Physics-Informed Neural Networks in Pricing Financial Options

Authors

DOI:

https://doi.org/10.70594/brain/16.2/33

Keywords:

physics-informed neural networks (PINNs), partial differential equations (PDEs), black-scholes model, heston model, option pricing, stochastic models, financial derivatives, numerical methods, machine learning in finance, computational finance

Abstract

PINNs (Physics-Informed Neural Networks) are neural networks designed to solve Partial Differential Equations (PDEs) by integrating physical knowledge into the learning framework. Constructing a PINN involves defining a neural network to approximate the PDE solution, with the total loss calculated as a combination of the losses associated with the PDE, boundary conditions, initial conditions, and measured data. This concept is employed in practical applications to solve various PDEs, such as the Black-Scholes and Heston equations, which are fundamental in financial option pricing. This approach enables the modelling and pricing of financial options, with the added advantage of parallelising the training process across multiple economic scenarios.

Author Biographies

  • Tiberiu Socaciu, Stefan cel Mare University of Suceava, Romania

    Stefan cel Mare University of Suceava, Romania

  • Paul Pașcu, Stefan cel Mare University of Suceava, Romania

    Stefan cel Mare University of Suceava, Romania

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Published

2025-06-01

Issue

Section

Artificial Intelligence