Efficient Monte Carlo CVA estimation

Samim Ghamami, Bo Zhang
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Abstract

This paper presents an overview of the efficient Monte Carlo counterparty credit risk (CCR) estimation framework recently developed by Ghamami and Zhang (2014). We focus on the estimation of credit value adjustment (CVA), one of the most widely used and regulatory-driven counterparty credit risk measures. Our proposed efficient CVA estimators are developed based on novel applications of well-known mean square error (MSE) reduction techniques in the simulation literature. Our numerical examples illustrate that the efficient estimators outperform the existing crude estimators of CVA substantially in terms of MSE.
有效的蒙特卡罗CVA估计
本文概述了Ghamami和Zhang(2014)最近开发的高效蒙特卡洛交易对手信用风险(CCR)估计框架。我们重点关注信用价值调整(CVA)的估计,这是最广泛使用的监管驱动的交易对手信用风险指标之一。我们提出的高效CVA估计器是基于仿真文献中众所周知的均方误差(MSE)减小技术的新应用而开发的。我们的数值例子表明,在MSE方面,有效估计器大大优于现有的CVA粗估计器。
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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