Estimating Future VaR from Value Samples and Applications to Future Initial Margin

N. Ganesan, B. Hientzsch
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Abstract

Predicting future values at risk (fVaR) is an important problem in finance. They arise in the modelling of future initial margin requirements for counterparty credit risk and future market risk VaR. One is also interested in derived quantities such as: i) Dynamic Initial Margin (DIM) and Margin Value Adjustment (MVA) in the counterparty risk context; and ii) risk weighted assets (RWA) and Capital Value Adjustment (KVA) for market risk. This paper describes several methods that can be used to predict fVaRs. We begin with the Nested MC-empirical quantile method as benchmark, but it is too computationally intensive for routine use. We review several known methods and discuss their novel applications to the problem at hand.

The techniques considered include computing percentiles from distributions (Normal and Johnson) that were matched to parametric moments or percentile estimates, quantile regressions methods, and others with more specific assumptions or requirements.

We also consider how limited inner simulations can be used to improve the performance of these techniques. The paper also provides illustrations, results, and visualizations of intermediate and final results for the various approaches and methods.
从价值样本和应用到未来初始保证金估计未来VaR
预测未来风险价值(fVaR)是金融学中的一个重要问题。它们出现在对交易对手信用风险和未来市场风险VaR的未来初始保证金要求的建模中。人们也对衍生量感兴趣,例如:i)交易对手风险背景下的动态初始保证金(DIM)和保证金价值调整(MVA);风险加权资产(RWA)和针对市场风险的资本价值调整(KVA)。本文介绍了几种可用于预测fvar的方法。我们从嵌套mc -经验分位数方法开始作为基准,但它对于常规使用来说计算量太大。我们回顾了几种已知的方法,并讨论了它们在当前问题中的新应用。考虑的技术包括计算分布(Normal和Johnson)的百分位数,这些分布与参数矩或百分位数估计相匹配,分位数回归方法以及其他具有更具体假设或要求的方法。我们还考虑了如何使用有限的内部模拟来提高这些技术的性能。本文还提供了各种方法和方法的插图、结果和中间和最终结果的可视化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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