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Credit Risk Assessment Using Statistical and Machine Learning: Basic Methodology and Risk Modeling Applications

机译:使用统计和机器学习的信用风险评估:基本方法和风险建模应用

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Risk assessment of financial intermediaries is an area of renewed interest due to the financial crises of the l980's and 90's. An accurate estimation of risk, and its use in corporate or global financial risk models, could be translated into a more efficient use of resources. One impor- tant ingredient to accomplish this goal is to find accurate predictors of individual risk in the credit portfolios of institutions. In this context we make a comparative analysis of different statistical and machine learning modeling methods of classification on a mortgage loan data set with the motivation to understand their limitations and potential. We introduced a specific modeling methodology based on the study of error curves. Using state-of the-art modeling techniques we built more than 9,000 models as part of the study. The results show that CART decision-tree models provide the best esti- mation for default with an average 8.3l/100 error rate for a training sample of 2,000 records. As a result of the error curve analysis for this model we conclude that if more data were available, approximately 22,000 records, a potential 7.32/100 error rate could be achieved. Neural Networks provided the second best results with an average error of 11/100. The K-Nearest Neighbor algorithm had an average error rate of l4.95/100. These results outperformed the standard Probit algorithm which attained an average error rate of l5.l3/100. Finally we discuss the possibilities to use this type of accurate predictive model as ingredients of institutional and global risk models.
机译:由于20世纪90年代和90年代的金融危机,金融中介机构的风险评估是一个重新引起关注的领域。准确的风险估算及其在公司或全球财务风险模型中的使用可以转化为更有效的资源利用。实现此目标的重要因素之一是在机构的信贷投资组合中找到准确的个人风险预测指标。在这种情况下,我们对抵押贷款数据集上不同的统计和机器学习建模方法进行比较分析,以了解其局限性和潜力。我们基于误差曲线的研究介绍了一种特定的建模方法。作为研究的一部分,我们使用最先进的建模技术构建了9,000多个模型。结果表明,对于2000条记录的训练样本,CART决策树模型可提供最佳的默认估计,平均错误率为8.3l / 100。作为对该模型的误差曲线分析的结果,我们得出结论,如果有更多数据可用,大约22,000条记录,则可以实现潜在的7.32 / 100错误率。神经网络提供次佳的结果,平均误差为11/100。 K最近邻居算法的平均错误率为l4.95 / 100。这些结果优于标准的Probit算法,该算法的平均错误率达到151.13 / 100。最后,我们讨论了使用这种精确的预测模型作为机构和全球风险模型的组成部分的可能性。

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