AbstractWe combine our novel SVD-free additive preconditioning with aggregation and other relevant techniques to facilitate the solution of a linear system of equations and other fundamental matrix computations. Our analysis and experiments show the power of our algorithms, guide us in selecting most effective policies of preconditioning and aggregation, and provide some new insights into these and related subjects. Compared to the popular SVD-based multiplicative preconditioners, our additive preconditioners are generated more readily and for a much larger class of matrices. Furthermore, they better preserve matrix structure and sparseness and have a wider range of applications (e.g., they facilitate the solution of a consistent singular l...
Nowadays, analysis and design of novel scalable methods and algorithms for fundamental linear algeb...
The objective of this paper is to present a brief review of a number of techniques for matrix precon...
University of Minnesota Ph.D. dissertation. December 2011. Major: Scientific Computation. Advisor: ...
AbstractWe combine our novel SVD-free additive preconditioning with aggregation and other relevant t...
Multiplicative preconditioning is a popular SVD-based techniques for the solution of linear systems ...
AbstractOur randomized additive preconditioners are readily available and regularly facilitate the s...
Our weakly random additive preconditioners facilitate the solution of linear systems of equa-tions a...
Preconditioning is a classical subject of numerical solution of linear systems of equations. The goa...
AbstractThe theory and the practice of optimal preconditioning in solving a linear system by iterati...
In this chapter, we give a brief overview of a particular class of preconditioners known as incomple...
Effective preconditioners are known for some important but special classes of matrices. In contrast ...
Standard preconditioners, like incomplete factorizations, perform well when the coefficient matrix i...
. We introduce some cheaper and faster variants of the classical additive Schwarz preconditioner (AS...
A popular class of preconditioners is known as incomplete factorizations. They can be thought of as ...
University of Minnesota Ph.D. dissertation. June 2015. Major: Computer Science. Advisor: Yousef Saad...
Nowadays, analysis and design of novel scalable methods and algorithms for fundamental linear algeb...
The objective of this paper is to present a brief review of a number of techniques for matrix precon...
University of Minnesota Ph.D. dissertation. December 2011. Major: Scientific Computation. Advisor: ...
AbstractWe combine our novel SVD-free additive preconditioning with aggregation and other relevant t...
Multiplicative preconditioning is a popular SVD-based techniques for the solution of linear systems ...
AbstractOur randomized additive preconditioners are readily available and regularly facilitate the s...
Our weakly random additive preconditioners facilitate the solution of linear systems of equa-tions a...
Preconditioning is a classical subject of numerical solution of linear systems of equations. The goa...
AbstractThe theory and the practice of optimal preconditioning in solving a linear system by iterati...
In this chapter, we give a brief overview of a particular class of preconditioners known as incomple...
Effective preconditioners are known for some important but special classes of matrices. In contrast ...
Standard preconditioners, like incomplete factorizations, perform well when the coefficient matrix i...
. We introduce some cheaper and faster variants of the classical additive Schwarz preconditioner (AS...
A popular class of preconditioners is known as incomplete factorizations. They can be thought of as ...
University of Minnesota Ph.D. dissertation. June 2015. Major: Computer Science. Advisor: Yousef Saad...
Nowadays, analysis and design of novel scalable methods and algorithms for fundamental linear algeb...
The objective of this paper is to present a brief review of a number of techniques for matrix precon...
University of Minnesota Ph.D. dissertation. December 2011. Major: Scientific Computation. Advisor: ...