A Robust Multi-Objective Feature Selection Model Based on Local Neighborhood Multi-Verse Optimization

Classification tasks often include, among the large number of features to be processed in the datasets, many irrelevant and redundant ones, which can even decrease the efficiency of classifiers. Feature Selection (FS) is the most common preprocessing technique utilized to overcome the drawbacks of t...

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Main Authors: Ibrahim Aljarah, Hossam Faris, Ali Asghar Heidari, Majdi M. Mafarja, Ala' M. Al-Zoubi, Pedro A. Castillo, Juan J. Merelo
Format: Article
Language:English
Published: IEEE 2021-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9483940/
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spelling doaj-ec496ac1b84b4374bc2ab0f656576ae32021-07-20T23:00:15ZengIEEEIEEE Access2169-35362021-01-01910000910002810.1109/ACCESS.2021.30972069483940A Robust Multi-Objective Feature Selection Model Based on Local Neighborhood Multi-Verse OptimizationIbrahim Aljarah0https://orcid.org/0000-0002-9265-9819Hossam Faris1https://orcid.org/0000-0003-4261-8127Ali Asghar Heidari2https://orcid.org/0000-0001-6938-9948Majdi M. Mafarja3https://orcid.org/0000-0002-0387-8252Ala' M. Al-Zoubi4https://orcid.org/0000-0003-0414-3570Pedro A. Castillo5https://orcid.org/0000-0002-5258-0620Juan J. Merelo6King Abdullah II School for Information Technology, The University of Jordan, Amman, JordanKing Abdullah II School for Information Technology, The University of Jordan, Amman, JordanSchool of Surveying and Geospatial Engineering, College of Engineering, University of Tehran, Tehran, IranDepartment of Computer Science, Birzeit University, Birzeit, PalestineKing Abdullah II School for Information Technology, The University of Jordan, Amman, JordanDepartment of Computer Architecture and Technology, University of Granada, Granada, SpainDepartment of Computer Architecture and Technology, University of Granada, Granada, SpainClassification tasks often include, among the large number of features to be processed in the datasets, many irrelevant and redundant ones, which can even decrease the efficiency of classifiers. Feature Selection (FS) is the most common preprocessing technique utilized to overcome the drawbacks of the high dimensionality of datasets and often has two conflicting objectives: The first function aims to maximize the classification performance or reduce the error rate of the classifier. In contrast, the second function is designed to minimize the number of features. However, the majority of wrapper FS techniques are developed for single-objective scenarios. Multi-verse optimizer (MVO) is considered as one of the well-regarded optimization approaches in recent years. In this paper, the binary multi-objective variant of MVO (MOMVO) is proposed to deal with feature selection tasks. The standard MOMVO suffers from local optima stagnation, so we propose an improved binary MOMVO to deal with this issue using the memory concept and personal best of the universes. The experimental results and comparisons indicate that the proposed binary MOMVO approach can effectively eliminate irrelevant and/or redundant features and maintain a minimum classification error rate when dealing with different datasets compared with the most popular feature selection techniques. Furthermore, the 14 benchmark datasets showed that the proposed approach outperforms the stat-of-art multi-objective optimization algorithms for feature selection.https://ieeexplore.ieee.org/document/9483940/Wrapper feature selectionmulti-verse algorithmoptimizationclassification
collection DOAJ
language English
format Article
sources DOAJ
author Ibrahim Aljarah
Hossam Faris
Ali Asghar Heidari
Majdi M. Mafarja
Ala' M. Al-Zoubi
Pedro A. Castillo
Juan J. Merelo
spellingShingle Ibrahim Aljarah
Hossam Faris
Ali Asghar Heidari
Majdi M. Mafarja
Ala' M. Al-Zoubi
Pedro A. Castillo
Juan J. Merelo
A Robust Multi-Objective Feature Selection Model Based on Local Neighborhood Multi-Verse Optimization
IEEE Access
Wrapper feature selection
multi-verse algorithm
optimization
classification
author_facet Ibrahim Aljarah
Hossam Faris
Ali Asghar Heidari
Majdi M. Mafarja
Ala' M. Al-Zoubi
Pedro A. Castillo
Juan J. Merelo
author_sort Ibrahim Aljarah
title A Robust Multi-Objective Feature Selection Model Based on Local Neighborhood Multi-Verse Optimization
title_short A Robust Multi-Objective Feature Selection Model Based on Local Neighborhood Multi-Verse Optimization
title_full A Robust Multi-Objective Feature Selection Model Based on Local Neighborhood Multi-Verse Optimization
title_fullStr A Robust Multi-Objective Feature Selection Model Based on Local Neighborhood Multi-Verse Optimization
title_full_unstemmed A Robust Multi-Objective Feature Selection Model Based on Local Neighborhood Multi-Verse Optimization
title_sort robust multi-objective feature selection model based on local neighborhood multi-verse optimization
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2021-01-01
description Classification tasks often include, among the large number of features to be processed in the datasets, many irrelevant and redundant ones, which can even decrease the efficiency of classifiers. Feature Selection (FS) is the most common preprocessing technique utilized to overcome the drawbacks of the high dimensionality of datasets and often has two conflicting objectives: The first function aims to maximize the classification performance or reduce the error rate of the classifier. In contrast, the second function is designed to minimize the number of features. However, the majority of wrapper FS techniques are developed for single-objective scenarios. Multi-verse optimizer (MVO) is considered as one of the well-regarded optimization approaches in recent years. In this paper, the binary multi-objective variant of MVO (MOMVO) is proposed to deal with feature selection tasks. The standard MOMVO suffers from local optima stagnation, so we propose an improved binary MOMVO to deal with this issue using the memory concept and personal best of the universes. The experimental results and comparisons indicate that the proposed binary MOMVO approach can effectively eliminate irrelevant and/or redundant features and maintain a minimum classification error rate when dealing with different datasets compared with the most popular feature selection techniques. Furthermore, the 14 benchmark datasets showed that the proposed approach outperforms the stat-of-art multi-objective optimization algorithms for feature selection.
topic Wrapper feature selection
multi-verse algorithm
optimization
classification
url https://ieeexplore.ieee.org/document/9483940/
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