A theory of learning from different domains
University of Waterloo · University of California, Berkeley · +4 more institutions
Abstract
Discriminative learning methods for classification perform well when training and test data are drawn from the same distribution. Often, however, we have plentiful labeled training data from a source domain but wish to learn a classifier which performs well on a target domain with a different distribution and little or no labeled training data. In this work we investigate two questions. First, under what conditions can a classifier trained from source data be expected to perform well on target data? Second, given a small amount of labeled target data, how should we combine it during training with the large amount of labeled source data to achieve the lowest target error at test time? We address the first…
Citation impact
- FWCI
- 25.81
- Percentile
- 100%
- References
- 44
Authors
6Topics & keywords
- Classifier (UML)
- Computer science
- Weighting
- Discriminative model
- Artificial intelligence
- Bounding overwatch
- Pattern recognition (psychology)
- Bayes error rate
- Reduced inequalities