Multilevel Monte Carlo finite element methods (MLMC-FEMs) for the solution of stochastic elliptic variational inequalities are introduced, analyzed, and numerically investigated. Under suitable assumptions on the random diffusion coefficient, the random forcing function, and the deterministic obstacle, we prove existence and uniqueness of solutions of “pathwise” weak formulations. Suitable regularity results for deterministic, elliptic obstacle problems lead to uniform pathwise error bounds, providing optimal-order error estimates of the statistical error and upper bounds for the corresponding computational cost for the classical MC method and novel MLMC-FEMs. Utilizing suitable multigrid solvers for the occurring sample problems, in two sp...
Abstract We consider the numerical solution of elliptic par-tial differential equations with random ...
The efficient numerical simulation of models described by partial differential equations (PDEs) is a...
We study the approximation of expectations E(f(X)) for solutions X of SDEs and functionals f : C([0,...
Multi-Level Monte-Carlo Finite Element (MLMC--FE) methods for the solution of stochastic elliptic va...
Multilevel Monte Carlo finite element methods (MLMC-FEMs) for the solution of stochastic elliptic va...
In this paper Monte Carlo finite element approximations for elliptic homogenization problems with ra...
Abstract. In this paper Monte Carlo Finite Element (MC FE) approximations for elliptic homogenizatio...
In this paper Monte Carlo Finite Element (MC FE) approximations for elliptic homogenization problems...
In Monte Carlo methods quadrupling the sample size halves the error. In simulations of stochastic pa...
We consider the application of multilevel Monte Carlo methods to elliptic PDEs with ran-dom coeffici...
We consider the numerical solution of elliptic partial differential equations with random coefficien...
While multilevel Monte Carlo (MLMC) methods for the numerical approximation of partial differential ...
This paper is a sequel to our previous work $({Kuo, Schwab, Sloan, SIAM J.\ Numer.\ Anal., 2013})$ w...
We consider two-scale elliptic equations whose coefficients are random. In particular, we study two ...
We analyze the convergence and complexity of multi-level Monte Carlo (MLMC) discretizations of a cla...
Abstract We consider the numerical solution of elliptic par-tial differential equations with random ...
The efficient numerical simulation of models described by partial differential equations (PDEs) is a...
We study the approximation of expectations E(f(X)) for solutions X of SDEs and functionals f : C([0,...
Multi-Level Monte-Carlo Finite Element (MLMC--FE) methods for the solution of stochastic elliptic va...
Multilevel Monte Carlo finite element methods (MLMC-FEMs) for the solution of stochastic elliptic va...
In this paper Monte Carlo finite element approximations for elliptic homogenization problems with ra...
Abstract. In this paper Monte Carlo Finite Element (MC FE) approximations for elliptic homogenizatio...
In this paper Monte Carlo Finite Element (MC FE) approximations for elliptic homogenization problems...
In Monte Carlo methods quadrupling the sample size halves the error. In simulations of stochastic pa...
We consider the application of multilevel Monte Carlo methods to elliptic PDEs with ran-dom coeffici...
We consider the numerical solution of elliptic partial differential equations with random coefficien...
While multilevel Monte Carlo (MLMC) methods for the numerical approximation of partial differential ...
This paper is a sequel to our previous work $({Kuo, Schwab, Sloan, SIAM J.\ Numer.\ Anal., 2013})$ w...
We consider two-scale elliptic equations whose coefficients are random. In particular, we study two ...
We analyze the convergence and complexity of multi-level Monte Carlo (MLMC) discretizations of a cla...
Abstract We consider the numerical solution of elliptic par-tial differential equations with random ...
The efficient numerical simulation of models described by partial differential equations (PDEs) is a...
We study the approximation of expectations E(f(X)) for solutions X of SDEs and functionals f : C([0,...