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Convergence in total variation of the Euler-Maruyama scheme applied to diffusion processes with measurable drift coefficient and additive noise

Abstract

37 pages, 6 figuresInternational audienceWe are interested in the Euler-Maruyama discretization of a stochastic differential equation in dimension dd with constant diffusion coefficient and bounded measurable drift coefficient. In the scheme, a randomization of the time variable is used to get rid of any regularity assumption of the drift in this variable. We prove weak convergence with order 1/21/2 in total variation distance. When the drift has a spatial divergence in the sense of distributions with ρ\rho-th power integrable with respect to the Lebesgue measure in space uniformly in time for some ρd\rho \ge d, the order of convergence at the terminal time improves to 11 up to some logarithmic factor. In dimension d=1d=1, this result is preserved when the spatial derivative of the drift is a measure in space with total mass bounded uniformly in time. We confirm our theoretical analysis by numerical experiments

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HAL - UPEC / UPEM

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Last time updated on 26/11/2020

This paper was published in HAL - UPEC / UPEM.

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