CVA Sensitivities, Hedging and Risk
2024-07-26Code Available0· sign in to hype
Stéphane Crépey, Botao Li, Hoang Nguyen, Bouazza Saadeddine
Code Available — Be the first to reproduce this paper.
ReproduceCode
- github.com/bouazzase/neuralxvapytorch★ 9
Abstract
We present a unified framework for computing CVA sensitivities, hedging the CVA, and assessing CVA risk, using probabilistic machine learning meant as refined regression tools on simulated data, validatable by low-cost companion Monte Carlo procedures. Various notions of sensitivities are introduced and benchmarked numerically. We identify the sensitivities representing the best practical trade-offs in downstream tasks including CVA hedging and risk assessment.