语义空间中的近似几何交叉

K. Krawiec, Pawel Lichocki
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引用次数: 104

摘要

我们提出了一种与遗传规划树一起工作的交叉算子,它是语义空间中的近似几何交叉算子。通过将语义定义为项目对一组适应度案例的评估概况,并将其约束为一类特定的基于度量的适应度函数,我们使语义空间中的适应度景观具有完美的适应度-距离相关性。所提出的近似几何语义交叉通过适当的采样利用了语义适应度景观的这一特性。我们还演示了所提出的方法如何方便地与爬山相结合。我们讨论了这些方法的性质,并描述了一个关于逻辑函数综合和符号回归的广泛计算实验。
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Approximating geometric crossover in semantic space
We propose a crossover operator that works with genetic programming trees and is approximately geometric crossover in the semantic space. By defining semantic as program's evaluation profile with respect to a set of fitness cases and constraining to a specific class of metric-based fitness functions, we cause the fitness landscape in the semantic space to have perfect fitness-distance correlation. The proposed approximately geometric semantic crossover exploits this property of the semantic fitness landscape by an appropriate sampling. We demonstrate also how the proposed method may be conveniently combined with hill climbing. We discuss the properties of the methods, and describe an extensive computational experiment concerning logical function synthesis and symbolic regression.
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