FuNVol: A Multi-Asset Implied Volatility Market Simulator using
Functional Principal Components and Neural SDEs
- URL: http://arxiv.org/abs/2303.00859v4
- Date: Tue, 26 Dec 2023 18:52:53 GMT
- Title: FuNVol: A Multi-Asset Implied Volatility Market Simulator using
Functional Principal Components and Neural SDEs
- Authors: Vedant Choudhary, Sebastian Jaimungal, Maxime Bergeron
- Abstract summary: We introduce a new approach for generating sequences of implied volatility (IV) surfaces across multiple assets that is faithful to historical prices.
We demonstrate that learning the joint dynamics of IV surfaces and prices produces market scenarios that are consistent with historical features and lie within the sub-manifold of surfaces that are essentially free of static arbitrage.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: We introduce a new approach for generating sequences of implied volatility
(IV) surfaces across multiple assets that is faithful to historical prices. We
do so using a combination of functional data analysis and neural stochastic
differential equations (SDEs) combined with a probability integral transform
penalty to reduce model misspecification. We demonstrate that learning the
joint dynamics of IV surfaces and prices produces market scenarios that are
consistent with historical features and lie within the sub-manifold of surfaces
that are essentially free of static arbitrage. Finally, we demonstrate that
delta hedging using the simulated surfaces generates profit and loss (P&L)
distributions that are consistent with realised P&Ls.
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