Analysis of metaheuristics featureselection algorithm for classification

Classification is a very vital task that is performed in machine learning. A technique used for classification is trained on various instances to foresee the class labels of hidden instances, and this is known as testing instances. The technique used for classification is able to find the connection...

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Main Authors: Ajibade, Samuel-Soma M., Ahmad, Nor Bahiah, Zainal, Anazida
Format: Conference or Workshop Item
Published: 2021
Subjects:
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author Ajibade, Samuel-Soma M.
Ahmad, Nor Bahiah
Zainal, Anazida
author_facet Ajibade, Samuel-Soma M.
Ahmad, Nor Bahiah
Zainal, Anazida
author_sort Ajibade, Samuel-Soma M.
collection ePrints
description Classification is a very vital task that is performed in machine learning. A technique used for classification is trained on various instances to foresee the class labels of hidden instances, and this is known as testing instances. The technique used for classification is able to find the connection between the class and instances due to the aid from the training process known as attributes. Redundant and non-relevant data are eradicated from the dataset with feature selection technique and these gives room for enhancement of the classification performance through feature selection. This research displays the feature selection techniques performances and are divided into wrapped-based metaheuristics algorithm and filter-based algorithms using two educational datasets. Four different classification techniques were used on the datasets and the outcome shows that Decision Tree (DT) gave the best performance on the datasets. Furthermore, the result shows that the proposed CHPSO-DE outshined other feature selection algorithms in that it obtained the best classification performance by using fewer features. The result of the various feature selection and classification technique will help researchers in getting the most efficient of feature selection algorithms and classification techniques.
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spelling utm.eprints-972932022-09-26T03:40:13Z http://eprints.utm.my/97293/ Analysis of metaheuristics featureselection algorithm for classification Ajibade, Samuel-Soma M. Ahmad, Nor Bahiah Zainal, Anazida QA75 Electronic computers. Computer science Classification is a very vital task that is performed in machine learning. A technique used for classification is trained on various instances to foresee the class labels of hidden instances, and this is known as testing instances. The technique used for classification is able to find the connection between the class and instances due to the aid from the training process known as attributes. Redundant and non-relevant data are eradicated from the dataset with feature selection technique and these gives room for enhancement of the classification performance through feature selection. This research displays the feature selection techniques performances and are divided into wrapped-based metaheuristics algorithm and filter-based algorithms using two educational datasets. Four different classification techniques were used on the datasets and the outcome shows that Decision Tree (DT) gave the best performance on the datasets. Furthermore, the result shows that the proposed CHPSO-DE outshined other feature selection algorithms in that it obtained the best classification performance by using fewer features. The result of the various feature selection and classification technique will help researchers in getting the most efficient of feature selection algorithms and classification techniques. 2021 Conference or Workshop Item PeerReviewed Ajibade, Samuel-Soma M. and Ahmad, Nor Bahiah and Zainal, Anazida (2021) Analysis of metaheuristics featureselection algorithm for classification. In: 20th International Conference on Hybrid Intelligent Systems, 14 - 16 December 2020, Bhopal. http://dx.doi.org/10.1007/978-3-030-73050-5_21
spellingShingle QA75 Electronic computers. Computer science
Ajibade, Samuel-Soma M.
Ahmad, Nor Bahiah
Zainal, Anazida
Analysis of metaheuristics featureselection algorithm for classification
title Analysis of metaheuristics featureselection algorithm for classification
title_full Analysis of metaheuristics featureselection algorithm for classification
title_fullStr Analysis of metaheuristics featureselection algorithm for classification
title_full_unstemmed Analysis of metaheuristics featureselection algorithm for classification
title_short Analysis of metaheuristics featureselection algorithm for classification
title_sort analysis of metaheuristics featureselection algorithm for classification
topic QA75 Electronic computers. Computer science
work_keys_str_mv AT ajibadesamuelsomam analysisofmetaheuristicsfeatureselectionalgorithmforclassification
AT ahmadnorbahiah analysisofmetaheuristicsfeatureselectionalgorithmforclassification
AT zainalanazida analysisofmetaheuristicsfeatureselectionalgorithmforclassification