Machine learning methods for American-style path-dependent contracts

Relatore:  Andrea Pallavicini - Intesa San Paolo
  giovedì 17 ottobre 2024 alle ore 12.00

In the present work, we introduce and compare state-of-the-art algorithms, that are now classified under the name of machine learning, to price Asian and look-back products with early-termination features. These include randomized feed-forward neural networks, randomized recurrent neural networks, and a novel method based on signatures of the underlying price process. Additionally, we explore potential applications on callable certificates. Furthermore, we present an innovative approach for calculating sensitivities, specifically Delta and Gamma, leveraging Chebyshev interpolation techniques.


Referente
Alessandro Gnoatto

Referente esterno
Data pubblicazione
26 luglio 2024

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