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ICPR
2004
IEEE

Relevant Linear Feature Extraction Using Side-information and Unlabeled Data

15 years 28 days ago
Relevant Linear Feature Extraction Using Side-information and Unlabeled Data
"Learning with side-information" is attracting more and more attention in machine learning problems. In this paper, we propose a general iterative framework for relevant linear feature extraction. It efficiently utilizes both the sideinformation and unlabeled data to enhance gradually algorithms' performance and robustness. Both good relevant feature extraction and reasonable similarity matrix estimation can be realized. Specifically, we adopt Relevant Component Analysis (RCA) under this framework and get the derived Iterative Self-Enhanced Relevant Component Analysis (ISERCA) algorithm. The experimental results on several data sets show that ISERCA outperforms RCA.
Changshui Zhang, Fei Wu, Yonglei Zhou
Added 09 Nov 2009
Updated 09 Nov 2009
Type Conference
Year 2004
Where ICPR
Authors Changshui Zhang, Fei Wu, Yonglei Zhou
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