Enhancing big data feature selection using a hybrid correlation-based feature selection

This study proposes an alternate data extraction method that combines three well-known feature selection methods for handling large and problematic datasets: the correlation-based feature selection (CFS), best first search (BFS), and dominance-based rough set approach (DRSA) methods. This study aims...

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Published in:Electronics (Switzerland)
Main Author: Mohamad M.; Selamat A.; Krejcar O.; Crespo R.G.; Herrera-Viedma E.; Fujita H.
Format: Article
Language:English
Published: MDPI 2021
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85120159767&doi=10.3390%2felectronics10232984&partnerID=40&md5=f7043c22bd74f2e2b6993aab356ca26e
id 2-s2.0-85120159767
spelling 2-s2.0-85120159767
Mohamad M.; Selamat A.; Krejcar O.; Crespo R.G.; Herrera-Viedma E.; Fujita H.
Enhancing big data feature selection using a hybrid correlation-based feature selection
2021
Electronics (Switzerland)
10
23
10.3390/electronics10232984
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85120159767&doi=10.3390%2felectronics10232984&partnerID=40&md5=f7043c22bd74f2e2b6993aab356ca26e
This study proposes an alternate data extraction method that combines three well-known feature selection methods for handling large and problematic datasets: the correlation-based feature selection (CFS), best first search (BFS), and dominance-based rough set approach (DRSA) methods. This study aims to enhance the classifier’s performance in decision analysis by eliminating uncorrelated and inconsistent data values. The proposed method, named CFS-DRSA, comprises several phases executed in sequence, with the main phases incorporating two crucial feature extraction tasks. Data reduction is first, which implements a CFS method with a BFS algorithm. Secondly, a data selection process applies a DRSA to generate the optimized dataset. Therefore, this study aims to solve the computational time complexity and increase the classification accuracy. Several datasets with various characteristics and volumes were used in the experimental process to evaluate the proposed method’s credibility. The method’s performance was validated using standard evaluation measures and benchmarked with other established methods such as deep learning (DL). Overall, the proposed work proved that it could assist the classifier in returning a significant result, with an accuracy rate of 82.1% for the neural network (NN) classifier, compared to the support vector machine (SVM), which returned 66.5% and 49.96% for DL. The one-way analysis of variance (ANOVA) statistical result indicates that the proposed method is an alternative extraction tool for those with difficulties acquiring expensive big data analysis tools and those who are new to the data analysis field. © 2021 by the authors. Licensee MDPI, Basel, Switzerland.
MDPI
20799292
English
Article
All Open Access; Gold Open Access
author Mohamad M.; Selamat A.; Krejcar O.; Crespo R.G.; Herrera-Viedma E.; Fujita H.
spellingShingle Mohamad M.; Selamat A.; Krejcar O.; Crespo R.G.; Herrera-Viedma E.; Fujita H.
Enhancing big data feature selection using a hybrid correlation-based feature selection
author_facet Mohamad M.; Selamat A.; Krejcar O.; Crespo R.G.; Herrera-Viedma E.; Fujita H.
author_sort Mohamad M.; Selamat A.; Krejcar O.; Crespo R.G.; Herrera-Viedma E.; Fujita H.
title Enhancing big data feature selection using a hybrid correlation-based feature selection
title_short Enhancing big data feature selection using a hybrid correlation-based feature selection
title_full Enhancing big data feature selection using a hybrid correlation-based feature selection
title_fullStr Enhancing big data feature selection using a hybrid correlation-based feature selection
title_full_unstemmed Enhancing big data feature selection using a hybrid correlation-based feature selection
title_sort Enhancing big data feature selection using a hybrid correlation-based feature selection
publishDate 2021
container_title Electronics (Switzerland)
container_volume 10
container_issue 23
doi_str_mv 10.3390/electronics10232984
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85120159767&doi=10.3390%2felectronics10232984&partnerID=40&md5=f7043c22bd74f2e2b6993aab356ca26e
description This study proposes an alternate data extraction method that combines three well-known feature selection methods for handling large and problematic datasets: the correlation-based feature selection (CFS), best first search (BFS), and dominance-based rough set approach (DRSA) methods. This study aims to enhance the classifier’s performance in decision analysis by eliminating uncorrelated and inconsistent data values. The proposed method, named CFS-DRSA, comprises several phases executed in sequence, with the main phases incorporating two crucial feature extraction tasks. Data reduction is first, which implements a CFS method with a BFS algorithm. Secondly, a data selection process applies a DRSA to generate the optimized dataset. Therefore, this study aims to solve the computational time complexity and increase the classification accuracy. Several datasets with various characteristics and volumes were used in the experimental process to evaluate the proposed method’s credibility. The method’s performance was validated using standard evaluation measures and benchmarked with other established methods such as deep learning (DL). Overall, the proposed work proved that it could assist the classifier in returning a significant result, with an accuracy rate of 82.1% for the neural network (NN) classifier, compared to the support vector machine (SVM), which returned 66.5% and 49.96% for DL. The one-way analysis of variance (ANOVA) statistical result indicates that the proposed method is an alternative extraction tool for those with difficulties acquiring expensive big data analysis tools and those who are new to the data analysis field. © 2021 by the authors. Licensee MDPI, Basel, Switzerland.
publisher MDPI
issn 20799292
language English
format Article
accesstype All Open Access; Gold Open Access
record_format scopus
collection Scopus
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