Specification and Informational Issues in Credit Scoring
29 Pages Posted: 12 Jan 2007
Date Written: October 2006
Lenders use rating and scoring models to rank credit applicants on their expected performance. The models and approaches are numerous. We explore the possibility that estimates generated by models developed with data drawn solely from extended loans are less valuable than they should be because of selectivity bias. We investigate the value of reject inference - methods that use a rejected applicant's characteristics, rather than loan performance data, in scoring model development. In the course of making this investigation, we also discuss the advantages of using parametric as well as nonparametric modeling. These issue are discussed and illustrated in the context of a simple stylized model.
Keywords: Logistic regression, specification testing, risk management, nonparametrics, reject inference
JEL Classification: C13, C14, C52, G11, G32
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