Title
Intelligent System For Feature Selection Based On Rough Set And Chaotic Binary Grey Wolf Optimisation
Abstract
Feature Selection (FS) has a non-trivial role in supervised learning; like classification, for many causes. FS aims at facilitating the model processes and reducing the computation time. In feature selection, trivial features are eliminated from the data to produce transparently and comprehensibly a model. Furthermore, a feature selection process can decrease noise data; wherefore, feature selection enhances the accuracy measure of the classification process. This paper proposes a robust hybrid dynamic model for feature selection, called RS-CBGWO-FS. RS-CBGWO-FS is a combination of Rough Set (RS), chaos theory and Binary Grey Wolf Optimisation (BGWO). GWO parameters are estimated and tuned by using ten various chaotic maps. Five complex medical data sets are used in the evaluation experiments. The selected data sets have various uncertainty attributes and missing values. The overall result indicates that RS-CBGWO-FS with the Singer and piecewise chaos maps provides better effectiveness, minimal error, higher convergence speed and lower computation time.
Year
DOI
Venue
2020
10.1504/IJCAT.2020.107901
INTERNATIONAL JOURNAL OF COMPUTER APPLICATIONS IN TECHNOLOGY
Keywords
DocType
Volume
GWO, grey wolf optimisation, meta-heuristics, rough set theory, chaos theory, feature reduction and selection, data classification
Journal
63
Issue
ISSN
Citations 
1-2
0952-8091
0
PageRank 
References 
Authors
0.34
0
3
Name
Order
Citations
PageRank
Ahmad Taher Azar168583.73
Ahmed M. Anter2447.37
Khaled M. Fouad300.34