Disagreement-Based Co-training

@article{Tanha2011DisagreementBasedC,
  title={Disagreement-Based Co-training},
  author={Jafar Tanha and Maarten van Someren and Hamideh Afsarmanesh},
  journal={2011 IEEE 23rd International Conference on Tools with Artificial Intelligence},
  year={2011},
  pages={803-810}
}
Recently, Semi-Supervised learning algorithms such as co-training are used in many domains. In co-training, two classifiers based on different subsets of the features or on different learning algorithms are trained in parallel and unlabeled data that are classified differently by the classifiers but for which one classifier has large confidence are labeled and used as training data for the other. In this paper, a new form of co-training, called Ensemble-Co-Training, is proposed that uses an… CONTINUE READING

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