An Efficient Machine Learning Framework for Option Pricing via Fourier Transform
By: Liying Zhang, Ying Gao
The increasing need for rapid recalibration of option pricing models in dynamic markets places stringent computational demands on data generation and valuation algorithms. In this work, we propose a hybrid algorithmic framework that integrates the smooth offset algorithm (SOA) with supervised machine learning models for the fast pricing of multiple path-independent options under exponential Lévy dynamics. Building upon the SOA-generated dataset, we train neural networks, random forests, and gradient boosted decision trees to construct surrogate pricing operators. Extensive numerical experiments demonstrate that, once trained, these surrogates achieve order-of-magnitude acceleration over direct SOA evaluation. Importantly, the proposed framework overcomes key numerical limitations inherent to fast Fourier transform-based methods, including the consistency of input data and the instability in deep out-of-the-money option pricing.
Similar Papers
Quantum Machine Learning methods for Fourier-based distribution estimation with application in option pricing
Quantum Physics
Helps computers price financial bets faster.
Can Machine Learning Algorithms Outperform Traditional Models for Option Pricing?
Computational Finance
Makes stock price guesses more accurate.
Binary Tree Option Pricing Under Market Microstructure Effects: A Random Forest Approach
Computational Finance
Makes stock prices more accurate for trading.