Klose et al., 2005 - Google Patents
Semi-supervised learning in knowledge discoveryKlose et al., 2005
- Document ID
- 7554966502253911169
- Author
- Klose A
- Kruse R
- Publication year
- Publication venue
- Fuzzy sets and systems
External Links
Snippet
Recently, semi-supervised learning has received quite a lot of attention. The idea of semi- supervised learning is to learn not only from the labeled training data, but to exploit also the structural information in additionally available unlabeled data. In this paper we review …
- 238000010191 image analysis 0 abstract description 6
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