Hybrid Binary Dragonfly Optimization Algorithm with Statistical Dependence for Feature Selection

The aim of the feature selection technique is to obtain the most important information from a specific set of datasets. Further elaborations in the feature selection technique will positively affect the classification process, which can be applied in various areas such as machine learning, pattern r...

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Main Authors: Omar S. Qasim, Mohammed Sabah Mahmoud, Fatima Mahmood Hasan
Format: Article
Language:English
Published: International Journal of Mathematical, Engineering and Management Sciences 2020-12-01
Series:International Journal of Mathematical, Engineering and Management Sciences
Subjects:
Online Access:https://www.ijmems.in/volumes/volume5/number6/105-IJMEMS-20-50-5-6-1420-1428-2020.pdf
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spelling doaj-713b83800eaf41bda9fd5eb03a30a3082020-11-25T03:55:13ZengInternational Journal of Mathematical, Engineering and Management SciencesInternational Journal of Mathematical, Engineering and Management Sciences2455-77492455-77492020-12-01561420142810.33889/IJMEMS.2020.5.6.105Hybrid Binary Dragonfly Optimization Algorithm with Statistical Dependence for Feature SelectionOmar S. Qasim0Mohammed Sabah Mahmoud1 Fatima Mahmood Hasan2Department of Mathematics, University of Mosul, Mosul, Iraq.Department of Mathematics, University of Mosul, Mosul, Iraq.Department of Mathematics, University of Mosul, Mosul, Iraq.The aim of the feature selection technique is to obtain the most important information from a specific set of datasets. Further elaborations in the feature selection technique will positively affect the classification process, which can be applied in various areas such as machine learning, pattern recognition, and signal processing. In this study, a hybrid algorithm between the binary dragonfly algorithm (BDA) and the statistical dependence (SD) is presented, whereby the feature selection method in discrete space is modeled as a binary-based optimization algorithm, guiding BDA and using the accuracy of the k-nearest neighbors classifier on the dataset to verify it in the chosen fitness function. The experimental results demonstrated that the proposed algorithm, which we refer to as SD-BDA, outperforms other algorithms in terms of the accuracy of the results represented by the cost of the calculations and the accuracy of the classification. https://www.ijmems.in/volumes/volume5/number6/105-IJMEMS-20-50-5-6-1420-1428-2020.pdffeature selection; classification; dragonfly algorithm; statistical dependence
collection DOAJ
language English
format Article
sources DOAJ
author Omar S. Qasim
Mohammed Sabah Mahmoud
Fatima Mahmood Hasan
spellingShingle Omar S. Qasim
Mohammed Sabah Mahmoud
Fatima Mahmood Hasan
Hybrid Binary Dragonfly Optimization Algorithm with Statistical Dependence for Feature Selection
International Journal of Mathematical, Engineering and Management Sciences
feature selection; classification; dragonfly algorithm; statistical dependence
author_facet Omar S. Qasim
Mohammed Sabah Mahmoud
Fatima Mahmood Hasan
author_sort Omar S. Qasim
title Hybrid Binary Dragonfly Optimization Algorithm with Statistical Dependence for Feature Selection
title_short Hybrid Binary Dragonfly Optimization Algorithm with Statistical Dependence for Feature Selection
title_full Hybrid Binary Dragonfly Optimization Algorithm with Statistical Dependence for Feature Selection
title_fullStr Hybrid Binary Dragonfly Optimization Algorithm with Statistical Dependence for Feature Selection
title_full_unstemmed Hybrid Binary Dragonfly Optimization Algorithm with Statistical Dependence for Feature Selection
title_sort hybrid binary dragonfly optimization algorithm with statistical dependence for feature selection
publisher International Journal of Mathematical, Engineering and Management Sciences
series International Journal of Mathematical, Engineering and Management Sciences
issn 2455-7749
2455-7749
publishDate 2020-12-01
description The aim of the feature selection technique is to obtain the most important information from a specific set of datasets. Further elaborations in the feature selection technique will positively affect the classification process, which can be applied in various areas such as machine learning, pattern recognition, and signal processing. In this study, a hybrid algorithm between the binary dragonfly algorithm (BDA) and the statistical dependence (SD) is presented, whereby the feature selection method in discrete space is modeled as a binary-based optimization algorithm, guiding BDA and using the accuracy of the k-nearest neighbors classifier on the dataset to verify it in the chosen fitness function. The experimental results demonstrated that the proposed algorithm, which we refer to as SD-BDA, outperforms other algorithms in terms of the accuracy of the results represented by the cost of the calculations and the accuracy of the classification.
topic feature selection; classification; dragonfly algorithm; statistical dependence
url https://www.ijmems.in/volumes/volume5/number6/105-IJMEMS-20-50-5-6-1420-1428-2020.pdf
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