Multi-label Classification Using Vector Generalized Additive Model via Cross-Validation

Multi-label classification is a unique challenge in machine learning designed for two targets with each containing one or multiple classes. This problem can be resolved using several methods, including the classification of the targets individually or simultaneously. However, most models cannot clas...

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Main Authors: Muhaimin, Amri, Wibowo, Wahyu, Riyantoko, Prismahardi Aji
Format: Article
Language:English
Published: Universiti Utara Malaysia Press 2023
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Online Access:https://repo.uum.edu.my/id/eprint/29908/1/JICT%2022%2004%202023%20657-673.pdf
https://doi.org/10.32890/jict2023.22.4.5
https://repo.uum.edu.my/id/eprint/29908/
https://e-journal.uum.edu.my/index.php/jict/article/view/20380
https://doi.org/10.32890/jict2023.22.4.5
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spelling my.uum.repo.299082023-11-05T10:05:44Z https://repo.uum.edu.my/id/eprint/29908/ Multi-label Classification Using Vector Generalized Additive Model via Cross-Validation Muhaimin, Amri Wibowo, Wahyu Riyantoko, Prismahardi Aji T Technology (General) Multi-label classification is a unique challenge in machine learning designed for two targets with each containing one or multiple classes. This problem can be resolved using several methods, including the classification of the targets individually or simultaneously. However, most models cannot classify the target simultaneously, and this is not expected to happen in the modeling rule. This study was conducted to propose a novel solution in the form of a Vector Generalized Additive Model Using Cross-Validation (VGAMCV) to address these problems. The proposed method leverages the Vector Generalized Additive Model (VGAM), which is a semi-parametric model combining both parametric and non-parametric components as the underlying base model. Cross-validation was also applied to tune the parameters to optimize the performance of the method. Moreover, the methodology of VGAMCV was compared with a tree-based model, Random Forest, commonly used in multi-label classification to evaluate its effectiveness based on fourteen metric scores. The results showed positive outcomes as indicated by 0.703 average accuracy and 0.601 Area Under Curve (AUC) recorded, but these improvements were not statistically significant. Meanwhile, the method offered a viable alternative for multi-label classification tasks, and its introduction served as a contribution to the expanding repertoire of methods available for this purpose. Universiti Utara Malaysia Press 2023 Article PeerReviewed application/pdf en cc4_by https://repo.uum.edu.my/id/eprint/29908/1/JICT%2022%2004%202023%20657-673.pdf Muhaimin, Amri and Wibowo, Wahyu and Riyantoko, Prismahardi Aji (2023) Multi-label Classification Using Vector Generalized Additive Model via Cross-Validation. Journal of Information and Communication Technology, 22 (4). pp. 657-673. ISSN 2180-3862 https://e-journal.uum.edu.my/index.php/jict/article/view/20380 https://doi.org/10.32890/jict2023.22.4.5 https://doi.org/10.32890/jict2023.22.4.5
institution Universiti Utara Malaysia
building UUM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Utara Malaysia
content_source UUM Institutional Repository
url_provider http://repo.uum.edu.my/
language English
topic T Technology (General)
spellingShingle T Technology (General)
Muhaimin, Amri
Wibowo, Wahyu
Riyantoko, Prismahardi Aji
Multi-label Classification Using Vector Generalized Additive Model via Cross-Validation
description Multi-label classification is a unique challenge in machine learning designed for two targets with each containing one or multiple classes. This problem can be resolved using several methods, including the classification of the targets individually or simultaneously. However, most models cannot classify the target simultaneously, and this is not expected to happen in the modeling rule. This study was conducted to propose a novel solution in the form of a Vector Generalized Additive Model Using Cross-Validation (VGAMCV) to address these problems. The proposed method leverages the Vector Generalized Additive Model (VGAM), which is a semi-parametric model combining both parametric and non-parametric components as the underlying base model. Cross-validation was also applied to tune the parameters to optimize the performance of the method. Moreover, the methodology of VGAMCV was compared with a tree-based model, Random Forest, commonly used in multi-label classification to evaluate its effectiveness based on fourteen metric scores. The results showed positive outcomes as indicated by 0.703 average accuracy and 0.601 Area Under Curve (AUC) recorded, but these improvements were not statistically significant. Meanwhile, the method offered a viable alternative for multi-label classification tasks, and its introduction served as a contribution to the expanding repertoire of methods available for this purpose.
format Article
author Muhaimin, Amri
Wibowo, Wahyu
Riyantoko, Prismahardi Aji
author_facet Muhaimin, Amri
Wibowo, Wahyu
Riyantoko, Prismahardi Aji
author_sort Muhaimin, Amri
title Multi-label Classification Using Vector Generalized Additive Model via Cross-Validation
title_short Multi-label Classification Using Vector Generalized Additive Model via Cross-Validation
title_full Multi-label Classification Using Vector Generalized Additive Model via Cross-Validation
title_fullStr Multi-label Classification Using Vector Generalized Additive Model via Cross-Validation
title_full_unstemmed Multi-label Classification Using Vector Generalized Additive Model via Cross-Validation
title_sort multi-label classification using vector generalized additive model via cross-validation
publisher Universiti Utara Malaysia Press
publishDate 2023
url https://repo.uum.edu.my/id/eprint/29908/1/JICT%2022%2004%202023%20657-673.pdf
https://doi.org/10.32890/jict2023.22.4.5
https://repo.uum.edu.my/id/eprint/29908/
https://e-journal.uum.edu.my/index.php/jict/article/view/20380
https://doi.org/10.32890/jict2023.22.4.5
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score 13.211869