作者
Ivo Gonçalves, Sara Silva, Joana B Melo, João MB Carreiras
发表日期
2012
研讨会论文
Genetic Programming: 15th European Conference, EuroGP 2012, Málaga, Spain, April 11-13, 2012. Proceedings 15
页码范围
218-229
出版商
Springer Berlin Heidelberg
简介
One of the areas of Genetic Programming (GP) that, in comparison to other Machine Learning methods, has seen fewer research efforts is that of generalization. Generalization is the ability of a solution to perform well on unseen cases. It is one of the most important goals of any Machine Learning method, although in GP only recently has this issue started to receive more attention. In this work we perform a comparative analysis of a particularly interesting configuration of the Random Sampling Technique (RST) against the Standard GP approach. Experiments are conducted on three multidimensional symbolic regression real world datasets, the first two on the pharmacokinetics domain and the third one on the forestry domain. The results show that the RST decreases overfitting on all datasets. This technique also improves testing fitness on two of the three datasets. Furthermore, it does so while producing …
引用总数
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学术搜索中的文章
I Gonçalves, S Silva, JB Melo, JMB Carreiras - … : 15th European Conference, EuroGP 2012, Málaga …, 2012