Multi-Period Credit Default Prediction with Time-Varying Covariates

W. Orth
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引用次数: 11

Abstract

In credit default prediction models, the need to deal with time-varying covariates often arises. For instance, in the context of corporate default prediction a typical approach is to estimate a hazard model by regressing the hazard rate on time-varying covariates like balance sheet or stock market variables. If the prediction horizon covers multiple periods, this leads to the problem that the future evolution of these covariates is unknown. Consequently, some authors have proposed a framework that augments the prediction problem by covariate forecasting models. In this paper, we present simple alternatives for multi-period prediction that avoid the burden to specify and estimate a model for the covariate processes. In an application to North American public firms, we show that the proposed models deliver high out-of-sample predictive accuracy.
基于时变协变量的多周期信用违约预测
在信用违约预测模型中,经常需要处理时变协变量。例如,在企业违约预测的背景下,一种典型的方法是通过对资产负债表或股票市场变量等时变协变量的风险率进行回归来估计风险模型。如果预测范围涵盖多个时期,这将导致这些协变量的未来演变未知的问题。因此,一些作者提出了一个框架,通过协变量预测模型来增加预测问题。在本文中,我们提出了多周期预测的简单替代方案,避免了为协变量过程指定和估计模型的负担。在对北美上市公司的应用中,我们表明所提出的模型提供了很高的样本外预测精度。
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