DocumentCode :
1754426
Title :
Graph-Based Learning via Auto-Grouped Sparse Regularization and Kernelized Extension
Author :
Yuqiang Fang ; Ruili Wang ; Bin Dai ; Xindong Wu
Author_Institution :
Coll. of Mechatron. Eng. & Autom., Nat. Univ. of Defense Technol., Changsha, China
Volume :
27
Issue :
1
fYear :
2015
fDate :
Jan. 2015
Firstpage :
142
Lastpage :
154
Abstract :
The key task in developing graph-based learning algorithms is constructing an informative graph to express the contextual information of a data manifold. Since traditional graph construction methods are sensitive to noise and less datum-adaptive to changes in density, a new method called ℓ1-graph was proposed recently. A graph construction needs to have two important properties: sparsity and locality. The ℓ1-graph has a strong sparsity property, but a weak locality property. Thus, we propose a new method of constructing an informative graph using auto-grouped sparse regularization based on the ℓ1-graph, which is called as Group Sparse graph (GSgraph). We also show how to efficiently construct a GS-graph in reproducing kernel Hilbert space with the kernel trick. The new methods, the GS-graph and its kernelized version (KGS-graph), have the same noise-insensitive property as that of ℓ1-graph and also can successively preserve the properties of sparsity and locality simultaneously. Furthermore, we integrate the proposed graph with several graph-based learning algorithms to demonstrate the effectiveness of our method. The empirical studies on benchmarks show that the proposed methods outperform the ℓ1-graph and other traditional graph construction methods in various learning tasks.
Keywords :
Hilbert spaces; data analysis; graph theory; learning (artificial intelligence); ℓ1-graph; KGS-graph; auto-grouped sparse regularization; graph construction methods; graph-based learning algorithm; group sparse graph; informative graph; kernel Hilbert space; kernelized GS-graph; locality property; sparsity property; Algorithm design and analysis; Dictionaries; Equations; Kernel; Manifolds; Noise; Sparse matrices; Graph based learning; non-negative matrix factorization; sparse representation; spectral embedding; subspace learning;
fLanguage :
English
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
1041-4347
Type :
jour
DOI :
10.1109/TKDE.2014.2312322
Filename :
6776487
Link To Document :
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