减少遗传规划中代码膨胀的基于语义的替换技术

Thi Huong Chu, Nguyen Quang Uy, V. Cao
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引用次数: 6

摘要

遗传编程(GP)是一种技术,它允许将计算机程序编码为一组树结构,并使用进化算法进行进化。在GP中,代码膨胀是一种常见的现象,其特征是个体的大小在进化过程中逐渐增加。这种现象对GP解决问题的表现有负面影响。为了解决这个问题,我们最近引入了一种基于语义的代码膨胀控制方法:用近似终端(SAT-GP)代替子树。本文提出了SAT-GP的一个扩展,即用近似子规划代替子树(SAS-GP)。我们在一个真实的时间序列预测问题上用不同的GP参数设置测试了这种方法。实验结果表明,该方法在减少代码膨胀现象和提高GP性能方面具有良好的效果。特别是,SAS-GP使用GP中四个流行的性能指标,与其他经过测试的GP系统相比,通常可以实现最佳性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantics Based Substituting Technique for Reducing Code Bloat in Genetic Programming
Genetic Programming (GP) is a technique that allows computer programs encoded as a set of tree structures to be evolved using an evolutionary algorithm. In GP, code bloat is a common phenomenon characterized by the size of individuals gradually increasing during the evolution. This phenomenon has a negative impact on GP performance in solving problems. In order to address this problem, we have recently introduced a code bloat control method based on semantics: Substituting a subtree with an Approximate Terminal (SAT-GP). In this paper, we propose an extension of SAT-GP, namely Substituting a subtree with an Approximate Subprogram (SAS-GP). We tested this method with different GP parameter settings on a real-world time series forecasting problem. The experimental results demonstrate the benefit of the proposed method in reducing the code bloat phenomenon and improving GP performance. Particularly, SAS-GP often achieves the best performance compared to other tested GP systems using four popular performance metrics in GP.
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