In this paper we consider hybrid (fast stochastic approximation and deterministic refinement) algorithms for Matrix Inversion (MI) and Solving Systems of Linear Equations (SLAE). Monte Carlo meth-ods are used for the stochastic approximation, since it is known that they are very efficient in finding a quick rough approximation of the element or a row of the inverse matrix or finding a component of the solution vector. We show how the stochastic approximation of the MI can be combined with a deterministic refinement procedure to ob-tain MI with the required precision and further solve the SLAE using MI. We employ a splitting A = D − C of a given non-singular ma-trix A, where D is a diagonal dominant matrix and matrix C is a diagonal matrix. ...
AbstractIn this paper we present a stochastic SPAI pre-conditioner. In contrast to the standard dete...
... matrix A. It is often of interest to find a low-rank approximation to A, i.e., an approximation ...
In this paper we deal with performance analysis of Monte Carlo algorithm for large linear algebra pr...
In this paper we consider hybrid (fast stochastic approximation and deterministic refinement) algori...
In this paper we introduce a new algorithm, based on the successful work of Fathi and Alexandrov, on...
Forsythe and Leibler presented the first research, in 1950, showing how a matrix could be inverted u...
Many scientific and engineering applications involve inverting large matrices or solving systems of ...
Monte Carlo (MC) linear solvers can be considered stochastic realizations of deterministic stationar...
Fast, but approximate, solutions to linear algebra problems have many potential applications, such ...
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...
AbstractAn enhanced version of a stochastic SParse Approximate Inverse (SPAI) preconditioner for gen...
International audienceWe present the first accelerated randomized algorithm for solving linear syste...
Motivated by applications in which the data may be formulated as a matrix, we consider algorithms fo...
We review the basic outline of the highly successful diffusion Monte Carlo technique com-monly used ...
AbstractIn this paper we present a stochastic SPAI pre-conditioner. In contrast to the standard dete...
... matrix A. It is often of interest to find a low-rank approximation to A, i.e., an approximation ...
In this paper we deal with performance analysis of Monte Carlo algorithm for large linear algebra pr...
In this paper we consider hybrid (fast stochastic approximation and deterministic refinement) algori...
In this paper we introduce a new algorithm, based on the successful work of Fathi and Alexandrov, on...
Forsythe and Leibler presented the first research, in 1950, showing how a matrix could be inverted u...
Many scientific and engineering applications involve inverting large matrices or solving systems of ...
Monte Carlo (MC) linear solvers can be considered stochastic realizations of deterministic stationar...
Fast, but approximate, solutions to linear algebra problems have many potential applications, such ...
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...
AbstractAn enhanced version of a stochastic SParse Approximate Inverse (SPAI) preconditioner for gen...
International audienceWe present the first accelerated randomized algorithm for solving linear syste...
Motivated by applications in which the data may be formulated as a matrix, we consider algorithms fo...
We review the basic outline of the highly successful diffusion Monte Carlo technique com-monly used ...
AbstractIn this paper we present a stochastic SPAI pre-conditioner. In contrast to the standard dete...
... matrix A. It is often of interest to find a low-rank approximation to A, i.e., an approximation ...
In this paper we deal with performance analysis of Monte Carlo algorithm for large linear algebra pr...