Monte Carlo (MC) linear solvers can be considered stochastic realizations of deterministic stationary iterative processes. That is, they estimate the result of a stationary iterative technique for solving linear systems. There are typically two sources of errors: (i) those from the underlying deterministic iterative process and (ii) those from the MC process that performs the estimation. Much progress has been made in reducing the stochastic errors of the MC process. However, MC linear solvers suffer from the drawback that, due to efficiency considerations, they are usually stochastic realizations of the Jacobi method (a diagonal splitting), which has poor convergence properties. This has limited the application of MC linear solvers. The ma...
Quasi-Monte Carlo algorithms are studied for designing discrete ap-proximations of two-stage linear ...
In this paper a stochastic adaptive method has been developed to solve stochastic linear problems by...
In this paper we deal with performance analysis of Monte Carlo algorithm for large linear algebra pr...
Fast, but approximate, solutions to linear algebra problems have many potential applications, such ...
In this paper we consider hybrid (fast stochastic approximation and deterministic refinement) algori...
We consider hybrid deterministic-stochastic iterative algorithms for the solution of large, sparse l...
AbstractA new parallel algorithm for the solution of linear systems, based upon the Monte Carlo appr...
AbstractA Monte Carlo method for solving systems of non-linear equations is presented and discussed....
We review the basic outline of the highly successful diffusion Monte Carlo technique com-monly used ...
We introduce a powerful and flexible MCMC algorithm for stochastic simulation. The method builds on ...
International audienceMonte Carlo methods are a wide range of computational algorithms which depend ...
We present the constrained Monte Carlo (CMC) algorithm for the QCD evolution. The constraint resides...
Nowadays, analysis and design of novel scalable methods and algorithms for fundamental linear algeb...
We describe a new Monte Carlo algorithm for the consistent and unbiased estimation of multidimension...
We propose a splitting Hamiltonian Monte Carlo (SHMC) algorithm, which can be computationally effici...
Quasi-Monte Carlo algorithms are studied for designing discrete ap-proximations of two-stage linear ...
In this paper a stochastic adaptive method has been developed to solve stochastic linear problems by...
In this paper we deal with performance analysis of Monte Carlo algorithm for large linear algebra pr...
Fast, but approximate, solutions to linear algebra problems have many potential applications, such ...
In this paper we consider hybrid (fast stochastic approximation and deterministic refinement) algori...
We consider hybrid deterministic-stochastic iterative algorithms for the solution of large, sparse l...
AbstractA new parallel algorithm for the solution of linear systems, based upon the Monte Carlo appr...
AbstractA Monte Carlo method for solving systems of non-linear equations is presented and discussed....
We review the basic outline of the highly successful diffusion Monte Carlo technique com-monly used ...
We introduce a powerful and flexible MCMC algorithm for stochastic simulation. The method builds on ...
International audienceMonte Carlo methods are a wide range of computational algorithms which depend ...
We present the constrained Monte Carlo (CMC) algorithm for the QCD evolution. The constraint resides...
Nowadays, analysis and design of novel scalable methods and algorithms for fundamental linear algeb...
We describe a new Monte Carlo algorithm for the consistent and unbiased estimation of multidimension...
We propose a splitting Hamiltonian Monte Carlo (SHMC) algorithm, which can be computationally effici...
Quasi-Monte Carlo algorithms are studied for designing discrete ap-proximations of two-stage linear ...
In this paper a stochastic adaptive method has been developed to solve stochastic linear problems by...
In this paper we deal with performance analysis of Monte Carlo algorithm for large linear algebra pr...