We implement several warm-start strategies in interior-point methods for linear programming (LP). We study the situation in which both the original LP instance and the perturbed one have exactly the same dimensions. We consider different types of perturbations of data components of the original instance and different sizes of each type of perturbation. We modify the state-of-the-art interior-point solver PCx in our implementation. We evaluate the effectiveness of each warm-start strategy based on the number of iterations and the computation time in comparison with "cold start" on the NETLIB test suite. Our experiments reveal that each of the warm-start strategies leads to a reduction in the number of interior-point iterations especially for...
The interior point Method is commonly used to solve linear programming problems,especially those of ...
The modern era of interior-point methods dates to 1984, when Karmarkar proposed his algorithm for li...
During the last fifteen years we have witnessed an explosive development in the area of optimization...
This thesis examines current reoptimization techniques for interior-point methods available in the l...
In predictive control, a quadratic program (QP) needs to be solved at each sampling instant. We pres...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/1...
This research studies two computational techniques that improve the practical performance of existin...
Abstract. Interior point methods (IPM) have been recognised as an efficient approach for the solutio...
In this work we devise efficient algorithms for finding the search directions for interior point met...
A practical warm-start procedure is described for the infeasible primal-dual interior-point method (...
In this work we devise efficient algorithms for finding the search directions for interior point met...
This paper addresses the issues involved with an interior point-based decomposition applied to the s...
ABSTRACT Interior point methods have been widely used to determine the solution of large-scale linea...
The long-term planning of electricity generation in a liberalised market using the Bloom and Gallant...
The efficiency of interior-point algorithms for linear programming is related to the effort required...
The interior point Method is commonly used to solve linear programming problems,especially those of ...
The modern era of interior-point methods dates to 1984, when Karmarkar proposed his algorithm for li...
During the last fifteen years we have witnessed an explosive development in the area of optimization...
This thesis examines current reoptimization techniques for interior-point methods available in the l...
In predictive control, a quadratic program (QP) needs to be solved at each sampling instant. We pres...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/1...
This research studies two computational techniques that improve the practical performance of existin...
Abstract. Interior point methods (IPM) have been recognised as an efficient approach for the solutio...
In this work we devise efficient algorithms for finding the search directions for interior point met...
A practical warm-start procedure is described for the infeasible primal-dual interior-point method (...
In this work we devise efficient algorithms for finding the search directions for interior point met...
This paper addresses the issues involved with an interior point-based decomposition applied to the s...
ABSTRACT Interior point methods have been widely used to determine the solution of large-scale linea...
The long-term planning of electricity generation in a liberalised market using the Bloom and Gallant...
The efficiency of interior-point algorithms for linear programming is related to the effort required...
The interior point Method is commonly used to solve linear programming problems,especially those of ...
The modern era of interior-point methods dates to 1984, when Karmarkar proposed his algorithm for li...
During the last fifteen years we have witnessed an explosive development in the area of optimization...