Estimation Procedures of Using Five Alternative Machine Learning Methods for Predicting Credit Card Default

Huei-Wen Teng, Michael Lee
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引用次数: 12

Abstract

Machine learning has successful applications in credit risk management, portfolio management, automatic trading, and fraud detection, to name a few, in the domain of finance technology. Reformulating and solving these topics adequately and accurately is problem specific and challenging along with the availability of complex and voluminous data. In credit risk management, one major problem is to predict the default of credit card holders using real dataset. We review five machine learning methods: the [Formula: see text]-nearest neighbors decision trees, boosting, support vector machine, and neural networks, and apply them to the above problem. In addition, we give explicit Python scripts to conduct analysis using a dataset of 29,999 instances with 23 features collected from a major bank in Taiwan, downloadable in the UC Irvine Machine Learning Repository. We show that the decision tree performs best among others in terms of validation curves.
使用五种替代机器学习方法预测信用卡违约的估计程序
机器学习在金融技术领域的信用风险管理、投资组合管理、自动交易和欺诈检测等方面都有成功的应用。随着复杂和大量数据的可用性,充分和准确地重新表述和解决这些主题是特定问题和具有挑战性的。在信用风险管理中,利用真实数据集预测信用卡持卡人的违约行为是一个主要问题。我们回顾了五种机器学习方法:[公式:见文本]-最近邻决策树,增强,支持向量机和神经网络,并将它们应用于上述问题。此外,我们提供了显式的Python脚本,使用从台湾一家主要银行收集的29,999个实例和23个特征的数据集进行分析,可在加州大学欧文分校机器学习存储库中下载。我们证明决策树在验证曲线方面表现最好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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