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A Systematic Literature Review on Multi-Label Classification based on Machine Learning Algorithms

Nurshahira Endut, W. M. Amir Fazamin W. Hamzah, Ismahafezi Ismail, Mohd Kamir Yusof, Yousef Abu Baker, Hafiz Yusoff

2022TEM Journal23 citationsDOIOpen Access PDF

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.

Topics & Concepts

Machine learningMulti-label classificationArtificial intelligenceComputer scienceSupport vector machineOne-class classificationStatistical classificationRelevance vector machineSet (abstract data type)AlgorithmLinear classifierStructured support vector machineProgramming languageText and Document Classification TechnologiesSpam and Phishing DetectionImbalanced Data Classification Techniques
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