A Survey on Multi-view Learning
University of Technology Sydney · Peking University
Abstract
In recent years, a great many methods of learning from multi-view data by considering the diversity of different views have been proposed. These views may be obtained from multiple sources or different feature subsets. In trying to organize and highlight similarities and differences between the variety of multi-view learning approaches, we review a number of representative multi-view learning algorithms in different areas and classify them into three groups: 1) co-training, 2) multiple kernel learning, and 3) subspace learning. Notably, co-training style algorithms train alternately to maximize the mutual agreement on two distinct views of the data; multiple kernel learning algorithms exploit kernels that…
Citation impact
- FWCI
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- Percentile
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- References
- 125
Authors
3Topics & keywords
- Machine learning
- Exploit
- Computer science
- Artificial intelligence
- Subspace topology
- Generalization
- Consistency (knowledge bases)
- Semi-supervised learning