Title :
Sparsity regularization path for semi-supervised SVM
Author :
Gasso, G. ; Zapien, K. ; Canu, S.
Author_Institution :
INSA Rouen, Saint-Etienne du Rouvray
Abstract :
Using unlabeled data to unravel the structure of the data to leverage the learning process is the goal of semi supervised learning. A common way to represent this underlying structure is to use graphs. Flexibility of the maximum margin kernel framework allows to model graph smoothness and to build kernel machine for semi supervised learning such as Laplacian SVM [1]. But a common complaint of the practitioner is the long running time of these kernel algorithms for classification of new points. We provide an efficient way of alleviating this problem by using a LI penalization term and a regularization path algorithm to efficiently compute the solution. Empirical evidence shows the benefit of the algorithm.
Keywords :
learning (artificial intelligence); support vector machines; graph smoothness; kernel algorithm; learning process; maximum margin kernel framework; semisupervised SVM; semisupervised learning; sparsity regularization path; support vector machine; unlabeled data; Classification algorithms; Costs; Databases; Kernel; Laplace equations; Machine learning; Machine learning algorithms; Semisupervised learning; Support vector machine classification; Support vector machines;
Conference_Titel :
Machine Learning and Applications, 2007. ICMLA 2007. Sixth International Conference on
Conference_Location :
Cincinnati, OH
Print_ISBN :
978-0-7695-3069-7
DOI :
10.1109/ICMLA.2007.81