基于语法模型的程序进化

Y. Shan, R. I. McKay, R. Baxter, H. Abbass, D. Essam, N. X. Hoai
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引用次数: 104

摘要

在进化计算中,利用变异和交叉等遗传算子对个体进行扰动以产生下一个种群。然而,这些固定的、独立于问题的遗传算子可能会破坏通常称为构建块的子解,而不是发现和保存它们。克服这一问题的一种方法是建立一个基于优秀个体的模型,并对该模型进行抽样以获得下一个群体。在遗传算法中有很多这样的工作;但是由于遗传规划树表示的复杂性,在遗传规划树表示中很少做这种工作。本文提出了一种基于语法模型的程序进化(GMPE)方法来进化GP程序。我们用一种概率上下文无关语法(SCFG)取代了常见的GP遗传算子。在每一代中,学习一个SCFG,并通过采样该SCFG模型生成一个新的种群。在我们研究的两个基准问题上,GMPE显著优于传统GP,学习速度更快,更可靠。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Grammar model-based program evolution
In evolutionary computation, genetic operators, such as mutation and crossover, are employed to perturb individuals to generate the next population. However these fixed, problem independent genetic operators may destroy the sub-solution, usually called building blocks, instead of discovering and preserving them. One way to overcome this problem is to build a model based on the good individuals, and sample this model to obtain the next population. There is a wide range of such work in genetic algorithms; but because of the complexity of the genetic programming (GP) tree representation, little work of this kind has been done in GP. In this paper, we propose a new method, grammar model-based program evolution (GMPE) to evolved GP program. We replace common GP genetic operators with a probabilistic context-free grammar (SCFG). In each generation, an SCFG is learnt, and a new population is generated by sampling this SCFG model. On two benchmark problems we have studied, GMPE significantly outperforms conventional GP, learning faster and more reliably.
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