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Joint deep calibration of the 4-factor PDV model

Published: July 12, 2025 | arXiv ID: 2507.09412v1

By: Fabio Baschetti, Giacomo Bormetti, Pietro Rossi

Potential Business Impact:

Makes stock market predictions much faster.

Business Areas:
Prediction Markets Financial Services

Joint calibration to SPX and VIX market data is a delicate task that requires sophisticated modeling and incurs significant computational costs. The latter is especially true when pricing of volatility derivatives hinges on nested Monte Carlo simulation. One such example is the 4-factor Markov Path-Dependent Volatility (PDV) model of Guyon and Lekeufack (2023). Nonetheless, its realism has earned it considerable attention in recent years. Gazzani and Guyon (2025) marked a relevant contribution by learning the VIX as a random variable, i.e., a measurable function of the model parameters and the Markovian factors. A neural network replaces the inner simulation and makes the joint calibration problem accessible. However, the minimization loop remains slow due to expensive outer simulation. The present paper overcomes this limitation by learning SPX implied volatilities, VIX futures, and VIX call option prices. The pricing functions reduce to simple matrix-vector products that can be evaluated on the fly, shrinking calibration times to just a few seconds.

Country of Origin
🇮🇹 Italy

Page Count
27 pages

Category
Quantitative Finance:
Computational Finance