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Computing XVA for American basket derivatives by Machine Learning techniques

Author

Listed:
  • Ludovic Goudenège

    (Fédération de Mathématiques de CentraleSupélec - CentraleSupélec - Université Paris-Saclay - CNRS - Centre National de la Recherche Scientifique)

  • Andrea Molent

    (Università degli Studi di Udine - University of Udine [Italie])

  • Antonino Zanette

    (Università degli Studi di Udine - University of Udine [Italie])

Abstract

Total value adjustment (XVA) is the change in value to be added to the price of a derivative to account for the bilateral default risk and the funding costs. In this paper, we compute such a premium for American basket derivatives whose payoff depends on multiple underlyings. In particular, in our model, those underlying are supposed to follow the multidimensional Black-Scholes stochastic model. In order to determine the XVA, we follow the approach introduced by Burgard and Kjaer \cite{burgard2010pde} and afterward applied by Arregui et al. \cite{arregui2017pde,arregui2019monte} for the one-dimensional American derivatives. The evaluation of the XVA for basket derivatives is particularly challenging as the presence of several underlings leads to a high-dimensional control problem. We tackle such an obstacle by resorting to Gaussian Process Regression, a machine learning technique that allows one to address the curse of dimensionality effectively. Moreover, the use of numerical techniques, such as control variates, turns out to be a powerful tool to improve the accuracy of the proposed methods. The paper includes the results of several numerical experiments that confirm the goodness of the proposed methodologies.

Suggested Citation

  • Ludovic Goudenège & Andrea Molent & Antonino Zanette, 2022. "Computing XVA for American basket derivatives by Machine Learning techniques," Working Papers hal-04308564, HAL.
  • Handle: RePEc:hal:wpaper:hal-04308564
    DOI: 10.48550/arXiv.2209.06485
    Note: View the original document on HAL open archive server: https://hal.science/hal-04308564
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