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タグ: cotraining [22 articles]

Recent papers classified by the tag cotraining.
  • Analyzing the Effectiveness and Applicability of Co-training
    (2000), pp. 86-93.
    by Kamal Nigam, Rayid Ghani
  • Combining Labeled and Unlabeled Data with Co-training
    (1998)
    by Avrim Blum, Tom Mitchell
  • Unsupervised Improvement of Visual Detectors using Co-Training
    (2003)
    by Anat Levin, Paul Viola, Yoav Freund
    posted to cotraining by davidr on 2005-03-29 19:49:03 as **
  • Applying Cotraining Methods to Statistical Parsing
    (2001)
    by S Anoop
    posted to cotraining parsing by davidr on 2005-03-29 21:39:26 as **
  • Co-trained support vector machines for large scale unstructured document classification using unlabeled data and syntactic information
    Inf. Process. Manage., Vol. 40, No. 3. (January 2004), pp. 421-439.
    by Seong-Bae Park, Byoung-Tak Zhang
    posted to cotraining document-classification svm by davidr on 2005-05-07 06:23:02 as **
  • A PAC-Style Model for Learning from Labeled and Unlabeled Data
    Lecture Notes in Computer Science, Vol. 3559 (June 2005), pp. 111-126.
    by Maria-Florina Balcan, Avrim Blum
  • notes Limitations of Co-Training for Natural Language Learning from Large Datasets
    (# 2001)
    by David Pierce, Claire Cardie
    posted to cotraining empirical-results by davidr on 2005-03-29 23:55:30 as ** along with 1 person vlachmore
  • Enhancing Supervised Learning with Unlabeled Data
    (2000), pp. 327-334.
    by Sally Goldman, Yan Zhou
  • Weakly Supervised Natural Language Learning Without Redundant Views
    (# 2003), pp. 173-180.
    by Vincent Ng, Claire Cardie
    posted to cotraining empirical-results semisupervised by davidr on 2005-03-29 23:56:48 as ***
  • Enhancing Supervised Learning with Unlabeled Data
    (2000), pp. 327-334.
    by Sally A Goldman, Yan Zhou
    posted to cotraining semisupervised by davidr on 2006-05-17 14:54:49 as **
  • Combining Clustering and Co-training to Enhance Text Classification Using Unlabelled Data
    by Bhavani Raskutti, Herman Ferra, Adam Kowalczyk
  • Understanding the Yarowsky
    by Algorithm S Abney
  • notes Understanding the Behavior of Co-training
    by K Nigam, R Ghani
  • Unsupervised improvement of visual detectors using cotraining
    Computer Vision, 2003. Proceedings. Ninth IEEE International Conference on (2003), pp. 626-633 vol.1.
    by A Levin, P Viola, Y Freund
    posted to cotraining semisupervised vision by davidr on 2005-03-29 19:46:41 as **
  • notes Iterative Cross-Training:
    by An A For
    posted to cotraining empirical-results by davidr on 2005-03-29 23:59:17 as **
  • notes Bootstrapping
    by Steven Abney
  • Co-training and expansion: Towards bridging theory and practice
    (2004)
    by N Balcan, A Bluem, K Yang
    posted to cotraining by bpacker on 2007-10-14 15:45:42 as ***
  • Co-training from an Incremental EM Perspective
    Intelligent Data Engineering and Automated Learning – IDEAL 2004 (2004), pp. 765-773.
    by Minoo Aminian
    posted to cotraining probabilistic-models by bpacker on 2008-01-23 01:32:56 as ***
  • A View of the EM Algorithm that Justifies Incremental, Sparse, and other Variants
    (1998)
    by R Neal, G Hinton
    edited by MI Jordan
  • Unsupervised improvement of visual detectors using cotraining
    (2003)
    by A Levin, P Viola, Y Freund
    posted to cotraining object-detection semisupervised-learning vision by bpacker on 2007-10-14 15:40:26 as *****
  • Analyzing the effectiveness and applicability of co-training
    (2000), pp. 86-93.
    by Kamal Nigam, Rayid Ghani
    posted to cotraining semisupervised-learning by bpacker on 2007-10-14 15:51:23 as **
  • An augmented PAC model for semi-supervised learning
    (2005)
    by M Balcan, A Blum
  • 注: このページを引用する時は次のURLでどうぞ: http://www.citeulike.org/tag/cotraining

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