Modeling Loss Given Default Regressions

Phillip Li, Xiaofei Zhang, Xinlei Zhao
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引用次数: 1

Abstract

We investigate the puzzle in the literature that various parametric loss given default (LGD) statistical models perform similarly, by comparing their performance in a simulation framework. We find that, even using the full set of explanatory variables from the assumed data-generating process where noise is minimized, these models still show a similarly poor performance in terms of predictive accuracy and rank-ordering when mean predictions and squared error loss functions are used. However, the sophisticated parametric modes that are specifically designed to address the bimodal distributions of LGD outperform the less sophisticated models by a large margin in terms of predicted distributions. Our results also suggest that stress testing may pose a challenge to all LGD models due to a lack of loss data and the limited availability of relevant explanatory variables, and that model selection criteria based on goodness-of-fit may not serve the stress testing purpose well.
Copyright Infopro Digital Limited. All rights reserved.
给定默认回归的建模损失
我们研究了文献中的难题,即各种参数损失给定默认(LGD)统计模型的表现相似,通过比较它们在模拟框架中的性能。我们发现,即使使用噪声最小化的假设数据生成过程中的全套解释变量,当使用均值预测和平方误差损失函数时,这些模型在预测精度和排名排序方面仍然表现出类似的差性能。然而,就预测分布而言,专门设计用于解决LGD双峰分布的复杂参数模型在很大程度上优于不太复杂的模型。我们的研究结果还表明,由于缺乏损失数据和相关解释变量的有限可用性,压力测试可能对所有LGD模型构成挑战,并且基于拟合优度的模型选择标准可能无法很好地满足压力测试的目的。版权所有资讯科技有限公司版权所有。
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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