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Exposure at default without conversion factors-evidence from Global Credit Data for large corporate revolving facilities

机译:没有转换因子的违约风险敞口-来自大型企业循环机构的全球信用数据的证据

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摘要

Credit granting institutions are in the business of lending money to customers, some of whom subsequently fail to repay as promised. For these events, accurate loan balance estimates-termed exposure at default (EAD)-provide quantification of potential losses and form a required input to minimum credit capital calculation under the Basel II Accord. Most available EAD research estimates the credit conversion factor (CCF), which is a transform of EAD, but as we highlight this has substantial deficiencies: an inherent singularity rendering the CCF undefined or numerically unstable and it often provides EAD estimates that fail economic intuition. We build a descriptive model for EAD-without relying on the CCF-using the Global Credit Data database, advancing the literature in three important ways. First we identify, like other studies on revolving facilities, that balance and limits drive EAD and we therefore develop our model to capture these joint dynamics flexibly. Second we find evidence in the data of risk-based line management where lenders tend to decrease limits for riskier obligors. Third we confirm results from other studies of mild EAD countercyclicality, whereby EAD is lower during a subdued economy.
机译:授信机构从事向客户提供贷款的业务,其中一些客户后来未能按承诺偿还。对于这些事件,准确的贷款余额估算(称为违约风险)可对潜在损失进行量化,并构成《巴塞尔协议II》下最低信贷资本计算所需的输入。多数可用的EAD研究估计信用转换因子(CCF),这是EAD的一种转换,但是正如我们强调的那样,它具有很大的缺陷:固有的奇异性使CCF不确定或数值不稳定,并且它经常提供EAD估计,从而使经济直觉失效。我们使用全球信用数据数据库构建了EAD的描述性模型,而无需依赖CCF,而使用全球信用数据数据库,以三种重要方式推进了文献研究。首先,与其他有关旋转设施的研究一样,我们确定平衡和限制因素会驱动EAD,因此我们开发了可灵活捕获这些联合动态的模型。其次,我们在基于风险的行管理数据中发现了证据,在这些数据中,贷方倾向于降低对风险较高的债务人的限制。第三,我们证实了其他有关轻度EAD逆周期研究的结果,即在经济疲软期间EAD较低。

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