Abstract
Posterior constraint optimal selection techniques (COSTs) are developed for nonnegative linear programming problems (NNLPs), and a geometric interpretation is provided. The posterior approach is used in both a dynamic and non-dynamic active-set framework. The computational performance of these methods is compared with the CPLEX standard linear programming algorithms, with two most-violated constraint approaches, and with previously developed COST algorithms for large-scale problems.
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CITATION STYLE
Corley, H. W., Noroziroshan, A., & Rosenberger, J. M. (2017). Posterior Constraint Selection for Nonnegative Linear Programming. American Journal of Operations Research, 07(01), 26–40. https://doi.org/10.4236/ajor.2017.71002
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