Binary Bitwise Artificial Bee Colony as Feature Selection Optimization Approach within Taguchi's T-Method

Taguchi's T-Method is one of the Mahalanobis Taguchi System-(MTS-) ruled prediction techniques that has been established specifically but not limited to small, multivariate sample data. The prediction model's complexity aspect can be further enhanced by removing features that do not provid...

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Main Authors: Harudin, Nolia, Ramlie, Faizir, Wan Muhamad, Wan Zuki Azman, Muhtazaruddin, M. N., Jamaludin, Khairur Rijal, Abu, Mohd. Yazid, Marlan, Zulkifli Marlah
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Published: Hindawi Limited 2021
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Online Access:http://eprints.utm.my/id/eprint/95290/
http://dx.doi.org/10.1155/2021/5592132
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spelling my.utm.952902022-04-29T22:26:12Z http://eprints.utm.my/id/eprint/95290/ Binary Bitwise Artificial Bee Colony as Feature Selection Optimization Approach within Taguchi's T-Method Harudin, Nolia Ramlie, Faizir Wan Muhamad, Wan Zuki Azman Muhtazaruddin, M. N. Jamaludin, Khairur Rijal Abu, Mohd. Yazid Marlan, Zulkifli Marlah T Technology (General) Taguchi's T-Method is one of the Mahalanobis Taguchi System-(MTS-) ruled prediction techniques that has been established specifically but not limited to small, multivariate sample data. The prediction model's complexity aspect can be further enhanced by removing features that do not provide valuable information on the overall prediction. In order to accomplish this, a matrix called orthogonal array (OA) is used within the existing Taguchi's T-Method. However, OA's fixed-scheme matrix and its drawback in coping with the high-dimensionality factor led to a suboptimal solution. On the contrary, the usage of SNR (dB) as its objective function was a reliable measure. The application of Binary Bitwise Artificial Bee Colony (BitABC) has been adopted as the novel search engine that helps cater to OA's limitation within Taguchi's T-Method. The generalization aspect using bootstrap was a fundamental addition incorporated in this research to control the effect of overfitting in the analysis. The adoption of BitABC has been tested on eight (8) case studies, including large and small sample datasets. The result shows improved predictive accuracy ranging between 13.99% and 32.86% depending on cases. This study proved that incorporating BitABC techniques into Taguchi's T-Method methodology effectively improved its prediction accuracy. Hindawi Limited 2021 Article PeerReviewed Harudin, Nolia and Ramlie, Faizir and Wan Muhamad, Wan Zuki Azman and Muhtazaruddin, M. N. and Jamaludin, Khairur Rijal and Abu, Mohd. Yazid and Marlan, Zulkifli Marlah (2021) Binary Bitwise Artificial Bee Colony as Feature Selection Optimization Approach within Taguchi's T-Method. Mathematical Problems in Engineering, 2021 . p. 5592132. ISSN 1024-123X http://dx.doi.org/10.1155/2021/5592132
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic T Technology (General)
spellingShingle T Technology (General)
Harudin, Nolia
Ramlie, Faizir
Wan Muhamad, Wan Zuki Azman
Muhtazaruddin, M. N.
Jamaludin, Khairur Rijal
Abu, Mohd. Yazid
Marlan, Zulkifli Marlah
Binary Bitwise Artificial Bee Colony as Feature Selection Optimization Approach within Taguchi's T-Method
description Taguchi's T-Method is one of the Mahalanobis Taguchi System-(MTS-) ruled prediction techniques that has been established specifically but not limited to small, multivariate sample data. The prediction model's complexity aspect can be further enhanced by removing features that do not provide valuable information on the overall prediction. In order to accomplish this, a matrix called orthogonal array (OA) is used within the existing Taguchi's T-Method. However, OA's fixed-scheme matrix and its drawback in coping with the high-dimensionality factor led to a suboptimal solution. On the contrary, the usage of SNR (dB) as its objective function was a reliable measure. The application of Binary Bitwise Artificial Bee Colony (BitABC) has been adopted as the novel search engine that helps cater to OA's limitation within Taguchi's T-Method. The generalization aspect using bootstrap was a fundamental addition incorporated in this research to control the effect of overfitting in the analysis. The adoption of BitABC has been tested on eight (8) case studies, including large and small sample datasets. The result shows improved predictive accuracy ranging between 13.99% and 32.86% depending on cases. This study proved that incorporating BitABC techniques into Taguchi's T-Method methodology effectively improved its prediction accuracy.
format Article
author Harudin, Nolia
Ramlie, Faizir
Wan Muhamad, Wan Zuki Azman
Muhtazaruddin, M. N.
Jamaludin, Khairur Rijal
Abu, Mohd. Yazid
Marlan, Zulkifli Marlah
author_facet Harudin, Nolia
Ramlie, Faizir
Wan Muhamad, Wan Zuki Azman
Muhtazaruddin, M. N.
Jamaludin, Khairur Rijal
Abu, Mohd. Yazid
Marlan, Zulkifli Marlah
author_sort Harudin, Nolia
title Binary Bitwise Artificial Bee Colony as Feature Selection Optimization Approach within Taguchi's T-Method
title_short Binary Bitwise Artificial Bee Colony as Feature Selection Optimization Approach within Taguchi's T-Method
title_full Binary Bitwise Artificial Bee Colony as Feature Selection Optimization Approach within Taguchi's T-Method
title_fullStr Binary Bitwise Artificial Bee Colony as Feature Selection Optimization Approach within Taguchi's T-Method
title_full_unstemmed Binary Bitwise Artificial Bee Colony as Feature Selection Optimization Approach within Taguchi's T-Method
title_sort binary bitwise artificial bee colony as feature selection optimization approach within taguchi's t-method
publisher Hindawi Limited
publishDate 2021
url http://eprints.utm.my/id/eprint/95290/
http://dx.doi.org/10.1155/2021/5592132
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score 13.18916