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A generic framework for stochastic Loss-Given-Default

机译:随机损失给定-违约的通用框架

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In this document a method is discussed to incorporate stochastic Loss-Given-Default (LGD) in factor models, i.e. structural models for credit risk. The general idea exhibited in this text is to introduce a common dependence of the LGD and the probability of default (PD) on a latent variable, representing the systemic risk. Though our theory can be applied to any arbitrary firm-value model and any underlying distribution for the LGD, provided its support is a compact subset of [0,1], special attention is given to the extension of the well-known cases of the Gaussian copula framework and the shifted Gamma one-factor model (a particular case of the generic one-factor Lvy model), and the LGD is modeled by a Beta distribution, in accordance with rating agency models and the Credit Metrics model. In order to introduce stochastic LGD, a monotonically decreasing relation is derived between the loss rate L, i.e. the loss as a percentage of the total exposure, and the standardized log-return R of the obligor's asset value, which is assumed to be a function of one or more systematic and idiosyncratic risk factors. The property that the relation is decreasing guarantees that the LGD is negatively correlated to R and hence positively correlated to the default rate. From this relation, expressions are then derived for the cumulative distribution function (CDF) and the expected value of the loss rate and the LGD, conditionally on a realization of the systematic risk factor(s). It is important to remark that all our results are derived under the large homogeneous portfolio (LHP) assumption and that they are fully consistent with the IRB approach outlined by the Basel II Capital Accord. We will demonstrate the impact of incorporating stochastic LGD and using models based on skew and fat-tailed distributions in determining adequate capital requirements. Furthermore, we also skim the potential application of the proposed framework in a credit risk environment. It will turn out that both building blocks, i.e. stochastic LGD and fat-tailed distributions, separately, increase the projected loss and thus the required capital charge. Hence, the aggregation of a model based on a fat-tailed underlying distribution that accounts for stochastic LGD will lead to sound capital requirements.
机译:在该文件中,讨论了一种将随机损失给定违约(LGD)合并到因子模型中的方法,即信用风险的结构模型。本文中展示的一般思想是介绍LGD的常见依赖性以及违约概率(PD)对表示系统风险的潜在变量的依赖性。尽管我们的理论可以应用于LGD的任何任意公司价值模型和任何基础分布,但只要它的支持是[0,1]的紧凑子集,就应该特别注意扩展LGD的著名案例。根据评级机构模型和Credit Metrics模型,高斯copula框架和转移的Gamma单因素模型(通用单因素Lvy模型的特殊情况)和LGD通过Beta分布建模。为了引入随机违约损失率,损失率L(即损失占总敞口的百分比)与债务人资产价值的标准对数回报R(假定为函数)之间存在单调递减关系一种或多种系统性和特质性危险因素。该关系减小的性质保证了LGD与R负相关,因此与违约率正相关。从这种关系中,有条件地实现系统性风险因素,然后可以得出累积分布函数(CDF)以及损失率和LGD的期望值的表达式。重要的是要指出,我们所有的结果都是在大型同质组合(LHP)假设下得出的,并且它们与《巴塞尔协议II》所概述的IRB方法完全一致。我们将展示结合随机LGD并使用基于偏斜分布和肥尾分布的模型来确定适当的资本需求的影响。此外,我们还略过了拟议框架在信用风险环境中的潜在应用。事实证明,这两种构造要素(即随机LGD和胖尾分布)分别会增加预计的损失并因此增加所需的资本支出。因此,基于随机尾部基础分布的模型的聚合(解释了随机LGD)将导致合理的资本需求。

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