Research Report UPC-DEIO DR 2018-01. November 2018The computation of the Newton direction is the most time consuming step of interior-point methods. This direction was efficiently computed by a combination of Cholesky factorizations and conjugate gradients in a specialized interior-point method for block-angular structured problems. In this work we apply this algorithmic approach to solve very large instances of minimum cost flows problems in bipartite networks, for convex objective functions with diagonal Hessians (i.e., either linear, quadratic or separable nonlinear objectives). After analyzing the theoretical properties of the interior-point method for this kind of problems, we provide extensive computational experiments with linear an...
Two massively parallel algorithms for large scale linear and convex quadratic network flow problems ...
Two massively parallel algorithms for large scale linear and convex quadratic network flow problems ...
Two massively parallel algorithms for large scale linear and convex quadratic network flow problems ...
Research Report UPC-DEIO DR 2018-01. November 2018The computation of the Newton direction is the mos...
© 2020 ElsevierThe computation of the Newton direction is the most time consuming step of interior-...
This thesis explores applications of Interior Point methods as popularized by Karmarkar (36) for sol...
In this paper we introduce the truncated primal-infeasible dual-feasible interior point algorithm fo...
. In this paper we introduce the truncated primal-infeasible dual-feasible interior point algorithm ...
. We describe an implementation of the dual affine scaling algorithm for linear programming speciali...
Interior Point (IP) algorithms for Min Cost Flow (MCF) problems have been shown to be com-petitive w...
A well-studied nonlinear extension of the minimum-cost flow problem is to minimize the objective ij∈...
Interior Point (IP) algorithms for Min Cost Flow (MCF) problems have been shown to be competitive wi...
The paper deals with nonlinear multicommodity flow problems with convex costs. A decomposition metho...
In this thesis we develop an efficient decomposition method for large-scale convex cost multi-commod...
Two massively parallel algorithms for large scale linear and convex quadratic network flow problems ...
Two massively parallel algorithms for large scale linear and convex quadratic network flow problems ...
Two massively parallel algorithms for large scale linear and convex quadratic network flow problems ...
Two massively parallel algorithms for large scale linear and convex quadratic network flow problems ...
Research Report UPC-DEIO DR 2018-01. November 2018The computation of the Newton direction is the mos...
© 2020 ElsevierThe computation of the Newton direction is the most time consuming step of interior-...
This thesis explores applications of Interior Point methods as popularized by Karmarkar (36) for sol...
In this paper we introduce the truncated primal-infeasible dual-feasible interior point algorithm fo...
. In this paper we introduce the truncated primal-infeasible dual-feasible interior point algorithm ...
. We describe an implementation of the dual affine scaling algorithm for linear programming speciali...
Interior Point (IP) algorithms for Min Cost Flow (MCF) problems have been shown to be com-petitive w...
A well-studied nonlinear extension of the minimum-cost flow problem is to minimize the objective ij∈...
Interior Point (IP) algorithms for Min Cost Flow (MCF) problems have been shown to be competitive wi...
The paper deals with nonlinear multicommodity flow problems with convex costs. A decomposition metho...
In this thesis we develop an efficient decomposition method for large-scale convex cost multi-commod...
Two massively parallel algorithms for large scale linear and convex quadratic network flow problems ...
Two massively parallel algorithms for large scale linear and convex quadratic network flow problems ...
Two massively parallel algorithms for large scale linear and convex quadratic network flow problems ...
Two massively parallel algorithms for large scale linear and convex quadratic network flow problems ...