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A new two-stage genetic programming classification algorithm and its applications

机译:一种新的两阶段基因编程分类算法及其应用

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This work aims to find a better solution from an improved genetic programming (GP) algorithm for classification problems without increasing computation costs as far as possible. Firstly, the standard GP algorithm is difficult to succeed in finding better individuals since too large search landscape and it is easy to run into local optimum when evolution reaches a certain stage, while, by enlarging the evolutionary generation or the size of population might increase computation complexity. So, a two-stage GP may be a good solution for these. In the first stage, GP is used to induce a relatively simple classifier and construct features; in the second stage, GP is executed on these features to evolve a better classifier. Secondly, in order to improve the convergence, a new initialization (NI) strategy and a new function operator selection method are designed. In this paper, a NI strategy based two-stage GP algorithm (NITGP) is proposed, and compares with the standard GP on a set of artificial, real-world datasets and image edge detection tasks. The experimental results show that our approach can evolve classifiers with better performance.
机译:这项工作旨在从改进的遗传编程(GP)算法中找到更好的解决方案,以便在不增加计算成本的情况下进行分类问题。首先,标准GP算法很难成功找到更好的个人以来的搜索景观,并且当进化达到某个阶段时,易于努力进入局部最佳,而通过扩大进化产生或人口的大小可能会增加计算复杂。因此,两级GP可能是一个很好的解决方案。在第一阶段,GP用于诱导相对简单的分类器和构造特征;在第二阶段,在这些特征上执行GP以发展更好的分类器。其次,为了提高收敛,设计了新的初始化(NI)策略和新功能操作员选择方法。在本文中,提出了基于NI策略的两阶段GP算法(NITGP),并与标准GP上的一组人工,现实世界数据集和图像边缘检测任务进行比较。实验结果表明,我们的方法可以发展具有更好性能的分类器。

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