Author :
Yoon, Jongsik ; Kwon, Young S. ; Roh, Tae Hyup
Abstract :
Due to the poor financial statements which represent credit risk of small and micro business, it´s been difficult to develop the credit evaluation model that reflects both consumer credit risk and business credit risk of small and micro business. The purpose of this study is to develop the credit evaluation model for small and micro businesses using credit card sales information in lieu of poor financial information. In order to develop the model, we derive some variables and analyze the relationship between good and bad credits. We find out that twelve variables are significant in predicting good or bad risk for small and micro business, which are categorized into the business period, scale for sale, a fluctuation in sales, sales pattern and business category´s bankruptcy ratio, etc. We employ the new statistical learning technique, support vector machines (SVM) as a classifier. We use grid search technique to find out better parameter for SVM. The experimental result shows that credit card sales information could be a good substitute for the financial data on business credit risk in predicting the bankruptcy for small-micro businesses. In addition, we also find out that SVM performs best, when compared with other classifiers such as neural networks, CART, C5.0, multivariate discriminant analysis (MDA), and logistic regression analysis (IRA).
Keywords :
credit transactions; small-to-medium enterprises; statistical analysis; support vector machines; C5.0; CART; bankruptcy prediction; business category bankruptcy ratio; business credit risk; consumer credit risk; credit card sales information; credit evaluation model; grid search technique; logistic regression analysis; micro business; multivariate discriminant analysis; neural networks; performance improvement; small business; statistical learning technique; support vector machines; Credit cards; Fluctuations; Logistics; Marketing and sales; Neural networks; Performance analysis; Regression analysis; Statistical learning; Support vector machine classification; Support vector machines;
Conference_Titel :
Software Engineering Research, Management & Applications, 2007. SERA 2007. 5th ACIS International Conference on