English

Pathwise CVA Regressions With Oversimulated Defaults

Computational Finance 2022-12-01 v1

Abstract

We consider the computation by simulation and neural net regression of conditional expectations, or more general elicitable statistics, of functionals of processes (X,Y)(X, Y ). Here an exogenous component YY (Markov by itself) is time-consuming to simulate, while the endogenous component XX (jointly Markov with YY) is quick to simulate given YY, but is responsible for most of the variance of the simulated payoff. To address the related variance issue, we introduce a conditionally independent, hierarchical simulation scheme, where several paths of XX are simulated for each simulated path of YY. We analyze the statistical convergence of the regression learning scheme based on such block-dependent data. We derive heuristics on the number of paths of YY and, for each of them, of XX, that should be simulated. The resulting algorithm is implemented on a graphics processing unit (GPU) combining Python/CUDA and learning with PyTorch. A CVA case study with a nested Monte Carlo benchmark shows that the hierarchical simulation technique is key to the success of the learning approach.

Keywords

Cite

@article{arxiv.2211.17005,
  title  = {Pathwise CVA Regressions With Oversimulated Defaults},
  author = {Lokman Abbas-Turki and Stéphane Crépey and Bouazza Saadeddine},
  journal= {arXiv preprint arXiv:2211.17005},
  year   = {2022}
}

Comments

This article has been accepted for publication in Mathematical Finance, published by Wiley

R2 v1 2026-06-28T07:18:09.856Z