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Selecting credit rating models: a cross-validation-based comparison of discriminatory power

机译:选择信用评级模型:基于交叉验证的歧视性权力比较

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摘要

In commercial banking, various statistical models for corporate credit rating have been theoretically promoted and applied to bank-specific credit portfolios. In this paper, we empirically compare and test the performance of a wide range of parametric and nonparametric credit rating model approaches in a statistically coherent way, based on a ‘real-world’ data set. We repetitively (k times) split a large sample of industrial firms’ default data into disjoint training and validation subsamples. For all model types, we estimate k out-of-sample discriminatory power measures, allowing us to compare the models coherently. We observe that more complex and nonparametric approaches, such as random forest, neural networks, and generalized additive models, perform best in-sample. However, comparing k out-of-sample cross-validation results, these models overfit and lose some of their predictive power. Rather than improving discriminatory power, we perceive their major contribution to be their usefulness as diagnostic tools for the selection of rating factors and the development of simpler, parametric models.
机译:在商业银行业务中,理论上已经推广了各种用于公司信用评级的统计模型,并将其应用于特定于银行的信贷组合。在本文中,我们基于“真实世界”的数据集,以统计上连贯的方式,以经验方式比较和测试各种参数和非参数信用评级模型方法的效果。我们重复(k次)将一大批工业公司的默认数据样本分成不相交的训练和验证子样本。对于所有模型类型,我们估计k个样本外的歧视性功效度量,从而使我们能够相干地比较模型。我们观察到,更复杂且非参数的方法(例如随机森林,神经网络和广义加性模型)在样本中表现最佳。但是,比较k个样本外交叉验证结果,这些模型过拟合并失去了一些预测能力。我们认为他们的主要贡献不是提高歧视能力,而是将其作为诊断工具的有用性,这些诊断工具可用于选择评级因子和开发更简单的参数模型。

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