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Main Authors: Pande, Naman Krishna, Pasricha, Puneet, Kumar, Arun, Gupta, Arvind Kumar
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.10474
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author Pande, Naman Krishna
Pasricha, Puneet
Kumar, Arun
Gupta, Arvind Kumar
author_facet Pande, Naman Krishna
Pasricha, Puneet
Kumar, Arun
Gupta, Arvind Kumar
contents In this article, we employ physics-informed residual learning (PIRL) and propose a pricing method for European options under a regime-switching framework, where closed-form solutions are not available. We demonstrate that the proposed approach serves an efficient alternative to competing pricing techniques for regime-switching models in the literature. Specifically, we demonstrate that PIRLs eliminate the need for retraining and become nearly instantaneous once trained, thus, offering an efficient and flexible tool for pricing options across a broad range of specifications and parameters.
format Preprint
id arxiv_https___arxiv_org_abs_2410_10474
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle European Option Pricing in Regime Switching Framework via Physics-Informed Residual Learning
Pande, Naman Krishna
Pasricha, Puneet
Kumar, Arun
Gupta, Arvind Kumar
Computational Finance
In this article, we employ physics-informed residual learning (PIRL) and propose a pricing method for European options under a regime-switching framework, where closed-form solutions are not available. We demonstrate that the proposed approach serves an efficient alternative to competing pricing techniques for regime-switching models in the literature. Specifically, we demonstrate that PIRLs eliminate the need for retraining and become nearly instantaneous once trained, thus, offering an efficient and flexible tool for pricing options across a broad range of specifications and parameters.
title European Option Pricing in Regime Switching Framework via Physics-Informed Residual Learning
topic Computational Finance
url https://arxiv.org/abs/2410.10474