You are in:Home/Publications/A Hybridized Feature Selection Approach in Molecular Classification using CSO and GA | |
Ass. Lect. Mahmoud Sobhy Ali Hassan :: Publications: |
Title: | A Hybridized Feature Selection Approach in Molecular Classification using CSO and GA |
Authors: | Mahmoud Sobhy, Mazen Selim, Ahmed Alsawy |
Year: | 2018 |
Keywords: | molecular classification; chicken swarm optimization; genetic algorithms; support vector machines; feature selection |
Journal: | International Journal of Computer Applications in Technology |
Volume: | Not Available |
Issue: | Not Available |
Pages: | Not Available |
Publisher: | Not Available |
Local/International: | International |
Paper Link: | Not Available |
Full paper | Not Available |
Supplementary materials | Not Available |
Abstract: |
Feature selection in molecular classification is a basic area of research in chemoinformatics field. This paper introduces a hybrid approach that investigates the performances of chicken swarm optimization (CSO) algorithm with genetic algorithms (GA) for feature selection and support vector machine (SVM) for classification. The purpose of this paper is to test the effect of elimination of the inconsequential and redundant features in chemical datasets to realize the success of the classification. The proposed algorithm was applied to four chemical datasets and proved superiority in achieving minimum classification error rate in comparison with different feature selection algorithms for molecular classification |