Lower Error Bounds for Strong Approximation of Scalar SDEs with non-Lipschitzian Coefficients
We study pathwise approximation of scalar stochastic differential equations at a single time point or globally in time by means of methods that are based on finitely many observations of the driving Brownian motion. We prove lower error bounds in terms of the average number of evaluations of the dri...
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Main Authors | , , |
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Format | Journal Article |
Language | English |
Published |
24.10.2017
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Subjects | |
Online Access | Get full text |
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Summary: | We study pathwise approximation of scalar stochastic differential equations
at a single time point or globally in time by means of methods that are based
on finitely many observations of the driving Brownian motion. We prove lower
error bounds in terms of the average number of evaluations of the driving
Brownian motion that hold for every such method under rather mild assumptions
on the coefficients of the equation. The underlying simple idea of our analysis
is as follows: the lower error bounds known for equations with coefficients
that have sufficient regularity globally in space should still apply in the
case of coefficients that have this regularity in space only locally, in a
small neighborhood of the initial value. Our results apply to a huge variety of
equations with coefficients that are not globally Lipschitz continuous in space
including Cox-Ingersoll-Ross processes, equations with superlinearly growing
coefficients, and equations with discontinuous coefficients. In many of these
cases the resulting lower error bounds even turn out to be sharp. |
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DOI: | 10.48550/arxiv.1710.08707 |