Sharp lower error bounds for strong approximation of SDEs with piecewise Lipschitz continuous drift coefficient
Abstract
We study pathwise approximation of strong solutions of scalar stochastic differential equations (SDEs) at a single time in the presence of discontinuities of the drift coefficient. Recently, it has been shown by M\"uller-Gronbach and Yaroslavtseva (2022) that for all p ∈ [1, ∞) a transformed Milstein-type scheme reaches an Lp-error rate of at least 3 / 4 when the drift coefficient is a piecewise Lipschitz-continuous function with a piecewise Lipschitz-continuous derivative and the diffusion coefficient is constant. It has been proven by M\"uller-Gronbach and Yaroslavtseva (2023) that this rate 3 / 4 is optimal if one additionally assumes that the drift coefficient is bounded, increasing and has a point of discontinuity. While boundedness and monotonicity of the drift coefficient are crucial for the proof of the matching lower bound of M\"uller-Gronbach and Yaroslavtseva (2023), we show that both conditions can be dropped. For the proof we apply a transformation technique which was so far only used to obtain upper bounds.
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