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JAIR
2006

Active Learning with Multiple Views

13 years 4 months ago
Active Learning with Multiple Views
Active learners alleviate the burden of labeling large amounts of data by detecting and asking the user to label only the most informative examples in the domain. We focus here on active learning for multi-view domains, in which there are several disjoint subsets of features (views), each of which is sufficient to learn the target concept. In this paper we make several contributions. First, we introduce Co-Testing, which is the first approach to multi-view active learning. Second, we extend the multi-view learning framework by also exploiting weak views, which are adequate only for learning a concept that is more general/specific than the target concept. Finally, we empirically show that Co-Testing outperforms existing active learners on a variety of real world domains such as wrapper induction, Web page classification, advertisement removal, and discourse tree parsing.
Ion Muslea, Steven Minton, Craig A. Knoblock
Added 13 Dec 2010
Updated 13 Dec 2010
Type Journal
Year 2006
Where JAIR
Authors Ion Muslea, Steven Minton, Craig A. Knoblock
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