精英化多目标进化算法的统一模型

M. Laumanns, E. Zitzler, Lothar Thiele
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引用次数: 176

摘要

虽然有人声称精英主义可以显著改善进化的多目标搜索,但对其影响的全面和广泛的评估仍然缺失。关于如何成功地纳入精英主义的指导方针尚未制定。本文提出了一种统一的多目标进化算法模型,其中任意变异算子和选择算子可以作为构建块,包括归档策略和重新插入策略。所提出的模型能够将大多数特定的多目标(进化)算法表述为该模型的一个实例,并将通过简单的示例进行演示。我们进一步展示了如何通过模型的参数来量化精英主义,以及如何轻松评估精英主义对不同算法的影响。
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A unified model for multi-objective evolutionary algorithms with elitism
Though it has been claimed that elitism could improve evolutionary multi-objective search significantly, a thorough and extensive evaluation of its effects is still missing. Guidelines on how elitism could successfully be incorporated have not yet been developed. This paper presents a unified model of multi-objective evolutionary algorithms, in which arbitrary variation and selection operators can be combined as building blocks, including archiving and re-insertion strategies. The presented model enables most specific multi-objective (evolutionary) algorithm to be formulated as an instance of it, which will be demonstrated by simple examples. We further show how elitism can be quantified by the model's parameters and how this allows an easy evaluation of the effect of elitism on different algorithms.
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