On Semi-Supervised Classification

نویسندگان

  • Balaji Krishnapuram
  • David Williams
  • Ya Xue
  • Alexander J. Hartemink
  • Lawrence Carin
  • Mário A. T. Figueiredo
چکیده

A graph-based prior is proposed for parametric semi-supervised classification. The prior utilizes both labelled and unlabelled data; it also integrates features from multiple views of a given sample (e.g., multiple sensors), thus implementing a Bayesian form of co-training. An EM algorithm for training the classifier automatically adjusts the tradeoff between the contributions of: (a) the labelled data; (b) the unlabelled data; and (c) the co-training information. Active label query selection is performed using a mutual information based criterion that explicitly uses the unlabelled data and the co-training information. Encouraging results are presented on public benchmarks and on measured data from single and multiple sensors.

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تاریخ انتشار 2004