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A comparison of genetic local search algorithms for binary quadratic programming

机译:二进制二次规划遗传局部搜索算法的比较

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It is known that Genetic Local Search (GLS) is one of the most powerful meta-heuristics for a wide variety of optimization problems. The GLS is generally composed of local search and genetic operators such as selection, crossover and mutation operators. In this paper, we apply the GLS to the unconstrained binary quadratic programming problem (BQP) and conduct to compare search performance of four GLS algorithms implemented according to the GLS framework we provide. Difference among four algorithms is only a phase of the local search in the framework. Comparison results show that the difference of the local search incorporated has a strong influence on the quality of resulting solutions found by the GLS algorithms.
机译:众所周知,遗传局部搜索(GLS)是针对各种优化问题的最强大的元启发式算法之一。 GLS通常由本地搜索和遗传算子组成,例如选择,交叉和突变算子。在本文中,我们将GLS应用于无约束二进制二次规划问题(BQP),并进行比较以根据我们提供的GLS框架实现的四种GLS算法的搜索性能。四种算法之间的差异只是框架中本地搜索的一个阶段。比较结果表明,合并的本地搜索的差异对GLS算法发现的结果解的质量有很大的影响。

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