English

Fast Sampling from Time-Integrated Bridges using Deep Learning

Computational Finance 2021-11-30 v1

Abstract

We propose a methodology to sample from time-integrated stochastic bridges, namely random variables defined as t1t2f(Y(t))dt\int_{t_1}^{t_2} f(Y(t))dt conditioned on Y(t1) ⁣= ⁣aY(t_1)\!=\!a and Y(t2) ⁣= ⁣bY(t_2)\!=\!b, with a,bRa,b\in R. The Stochastic Collocation Monte Carlo sampler and the Seven-League scheme are applied for this purpose. Notably, the distribution of the time-integrated bridge is approximated utilizing a polynomial chaos expansion built on a suitable set of stochastic collocation points. Furthermore, artificial neural networks are employed to learn the collocation points. The result is a robust, data-driven procedure for the Monte Carlo sampling from conditional time-integrated processes, which guarantees high accuracy and generates thousands of samples in milliseconds. Applications, with a focus on finance, are presented here as well.

Keywords

Cite

@article{arxiv.2111.13901,
  title  = {Fast Sampling from Time-Integrated Bridges using Deep Learning},
  author = {Leonardo Perotti and Lech A. Grzelak},
  journal= {arXiv preprint arXiv:2111.13901},
  year   = {2021}
}