Semi-supervised multi-label classification using an extended graph-based manifold regularization

被引:0
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作者
Ding Li
Scott Dick
机构
[1] University of Alberta,Department of Electrical and Computer Engineering
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关键词
Manifold regularization; Multi-label classification; Semi-supervised learning; Graph-based learning;
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摘要
Graph-based algorithms are known to be effective approaches to semi-supervised learning. However, there has been relatively little work on extending these algorithms to the multi-label classification case. We derive an extension of the Manifold Regularization algorithm to multi-label classification, which is significantly simpler than the general Vector Manifold Regularization approach. We then augment our algorithm with a weighting strategy to allow differential influence on a model between instances having ground-truth vs. induced labels. Experiments on four benchmark multi-label data sets show that the resulting algorithm performs better overall compared to the existing semi-supervised multi-label classification algorithms at various levels of label sparsity. Comparisons with state-of-the-art supervised multi-label approaches (which of course are fully labeled) also show that our algorithm outperforms all of them even with a substantial number of unlabeled examples.
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页码:1561 / 1577
页数:16
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