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A study of Taiwan's issuer credit rating systems using support vector machines

机译:基于支持向量机的台湾发行人信用评级系统研究

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摘要

By providing credit risk information, credit rating systems benefit most participants in financial markets, including issuers, investors, market regulators and intermediaries. In this paper, we propose an automatic classification model for issuer credit ratings, a type of fundamental credit rating information, by applying the support vector machine (SVM) method. This is a novel classification algorithm that is famous for dealing with high dimension classifications. We also use three new variables: stock market information, financial support by the government, and financial support by major shareholders to enhance the effectiveness of the classification. Previous research has seldom considered these variables. The data period of the input variables used in this study covers three years, while most previous research has only considered one year. We compare our SVM model with the back propagation neural network (BP), a well-known credit rating classification method. Our experiment results show that the SVM classification model performs better than the BP model. The accuracy rate (84.62%) is also higher than previous research.
机译:通过提供信用风险信息,信用评级系统使金融市场的大多数参与者受益,包括发行人,投资者,市场监管者和中介机构。在本文中,我们通过应用支持向量机(SVM)方法,为发行人信用评级(一种基本的信用评级信息)提出了一种自动分类模型。这是一种新颖的分类算法,以处理高维分类而闻名。我们还使用三个新变量:股票市场信息,政府的财务支持和大股东的财务支持,以提高分类的有效性。先前的研究很少考虑这些变量。本研究中使用的输入变量的数据周期为三年,而大多数以前的研究仅考虑了一年。我们将SVM模型与反向传播神经网络(BP)(一种著名的信用评级分类方法)进行了比较。我们的实验结果表明,SVM分类模型的性能优于BP模型。准确率(84.62%)也高于以前的研究。

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