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Semi-Supervised k-Star (SSS): A Machine Learning Method with a Novel Holo-Training Approach

Kökten Ulaş Birant

2023Entropy13 citationsDOIOpen Access PDF

Abstract

As one of the entropy-based methods, the k-Star algorithm benefits from information theory in computing the distances between data instances during the classification task. k-Star is a machine learning method with a high classification performance and strong generalization ability. Nevertheless, as a standard supervised learning method, it performs learning only from labeled data. This paper proposes an improved method, called Semi-Supervised k-Star (SSS), which makes efficient predictions by considering unlabeled data in addition to labeled data. Moreover, it introduces a novel semi-supervised learning approach, called holo-training, against self-training. It has the advantage of enabling a powerful and robust model of data by combining multiple classifiers and using an entropy measure. The results of extensive experimental studies showed that the proposed holo-training approach outperformed the self-training approach on 13 out of the 18 datasets. Furthermore, the proposed SSS method achieved higher accuracy (95.25%) than the state-of-the-art semi-supervised methods (90.01%) on average. The significance of the experimental results was validated by using both the Binomial Sign test and the Friedman test.

Topics & Concepts

Computer scienceArtificial intelligenceMachine learningSemi-supervised learningBinary classificationEntropy (arrow of time)GeneralizationTest dataSupervised learningCross entropyLabeled dataSSS*Pattern recognition (psychology)Artificial neural networkMathematicsSupport vector machineMathematical analysisPhysicsProgramming languageQuantum mechanicsMachine Learning and Data ClassificationFace and Expression RecognitionImbalanced Data Classification Techniques
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