Deep Learning of Transition Probability Densities for Stochastic Asset Models with Applications in Option Pricing

Haozhe Su, M. V. Tretyakov, David P. Newton

Research output: Contribution to journalArticlepeer-review

Abstract

Transition probability density functions (TPDFs) are fundamental to computational finance, including option pricing and hedging. Advancing recent work in deep learning, we develop novel neural TPDF generators through solving backward Kolmogorov equations in parametric space for cumulative probability functions. The generators are ultra-fast, very accurate and can be trained for any asset model described by stochastic differential equations. These are “single solve”, so they do not require retraining when parameters of the stochastic model are changed (e.g. recalibration of volatility). Once trained, the neural TDPF generators can be transferred to less powerful computers where they can be used for e.g. option pricing at speeds as fast as if the TPDF were known in a closed form. We illustrate the computational efficiency of the proposed neural approximations of TPDFs by inserting them into numerical option pricing methods. We demonstrate a wide range of applications including the Black-Scholes-Mertonmodel, the standard Heston model, the SABR model, and jump-diffusion models. These numerical experiments confirm the ultra-fast speed and high accuracy of the developed neural TPDF generators.
Original languageEnglish
JournalManagement Science
Early online date27 Jun 2024
DOIs
Publication statusE-pub ahead of print - 27 Jun 2024

Acknowledgements

The authors thank department editor Kay Giesecke, the associate editor, and three anonymous referees for valuable comments and suggestions and Gustavo Schwenkler for providing the original code of their method, which has significantly enhanced our comprehension of the literature.

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