Tao et al., 2014 - Google Patents
Sparsity regularization label propagation for domain adaptation learningTao et al., 2014
- Document ID
- 10855971636576550090
- Author
- Tao J
- Hu W
- Wang S
- Publication year
- Publication venue
- Neurocomputing
External Links
Snippet
Recently, domain adaptation learning (DAL) has shown surprising performance by utilizing labeled samples from the source (or auxiliary) domain to learn a robust classifier for the target domain of the interest which has a few or even no labeled samples. In this paper, by …
- 230000004301 light adaptation 0 title abstract description 26
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