Credit Rating Analysis by the Decision-Tree Support Vector Machine with Ensemble Strategies

被引:0
|
作者
Ping-Feng Pai
Yi-Shien Tan
Ming-Fu Hsu
机构
[1] National Chi Nan University,Department of Information Management
[2] National Chi Nan University,Department of International Business Studies
来源
关键词
Credit rating; Ensemble learning; Decision-tree support vector machine; Rough set theory;
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中图分类号
学科分类号
摘要
The recent financial tsunami and subprime crisis both triggered an excessive global financial decline. Since then, the ability to ensure the creditworthiness of firms, the development of a suitable credit rating mechanism and appropriate rating policies have become critical issues for most financial institutions. Credit rating is a multi-classification task. The decision-tree support vector machine (DTSVM) has been one of the most powerful models in dealing with multi-classification problems. However, the determination of important data features significantly affects the computation time and classification accuracy of DTSVM models. In addition, the inability to provide rules for decision-makers limits the practical applications of DTSVM models. This study proposes an M-DTSVM-RST model which integrates the unique strength of multiple feature selection strategies in feature determination, DTSVM in multi-classification, and rough set theory (RST) in rule generation. The advantages of the designed M-DTSVM-RST model include the ensemble learning ability in selecting essential attributes, the capability in yielding rules for decision-makers in multi-classification cases by the DTSVM technique with RST. Experimental results show that the M-DTSVM-RST model is a promising alternative in analyzing the credit rating problem.
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页码:521 / 530
页数:9
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