Disagreement based semi-supervised learning approaches with belief functions

Knowledge-Based Systems(2020)

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摘要
In many machine learning tasks, it is usually difficult to obtain enough labeled samples. Semi-supervised learning that exploits unlabeled samples in addition to labeled ones has attracted a lot of research attentions. Traditional semi-supervised methods may encounter uncertainty problems and information loss when dealing with those samples having ambiguous class belongingness. In this paper, the uncertainties encountered in semi-supervised learning are addressed using the theory of belief functions, and semi-supervised learning methods based on belief functions are proposed. The proposed methods label the unlabeled data with belief modeling. They can effectively use limited supervised information to facilitate the classification process. Experimental results based on benchmark data sets show that the proposed approaches can effectively exploit unlabeled data and perform better compared with prevailing approaches.
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关键词
Machine learning,Semi-supervised learning,Belief functions,Uncertainty
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