Abstract
We propose a new, data-driven approach for efficient pricing of - fixed- and floating-strike - discrete arithmetic Asian and Lookback options when the underlying process is driven by the Heston model dynamics. The method proposed in this article constitutes an extension of Perotti and Grzelak [Fast sampling from time-integrated bridges using deep learning, J. Comput. Math. Data Sci. 5 (2022)], where the problem of sampling from time-integrated stochastic bridges was addressed. The model relies on the Seven-League scheme [S. Liu et al. The seven-league scheme: Deep learning for large time step Monte Carlo simulations of stochastic differential equations, Risks 10 (2022), p. 47], where artificial neural networks are employed to 'learn' the distribution of the random variable of interest utilizing stochastic collocation points [L.A. Grzelak et al. The stochastic collocation Monte Carlo sampler: Highly efficient sampling from expensive distributions, Quant. Finance 19 (2019), pp. 339-356]. The method results in a robust procedure for Monte Carlo pricing. Furthermore, semi-analytic formulae for option pricing are provided in a simplified, yet general, framework. The model guarantees high accuracy and a reduction of the computational time up to thousands of times compared to classical Monte Carlo pricing schemes.
Original language | English |
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Pages (from-to) | 889-918 |
Number of pages | 30 |
Journal | International Journal of Computer Mathematics |
Volume | 101 |
Issue number | 8 |
Early online date | 26 Jun 2024 |
DOIs | |
Publication status | Published - Sept 2024 |
Bibliographical note
Publisher Copyright:© 2024 The Author(s). Published by Informa UK Limited, trading as Taylor & Francis Group.
Keywords
- Discrete arithmetic Asian option
- Heston model
- artificial neural network (ANN)
- discrete Lookback option
- seven-league scheme (7L)
- stochastic collocation (SC)