快速稳定的CVA信用伽马值

Roberto Daluiso
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引用次数: 0

摘要

信用估价调整是资产负债表上的一个项目,目前由专业交易者进行主动风险管理。然而,最重要的风险因素之一,即交易对手的违约强度向量,通过模拟违约时间,以不可微的方式影响最一般的蒙特卡罗调整估计量。因此,涉及这些输入的一阶和二阶(纯和混合)灵敏度的计算不能依赖于直接的路径微分,而任何涉及有限差分的方法都显示出非常高的统计噪声。我们提出了一种特殊的分析估计器,它克服了这些问题,同时在价格调整的基准计算上提供了非常低的运行时间开销。我们还讨论了将获得的敏感性模型参数(例如默认强度)转换为对市场报价的敏感性(例如:信用违约互换价差)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast and Stable Credit Gamma of CVA
Credit Valuation Adjustment is a balance sheet item which is nowadays subject to active risk management by specialized traders. However, one of the most important risk factors, which is the vector of default intensities of the counterparty, affects in a non-differentiable way the most general Monte Carlo estimator of the adjustment, through simulation of default times. Thus the computation of first and second order (pure and mixed) sensitivities involving these inputs cannot rely on direct path-wise differentiation, while any approach involving finite differences shows very high statistical noise. We present ad hoc analytical estimators which overcome these issues while offering very low runtime overheads over the baseline computation of the price adjustment. We also discuss the conversion of the so-obtained sensitivities to model parameters (e.g. default intensities) into sensitivities to market quotes (e.g. Credit Default Swap spreads).
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