Hainaut, Donatien
[UCL]
This article introduces a novel method based on Gaussian process regression for pricing American options. The variational partial differential equation (PDE) governing option prices is converted into a non-linear penalized Feynman-Kac equation (PFK). We propose an iterative algorithm to manage the non-linearity of the PFK operator. We sample state variables in the PDE’s inner domain and on the terminal boundary. At each step, we fit a constrained regression function approximating the option price. This function matches the option payoffs on the boundary sample while satisfying the PFK PDE on the inner sample. The non-linear term in this PDE is frozen and valued with the price estimate from the previous iteration. We adopt a Bayesian framework in which payoffs and the value of the FK PDE in the boundary and inner samples are noised. Assuming the regression function is a Gaussian process, we find a closed-form approximation of option prices. In the numerical illustration, we evaluate American put options in the Heston model and in the two-factor Hull-White model.


Bibliographic reference |
Hainaut, Donatien. American option pricing with model constrained Gaussian process regressions. LIDAM Discussion Paper ISBA ; 2024/23 (2024) 23 pages |
Permanent URL |
http://hdl.handle.net/2078.1/292665 |