TY - JOUR
T1 - Sparse semi-supervised learning on low-rank kernel
AU - Zhang, Kai
AU - Wang, Qiaojun
AU - Lan, Liang
AU - Sun, Yu
AU - Marsic, Ivan
PY - 2014/4/10
Y1 - 2014/4/10
N2 - Advances of modern science and engineering lead to unprecedented amount of data for information processing. Of particular interest is the semi-supervised learning, where very few training samples are available among large volumes of unlabeled data. Graph-based algorithms using Laplacian regularization have achieved state-of-the-art performance, but can induce huge memory and computational costs. In this paper, we introduce L1-norm penalization on the low-rank factorized kernel for efficient, globally optimal model selection in graph-based semi-supervised learning. An important novelty is that our formulation can be transformed to a standard LASSO regression. On one hand, this makes it possible to employ advanced sparse solvers to handle large scale problems; on the other hand, a globally optimal subset of basis can be chosen adaptively given desired strength of penalizing model complexity, in contrast to some current endeavors that pre-determine the basis without coupling it with the learning task. Our algorithm performs competitively with state-of-the-art algorithms on a variety of benchmark data sets. In particular, it is orders of magnitude faster than exact algorithms and achieves a good trade-off between accuracy and scalability.
AB - Advances of modern science and engineering lead to unprecedented amount of data for information processing. Of particular interest is the semi-supervised learning, where very few training samples are available among large volumes of unlabeled data. Graph-based algorithms using Laplacian regularization have achieved state-of-the-art performance, but can induce huge memory and computational costs. In this paper, we introduce L1-norm penalization on the low-rank factorized kernel for efficient, globally optimal model selection in graph-based semi-supervised learning. An important novelty is that our formulation can be transformed to a standard LASSO regression. On one hand, this makes it possible to employ advanced sparse solvers to handle large scale problems; on the other hand, a globally optimal subset of basis can be chosen adaptively given desired strength of penalizing model complexity, in contrast to some current endeavors that pre-determine the basis without coupling it with the learning task. Our algorithm performs competitively with state-of-the-art algorithms on a variety of benchmark data sets. In particular, it is orders of magnitude faster than exact algorithms and achieves a good trade-off between accuracy and scalability.
KW - Graph Laplacian
KW - Low-rank approximation
KW - Manifold regularization
KW - Regularized least squares
KW - Semi-supervised learning
KW - Sparse regression
UR - https://www.scopus.com/pages/publications/84893777179
U2 - 10.1016/j.neucom.2013.09.033
DO - 10.1016/j.neucom.2013.09.033
M3 - 文章
AN - SCOPUS:84893777179
SN - 0925-2312
VL - 129
SP - 265
EP - 272
JO - Neurocomputing
JF - Neurocomputing
ER -