Semantic variation operators for multidimensional genetic programming.

William La Cava, Jason H Moore
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引用次数: 15

Abstract

Multidimensional genetic programming represents candidate solutions as sets of programs, and thereby provides an interesting framework for exploiting building block identification. Towards this goal, we investigate the use of machine learning as a way to bias which components of programs are promoted, and propose two semantic operators to choose where useful building blocks are placed during crossover. A forward stagewise crossover operator we propose leads to significant improvements on a set of regression problems, and produces state-of-the-art results in a large benchmark study. We discuss this architecture and others in terms of their propensity for allowing heuristic search to utilize information during the evolutionary process. Finally, we look at the collinearity and complexity of the data representations that result from these architectures, with a view towards disentangling factors of variation in application.

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多维遗传规划的语义变异算子。
多维遗传规划将候选解决方案表示为程序集,从而为开发构建块识别提供了一个有趣的框架。为了实现这一目标,我们研究了机器学习的使用,作为一种偏向于哪些程序组件被提升的方法,并提出了两个语义算子来选择在交叉过程中放置有用的构建块的位置。我们提出的前向阶段交叉算子可以显著改善一系列回归问题,并在大型基准研究中产生最先进的结果。我们将讨论这种架构和其他架构,因为它们倾向于允许启发式搜索在进化过程中利用信息。最后,我们着眼于从这些体系结构中产生的数据表示的共线性和复杂性,以期解开应用中变化的因素。
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