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Calibrating credit portfolio loss distributions

机译:校准信贷资产组合损失分布

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Determination of credit portfolio loss distributions is essential for the valuation and risk management of multi-name credit derivatives such as CDOs. The default time model has recently become a market standard approach for capturing the default correlation, which is one of the main drivers for the portfolio loss. However, the default time model yields very different default dependency compared with a continuous-time credit migration model. To build a connection between them, we calibrate the correlation parameter of a single-factor Gaussian copula model to portfolio loss distribution determined from a multi-step credit migration simulation. The deal correlation is produced as a measure of the portfolio average correlation effect that links the two models. Procedures for obtaining the portfolio loss distributions in both models are described in the paper and numerical results are presented.
机译:确定信用资产组合损失分布对于多名称信用衍生产品(例如CDO)的评估和风险管理至关重要。默认时间模型最近已成为捕获默认相关性的市场标准方法,这是投资组合损失的主要驱动因素之一。但是,与连续时间信用迁移模型相比,默认时间模型产生的默认依赖关系大不相同。为了建立它们之间的联系,我们将单因素高斯copula模型的相关参数校准到通过多步信用迁移模拟确定的投资组合损失分布。产生交易相关性是衡量链接这两个模型的投资组合平均相关性效果的度量。本文描述了在两种模型中获得投资组合损失分布的程序,并给出了数值结果。

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