首页> 外文会议>Computational intelligence in miulti-criteria decision-making, 2009. mcdm '09 >Evolutionary multi-objective optimization of robustness and innovation in redundant genetic representations
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Evolutionary multi-objective optimization of robustness and innovation in redundant genetic representations

机译:冗余遗传表示中鲁棒性和创新性的进化多目标优化

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Robustness and innovation are two essential facets for biological evolution, where robustness means the relative insensitivity of an organism's phenotype to mutations, while innovation (evolvability) denotes the individual's ability to evolve novel phenotypes that help its survival and reproduction. Although much research has been conducted on robustness and evolvability of both biological and computational evolutionary systems, little work on the quantitative analysis of the relationship between robustness and evolvability has been reported. In this work, a measure for innovation called local variability has been suggested. Based on a neutrality degree borrowed from literature [1] and local variability, a multi-objective evolutionary algorithm has been employed to maximize the robustness and innovation by optimizing the genotype-phenotype mapping of the redundant representation. The obtained Pareto-optimal solutions are then analyzed to reveal the trade-off relationship between robustness and innovation of the redundant representation.
机译:健壮性和创新性是生物学进化的两个基本方面,其中健壮性意味着生物体表型对突变相对不敏感,而创新性(可进化性)则表示个体进化有助于其生存和繁殖的新型表型的能力。尽管已经对生物学和计算进化系统的鲁棒性和可进化性进行了大量研究,但是关于鲁棒性和可进化性之间关系的定量分析的报道很少。在这项工作中,提出了一种称为局部变异性的创新措施。基于文献[1]的中立程度和局部变异性,通过优化冗余表示的基因型-表型映射,采用了多目标进化算法来最大化鲁棒性和创新性。然后分析获得的帕累托最优解,以揭示鲁棒性与冗余表示的创新之间的权衡关系。

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