首页> 外文会议>Genetic and Evolutionary Computation Conference Pt.1 Jul 12-16, 2003 Chicago, IL, USA >Wise Breeding GA via Machine Learning Techniques for Function Optimization
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Wise Breeding GA via Machine Learning Techniques for Function Optimization

机译:通过机器学习技术进行明智育种GA以优化功能

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This paper explores how inductive machine learning can guide the breeding process of evolutionary algorithms for black-box function optimization. In particular, decision trees are used to identify the underlying characteristics of good and bad individuals, using the mined knowledge for wise breeding purposes. Inductive learning is complemented with statistical learning in order to define the breeding process. The proposed evolutionary process optimizes the fitness function in a dual manner, both maximizing and minimizing it. The paper also summarize some tuning and population sizing issues, as well as some preliminary results obtained using the proposed algorithm.
机译:本文探讨了归纳式机器学习如何指导黑盒功能优化的进化算法的选育过程。尤其是,决策树用于识别明智和有害个体的基本特征,并利用挖掘出的知识进行明智的育种。归纳学习与统计学习相辅相成,以定义育种过程。所提出的进化过程以对偶方式优化适应度函数,最大化和最小化适应度函数。本文还总结了一些调整和总体大小问题,以及使用该算法获得的一些初步结果。

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