Variance reduction for discretised diffusions via regression
Abstract: In this paper we present a novel approach towards variance reduction for discretised diffusion processes. The proposed approach involves specially constructed control variates and allows for a significant reduction in the variance for the terminal functionals. In this way the complexity order of the standard Monte Carlo algorithm ($\varepsilon{-3}$ in the case of a first order scheme and $\varepsilon{-2.5}$ in the case of a second order scheme) can be reduced down to $\varepsilon{-2+\delta}$ for any $\delta\in [0,0.25)$ with $\varepsilon$ being the precision to be achieved. These theoretical results are illustrated by several numerical examples.
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