Boosting for transfer learning
Shanghai Jiao Tong University · Hong Kong University of Science and Technology
Abstract
Traditional machine learning makes a basic assumption: the training and test data should be under the same distribution. However, in many cases, this identical-distribution assumption does not hold. The assumption might be violated when a task from one new domain comes, while there are only labeled data from a similar old domain. Labeling the new data can be costly and it would also be a waste to throw away all the old data. In this paper, we present a novel transfer learning framework called TrAdaBoost, which extends boosting-based learning algorithms (Freund & Schapire, 1997). TrAdaBoost allows users to utilize a small amount of newly labeled data to leverage the old data to construct a high-quality…
Citation impact
- FWCI
- 52.77
- Percentile
- 100%
- References
- 31
Authors
4Topics & keywords
- Computer science
- Leverage (statistics)
- Boosting (machine learning)
- Transfer of learning
- Labeled data
- Artificial intelligence
- Machine learning
- Construct (python library)