistics to describe how realized default probabilities differ from those expected. In particular, we introduce statistics to compare over-all default probability level with the realized default rate, and to compare the sensitivity of the default rate to changes in the predicted default probability. [PUBLICATION ABSTRACT]

Details

Title
The effect of imperfect data on default prediction validation tests
Author
Russell, Heather; Dwyer, Douglas; Tang, Qing Kang
Pages
77-VI
Publication year
2012
Publication date
Spring 2012
Publisher
Incisive Media Limited
ISSN
17539579
e-ISSN
17539587
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
1038004546
Copyright
Copyright Incisive Media Plc Spring 2012