Title :
Using data mining predictive models to classify credit card applicants
Author :
Wah, Yap Bee ; Ibrahim, Irma Rohaiza
Author_Institution :
Fac. of Comput. & Math. Sci., Univ. Teknol. MARA, Shah Alam, Malaysia
fDate :
Nov. 30 2010-Dec. 2 2010
Abstract :
Credit scoring using predictive models can help in the process of assessing credit worthiness during the credit evaluation process. The objective of credit scoring models is to assign credit risk score to determine if a customer is likely to default on the financial obligation. Construction of credit scoring models requires data mining techniques. Using historical data on payments, demographic characteristics and statistical techniques, credit scoring models can help identify the important demographic characteristics related to credit risk and provide a score for each customer. This paper illustrates the construction and comparison of three credit scoring models: logistic regression (LR) model, classification and regression tree (CART) model and neural network (NN) model to discriminate between rejected and accepted credit card applicants of a bank. Results show that Neural Network model has a slightly higher validation predictive accuracy rate (LR = 74.56%, NN = 76.46%, CART = 73.66%).
Keywords :
data mining; finance; neural nets; pattern classification; regression analysis; risk management; trees (mathematics); CART model; LR model; NN model; accepted credit card applicants; classification and regression tree model; credit evaluation process; credit risk score; credit scoring models; credit worthiness; data mining predictive models; data mining techniques; demographic characteristics; financial obligation; historical data; logistic regression model; neural network model; payments; rejected credit card applicants; statistical techniques; validation predictive accuracy rate; Artificial neural networks; Credit cards; Data mining; Data models; Logistics; Predictive models; Regression tree analysis; classification; credit scoring; data mining; decision tree; logistic regression; predictive modeling;
Conference_Titel :
Advanced Information Management and Service (IMS), 2010 6th International Conference on
Conference_Location :
Seoul
Print_ISBN :
978-1-4244-8599-4
Electronic_ISBN :
978-89-88678-32-9