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Titlebook: Evolutionary Computation in Combinatorial Optimization; 8th European Confere Jano Hemert,Carlos Cotta Conference proceedings 2008 Springer-

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Minorities in West Asia and North Africau tenure managing in the literature and presents a new and original Tabu tenure adaptation mechanism. The generic method is tested on the k-coloring problem and compared with some best methods published in the literature. Obtained results show the competitiveness of the method.
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Callie R. Mitchell,Porcia B. Loveesigned based on these characteristic values and a genetic algorithm combined with the immune mechanism is devised to solve the job shop scheduling problem. Numerical computations for problems of different scales show that the proposed algorithm achieves effective results by accelerating the convergence of the optimization process.
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An Immune Genetic Algorithm Based on Bottleneck Jobs for the Job Shop Scheduling Problem,esigned based on these characteristic values and a genetic algorithm combined with the immune mechanism is devised to solve the job shop scheduling problem. Numerical computations for problems of different scales show that the proposed algorithm achieves effective results by accelerating the convergence of the optimization process.
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Multiobjective Prototype Optimization with Evolved Improvement Steps,ctive version of the POEMS algorithm (mPOEMS), which was experimentally evaluated on the multiobjective 0/1 knapsack problem with alternative multiobjective evolutionary algorithms. Major result of the experiments was that the proposed algorithm performed comparable to or better than the alternative algorithms.
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A Conflict Tabu Search Evolutionary Algorithm for Solving Constraint Satisfaction Problems,experimental fine-tuning of parameters was performed to optimise the performance of the algorithm on a commonly used test-set. Compared to the performance of the earlier STLEA, and benchmark algorithms, the CTLEA outperforms the former, and approaches the later.
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