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An Adaptive Genetic Algorithm with Recursive Feature Elimination Approach for Predicting Malaria Vector Gene Expression Data Classification using Support Vector Machine Kernels
Author(s) -
Micheal Olaolu Arowolo,
Marion O. Adebiyi,
Chiebuka T. Nnodim,
Sulaiman Olaniyi Abdulsalam,
Ayodele A. Adebiyi
Publication year - 2021
Publication title -
walailak journal of science and technology (wjst)
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.146
H-Index - 15
eISSN - 2228-835X
pISSN - 1686-3933
DOI - 10.48048/wjst.2021.9849
Subject(s) - support vector machine , feature selection , artificial intelligence , feature (linguistics) , computer science , feature vector , machine learning , pattern recognition (psychology) , algorithm , data mining , philosophy , linguistics
As mosquito parasites breed across many parts of the sub-Saharan Africa part of the world, infected cells embrace an unpredictable and erratic life period. Millions of individual parasites have gene expressions. Ribonucleic acid sequencing (RNA-seq) is a popular transcriptional technique that has improved the detection of major genetic probes. The RNA-seq analysis generally requires computational improvements of machine learning techniques since it computes interpretations of gene expressions. For this study, an adaptive genetic algorithm (A-GA) with recursive feature elimination (RFE) (A-GA-RFE) feature selection algorithms was utilized to detect important information from a high-dimensional gene expression malaria vector RNA-seq dataset. Support Vector Machine (SVM) kernels were used as the classification algorithms to evaluate its predictive performances. The feasibility of this study was confirmed by using an RNA-seq dataset from the mosquito Anopheles gambiae. The technique results in related performance had 98.3 and 96.7 % accuracy rates, respectively.HIGHLIGHTSDimensionality reduction method based of feature selectionClassification using Support vector machineClassification of malaria vector dataset using an adaptive GA-RFE-SVMGRAPHICAL ABSTRACT

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