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Hybridization of genetic algorithm and local search in multiobjective function optimization

机译:多目标函数优化中遗传算法与局部搜索的混合

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Hybridization with local search (LS) is known to enhance the performance of genetic algorithms (GA) in single objective optimization and have also been studied in the multiobjective combinatorial optimization literature. In most such studies, LS is applied to the solutions of each generation of GA, which is the scheme called "GA with LS" herein. Another scheme, in which LS is applied to the solutions obtained with GA, has also been studied, which is called "GA then LS" herein. It seems there is no consensus in the literature as to which scheme is better, let alone the reasoning for it. The situation in the multiobjective function optimization literature is even more unclear since the number of such studies in the field has been small.This paper, assuming that objective functions are differentiable, reveals the reasons why GA is not suitable for obtaining solutions of high precision, thereby justifying hybridization of GA and LS. It also suggests that the hybridization scheme which maximally exploits both GA and LS is GA then LS. Experiments conducted on many benchmark problems verified our claims.
机译:已知与局部搜索(LS)的杂交可增强单目标优化中遗传算法(GA)的性能,并且在多目标组合优化文献中也进行了研究。在大多数此类研究中,将LS应用于每一代GA的解决方案,这就是本文中称为“带有LS的GA”的方案。还研究了另一种方案,其中将LS应用于用GA获得的溶液,在本文中称为“ GA然后LS”。对于哪种方案更好,文献上似乎没有共识,更不用说推理了。由于该领域的研究数量很少,因此多目标函数优化文献的情况更加不清楚。本文假设目标函数是可微的,揭示了GA不适合获得高精度解的原因,从而证明了GA和LS杂交的合理性。这也表明,最大程度利用GA和LS的杂交方案是GA,然后是LS。在许多基准问题上进行的实验验证了我们的主张。

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