ArXiv TLDR

A Geometry-Aware Residual Correction of Hagan's SABR Implied Volatility Formula

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2605.06604

Adil Reghai, Lama Tarsissi, Gérard Biau, Alex Lipton

q-fin.CPstat.ML

TLDR

This paper proposes a geometry-aware neural network to correct Hagan's SABR implied volatility formula, improving accuracy and robustness.

Key contributions

  • Proposes a hybrid method combining analytical SABR structure with machine learning for implied volatility.
  • NN learns residual error of Hagan's formula using geometry-aware input features from SABR SDEs.
  • Significantly improves accuracy and robustness compared to both analytical and standard NN approaches.
  • Retains interpretability and is lightweight, suitable for real-time pricing and calibration.

Why it matters

This paper addresses a critical need for accurate, robust implied volatility in finance. It combines machine learning with analytical models, offering a practical solution that enhances performance without sacrificing interpretability. This makes it ideal for real-time trading and risk management.

Original Abstract

This paper proposes a hybrid methodology to improve the approximation of SABR (Stochastic Alpha Beta Rho) implied volatility by combining analytical structure with machine learning. The approach augments the neural-network input representation with geometric features derived from the stochastic differential equations of the SABR model. Unlike approaches that fully replace analytical formulas with black-box models, the proposed framework preserves the analytical backbone of the model. The hybridization operates along two complementary dimensions. First, geometry-aware variables reflecting intrinsic properties of the SABR dynamics are used as structured inputs to the network. Second, the neural network is trained to learn the residual error relative to Hagan's closed-form approximation rather than implied volatility directly. The resulting model acts as a structured residual correction to the analytical formula, retaining interpretability while capturing higher-order effects that are not included in the asymptotic expansion. Numerical experiments conducted over realistic parameter domains, as well as stressed environments, show that the method improves accuracy and robustness compared with both analytical approximations and standard neural-network approaches. Because the correction remains lightweight and structurally consistent with the underlying model, the framework is well suited for real-time pricing and calibration in practical trading environments.

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