© 1996 by Institute of Mathematics and its Applications
Applicability of generic linear scoring mosels in the U.S. credit-union environment
McIntire School of Commerce, University of Virginia Charlottesville, Virgina 22903 U.S.A.
Department of Biostatistics, University of Alabama at Birmingham Brimingham, Alabama 35294 U.S.A
Although credit-scoring models represent a widely used managerial aid for large financial intermediaries, the vast majority of U.S. credit unionsrelatively small cooperatively owned retail intermediaries, constrained by sample and funding limitationshave yet to adopt such techniques. Lovie & Lovie (1986) have theorized that the flat-maximum effect or curve of insensitivity associated with linear scoring models could be advantageous in areas of applied prediction such as credit scoring. In this context, we reported the relative predictive power of generic credit-scoring models versus customized models in an earlier paper (Overstreet et al. 1992). Unfortunately, these findings were not readily adaptable to the credit-union industry due to a dated sample with incomplete credit-bureau information. Consequently, from 1988 to 1991, we gathered a refined database from which to further develop and field-test generic scoring models in the credit-union environment. The results reported herein not only confirm, but amplify, the relative predictive power of such models found earlier. Relative costs and benefits of generic versus customized models are modelled for a representative credit union. Future research directions are set forth in the conclusions.