Ensemble based co-training

Open Access
Authors
Publication date 2011
Host editors
  • P. De Causmaecker
  • J. Maervoet
  • T. Messelis
  • K. Verbeeck
  • T. Vermeulen
Book title Proceedings of the 23rd Benelux Conference on Artificial Intelligence
Book subtitle 3-4 November 2011, Ghent, Belgium
Series BNAIC
Event BNAIC 2011, the 23rd Benelux Conference on Artificial Intelligence
Pages (from-to) 223-231
Publisher BNAIC
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
Recently Semi-Supervised learning algorithms such as co-training are used in many application domains. In co-training, two classifiers based on different views of data or on different learning algorithms are trained in parallel and then 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 ensemble of different learning algorithms. Based on a theorem by Angluin and Laird that produces an approximately correct identification with high probability for reliable examples, we propose a criterion for finding a subset of high-confidence predictions and error rate for a classifier in each iteration of the training process. Experiments show that the new method in almost all domains gives better results than the other methods.
Document type Conference contribution
Language English
Published at http://allserv.kahosl.be/bnaic2011/digital_proceedings?page=6&order=field_papertype_value&sort=asc
Downloads
bnaic2011_submission_88.pdf (Final published version)
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