원문정보
Comparison of Performance Measures for Credit-Card Delinquents Classification Models:Measured by Hit Ratio vs. by Utility
초록
영어
As the great disturbance from abusing credit cards in Korea becomes stabilized, credit card companies need to interpret credit-card delinquents classification models from the viewpoint of profit. However, hit ratio which has been used as a measure of goodness of classification models just tells us how much correctly they classified rather than how much profits can be obtained as a result of using classification models. In this research, we tried to develop a new utility-based measure from the viewpoint of profit and then used this new measure to analyze two classification models(Neural Networks and Decision Tree models). We found that the hit ratio of neural model is higher than that of decision tree model, but the utility value of decision tree model is higher than that of neural model. This experiment shows the importance of utility based measure for credit-card delinquents classification models. We expect this new measure will contribute to increasing profits of credit card companies.
목차
1. 서론
2. 문헌연구
2.1 신용 분류 모형
2.2 유틸리티 기반 데이터마이닝(Utility-Based Data Mining)
3. 데이터 및 실험 모형
3.1 실험 데이터
3.2 실험 모형
4. 실험결과 및 해석
5. 결론
참고문헌
