Using column generation to compute lower bound sets for bi-objective combinatorial optimization problems
Author(s) -
Boadu Mensah Sarpong,
Christian Artigues,
Nicolas Jozefowiez
Publication year - 2015
Publication title -
rairo - operations research
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.383
H-Index - 24
eISSN - 1290-3868
pISSN - 0399-0559
DOI - 10.1051/ro/2014054
Subject(s) - column generation , column (typography) , maximization , mathematical optimization , minification , combinatorial optimization , upper and lower bounds , mathematics , computer science , dual (grammatical number) , optimization problem , art , mathematical analysis , geometry , literature , connection (principal bundle)
We discuss the use of column generation in a bi-objective setting. Just as in single objective combinatorial optimization, the role of column generation in the bi-objective setting is to compute dual bounds (i.e. lower bounds for minimization problems and upper bounds for maximization problems) which can be used to guide the search for efficient solutions or to evaluate the quality of approximate solutions. The general idea used in this paper is to first transform the bi-objective problem into single objective by a scalarization method and then solve the transformed problem several times by varying the necessary parameters. We show that irrespective of the scalarization method used, similar subproblems are solved when applying column generation. For this reason, we investigate possible ways of intelligently searching for columns for these subproblems in order to accelerate the column generation method.
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