A Quick Tool to Forecast VaR Using Implied and Realized Volatilities

Francesco Cesarone, Stefano Colucci
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引用次数: 3

Abstract

We propose here a naive model to forecast ex-ante Value-at-Risk (VaR) using a shrinkage estimator between realized volatility estimated on past return time series, and implied volatility extracted from option pricing data. Implied volatility is often indicated as the operators expectation about future risk, while the historical volatility straightforwardly represents the realized risk prior to the estimation point, which by definition is backward looking. In a nutshell, our prediction strategy for VaR uses information both on the expected future risk and on the past estimated risk.We examine our model, called Shrinked Volatility VaR, both in the univariate and in the multivariate cases, empirically comparing its forecasting power with that of two benchmark VaR estimation models based on the Historical Filtered Bootstrap and on the RiskMetrics approaches.The performance of all VaR models analyzed is evaluated using both statistical accuracy tests and efficiency evaluation tests, according to the Basel II and ESMA regulatory frameworks, on several major markets around the world over an out-of-sample period that covers different financial crises.Our results confirm the efficacy of the implied volatility indexes as inputs for a VaR model, but combined together with realized volatilities. Furthermore, due to its ease of implementation, our prediction strategy to forecast VaR could be used as a tool for portfolio managers to quickly monitor investment decisions before employing more sophisticated risk management systems.
使用隐含和已实现波动率预测VaR的快速工具
本文提出了一个朴素模型,利用过去收益时间序列估计的已实现波动率与从期权定价数据中提取的隐含波动率之间的收缩估计量来预测事前风险价值(VaR)。隐含波动率通常表示为操作者对未来风险的预期,而历史波动率直接表示在估计点之前已实现的风险,从定义上讲是向后看的。简而言之,我们对VaR的预测策略使用了关于预期未来风险和过去估计风险的信息。我们在单变量和多变量情况下检查了我们的模型,称为收缩波动VaR,并将其预测能力与基于历史滤波Bootstrap和RiskMetrics方法的两个基准VaR估计模型进行了经验比较。根据巴塞尔协议II和ESMA监管框架,使用统计准确性测试和效率评估测试对所分析的所有风险价值模型的性能进行了评估,这些测试是在全球几个主要市场的样本外期间进行的,涵盖了不同的金融危机。我们的研究结果证实了隐含波动率指数作为VaR模型输入的有效性,但与实现波动率结合在一起。此外,由于其易于实施,我们预测VaR的预测策略可以作为投资组合经理在采用更复杂的风险管理系统之前快速监控投资决策的工具。
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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