Title : ( Rule Selection by Guided Elitism Genetic Algorithm in Fuzzy Min-Max Classifier )
Authors: Mohammad Reza Akbarzadeh Totonchi , حدیث جالسیان , مهدی یعقوبی ,Access to full-text not allowed by authors
Abstract
Rule-based classification with Neural Networks has high acceptance ability for noisy data, high accuracy and is preferable in data mining. In this paper, we use Fuzzy Min-Max (FMM) Neural Network. Nevertheless the -Curse of Dimensionality- problem also exists in this classifier. As apossible solution, in this paper the modified GA is adopted tominimize the number of features in the extracted rules. Guided Elitism strategy is used to create elitism in thepopulation, based on information extracted from good individuals of previous generations. The main advantage ofthis data structure is that it maintains partial information ofgood solutions, which may otherwise be lost in the selection process. Five well-known benchmark problems are used toevaluate the performance of the proposed GEGA system; Results shows comparatively high accuracy and generally lower computational time.
Keywords
, Rule extraction, Dimensionality Reduction, Genetic Algorithm (GA), Guided Search (GS), Fuzzy Min- Max Neural Network@inproceedings{paperid:1043592,
author = {Akbarzadeh Totonchi, Mohammad Reza and حدیث جالسیان and مهدی یعقوبی},
title = {Rule Selection by Guided Elitism Genetic Algorithm in Fuzzy Min-Max Classifier},
booktitle = {12th Iranian Conference on Intelligent Systems},
year = {2014},
location = {IRAN},
keywords = {Rule extraction; Dimensionality Reduction;Genetic Algorithm (GA); Guided Search (GS); Fuzzy Min- Max Neural Network},
}
%0 Conference Proceedings
%T Rule Selection by Guided Elitism Genetic Algorithm in Fuzzy Min-Max Classifier
%A Akbarzadeh Totonchi, Mohammad Reza
%A حدیث جالسیان
%A مهدی یعقوبی
%J 12th Iranian Conference on Intelligent Systems
%D 2014