Title :
Semi-supervised learning by locally linear embedding in kernel space
Author :
Liu, Rujie ; Wang, Yuehong ; Baba, Takayuki ; Masumoto, Daiki
Author_Institution :
Fujitsu R&D Center Co. Ltd., Beijing, China
Abstract :
Graph based semi-supervised learning methods (SSL) implicitly assume that the intrinsic geometry of the data points can be fully specified by an Euclidean distance based local neighborhood graph, however, this assumption may not always be necessarily true. To overcome this problem, we propose to apply locally linear embedding (LLE) method to characterize the geometric structure of the data points; besides this, the embedding process is performed in the kernel induced feature space rather than the original input space. After embedding, the proposed transductive learning method predicts the labels of the unlabeled data within the regularization framework. Experimental results on image retrieval and pattern recognition verify the performance of the proposed approach.
Keywords :
computational geometry; learning (artificial intelligence); euclidean distance; graph regularization framework; intrinsic data point geometry; kernel space; local neighborhood graph; locally linear embedding; semi supervised learning; transductive learning method; Constraint theory; Euclidean distance; Geometry; Image retrieval; Kernel; Laboratories; Laplace equations; Learning systems; Pattern recognition; Semisupervised learning;
Conference_Titel :
Pattern Recognition, 2008. ICPR 2008. 19th International Conference on
Conference_Location :
Tampa, FL
Print_ISBN :
978-1-4244-2174-9
Electronic_ISBN :
1051-4651
DOI :
10.1109/ICPR.2008.4761127