Abstract
The multi-level Monte Carlo method proposed by Giles (2008) approximates the expectation of some functionals applied to a stochastic process with optimal order of convergence for the mean-square error. In this paper a modified multi-level Monte Carlo estimator is proposed with significantly reduced computational costs. As the main result, it is proved that the modified estimator reduces the computational costs asymptotically by a factor ( p / α) 2 if weak approximation methods of orders α and p are applied in the case of computational costs growing with the same order as the variances decay.
Citation
Kristian Debrabant. Andreas Rössler. "On the acceleration of the multi-level Monte Carlo method." J. Appl. Probab. 52 (2) 307 - 322, June 2015. https://doi.org/10.1239/jap/1437658600
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