In this work we devise efficient algorithms for finding the search directions for interior point methods applied to linear programming problems. There are two innovations. The first is the use of updating of preconditioners computed for previous barrier parameters. The second is an adaptive automated procedure for determining whether to use a direct or iterative solver, whether to reinitialize or update the preconditioner, and how many updates to apply. These decisions are based on predictions of the cost of using the different solvers to determine the next search direction, given costs in determining earlier directions. These ideas are tested by applying a modified version of the OB1-R code of Lustig, Marsten, and Shanno to a variety of ...
The efficiency of interior-point algorithms for linear programming is related to the effort required...
The efficiency of interior-point algorithms for linear programming is related to the effort required...
AbstractThis work concerns a method for identifying an optimal basis for linear programming problems...
In this work we devise efficient algorithms for finding the search directions for interior point met...
In this article we consider modified search directions in the endgame of interior point methods for...
AbstractWe provide an asymptotic analysis of a primal-dual algorithm for linear programming that use...
Many issues that are crucial for an efficient implementation of an interior point algorithm are addr...
We apply novel inner-iteration preconditioned Krylov subspace methods to the interior-point algorith...
. In this paper, we discuss efficient implementation of a new class of preconditioners for linear sy...
The computational burden of primal-dual interior point methods for linear program-ming relies on the...
Over the last 25 years, interior-point methods (IPMs) have emerged as a viable class of algorithms f...
The modern era of interior-point methods dates to 1984, when Karmarkar proposed his algorithm for li...
AbstractIn this work, the optimal adjustment algorithm for p coordinates, which arose from a general...
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...
The efficiency of interior-point algorithms for linear programming is related to the effort required...
The efficiency of interior-point algorithms for linear programming is related to the effort required...
AbstractThis work concerns a method for identifying an optimal basis for linear programming problems...
In this work we devise efficient algorithms for finding the search directions for interior point met...
In this article we consider modified search directions in the endgame of interior point methods for...
AbstractWe provide an asymptotic analysis of a primal-dual algorithm for linear programming that use...
Many issues that are crucial for an efficient implementation of an interior point algorithm are addr...
We apply novel inner-iteration preconditioned Krylov subspace methods to the interior-point algorith...
. In this paper, we discuss efficient implementation of a new class of preconditioners for linear sy...
The computational burden of primal-dual interior point methods for linear program-ming relies on the...
Over the last 25 years, interior-point methods (IPMs) have emerged as a viable class of algorithms f...
The modern era of interior-point methods dates to 1984, when Karmarkar proposed his algorithm for li...
AbstractIn this work, the optimal adjustment algorithm for p coordinates, which arose from a general...
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...
The efficiency of interior-point algorithms for linear programming is related to the effort required...
The efficiency of interior-point algorithms for linear programming is related to the effort required...
AbstractThis work concerns a method for identifying an optimal basis for linear programming problems...