Comparison between Genetic Programming and full model selection on classification problems

José María Valencia-Ramírez, Julio A. Raya, J. R. Cedeño, R. R. Suárez, H. Escalante, Mario Graff
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引用次数: 6

Abstract

Genetic Programming (GP) has been shown to be a competitive classification technique. GP is generally enhanced with a novel crossover, mutation, or selection mechanism, in order to compare the performance of this improvement with the performance of a standard GP. Although these comparisons show the capabilities of GP, it also makes harder, for a new comer, to figure out whether a traditional GP would have a competitive classification performance, when compared to state-of-the-art techniques. In this work, we try to fill this gap by comparing a standard GP, a GP with minor modifications and a ensemble of GP with two competitive techniques, namely support vector machines and a procedure that performs full model selection (Particle Swarm Model Selection). The results show that GP has better performance on problems with high dimensionality and large training sets and it is competitive on the rest of the problems tested. The former result is interesting because while Particle Swarm Model Selection is tailored to perform a data preprocessing and feature selection, GP is automatically performing these tasks and producing better classifiers.
遗传规划与全模型选择在分类问题上的比较
遗传规划(GP)是一种极具竞争力的分类技术。GP通常通过一种新的交叉、突变或选择机制来增强,以便将这种改进的性能与标准GP的性能进行比较。尽管这些比较显示了GP的能力,但对于新来者来说,要弄清楚与最先进的技术相比,传统GP是否具有具有竞争力的分类性能,也变得更加困难。在这项工作中,我们试图通过比较标准GP、小修改GP和GP集成两种竞争技术来填补这一空白,即支持向量机和执行完整模型选择(粒子群模型选择)的过程。结果表明,GP算法在高维、大训练集的问题上具有较好的性能,在其他测试问题上具有较强的竞争力。前者的结果很有趣,因为粒子群模型选择是为执行数据预处理和特征选择而定制的,而GP是自动执行这些任务并产生更好的分类器。
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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