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  A Maximum Entropy Approach to Semi-supervised Learning

Erkan, A., & Altun, Y. (2010). A Maximum Entropy Approach to Semi-supervised Learning.

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 作成者:
Erkan, AN1, 著者           
Altun, Y1, 著者           
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1Department Empirical Inference, Max Planck Institute for Biological Cybernetics, Max Planck Society, ou_1497795              

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 要旨: Maximum entropy (MaxEnt) framework has been studied extensively in supervised learning. Here, the goal is to find a distribution p that maximizes an entropy function while enforcing data constraints so that the expected values of some (pre-defined) features with respect to p match their empirical counterparts approximately. Using different entropy measures, different model spaces for p and different approximation criteria for the data constraints yields a family of discriminative supervised learning methods (e.g., logistic regression, conditional random fields, least squares and boosting). This framework is known as the generalized maximum entropy framework. Semi-supervised learning (SSL) has emerged in the last decade as a promising field that combines unlabeled data along with labeled data so as to increase the accuracy and robustness of inference algorithms. However, most SSL algorithms to date have had trade-offs, e.g., in terms of scalability or applicability to multi-categorical data. We extend the generalized MaxEnt framework to develop a family of novel SSL algorithms. Extensive empirical evaluation on benchmark data sets that are widely used in the literature demonstrates the validity and competitiveness of the proposed algorithms.

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 日付: 2010-07
 出版の状態: 出版
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 識別子(DOI, ISBNなど): URI: http://maxent2010.inrialpes.fr/files/2010/06/booklet.pdf
BibTex参照ID: 6747
 学位: -

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