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Improving multi-objective random one-bit climbers on MNK-landscapes

机译:改善MNK景观上的多目标随机一位登山者

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Multi-objective random one-bit climbers (moRBCs) are one class of stochastic local search-based algorithms that maintain a reference population of solutions to guide their search. They have been shown to perform well in solving multi-objective optimization problems. In this work, we further enhance the moRBCs by introducing tabu moves to improve their efficiency and search for more promising solutions. We also improve the selection to update the reference population and archive using a procedure that provides better mechanism to preserve diversity among the solutions. We use several MNK-landscape models to study the behavior of the modified moRBCs.
机译:多目标随机一位爬升器(moRBC)是一类基于局部随机搜索的算法,该算法维持参考群体的解决方案来指导他们的搜索。已证明它们在解决多目标优化问题方面表现出色。在这项工作中,我们通过引入禁忌举动来提高其效率并寻找更有希望的解决方案,从而进一步增强了moRBC。我们还使用一种程序提供了更好的机制来保留解决方案之间的多样性,从而改进了选择以更新参考人群和存档。我们使用几个MNK景观模型来研究修改的moRBCs的行为。

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