APPROXIMATION OF STOCHASTIC VOLTERRA EQUATIONS WITH KERNELS OF COMPLETELY MONOTONE TYPE

AURÉLIEN ALFONSI, AHMED KEBAIER

Research output: Contribution to journalArticlepeer-review

Abstract

In this work, we develop a multifactor approximation for d-dimensional Stochastic Volterra Equations (SVE) with Lipschitz coefficients and kernels of completely monotone type that may be singular. First, we prove an L2-estimation between two SVEs with different kernels, which provides a quantification of the error between the SVE and any multifactor Stochastic Differential Equation (SDE) approximation. For the particular rough kernel case with Hurst parameter lying in (0, 1/2), we propose various approximating multifactor kernels, state their rates of convergence and illustrate their efficiency for the rough Bergomi model. Second, we study a Euler discretization of the multifactor SDE and establish a convergence result towards the SVE that is uniform with respect to the approximating multifactor kernels. These obtained results lead us to build a new multifactor Euler scheme that reduces significantly the computational cost in an asymptotic way compared to the Euler scheme for SVEs. Finally, we show that our multifactor Euler scheme outperforms the Euler scheme for SVEs for option pricing in the rough Heston model.

Original languageEnglish
Pages (from-to)643-677
Number of pages35
JournalMathematics of Computation
Volume93
Issue number346
DOIs
Publication statusPublished - 1 Mar 2024

Keywords

  • Euler scheme
  • Stochastic Volterra Equation
  • fractional kernel
  • rough volatility models
  • strong error

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