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A Practical Approach to Credit Scoring

机译:信用评分的实用方法

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摘要

This paper proposes a DEA-based approach to credit scoring. Compared with conventional models such as multiple discriminant analysis, logistic regression analysis, and neural networks for business failure prediction, which require extra a priori information, this new approach solely requires ex-post information to calculate credit scores. For the empirical evidence, this methodology was applied to current financial data of external audited 1061 manufacturing firms comprising the credit portfolio of one of the largest credit guarantee organizations in Korea. Using financial ratios, the methodology could synthesize a firm's overall performance into a single financial credibility score. The empirical results were also validated by supporting analyses (regression analysis and discriminant analysis) and by testing the model's discriminatory power using actual bankruptcy cases of 103 firms. In addition, we propose a practical credit rating method using the predicted DEA scores.
机译:本文提出了一种基于DEA的信用评分方法。与传统模型(如多判别分析,逻辑回归分析和用于业务失败预测的神经网络)相比,这些模型需要额外的先验信息,而这种新方法仅需要事后信息才能计算信用评分。作为经验证据,该方法适用于外部审计的1061家制造公司的当前财务数据,这些公司包括韩国最大的信用担保组织之一的信用组合。使用财务比率,该方法可以将公司的整体绩效综合为一个财务信誉分数。通过支持分析(回归分析和判别分析)以及使用103家公司的实际破产案例测试模型的歧视力,也验证了实证结果。此外,我们提出了一种使用预测DEA分数的实用信用评级方法。

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