A Systematic Literature Review on Multi-Label Classification based on Machine Learning Algorithms
A Systematic Literature Review on Multi-Label Classification based on Machine Learning Algorithms
Author(s): Nurshahira Endut, W. M. Amir Fazamin W. Hamzah, Ismahafezi Ismail, Mohd Kamir Yusof, Yousef Abu Baker, Hafiz YusoffSubject(s): Education and training
Published by: UIKTEN - Association for Information Communication Technology Education and Science
Keywords: multi-label; classification; machine learning;
Summary/Abstract: Multi-label classification is a technique used for mapping data from single labels to multiple labels. These multiple labels stand part of the same label set comprising inconsistent labels. The objective of multi-label classification is to create a classification model for previously unidentified samples. The accuracy of multi-label classification based on machine learning algorithms has been a particular study and discussion topic for researchers. This research aims to present a systematic literature review on multi-label classification based on machine learning algorithms. This study also discusses machine learning algorithm techniques and methods for multi-label classification. The findings would help researchers to explore and find the best accuracy of multi-label classification. The review result considered the Support Vector Machine (SVM) as the most accurate and appropriate machine learning algorithm in multi-label classification.
Journal: TEM Journal
- Issue Year: 11/2022
- Issue No: 2
- Page Range: 658-666
- Page Count: 9
- Language: English