Corporate Credit Rating using Partitioned Neural Network and Case- Based Reasoning

신경망 분리모형과 사례기반추론을 이용한 기업 신용 평가

  • 김다윗 (한국신용정보) ;
  • 한인구 (한국과학기술원 테크노경영대학원) ;
  • 민성환 (한림대학교 경영학과)
  • Published : 2007.06.30

Abstract

The corporate credit rating represents an assessment of the relative level of risk associated with the timely payments required by the debt obligation. In this study, the corporate credit rating model employs artificial intelligence methods including Neural Network (NN) and Case-Based Reasoning (CBR). At first we suggest three classification models, as partitioned neural networks, all of which convert multi-group classification problems into two group classification ones: Ordinal Pairwise Partitioning (OPP) model, binary classification model and simple classification model. The experimental results show that the partitioned NN outperformed the conventional NN. In addition, we put to use CBR that is widely used recently as a problem-solving and learning tool both in academic and business areas. With an advantage of the easiness in model design compared to a NN model, the CBR model proves itself to have good classification capability through the highest hit ratio in the corporate credit rating.

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