Deep learning of optimal exercise boundaries for American options

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Abstract

Efficiently determining a price and optimal exercise boundary for an American option is a critical subject in the financial sector. This study introduces a novel application of long short-term memory neural networks to solve a relevant Volterra equation, enhancing the accuracy and efficiency of American option pricing. The proposed approach outperforms traditional numerical techniques, including finite difference methods, binomial trees, and Monte Carlo methods, delivering an impressive speed improvement by a factor of thousands while maintaining industry-accepted accuracy levels. It exhibits computational speeds up to about a hundred times faster than the state-of-the-art method used by Andersen et al. [High-performance American option pricing, J. Comput. Finance 20(1) (2016), pp. 39–87] when evaluating numerous options. The proposed network, trained on a reasonable range of parameters related to the Black–Scholes model, swiftly determines option prices and exercise boundaries, serving as a practical closed-form solution.

Original languageEnglish
Pages (from-to)595-622
Number of pages28
JournalInternational Journal of Computer Mathematics
Volume102
Issue number4
DOIs
StatePublished - 2025

Keywords

  • American option
  • deep learning
  • online learning
  • optimal exercise boundary
  • Volterra integral equation

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