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Random Survival Forests Models for SME Credit Risk Measurement

机译:中小企业信用风险度量的随机生存森林模型

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This paper extends the existing literature on empirical research in the field of credit risk default for Small Medium Enterprizes (SMEs). We propose a non-parametric approach based on Random Survival Forests (RSF) and we compare its performance with a standard logit model. To the authors’ knowledge, no studies in the area of credit risk default for SMEs have used a variety of statistical methodologies to test the reliability of their predictions and to compare their performance against one another. As for the in-sample results, we find that our non-parametric model performs much better that the classical logit model. As for the out-of-sample performances, the evidence is just the opposite, and the logit performs better than the RSF model. We explain this evidence by showing how error in the estimates of default probabilities can affect classification error when the estimates are used in a classification rule.
机译:本文扩展了中小型企业(SMEs)信用风险违约领域中有关经验研究的现有文献。我们提出一种基于随机生存森林(RSF)的非参数方法,并将其性能与标准logit模型进行比较。据作者所知,没有针对中小企业信用风险违约的研究使用多种统计方法来检验其预测的可靠性并相互比较其绩效。至于样本中的结果,我们发现我们的非参数模型的性能要比经典logit模型好得多。至于样本外的性能,证据恰好相反,并且logit的表现优于RSF模型。我们通过显示默认概率估计中的错误如何在分类规则中使用估计值而影响分类错误来解释该证据。

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