Author
Giles, M
Journal title
Acta Numerica
DOI
10.1017/S096249291500001X
Volume
24
Last updated
2024-04-20T22:00:18.427+01:00
Page
259-328
Abstract
Monte Carlo methods are a very general and useful approach for the estimation of expectations arising from stochastic simulation. However, they can be computationally expensive, particularly when the cost of generating individual stochastic samples is very high, as in the case of stochastic PDEs. Multilevel Monte Carlo is a recently developed approach which greatly reduces the computational cost by performing most simulations with low accuracy at a correspondingly low cost, with relatively few simulations being performed at high accuracy and a high cost. In this article, we review the ideas behind the multilevel Monte Carlo method, and various recent generalizations and extensions, and discuss a number of applications which illustrate the flexibility and generality of the approach and the challenges in developing more efficient implementations with a faster rate of convergence of the multilevel correction variance.
Symplectic ID
509860
Favourite
On
Publication type
Journal Article
Publication date
27 Apr 2015
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