首页> 外文会议>International Conference on Parallel Problem Solving from Nature;PPSN X >Sub-tree Swapping Crossover, Allele Diffusion and GP Convergence
【24h】

Sub-tree Swapping Crossover, Allele Diffusion and GP Convergence

机译:子树交换交叉,等位基因扩散和GP收敛

获取原文

摘要

We provide strong evidence that sub-tree swapping crossover when applied to tree-based representations will cause alleles (node labels) to diffuse within length classes. For a-ary trees we provide further confirmation that all programs are equally likely to be sampled within any length class when sub-tree swapping crossover is applied in the absence of selection and mutation. Therefore, we propose that this form of search is unbiased - within length classes - for a-ary trees. Unexpectedly, however, for mixed-arity trees this is not found and a more complicated form of search is taking place where certain tree shapes, hence programs, are more likely to be sampled than others within each class. We examine the reasons for such shape bias in mixed arity representations and provide the practitioner with a thorough examination of sub-tree swapping crossover bias. The results of this, when combined with crossover length bias research, explain Genetic Programming's lack of structural convergence during later stages of an experimental run. Several operators are discussed where a broader form of convergence may be detected in a similar way to that found in Genetic Algorithm experimentation.
机译:我们提供有力的证据表明,将子树交换交叉应用于基于树的表示形式时,将导致等位基因(节点标签)在长度类中扩散。对于a-ary树,我们提供了进一步的确认,即在没有选择和突变的情况下应用子树交换交叉时,所有程序均可能在任何长度级别内被采样。因此,我们建议对于a-ary树,这种搜索形式在长度类内是无偏的。但是,出乎意料的是,对于混合树而言,找不到这种树,并且正在进行更复杂的搜索,其中某些树的形状(因此程序)比每个类别中的其他树更有可能被采样。我们研究了混合arar表示中这种形状偏差的原因,并为从业人员提供了对子树交换交叉偏差的彻底检查。当与交叉长度偏差研究相结合时,其结果说明了遗传编程在实验运行的后期缺乏结构收敛性。讨论了一些算子,其中可能以与遗传算法实验中相似的方式检测到更广泛的收敛形式。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号