Opposition-Based Learning Binary Bat Algorithm as Feature Selection Approach in Taguchi's T-Method

Prediction modeling has emerged as a powerful tool in various fields, from healthcare to finance, climate science to marketing. One of the prediction modelling techniques available is known as Taguchi's T-method introduced by Dr. Genichi Taguchi. In the T-method prediction model, optimization o...

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Main Authors: Marlan Z.M., Jamaludin K.R., Harudin N.
Other Authors: 57223885180
Format: Conference Paper
Published: Institute of Electrical and Electronics Engineers Inc. 2024
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spelling my.uniten.dspace-344072024-10-14T11:19:34Z Opposition-Based Learning Binary Bat Algorithm as Feature Selection Approach in Taguchi's T-Method Marlan Z.M. Jamaludin K.R. Harudin N. 57223885180 26434395500 56319654100 Binary Bat Algorithm Feature Selection Opposition-Based Learning Prediction Model Taguchi's T-method Forecasting Learning algorithms Learning systems Bat algorithms Binary bat algorithm Climate science Features selection Model optimization Modelling techniques Opposition-based learning Orthogonal array Prediction modelling Taguchi T-method Feature Selection Prediction modeling has emerged as a powerful tool in various fields, from healthcare to finance, climate science to marketing. One of the prediction modelling techniques available is known as Taguchi's T-method introduced by Dr. Genichi Taguchi. In the T-method prediction model, optimization of the model's accuracy is performed through feature selection process by utilizing an orthogonal array. However, the outcome yielded a sub-optimal result as the orthogonal array has limitation involving a fixed and limited combination used and lack of higher order feature combination in the analysis. Thus, this study proposed an Opposition-based Learning Binary Bat Algorithm as the feature selection technique in the T-method. Based on the experimental results, the proposed feature selection method successfully found a superior combination that yields a better result in terms of the objective function. The proposed method recorded a 77.8% reduction rate of the number of features from 18 to 4. In terms of prediction accuracy, the new T-method prediction model successfully improved 15.9% as compared to the model without feature selection and the T-method with conventional orthogonal array approach. These results suggest that the new T-method prediction model is better in predicting the output even when only 4 features incorporated in the model. � 2023 IEEE. Final 2024-10-14T03:19:34Z 2024-10-14T03:19:34Z 2023 Conference Paper 10.1109/ICSPC59664.2023.10420191 2-s2.0-85186661092 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85186661092&doi=10.1109%2fICSPC59664.2023.10420191&partnerID=40&md5=61194d9d651a445d51d63690dcf1d2b3 https://irepository.uniten.edu.my/handle/123456789/34407 107 112 Institute of Electrical and Electronics Engineers Inc. Scopus
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
topic Binary Bat Algorithm
Feature Selection
Opposition-Based Learning
Prediction Model
Taguchi's T-method
Forecasting
Learning algorithms
Learning systems
Bat algorithms
Binary bat algorithm
Climate science
Features selection
Model optimization
Modelling techniques
Opposition-based learning
Orthogonal array
Prediction modelling
Taguchi T-method
Feature Selection
spellingShingle Binary Bat Algorithm
Feature Selection
Opposition-Based Learning
Prediction Model
Taguchi's T-method
Forecasting
Learning algorithms
Learning systems
Bat algorithms
Binary bat algorithm
Climate science
Features selection
Model optimization
Modelling techniques
Opposition-based learning
Orthogonal array
Prediction modelling
Taguchi T-method
Feature Selection
Marlan Z.M.
Jamaludin K.R.
Harudin N.
Opposition-Based Learning Binary Bat Algorithm as Feature Selection Approach in Taguchi's T-Method
description Prediction modeling has emerged as a powerful tool in various fields, from healthcare to finance, climate science to marketing. One of the prediction modelling techniques available is known as Taguchi's T-method introduced by Dr. Genichi Taguchi. In the T-method prediction model, optimization of the model's accuracy is performed through feature selection process by utilizing an orthogonal array. However, the outcome yielded a sub-optimal result as the orthogonal array has limitation involving a fixed and limited combination used and lack of higher order feature combination in the analysis. Thus, this study proposed an Opposition-based Learning Binary Bat Algorithm as the feature selection technique in the T-method. Based on the experimental results, the proposed feature selection method successfully found a superior combination that yields a better result in terms of the objective function. The proposed method recorded a 77.8% reduction rate of the number of features from 18 to 4. In terms of prediction accuracy, the new T-method prediction model successfully improved 15.9% as compared to the model without feature selection and the T-method with conventional orthogonal array approach. These results suggest that the new T-method prediction model is better in predicting the output even when only 4 features incorporated in the model. � 2023 IEEE.
author2 57223885180
author_facet 57223885180
Marlan Z.M.
Jamaludin K.R.
Harudin N.
format Conference Paper
author Marlan Z.M.
Jamaludin K.R.
Harudin N.
author_sort Marlan Z.M.
title Opposition-Based Learning Binary Bat Algorithm as Feature Selection Approach in Taguchi's T-Method
title_short Opposition-Based Learning Binary Bat Algorithm as Feature Selection Approach in Taguchi's T-Method
title_full Opposition-Based Learning Binary Bat Algorithm as Feature Selection Approach in Taguchi's T-Method
title_fullStr Opposition-Based Learning Binary Bat Algorithm as Feature Selection Approach in Taguchi's T-Method
title_full_unstemmed Opposition-Based Learning Binary Bat Algorithm as Feature Selection Approach in Taguchi's T-Method
title_sort opposition-based learning binary bat algorithm as feature selection approach in taguchi's t-method
publisher Institute of Electrical and Electronics Engineers Inc.
publishDate 2024
_version_ 1814061055159042048
score 13.214268