Title :
Hybrid Metaheuristics based on MOEA/D for 0/1 multiobjective knapsack problems: A comparative study
Author :
Kafafy, Hmed ; Bounekkar, Ahmed ; Bonnevay, Stéphane
Author_Institution :
Lab. ERIC -, Univ. Claude Bernard Lyon 1, Villeurbanne, France
Abstract :
Hybrid Metaheuristics aim to incorporate and combine different metaheuristics with each other to enhance the search capabilities. It can improve both of intensification and diversification toward the preferred solutions and concentrates the search efforts to investigate the promising regions in the search space. In this paper, a comparative study was developed to study the effect of the hybridization of different metaheuris- tics within MOEA/D framework. We study four proposals of hybridization, the first proposal is to combine adaptive discrete differential evolution operator with MOEA/D. The second one is to combine the path-Relinking operator with MOEA/D. the third and the fourth proposals combine both of them in MOEA/D. The comparative study uses a set of MOKSP instances commonly used in the literature to investigate the hybridization effects as well as a set of quality assessment indicators. The experimental results indicate that the proposals are highly competitive for most test instances and can be considered as viable alternatives.
Keywords :
combinatorial mathematics; evolutionary computation; knapsack problems; optimisation; search problems; 0/1 multiobjective knapsack problems; MOCOP; MOEA/D framework; MOKSP; adaptive discrete differential evolution operator; diversification improvement; hybrid metaheuristics; hybridization effects; intensification improvement; multiobjective combinatorial optimization problems; path-relinking operator; quality assessment indicators; search capabilities; search space; Approximation methods; Evolutionary computation; Hamming distance; Optimization; Proposals; Standards; Vectors; 0/1 MOKSP; Differential Evolution; Evolutionary Algorithm; Metaheuristics; Multiobjective Optimization; Path-relinking;
Conference_Titel :
Evolutionary Computation (CEC), 2012 IEEE Congress on
Conference_Location :
Brisbane, QLD
Print_ISBN :
978-1-4673-1510-4
Electronic_ISBN :
978-1-4673-1508-1
DOI :
10.1109/CEC.2012.6253015