Abstract
For many classification problems, unlabeled training data are inexpensive and readily available, whereas labeling training data imposes costs. Semi-supervised classification algorithms aim at utilizing information contained in unlabeled data in addition to the (few) labeled data.
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1Topics & keywords
Keywords
- Labeled data
- Semi-supervised learning
- Computer science
- Artificial intelligence
- Machine learning
- Supervised learning
- Training set
- Pattern recognition (psychology)
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