Applied Neural Network Methods for Option Pricing

Název práce: Applied Neural Network Methods for Option Pricing
Autor(ka) práce: Boiko, Andre
Typ práce: Diploma thesis
Vedoucí práce: Čabla, Adam
Oponenti práce: Danko, Jakub
Jazyk práce: English
Abstrakt:
This thesis investigates whether neural networks can be used for option pricing while still respecting basic financial rules. It compares four models: two feed-forward neural networks and two physics-informed neural networks using synthetic option prices generated with the Heston model and the COS method. The models are evaluated not only by pricing accuracy, but also by no-arbitrage checks such as price bounds, monotonicity, convexity, maturity consistency, and put-call parity. The results show that the call-only FFNN gives the most accurate prices, while the hard-bounds PINN successfully removes price-bound violations. At the same time, convexity violations remain a challenge, indicating that accurate predictions do not automatically lead to financially consistent option surfaces.
Klíčová slova: option pricing; feed-forward neural networks; COS method; physics-informed neural networks; no-arbitrage; Heston model
Název práce: Applied Neural Network Methods for Option Pricing
Autor(ka) práce: Boiko, Andre
Typ práce: Diplomová práce
Vedoucí práce: Čabla, Adam
Oponenti práce: Danko, Jakub
Jazyk práce: English
Abstrakt:
This thesis investigates whether neural networks can be used for option pricing while still respecting basic financial rules. It compares four models: two feed-forward neural networks and two physics-informed neural networks using synthetic option prices generated with the Heston model and the COS method. The models are evaluated not only by pricing accuracy, but also by no-arbitrage checks such as price bounds, monotonicity, convexity, maturity consistency, and put-call parity. The results show that the call-only FFNN gives the most accurate prices, while the hard-bounds PINN successfully removes price-bound violations. At the same time, convexity violations remain a challenge, indicating that accurate predictions do not automatically lead to financially consistent option surfaces.
Klíčová slova: Heston model; no-arbitrage; option pricing; physics-informed neural networks; eed-forward neural networks; COS method

Informace o studiu

Studijní program / obor: Economic Data Analysis/Data Analysis and Modeling
Typ studijního programu: Magisterský studijní program
Přidělovaná hodnost: Ing.
Instituce přidělující hodnost: Vysoká škola ekonomická v Praze
Fakulta: Fakulta informatiky a statistiky
Katedra: Katedra statistiky a pravděpodobnosti

Informace o odevzdání a obhajobě

Datum zadání práce: 27. 10. 2025
Datum podání práce: 21. 6. 2026
Datum obhajoby: 2026

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