An efficient physics-informed neural network solution to the time-space fractional black-scholes equation

dc.contributor.authorTarla, Divine T.
dc.contributor.authorPatidar, Kailash C
dc.contributor.authorNuugulu, Samuel M.
dc.date.accessioned2026-03-18T07:52:07Z
dc.date.available2026-03-18T07:52:07Z
dc.date.issued2025
dc.description.abstractThis study develops a rigorous analytical and computational framework for solving the time-space-fractional Black–Scholes equation (ts-fBSE), a generalization of the classical Black–Scholes model that captures nonlocal temporal memory and spatial anomalous diffusion in financial markets. Starting from fractional stochastic dynamics driven by Gaussian white noise, we derive the ts-fBSE using generalized Itô–Lévy calculus and establish its well-posedness under appropriate initial and boundary conditions. We demonstrate that the conventional transformation y=lnS+a does not, in general, reduce the spatial operator to integer order and provide an alternative transformation that yields a constant-coefficient time-fractional BSPDE. The equation is solved using a physics-informed neural network (PINN) incorporating the Grünwald–Letnikov fractional derivative through a stable matrix formulation, eliminating mesh discretization and stability constraints typical of finite-difference methods. The PINN loss functional enforces the operator residual in L2(Ω) augmented by boundary and terminal penalties, trained with a piecewise-constant decay learning rate and a stopping tolerance of 10-4. Numerical experiments for European put options validate the accuracy and stability of the method, showing decreasing mean absolute error as the fractional order α→1. The results confirm that the proposed PINN framework provides a mathematically consistent and computationally robust alternative for solving fractional–stochastic PDEs in quantitative finance, complementing recent developments such as fPINNs and XPINNs.
dc.identifier.citationNuugulu, S.M., Patidar, K.C. and Tarla, D.T., 2025, December. An Efficient Physics-Informed Neural Network Solution to the Time-Space Fractional Black-Scholes Equation. In Operations Research Forum (Vol. 6, No. 4, p. 172). Cham: Springer International Publishing.
dc.identifier.urihttps://doi.org/10.1007/s43069-025-00570-6
dc.identifier.urihttps://hdl.handle.net/10566/22026
dc.language.isoen
dc.publisherSpringer International Publishing
dc.relation.ispartofseriesN/A; N/A
dc.subjectConvergence analysis for PINNs
dc.subjectError analysis
dc.subjectMachine learning in finance
dc.subjectOption pricing
dc.titleAn efficient physics-informed neural network solution to the time-space fractional black-scholes equation
dc.typeArticle

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