Instance sampling in credit scoring: An empirical study of sample size and balancing

Crone, Sven F. and Finlay, Steven (2012) Instance sampling in credit scoring: An empirical study of sample size and balancing. International Journal of Forecasting, 28 (1). pp. 224-238. ISSN 0169-2070

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Abstract

To date, best practice in sampling credit applicants has been established based largely on expert opinion, which generally recommends that small samples of 1500 instances each of both goods and bads are sufficient, and that the heavily biased datasets observed should be balanced by undersampling the majority class. Consequently, the topics of sample sizes and sample balance have not been subject to either formal study in credit scoring, or empirical evaluations across different data conditions and algorithms of varying efficiency. This paper describes an empirical study of instance sampling in predicting consumer repayment behaviour, evaluating the relative accuracies of logistic regression, discriminant analysis, decision trees and neural networks on two datasets across 20 samples of increasing size and 29 rebalanced sample distributions created by gradually under- and over-sampling the goods and bads respectively. The paper makes a practical contribution to model building on credit scoring datasets, and provides evidence that using samples larger than those recommended in credit scoring practice provides a significant increase in accuracy across algorithms.

Item Type:
Journal Article
Journal or Publication Title:
International Journal of Forecasting
Uncontrolled Keywords:
/dk/atira/pure/researchoutput/libraryofcongress/hb
Subjects:
?? CREDIT SCORINGDATA PRE-PROCESSINGSAMPLE SIZE UNDER-SAMPLING OVER-SAMPLING BALANCINGMANAGEMENT SCIENCEBUSINESS AND INTERNATIONAL MANAGEMENTHB ECONOMIC THEORY ??
ID Code:
56114
Deposited By:
Deposited On:
13 Jul 2012 12:13
Refereed?:
Yes
Published?:
Published
Last Modified:
15 Sep 2023 00:02