Deep learning approach to American option pricing
Publish place: 5th International Conference on Software Computing
Publish Year: 1402
Type: Conference paper
Language: English
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CSCG05_085
Index date: 28 April 2024
Deep learning approach to American option pricing abstract
This study focuses on pricing the American put option by applying a deep learning-based algorithm under the double Heston model. The double Heston model is a multi-factor stochastic volatility model that offers more flexibility in modeling the volatility term structure and better empirical fit to option prices compared to one-factor models. The option price derivation under this model leads to a linear complementarity problem. To solve this problem, we utilize the deep Galerkin method (DGM), which is a method based on deep learning. Our numerical results show the efficiency and accuracy of the algorithm as evidenced by comparing it with the antithetic variable Least-square Monte Carlo (AV-LSM) method.
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Deep learning approach to American option pricing authors
Mahsa Motameni
Department of Applied Mathematics, Faculty of Mathematical Sciences University of Guilan, P.O. Box: ۴۱۹۳۸-۱۹۱۴, Rasht, Iran
Farshid Mehrdoust
Department of Applied Mathematics, Faculty of Mathematical Sciences University of Guilan, P.O. Box: ۴۱۹۳۸-۱۹۱۴, Rasht, Iran