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A comparison study of computational methods of Kolmogorov-Smirnov statistic in credit scoring

机译:信用评分中Kolmogorov-Smirnov统计量的计算方法的比较研究

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摘要

Kolmogorov-Smirnov statistic (KS) is a standard measure in credit scoring. Currently, there are three computational methods of KS: method with equal-width binning, method with equal-size binning and method without binning. This paper compares the three methods in three aspects: Values, Rank Ordering of Scores and Geometrical Way. The computational results on the German Credit Data show that only the method without binning can produce a unique value of KS. It is further proved analytically that the method without binning yields the maximum value of KS among the three methods. The computational results also show that only the method with equal-size binning can be used to evaluate rank ordering of scores. Moreover, it is proved that all the three methods can be used to calculate KS in a geometric way.
机译:Kolmogorov-Smirnov统计(KS)是信用评分中的标准度量。当前,KS的计算方法有三种:等宽合并方法,等大小合并方法和无合并方法。本文从三个方面对三种方法进行了比较:值,分数的等级排序和几何方式。在德国信用数据上的计算结果表明,只有不进行分箱的方法才能产生唯一的KS值。通过分析进一步证明,在没有分箱的情况下,三种方法中的KS值最大。计算结果还表明,只有等大小合并的方法才能用于评估分数的排名顺序。此外,证明了这三种方法都可以用于几何计算KS。

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