DocumentCode
1025553
Title
Graph-Based Semi-Supervised Learning and Spectral Kernel Design
Author
Johnson, Rie ; Zhang, Tong
Author_Institution
RJ Res. Consulting, Tarrytown
Volume
54
Issue
1
fYear
2008
Firstpage
275
Lastpage
288
Abstract
In this paper, we consider a framework for semi-supervised learning using spectral decomposition-based unsupervised kernel design. We relate this approach to previously proposed semi-supervised learning methods on graphs. We examine various theoretical properties of such methods. In particular, we present learning bounds and derive optimal kernel representation by minimizing the bound. Based on the theoretical analysis, we are able to demonstrate why spectral kernel design based methods can improve the predictive performance. Empirical examples are included to illustrate the main consequences of our analysis.
Keywords
graph theory; learning (artificial intelligence); graph-based semisupervised learning; learning bounds; spectral decomposition; spectral kernel design; unsupervised kernel design; Concrete; Design methodology; Information processing; Kernel; Pattern recognition; Performance analysis; Semisupervised learning; Statistical learning; Statistics; Supervised learning; Graph-based semi-supervised learning; kernel design; transductive learning;
fLanguage
English
Journal_Title
Information Theory, IEEE Transactions on
Publisher
ieee
ISSN
0018-9448
Type
jour
DOI
10.1109/TIT.2007.911294
Filename
4418483
Link To Document