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首页> 外文期刊>Journal of the American statistical association >A Class of Discrete Transformation Survival Models With Application to Default Probability Prediction
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A Class of Discrete Transformation Survival Models With Application to Default Probability Prediction

机译:一类离散转换生存模型及其在违约概率预测中的应用

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摘要

Corporate bankruptcy prediction plays a central role in academic finance research, business practice, and government regulation. Consequently, accurate default probability prediction is extremely important. We propose to apply a discrete transformation family of survival models to corporate default risk predictions. A class of Box-Cox transformations and logarithmic transformations is naturally adopted. The proposed transformation model family is shown to include the popular Shumway model and the grouped relative risk model. We show that a transformation parameter different from those two models is needed for default prediction using a bankruptcy dataset. In addition, we show using out-of-sample validation statistics that our model improves performance. We use the estimated default probability to examine a popular asset pricing question and determine whether default risk has carried a premium. Due to some distinct features of the bankruptcy application, the proposed class of discrete transformation survival models with time-varying covariates is different from the continuous survival models in the survival analysis literature. Their similarities and differences are discussed.
机译:公司破产预测在学术金融研究,商业实践和政府监管中发挥着核心作用。因此,准确的默认概率预测非常重要。我们建议将离散的生存模型转化系列应用于公司违约风险预测。自然采用一类Box-Cox变换和对数变换。所提出的转换模型族显示为包括流行的Shumway模型和分组的相对风险模型。我们显示,使用破产数据集进行默认预测需要不同于这两个模型的转换参数。此外,我们使用样本外验证统计数据表明,我们的模型可以提高性能。我们使用估计的违约概率检查流行的资产定价问题,并确定违约风险是否带有溢价。由于破产申请的某些独特特征,所提出的具有时变协变量的离散变换生存模型与生存分析文献中的连续生存模型有所不同。讨论了它们的异同。

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