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Basel II compliant credit risk modelling:model development for imbalanced credit scoring data sets, loss given default (LGD) and exposure at default (EAD)

机译:符合巴塞尔协议II的信用风险建模:不平衡信用评分数据集,违约损失率(LGD)和违约风险敞口(EaD)的模型开发

摘要

The purpose of this thesis is to determine and to better inform industry practitioners to the most appropriate classification and regression techniques for modelling the three key credit risk components of the Basel II minimum capital requirement; probability of default (PD), loss given default (LGD), and exposure at default (EAD). The Basel II accord regulates risk and capital management requirements to ensure that a bank holds enough capital proportional to the exposed risk of its lending practices. Under the advanced internal ratings based (IRB) approach Basel II allows banks to develop their own empirical models based on historical data for each of PD, LGD and EAD.In this thesis, first the issue of imbalanced credit scoring data sets, a special case of PD modelling where the number of defaulting observations in a data set is much lower than the number of observations that do not default, is identified, and the suitability of various classification techniques are analysed and presented. As well as using traditional classification techniques this thesis also explores the suitability of gradient boosting, least square support vector machines and random forests as a form of classification. The second part of this thesis focuses on the prediction of LGD, which measures the economic loss, expressed as a percentage of the exposure, in case of default. In this thesis, various state-of-the-art regression techniques to model LGD are considered. In the final part of this thesis we investigate models for predicting the exposure at default (EAD). For off-balance-sheet items (for example credit cards) to calculate the EAD one requires the committed but unused loan amount times a credit conversion factor (CCF). Ordinary least squares (OLS), logistic and cumulative logistic regression models are analysed, as well as an OLS with Beta transformation model, with the main aim of finding the most robust and comprehensible model for the prediction of the CCF. Also a direct estimation of EAD, using an OLS model, will be analysed. All the models built and presented in this thesis have been applied to real-life data sets from major global banking institutions.
机译:本文的目的是确定和更好地向行业从业者介绍最合适的分类和回归技术,以对《巴塞尔协议II》最低资本要求的三个关键信用风险成分进行建模。违约概率(PD),给定违约损失(LGD)和违约风险(EAD)。 《巴塞尔协议II》对风险和资本管理要求进行了规定,以确保银行拥有与其放贷行为所承受的风险成比例的足够资本。在先进的内部评级基础(IRB)方法下,巴塞尔协议II使银行可以基于PD,LGD和EAD各自的历史数据来开发自己的经验模型。本文首先讨论不平衡信用评分数据集的问题,这是一个特例确定了PD建模的方法,其中数据集中的默认观察数比没有默认的观察数低得多,并分析和提出了各种分类技术的适用性。除了使用传统的分类技术外,本文还探索了梯度增强,最小二乘支持向量机和随机森林作为分类形式的适用性。本文的第二部分着重于违约损失率的预测,该违约损失率用来衡量经济损失,在违约的情况下以占敞口的百分比表示。在本文中,考虑了各种用于LGD建模的最新回归技术。在本文的最后部分,我们研究了用于预测默认暴露量(EAD)的模型。对于表外项目(例如信用卡),要计算EAD,需要将已承诺但未使用的贷款金额乘以信用转换因子(CCF)。分析了普通最小二乘(OLS),逻辑和累积Logistic回归模型,以及具有Beta转换模型的OLS,其主要目的是找到用于预测CCF的最鲁棒和可理解的模型。此外,还将使用OLS模型对EAD进行直接估算。本文构建和介绍的所有模型均已应用于来自主要全球银行机构的真实数据集。

著录项

  • 作者

    Brown Iain L.J.;

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  • 年度 2012
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  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
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