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Exposure at default modeling - A theoretical and empirical assessment of estimation approaches and parameter choice

机译:默认模型下的暴露-估计方法和参数选择的理论和经验评估

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Estimating the credit risk parameter exposure at default is important for banks from an internal risk management and a regulatory perspective. Several approaches are common in the literature and in practice. We theoretically and empirically analyze how the exposure at default should be modeled to obtain accurate estimates of the expected loss. Our empirical analysis is based on a large and unique dataset from a retail portfolio of a European bank. We demonstrate that some approaches can lead to substantially biased estimates of the expected loss and show that the generalized cohort approach is advantageous. Moreover, using in- and out-of-sample analyses, we empirically demonstrate that using the credit conversion factor is preferable to the loan equivalent factor, exposure at default factor, and direct exposure at default estimation to achieve high estimation accuracy. (C) 2017 Elsevier B.V. All rights reserved.
机译:从内部风险管理和监管角度来看,估计违约的信用风险参数敞口对银行很重要。几种方法在文献和实践中很常见。我们从理论和经验上分析应如何对违约风险进行建模,以获得对预期损失的准确估计。我们的经验分析基于来自欧洲银行零售组合的庞大而独特的数据集。我们证明了某些方法可能导致预期损失的估计偏差,并表明广义队列方法是有利的。此外,通过使用样本内和样本外分析,我们经验证明,使用信用转换因子比贷款当量因子,违约风险敞口和违约估计直接敞口更可实现较高的估计准确性。 (C)2017 Elsevier B.V.保留所有权利。

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