An Efficient Semi-Supervised Multi-label Classifier Capable of Handling Missing Labels

Volume: 31, Issue: 2, Pages: 229 - 242
Published: Feb 1, 2019
Abstract
Multi-label classification has received considerable interest in recent years. Multi-label classifiers usually need to address many issues including: handling large-scale datasets with many instances and a large set of labels, compensating missing label assignments in the training set, considering correlations between labels, as well as exploiting unlabeled data to improve prediction performance. To tackle datasets with a large set of labels,...
Paper Details
Title
An Efficient Semi-Supervised Multi-label Classifier Capable of Handling Missing Labels
Published Date
Feb 1, 2019
Volume
31
Issue
2
Pages
229 - 242
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