Abstract
We study the problem of reducing the variance of Monte Carlo estimators through performing suitable changes of the sampling measure computed by feedforward neural networks. To this end, building on the concept of vector stochastic integration, we characterise the Cameron–Martin spaces of a large class of Gaussian measures induced by vector-valued continuous local martingales with deterministic covariation. We prove that feedforward neural networks enjoy, up to an isometry, the universal approximation property in these topological spaces. We then prove that sampling measures generated by feedforward neural networks can approximate the optimal sampling measure arbitrarily well. We conclude with a comprehensive numerical study pricing path-dependent European options for asset price models that incorporate factors such as changing business activity, knock-out barriers, dynamic correlations and high-dimensional baskets.
Original language | English |
---|---|
Pages (from-to) | 97-141 |
Number of pages | 45 |
Journal | Finance and Stochastics |
Volume | 29 |
Issue number | 1 |
Early online date | 11 Nov 2024 |
DOIs | |
Publication status | Published - Jan 2025 |
Bibliographical note
© The Author(s) 2024. Version archived for private and non-commercial use with the permission of the author/s and according to publisher conditions. For further rights please contact the publisher.Keywords
- Cameron–Martin space
- Doléans–Dade exponential
- Feedforward neural networks
- Importance sampling
- Universal approximation