MODELING CREDIT RISK: AN APPLICATION OF THE ROUGH SET METHODOLOGY

Reyes Samaniego Medina, M. J. V. Cueto
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引用次数: 2

Abstract

The Basel Accords encourages credit entities to implement their own models for measuring financial risk. In this paper, we focus on the use of internal ratings-based (IRB) models for the assessment of credit risk and, specifically, on one component that models the probability of default (PD). The traditional methods used for modelling credit risk, such as discriminant analysis and logit and probit models, start with several statistical restrictions. The rough set methodology avoids these limitations and as such is an alternative to the classic statistical methods. We apply the rough set methodology to a database of 106 companies that are applicants for credit. We obtain ratios that can best discriminate between financially sound and bankrupt companies, along with a series of decision rules that will help detect operations that are potentially in default. Finally, we compare the results obtained using the rough set methodology to those obtained using classic discriminant analysis and logit models. We conclude that the rough set methodology presents better risk classification results.
信用风险建模:粗糙集方法的应用
《巴塞尔协议》鼓励信贷实体实施自己的金融风险衡量模型。在本文中,我们着重于使用基于内部评级(IRB)的模型来评估信用风险,特别是对违约概率(PD)建模的一个组成部分。传统的信用风险建模方法,如判别分析、logit和probit模型,都有一些统计上的限制。粗糙集方法避免了这些限制,因此是经典统计方法的替代方法。我们将粗糙集方法应用于106家申请信贷的公司的数据库。我们获得了最能区分财务状况良好和破产公司的比率,以及一系列有助于发现潜在违约行为的决策规则。最后,我们将粗糙集方法的结果与经典判别分析和logit模型的结果进行了比较。我们得出结论,粗糙集方法具有更好的风险分类效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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