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Progress in the dual simplex method for large scale LP problems: practical dual phase 1 algorithms
Authors:Achim Koberstein  Uwe H. Suhl
Affiliation:1.Decision Support & Operations Research Lab, International Graduate School of Dynamic Intelligent Systems,University of Paderborn,Paderborn,Germany;2.Institut für Produktion, Wirtschaftsinformatik und Operations Research,Freie Universit?t Berlin,Berlin,Germany
Abstract:
The dual simplex algorithm has become a strong contender in solving large scale LP problems. One key problem of any dual simplex algorithm is to obtain a dual feasible basis as a starting point. We give an overview of methods which have been proposed in the literature and present new stable and efficient ways to combine them within a state-of-the-art optimization system for solving real world linear and mixed integer programs. Furthermore, we address implementation aspects and the connection between dual feasibility and LP-preprocessing. Computational results are given for a large set of large scale LP problems, which show our dual simplex implementation to be superior to the best existing research and open-source codes and competitive to the leading commercial code on many of our most difficult problem instances.
Keywords:Dual simplex algorithm  Mathematical optimization system (MOPS)  Linear programming
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