Logistic Regression for Investigating Credit Card Default

  • Yang, Jeong-Won (Dept. of Business Admin., Kyungpook National University) ;
  • Ha, Sung-Ho (Dept. of Business Admin., Kyungpook National University) ;
  • Min, Ji-Hong (Srategic Planning Team, LG Electronics)
  • Published : 2008.10.31

Abstract

The increasing late-payment rate of credit card customers caused by a recent economic downturn are incurring not only reduced profit of department stores but also significant loss. Under this pressure, the objective of credit forecasting is extended from presumption of good or bad customers to contribution to revenue growth. As a method of managing defaults of department store credit card, this study classifies credit delinquents into some clusters, analyzes repaying patterns of customers in each cluster, and develops credit forecasting system to manage delinquents of department store credit card using data of Korean D department store's delinquents. The model presented by this study uses Kohonen network, a kind of artificial neural network of data mining techniques to cluster credit delinquents into groups. Logistic regression model is also used to predict repayment rate of customers of each cluster per period. The accuracy of presented system for the whole clusters is 92.3%.

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