A differential neural network learns stochastic differential equations and the Black-Scholes equation for pricing multi-asset options
Sang-Mun Chi

TL;DR
This paper introduces a differential neural network approach that leverages neural network derivatives to accurately learn and solve stochastic differential equations and the Black-Scholes PDE for multi-asset option pricing.
Contribution
It proposes a novel neural network method that incorporates derivatives to effectively learn stochastic differential equations and the Black-Scholes equation for financial option pricing.
Findings
Accurately predicts option prices and Greeks.
Effective for multi-asset options like exchange and basket options.
Smooth activation functions and PDE constraints improve accuracy.
Abstract
Neural networks with sufficiently smooth activation functions can approximate values and derivatives of any smooth function, and they are differentiable themselves. We improve the approximation capability of neural networks by utilizing the differentiability of neural networks; the gradient and Hessian of neural networks are used to train the neural networks to satisfy the differential equations of the problems of interest. Several activation functions are also compared in term of effective differentiation of neural networks. We apply the differential neural networks to the pricing of financial options, where stochastic differential equations and the Black-Scholes partial differential equation represent the relation of price of option and underlying assets, and the first and second derivatives, Greeks, of option play important roles in financial engineering. The proposed neural network…
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Taxonomy
TopicsStochastic processes and financial applications · Stock Market Forecasting Methods · Model Reduction and Neural Networks
