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首页> 外文期刊>The Journal of Risk Model Validation >Quantification of model risk in stress testing and scenario analysis
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Quantification of model risk in stress testing and scenario analysis

机译:压力测试和场景分析中模型风险的量化

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摘要

Being able to understand and quantify the model risk inherent in loss-projection models used in macroeconomic stress testing and impairment estimation is a significant concern for both banks and regulators. The application of relative entropy techniques allows model misspecification robustness to be numerically quantified using exponential tilting toward an alternative probability law. Employing a particular loss-forecasting model, we quantify the worst-case-loss term structures of that model, yielding insights into the behavior of the worst-case scenario. In general, the worst case obtained represents an upward scaling of the term structure consistent with the exponential tilting adjustment. The relative entropy approach to model risk we use has its foundation in economics with robust forecasting analysis, and it has recently started to be applied in risk management. This technique can complement traditional model risk quantification techniques, where a specific direction or range of model misspecification reasons are usually considered, such as model sensitivity analysis, model parameter uncertainty analysis, competing models and conservative model assumptions.
机译:能够理解和量化宏观经济压力测试和减值估计中使用的损失预测模型固有的模型风险,这对银行和监管机构都十分重要。相对熵技术的应用允许使用朝着替代概率定律的指数倾斜对模型错误指定的鲁棒性进行数值量化。通过使用特定的损失预测模型,我们可以量化该模型的最坏情况损失期限结构,从而深入了解最坏情况的行为。通常,获得的最坏情况表示与指数倾斜调整一致的项结构的向上缩放。我们使用的相对熵模型风险模型在经济学中具有扎实的预测分析基础,并且最近已开始在风险管理中应用。这种技术可以补充传统的模型风险量化技术,在这种情况下,通常会考虑特定方向或范围的模型错误指定原因,例如模型敏感性分析,模型参数不确定性分析,竞争模型和保守模型假设。

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