Work place: Kwara State University, Department of Computer Science, Malete, Nigeria
E-mail: kazeem.gbolagade@kwasu.edu.ng
Website:
Research Interests: Interaction Design, Computer systems and computational processes, Computer Architecture and Organization, Numerical Analysis
Biography
Kazeem A. Gbolagade A Professor and Provost at the College of Computer in Information Science, Kwara State University, Malete, Nigeria. was born in Iwo (Osun State), Nigeria, on the 27th of August, 1974. He received his B.Sc degree in 2000 in Computer Science from the University of Ilorin, Kwara State, Nigeria. In 2004, he obtained his Masters degree from the University of Ibadan, Nigeria. In April 2007, he joined the Computer Engineering Laboratory group at the Delft University of Technology (TU Delft), The Netherlands. In TU Delft, he pursued a PhD degree under the supervision of Prof. Sorin Cotofana. He is a member of the IEEE. His research interests include Digital Logic Design, Computer Arithmetic, Residue Number Systems, VLSI Design, and Numerical Computing. His research interests include Digital Logic Design, Computer Arithmetic, Residue Number Systems, VLSI Design, and Numerical Computing.
By Micheal O. Arowolo Sulaiman O. Abdulsalam Rafiu M. Isiaka Kazeem A. Gbolagade
DOI: https://doi.org/10.5815/ijitcs.2017.11.06, Pub. Date: 8 Nov. 2017
In this paper, a combination of dimensionality reduction technique, to address the problems of highly correlated data and selection of significant variables out of set of features, by assessing important and significant dimensionality reduction techniques contributing to efficient classification of genes is proposed. One-Way-ANOVA is employed for feature selection to obtain an optimal number of genes, Principal Component Analysis (PCA) as well as Partial Least Squares (PLS) are employed as feature extraction methods separately, to reduce the selected features from microarray dataset. An experimental result on colon cancer dataset uses Support Vector Machine (SVM) as a classification method. Combining feature selection and feature extraction into a generalized model, a robust and efficient dimensional space is obtained. In this approach, redundant and irrelevant features are removed at each step; classification presents an efficient performance of accuracy of about 98% over the state of art.
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