articleJan 6, 2005Closed access

Semi-Supervised Classification by Low Density Separation

Max Planck Society · Max Planck Institute for Biological Cybernetics

Abstract

We believe that the cluster assumption is key to successful semi-supervised learning. Based on this, we propose three semi-supervised algorithms: 1. deriving graph-based distances that emphazise low density regions between clusters, followed by training a standard SVM; 2. optimizing the Transductive SVM objective function, which places the decision boundary in low density regions, by gradient descent; 3. combining the first two to make maximum use of the cluster assumption. We compare with state of the art algorithms and demonstrate superior accuracy for the latter two methods.

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711
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Authors

3

Topics & keywords

Keywords
  • Separation (statistics)
  • Artificial intelligence
  • Computer science
  • Pattern recognition (psychology)
  • Machine learning
UN Sustainable Development Goals
  • Climate action
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