Genetic adaption of rule connectives and conjunction operators in fuzzy rule based systems: an experimental comparative study
نویسندگان
چکیده
F. Herrera Dep. of Computer Science and Artificial Intelligence University of Granada 18071 – Granada, Spain [email protected] F.A. Márquez Dep. of Electronic Engineering, Computer Systems and Automatics University of Huelva 21071 – Huelva, Spain [email protected] A. Peregrín Dep. of Electronic Engineering, Computer Systems and Automatics University of Huelva 21071 – Huelva, Spain [email protected]
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