DocumentCode :
3576646
Title :
Algorithms for the min-max regret generalized assignment problem with interval data
Author :
Wu, W. ; Iori, M. ; Martello, S. ; Yagiura, M.
Author_Institution :
Nagoya Univ., Nagoya, Japan
fYear :
2014
Firstpage :
734
Lastpage :
738
Abstract :
Many real life optimization problems do not have accurate estimates of the problem parameters at the optimization phase. For this reason, the min-max regret criteria are widely used to obtain robust solutions. In this paper we consider the generalized assignment problem (GAP) with min-max regret criterion under interval costs. We show that the decision version of this problem is Σp2-complete. We present two heuristic methods: a fixed-scenario approach and a dual substitution algorithm. For the fixed-scenario approach, we show that solving the classical GAP under a median-cost scenario leads to a solution of the min-max regret GAP whose objective function value is within twice the optimal value. We also propose exact algorithms, including a Benders´ decomposition approach and branch-and-cut methods which incorporate various methodologies, including Lagrangian relaxation and variable fixing. The resulting Lagrangian-based branch-and-cut algorithm performs satisfactorily on benchmark instances.
Keywords :
minimax techniques; Benders decomposition; GAP; Lagrangian relaxation; branch-and-cut methods; interval costs; interval data; median-cost scenario; min-max regret generalized assignment problem; optimization problems; variable fixing; Dynamic programming; Heuristic algorithms; Linear programming; Manganese; Optimization; Robustness; Upper bound; Benders´ decomposition; Lagrangian relaxation; branch-and-cut; generalized assignment problem; heuristics; min-max regret; variable fixing;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Industrial Engineering and Engineering Management (IEEM), 2014 IEEE International Conference on
Type :
conf
DOI :
10.1109/IEEM.2014.7058735
Filename :
7058735
Link To Document :
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