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The Benders Dual Decomposition Method

Ragheb Rahmaniani, Shabbir Ahmed, Teodor Gabriel Crainic, Michel Gendreau, Walter Rei

2020Operations Research77 citationsDOI

Abstract

Many methods that have been proposed to solve large-scale MILP problems rely on the use of decomposition strategies. These methods exploit either the primal or dual structures of the problems by applying the Benders decomposition or Lagrangian dual decomposition strategy, respectively. In “The Benders Dual Decomposition Method,” Rahmaniani, Ahmed, Crainic, Gendreau, and Rei propose a new and high-performance approach that combines the complementary advantages of both strategies. The authors show that this method (i) generates stronger feasibility and optimality cuts compared with the classical Benders method, (ii) can converge to the optimal integer solution at the root node of the Benders master problem, and (iii) is capable of generating high-quality incumbent solutions at the early iterations of the algorithm. The developed algorithm obtains encouraging computational results when used to solve various benchmark MILP problems.

Topics & Concepts

Benders' decompositionMathematical optimizationBenchmark (surveying)DecompositionDual (grammatical number)Decomposition method (queueing theory)ExploitInteger programmingInteger (computer science)Computer scienceNode (physics)MathematicsAlgorithmEngineeringComputer securityGeographyLiteratureEcologyDiscrete mathematicsBiologyGeodesyStructural engineeringProgramming languageArtAdvanced Optimization Algorithms ResearchFacility Location and Emergency ManagementRisk and Portfolio Optimization
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