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Validating Risk Models With A Focus On Credit Scoring Models

机译:以信用评分模型为重点验证风险模型

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摘要

This paper encompasses three parts of validating risk models. The first part provides an understanding of the precision of the standard statistics used to validate risk models given varying sample sizes. The second part investigates jackknifing as a method to obtain a confidence interval for the Gini coefficient and K-S statistic for small sample sizes. The third and final part investigates the odds at various cutoff points as to its efficiency and appropriateness relative to the K-S statistic and Gini coefficient in model validation. There are many parts to understanding the risk associated with the extension of credit. This paper focuses on obtaining a better understanding of present methodology for validating existing risk models used for credit scoring, by investigating the three parts mentioned. The empirical investigation shows the precision of the Gini coefficient and K-S statistic is driven by the sample size of the smaller, either successes or failures. In addition, a simple adaption of the standard jackknifing formula is possible to use to get an understanding of the variability of the Gini coefficient and K-S statistic. Finally, the odds is not a reliable statistic to use without a considerably large sample of both successes and failures.
机译:本文包括验证风险模型的三个部分。第一部分提供了用于在给定样本量不同的情况下用于验证风险模型的标准统计数据的精度的理解。第二部分研究了小技巧作为获得小样本量的基尼系数和K-S统计量的置信区间的一种方法。第三部分也是最后一部分,研究了在各个临界点上相对于模型验证中K-S统计量和基尼系数的效率和适当性的几率。了解信用额度相关的风险有很多部分。本文着重于通过对上述三个部分的研究,来更好地理解当前用于信用评分的风险模型的方法论。实证研究表明,基尼系数的精确度和K-S统计量由较小样本的大小决定,无论成功与否。此外,可以使用标准折刀公式的简单修改来了解基尼系数和K-S统计量的可变性。最后,如果没有大量关于成功和失败的样本,则赔率并不是可靠的统计数据。

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