作者
Mauro Castelli, Leonardo Trujillo, Leonardo Vanneschi, Sara Silva, Emigdio Z-Flores, Pierrick Legrand
发表日期
2015/7/11
图书
Proceedings of the 2015 annual conference on genetic and evolutionary computation
页码范围
999-1006
简介
Since its introduction, Geometric Semantic Genetic Programming (GSGP) has aroused the interest of numerous researchers and several studies have demonstrated that GSGP is able to effectively optimize training data by means of small variation steps, that also have the effect of limiting overfitting. In order to speed up the search process, in this paper we propose a system that integrates a local search strategy into GSGP (called GSGP-LS). Furthermore, we present a hybrid approach, that combines GSGP and GSGP-LS, aimed at exploiting both the optimization speed of GSGP-LS and the ability to limit overfitting of GSGP. The experimental results we present, performed on a set of complex real-life applications, show that GSGP-LS achieves the best training fitness while converging very quickly, but severely overfits. On the other hand, GSGP converges slowly relative to the other methods, but is basically not affected …
引用总数
201420152016201720182019202020212022202320241151167621096
学术搜索中的文章
M Castelli, L Trujillo, L Vanneschi, S Silva, E Z-Flores… - Proceedings of the 2015 annual conference on genetic …, 2015