Tri-training: exploiting unlabeled data using three classifiers
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Abstract
In many practical data mining applications, such as Web page classification, unlabeled training examples are readily available, but labeled ones are fairly expensive to obtain. Therefore, semi-supervised learning algorithms such as co-training have attracted much attention. In this paper, a new co-training style semi-supervised learning algorithm, named tri-training, is proposed. This algorithm generates three classifiers from the original labeled example set. These classifiers are then refined using unlabeled examples in the tri-training process. In detail, in each round of tri-training, an unlabeled example is labeled for a classifier if the other two classifiers agree on the labeling, under certain…
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Topics
Keywords
- Co-training
- Computer science
- Semi-supervised learning
- Labeled data
- Artificial intelligence
- Machine learning
- Classifier (UML)
- Exploit
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