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Bayesian confidence intervals for probability of default and asset correlation of portfolio credit risk

机译:贝叶斯置信区间的违约概率和资产组合信用风险的资产相关性

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摘要

We derive Bayesian confidence intervals for the probability of default (PD), asset correlation (Rho), and serial dependence (Theta) for low default portfolios (LDPs). The goal is to reduce the probability of underestimating credit risk in LDPs. We adopt a generalized method of moments with continuous updating to estimate prior distributions for PD and Rho from historical default data. The method is based on a Bayesian approach without expert opinions. A Markov chain Monte Carlo technique, namely, the Gibbs sampler, is also applied. The performance of the estimation results for LDPs validated by Monte Carlo simulations. Empirical studies on Standard & Poor's historical default data are also conducted.
机译:我们针对低违约组合(LDP)的违约概率(PD),资产相关性(Rho)和序列依赖关系(Theta)得出贝叶斯置信区间。目的是降低低估自民党中信用风险的可能性。我们采用持续更新的矩量的通用方法,以根据历史默认数据估算PD和Rho的先验分布。该方法基于没有专家意见的贝叶斯方法。还应用了马尔可夫链蒙特卡洛技术,即吉布斯采样器。通过蒙特卡洛模拟验证的LDPs估计结果的性能。还对标准普尔的历史默认数据进行了实证研究。

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