Binary encoding for prototype tree of probabilistic model building GP

Toshihiko Yanase, Yoshihiko Hasegawa, H. Iba
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引用次数: 8

Abstract

In recent years, program evolution algorithms based on the estimation of distribution algorithm (EDA) have been proposed to improve search ability of genetic programming (GP) and to overcome GP-hard problems. One such method is the probabilistic prototype tree (PPT) based algorithm. The PPT based method explores the optimal tree structure by using the full tree whose number of child nodes is maximum among possible trees. This algorithm, however, suffers from problems arising from function nodes having different number of child nodes. These function nodes cause intron nodes, which do not affect the fitness function. Moreover, the function nodes having many child nodes increase the search space and the number of samples necessary for properly constructing the probabilistic model. In order to solve this problem, we propose binary encoding for PPT. Here, we convert each function node to a subtree of binary nodes where the converted tree is correct in grammar. Our method reduces ineffectual search space, and the binary encoded tree is able to express the same tree structures as the original method. The effectiveness of the proposed method is demonstrated through the use of two computational experiments.
概率模型构建原型树的二值编码
近年来,为了提高遗传规划的搜索能力和克服遗传规划难题,提出了基于估计分布算法(EDA)的程序进化算法。其中一种方法是基于概率原型树的算法。基于PPT的方法通过在可能的树中使用子节点数最大的全树来探索最优树结构。但是,该算法存在子节点个数不同的函数节点问题。这些功能节点产生内含子节点,不影响适应度函数。此外,具有许多子节点的函数节点增加了正确构建概率模型所需的搜索空间和样本数量。为了解决这个问题,我们提出了PPT的二进制编码。这里,我们将每个函数节点转换为二进制节点的子树,其中转换后的树在语法上是正确的。我们的方法减少了无效的搜索空间,并且二叉编码树能够表达与原方法相同的树结构。通过两个计算实验验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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