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Estimating Sensitivities of Portfolio Credit Risk Using Monte Carlo

机译:使用蒙特卡洛估计投资组合信贷风险的敏感性

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摘要

Estimating the sensitivities of portfolio credit risk with respect to the underlying model parameters is an important problem for credit risk management. In this paper, we consider performance measures that may be expressed as an expectation of a performance function of the portfolio credit loss and derive closed-form expressions of its sensitivities to the underlying parameters. Our results are applicable to both idiosyncratic and macroeconomic parameters and to performance functions that may or may not be continuous. Based on the closed-form expressions, we first develop an estimator for sensitivities, in a general framework, that relies on the kernel method for estimation. The unified estimator allows us to further derive two general forms of the estimators by using conditioning techniques on either idiosyncratic or macroeconomic factors. We then specialize our results to develop faster estimators for three popular classes of models used for portfolio credit risk: latent variable models, Bernoulli mixture models, and doubly stochastic models.
机译:估计投资组合信用风险相对于基本模型参数的敏感性是信用风险管理的重要问题。在本文中,我们考虑了可以用对投资组合信用损失的绩效函数的期望来表示的绩效指标,并得出了其对基本参数的敏感性的封闭形式。我们的结果适用于特殊参数和宏观经济参数以及可能连续或可能不连续的绩效函数。基于闭合形式的表达式,我们首先在一个通用框架中开发一个敏感性估计器,该估计器依赖于核方法进行估计。统一估计量使我们可以通过使用基于特质或宏观经济因素的调节技术来进一步推导两种形式的估计量。然后,我们将结果专门化,以便为用于投资组合信用风险的三种流行类别的模型开发更快的估算器:潜在变量模型,伯努利混合模型和双重随机模型。

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