蒙特卡罗期权定价粗糙Bergomi模型的马尔可夫逼近

Qinwen Zhu, G. Loeper, Wen Chen, Nicolas Langren'e
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引用次数: 11

摘要

粗糙贝戈米模型是一种粗糙分数随机波动率模型,与其他粗糙分数随机波动率模型相比,它可以生成更真实的现价波动率偏态的期限结构。然而,它的非马尔可夫性给模型标定和仿真带来了数学和计算上的挑战。为了克服这些困难,我们证明了具有马尔可夫性质的正方差Bergomi模型可以很好地近似rBergomi模型,该模型具有明智地选择权值和均值回归速度参数(aBergomi)。我们建立了这两个模型各自核之间l2误差的显式界,该界由aBergomi模型中的项数显式控制。我们建立并描述了rBergomi模型的仿射结构,并证明了aBergomi模型的仿射结构向rBergomi模型的仿射结构收敛。我们通过实现aBergomi模型的经典马尔可夫蒙特卡罗模拟方案,并将其与rBergomi模型的混合方案进行比较,证明了我们方法的效率和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Markovian Approximation of the Rough Bergomi Model for Monte Carlo Option Pricing
The recently developed rough Bergomi (rBergomi) model is a rough fractional stochastic volatility (RFSV) model which can generate a more realistic term structure of at-the-money volatility skews compared with other RFSV models. However, its non-Markovianity brings mathematical and computational challenges for model calibration and simulation. To overcome these difficulties, we show that the rBergomi model can be well-approximated by the forward-variance Bergomi model with wisely chosen weights and mean-reversion speed parameters (aBergomi), which has the Markovian property. We establish an explicit bound on the L2-error between the respective kernels of these two models, which is explicitly controlled by the number of terms in the aBergomi model. We establish and describe the affine structure of the rBergomi model, and show the convergence of the affine structure of the aBergomi model to the one of the rBergomi model. We demonstrate the efficiency and accuracy of our method by implementing a classical Markovian Monte Carlo simulation scheme for the aBergomi model, which we compare to the hybrid scheme of the rBergomi model.
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