This paper presents a memetic fuzzy ARTMAP (mFAM) model constructed using a grammatical evolution approach. mFAM performs adaptation through a global search with particle swarm optimization (PSO) as well as a local search with the FAM training algorithm. The search and adaptation processes of mFAM are governed by a set of grammatical rules. In the memetic framework, mFAM is constructed and it evolves with a combination of PSO and FAM learning in an arbitrary sequence. A benchmark study is carried out to evaluate and compare the classification performance between mFAM and other state-of-art methods. The results show the effectiveness of mFAM in providing more accurate prediction outcomes.
History
Volume
56
Pagination
447-456
Location
Puerto de la Cruz, Spain
Start date
2016-06-15
End date
2016-06-17
ISSN
2190-3018
eISSN
2190-3026
ISBN-13
9783319396293
Language
eng
Publication classification
E Conference publication, E1 Full written paper - refereed
Copyright notice
2016, Springer
Editor/Contributor(s)
Czarnowski I, Mateos Caballero A, Howlett R, Jain L
Title of proceedings
KES-IDT 2016 : Proceedings of the 8th KES International Conference on Intelligent Decision Technolgies
Event
Intelligent Decision Technologies. Conference (8th : 2016 : Puerto de la Cruz, Spain)