On the calibration of stochastic volatility models to estimate the real-world measure used in option pricing

ORiON Pub Date : 2023-01-01 DOI:10.5784/39-1-747
A. Levendis
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Abstract

It is widely noted that the Heston stochastic volatility model fails to capture the fat tails often observed in daily equity returns. Adding random jumps improves the model’s ability to capture extreme events. This extension is known as the Bates stochastic volatility jump (SVJ) model. The model parameters for the Heston and Bates SVJ models are generally calibrated to option prices inducing the so-called risk-neutral measure. However, in the absence of a sufficiently liquid options market, one has to resort to calibration under the realworld measure. In this paper, we calibrate the Heston and Bates SVJ models to historical equity returns in the United States and South Africa using the efficient method of moments(EMM). We then show how a real-world stochastic volatility model can be used in practice to test a simple volatility targeting strategy. Our findings suggest that stochastic volatility and jumps are both required to characterise equity returns in South Africa. Furthermore, volatility targeting is an effective strategy that allows investors to manage the downside risk of a portfolio.
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期权定价中随机波动率模型的校正估计
人们普遍注意到,赫斯顿随机波动率模型未能捕捉到在每日股票回报中经常观察到的肥尾。增加随机跳跃提高了模型捕捉极端事件的能力。这种扩展被称为贝茨随机波动跳变(SVJ)模型。赫斯顿和贝茨SVJ模型的模型参数通常被校准为期权价格,从而产生所谓的风险中性度量。然而,在缺乏足够流动性的期权市场的情况下,人们不得不求助于现实世界衡量标准下的校准。在本文中,我们使用有效矩量法(EMM)将Heston和Bates SVJ模型校准为美国和南非的历史股票回报。然后,我们展示了如何在实践中使用真实世界的随机波动率模型来测试简单的波动率目标策略。我们的研究结果表明,随机波动和跳跃都是南非股票回报特征所必需的。此外,波动性目标是一种有效的策略,可以让投资者管理投资组合的下行风险。
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