Pricing and Calibration in the 4-Factor Path-Dependent Volatility Model
32 Pages Posted: 3 Jul 2024 Last revised: 22 Feb 2025
Date Written: June 04, 2024
Abstract
We consider the path-dependent volatility (PDV) model of Guyon and Lekeufack (2023), where the instantaneous volatility is a linear combination of a weighted sum of past returns and the square root of a weighted sum of past squared returns. We discuss the influence of an additional parameter that unlocks enough volatility on the upside to reproduce the implied volatility smiles of S&P 500 and VIX options. This PDV model, motivated by empirical studies, comes with computational challenges, especially in relation to VIX options pricing and calibration. We propose an accurate pathwise neural network approximation of the VIX which leverages on the Markovianity of the 4-factor version of the model. The VIX is learned pathwise as a function of the Markovian factors and the model parameters. We use this approximation to tackle the joint calibration of S&P 500 and VIX options, quickly sample VIX paths, and price derivatives that jointly depend on S&P 500 and VIX. As an interesting aside, we also show that this time-homogeneous, low-parametric, Markovian PDV model is able to fit the whole surface of S&P 500 implied volatilities remarkably well.
Keywords: path-dependent volatility, calibration of financial models, neural networks, S&P 500/VIX joint calibration
JEL Classification: G13
Suggested Citation: Suggested Citation
Gazzani, Guido and Guyon, Julien, Pricing and Calibration in the 4-Factor Path-Dependent Volatility Model (June 04, 2024). Available at SSRN: https://ssrn.com/abstract=4853419 or http://dx.doi.org/10.2139/ssrn.4853419
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