信用评级预测的多类机器学习方法

Yun Ye, Shufen Liu, Jinyu Li
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引用次数: 13

摘要

企业信用评级是衡量投资风险的重要财务指标。传统的信用评级模型采用经典的计量经济学方法,并对各行业进行异方差调整。在本文中,我们建议使用机器学习技术来预测公司评级,并从经验上证明,多类机器学习算法在精确、1级或2级评级预测方面优于传统计量经济学模型。我们使用了来自四个不同行业的CompuStat三年的数据,并比较了线性回归、有序概率模型、拉普拉斯平滑的袋装决策树、多类支持向量机(SVM)和多类近端支持向量机(PSVM)的企业信用评级预测任务。我们的研究结果表明,通过适当的多类和异方差调整,计算成本低廉的多类PSVM可以用于为当今庞大的市场建立可行的自动化企业信用评级系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multiclass Machine Learning Approach to Credit Rating Prediction
Corporate credit ratings are important financial indicators of investment risks. Traditional credit rating models employ classical econometrics methods with heteroscedasticity adjustments across various industries. In this paper, we propose using machine learning techniques in predicting corporate ratings and demonstrate, empirically, that multiclass machine learning algorithms outperform traditional econometrics models in exact, 1-notch, or 2-notch away rating predictions. We use three years of CompuStat data from four very different industries and compare corporate credit rating prediction tasks across linear regression, ordered probit model, bagged decision tree with Laplace smoothing, multiclass support vector machines (SVM), and multiclass proximal support vector machines (PSVM). Our findings show that with the proper multiclass and heteroscedasticity adjustments, the computationally inexpensive multiclass PSVM can be utilized in making viable automated corporate credit rating systems for todaypsilas vast marketplace.
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