Approximation of SDEs: a stochastic sewing approach

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Date
2021
Volume
181
Issue
4
Journal
Probability theory and related fields
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Publisher
Berlin ; Heidelberg ; New York, NY : Springer
Abstract

We give a new take on the error analysis of approximations of stochastic differential equations (SDEs), utilizing and developing the stochastic sewing lemma of Lê (Electron J Probab 25:55, 2020. 10.1214/20-EJP442). This approach allows one to exploit regularization by noise effects in obtaining convergence rates. In our first application we show convergence (to our knowledge for the first time) of the Euler-Maruyama scheme for SDEs driven by fractional Brownian motions with non-regular drift. When the Hurst parameter is H∈(0,1) and the drift is Cα , α∈[0,1] and α>1-1/(2H) , we show the strong Lp and almost sure rates of convergence to be ((1/2+αH)∧1)-ε , for any ε>0 . Our conditions on the regularity of the drift are optimal in the sense that they coincide with the conditions needed for the strong uniqueness of solutions from Catellier and Gubinelli (Stoch Process Appl 126(8):2323-2366, 2016. 10.1016/j.spa.2016.02.002). In a second application we consider the approximation of SDEs driven by multiplicative standard Brownian noise where we derive the almost optimal rate of convergence 1/2-ε of the Euler-Maruyama scheme for Cα drift, for any ε,α>0 .

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Butkovsky, O., Dareiotis, K., & Gerencsér, M. (2021). Approximation of SDEs: a stochastic sewing approach (Berlin ; Heidelberg ; New York, NY : Springer). Berlin ; Heidelberg ; New York, NY : Springer. https://doi.org//10.1007/s00440-021-01080-2
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CC BY 4.0 Unported