A new approach for the implementation of interior-point methods for solving linear programs is proposed. Its main feature is the iterative solution of the symmetric, but highly indefinite 2 × 2-block systems of linear equations that arise within the interior-point algorithm. These linear systems are solved by a symmetric variant of the quasi-minimal residual (QMR) algorithm, which is an iterative solver for general linear systems. The symmetric QMR algorithm can be combined with indefinite preconditioners, which is crucial for the efficient solution of highly indefinite linear systems, yet it still fully exploits the symmetry of the linear systems to be solved. To support the use of the symmetric QMR iteration, a novel stable reduction of t...
AbstractThe IDR(s) method proposed by Sonneveld and van Gijzen is an effective method for solving no...
1 Preconditioning Indefinite Systems in Interior Point Methods for Large Scale Linear Optimization A...
5siIn this article, we address the efficient numerical solution of linear and quadratic programming ...
This paper presents linear algebra techniques used in the implementation of an interior point method...
We present a unified framework for solving linear and convex quadratic programs via interior point m...
. Recently, the authors have proposed a new Krylov subspace iteration, the quasi-minimal residual al...
Many applications require the solution of multiple linear systems that have the same coefficient mat...
In the present work we study Interior Point Algorithm used for solving linear problem
The computational burden of primal-dual interior point methods for linear program-ming relies on the...
Every Newton step in an interior-point method for optimization requires a solution of a symmetric in...
A new derivation of the quasi-minimal residual (QMR) method for the solution of a system of linear e...
AbstractA new class of preconditioners for the iterative solution of the linear systems arising from...
A new class of preconditioners for the iterative solution of the linear systems arising from interio...
Many issues that are crucial for an efficient implementation of an interior point algorithm are addr...
A new class of preconditioners for the iterative solution of the linear systems arising from interio...
AbstractThe IDR(s) method proposed by Sonneveld and van Gijzen is an effective method for solving no...
1 Preconditioning Indefinite Systems in Interior Point Methods for Large Scale Linear Optimization A...
5siIn this article, we address the efficient numerical solution of linear and quadratic programming ...
This paper presents linear algebra techniques used in the implementation of an interior point method...
We present a unified framework for solving linear and convex quadratic programs via interior point m...
. Recently, the authors have proposed a new Krylov subspace iteration, the quasi-minimal residual al...
Many applications require the solution of multiple linear systems that have the same coefficient mat...
In the present work we study Interior Point Algorithm used for solving linear problem
The computational burden of primal-dual interior point methods for linear program-ming relies on the...
Every Newton step in an interior-point method for optimization requires a solution of a symmetric in...
A new derivation of the quasi-minimal residual (QMR) method for the solution of a system of linear e...
AbstractA new class of preconditioners for the iterative solution of the linear systems arising from...
A new class of preconditioners for the iterative solution of the linear systems arising from interio...
Many issues that are crucial for an efficient implementation of an interior point algorithm are addr...
A new class of preconditioners for the iterative solution of the linear systems arising from interio...
AbstractThe IDR(s) method proposed by Sonneveld and van Gijzen is an effective method for solving no...
1 Preconditioning Indefinite Systems in Interior Point Methods for Large Scale Linear Optimization A...
5siIn this article, we address the efficient numerical solution of linear and quadratic programming ...