2011
DOI: 10.1007/978-3-642-23808-6_38
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Discriminative Experimental Design

Abstract: Abstract. Since labeling data is often both laborious and costly, the labeled data available in many applications is rather limited. Active learning is a learning approach which actively selects unlabeled data points to label as a way to alleviate the labeled data deficiency problem. In this paper, we extend a previous active learning method called transductive experimental design (TED) by proposing a new unlabeled data selection criterion. Our method, called discriminative experimental design (DED), incorpora… Show more

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References 14 publications
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