Title :
Non-negative low rank and sparse graph for semi-supervised learning
Author :
Zhuang, Liansheng ; Gao, Haoyuan ; Lin, Zhouchen ; Ma, Yi ; Zhang, Xin ; Yu, Nenghai
Author_Institution :
MOE-Microsoft Key Lab., Univ. of Sci. & Technol. of China, Hefei, China
Abstract :
Constructing a good graph to represent data structures is critical for many important machine learning tasks such as clustering and classification. This paper proposes a novel non-negative low-rank and sparse (NNLRS) graph for semi-supervised learning. The weights of edges in the graph are obtained by seeking a nonnegative low-rank and sparse matrix that represents each data sample as a linear combination of others. The so-obtained NNLRS-graph can capture both the global mixture of subspaces structure (by the low rankness) and the locally linear structure (by the sparseness) of the data, hence is both generative and discriminative. We demonstrate the effectiveness of NNLRS-graph in semi-supervised classification and discriminative analysis. Extensive experiments testify to the significant advantages of NNLRS-graph over graphs obtained through conventional means.
Keywords :
data structures; graph theory; learning (artificial intelligence); matrix algebra; pattern classification; pattern clustering; NNLRS-graph; clustering task; data structure representation; discriminative analysis; locally linear structure; machine learning tasks; nonnegative low rank-and-sparse graph; nonnegative low-rank-and-sparse matrix; semisupervised classification; semisupervised learning; subspaces structure; Databases; Educational institutions; Noise; Optimization; Sparse matrices; Strontium; Vectors;
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2012 IEEE Conference on
Conference_Location :
Providence, RI
Print_ISBN :
978-1-4673-1226-4
Electronic_ISBN :
1063-6919
DOI :
10.1109/CVPR.2012.6247944