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Haar wavelets-based approach for quantifying credit portfolio losses

机译:基于Haar小波的量化信贷资产组合损失的方法

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This paper proposes a new methodology to compute Value at Risk (VaR) for quantifying losses in credit portfolios. We approximate the cumulative distribution of the loss function by a finite combination of Haar wavelet basis functions and calculate the coefficients of the approximation by inverting its Laplace transform. The Wavelet Approximation (WA) method is particularly suitable for non-smooth distributions, often arising in small or concentrated portfolios, when the hypothesis of the Basel II formulas are violated. To test the methodology we consider the Vasicek one-factor portfolio credit loss model as our model framework. WA is an accurate, robust and fast method, allowing the estimation of the VaR much more quickly than with a Monte Carlo (MC) method at the same level of accuracy and reliability.
机译:本文提出了一种新的方法来计算风险价值(VaR),以量化信贷组合中的损失。我们通过Haar小波基函数的有限组合来近似损失函数的累积分布,并通过反转其Laplace变换来计算近似系数。当违反了巴塞尔协议II的假设时,小波逼近(WA)方法特别适用于通常在小型或集中投资组合中出现的非平滑分布。为了测试该方法,我们将Vasicek一因素投资组合信用损失模型视为我们的模型框架。 WA是一种准确,可靠且快速的方法,与蒙特卡罗(MC)方法相比,在相同的准确性和可靠性水平上,其VaR估算速度要快得多。

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