DocumentCode :
19330
Title :
An Explicit Nonlinear Mapping for Manifold Learning
Author :
Hong Qiao ; Peng Zhang ; Di Wang ; Bo Zhang
Author_Institution :
Inst. of Autom., Beijing, China
Volume :
43
Issue :
1
fYear :
2013
fDate :
Feb. 2013
Firstpage :
51
Lastpage :
63
Abstract :
Manifold learning is a hot research topic in the held of computer science and has many applications in the real world. A main drawback of manifold learning methods is, however, that there are no explicit mappings from the input data manifold to the output embedding. This prohibits the application of manifold learning methods in many practical problems such as classification and target detection. Previously, in order to provide explicit mappings for manifold learning methods, many methods have been proposed to get an approximate explicit representation mapping with the assumption that there exists a linear projection between the high-dimensional data samples and their low-dimensional embedding. However, this linearity assumption may be too restrictive. In this paper, an explicit nonlinear mapping is proposed for manifold learning, based on the assumption that there exists a polynomial mapping between the high-dimensional data samples and their low-dimensional representations. As far as we know, this is the hrst time that an explicit nonlinear mapping for manifold learning is given. In particular, we apply this to the method of locally linear embedding and derive an explicit nonlinear manifold learning algorithm, which is named neighborhood preserving polynomial embedding. Experimental results on both synthetic and real-world data show that the proposed mapping is much more effective in preserving the local neighborhood information and the nonlinear geometry of the high-dimensional data samples than previous work.
Keywords :
geometry; learning (artificial intelligence); pattern classification; polynomials; classification; computer science; explicit nonlinear mapping; high-dimensional data samples; input data manifold; linear projection; linearity assumption; low-dimensional embedding; low-dimensional representations; manifold learning methods; neighborhood preserving polynomial embedding; nonlinear geometry; nonlinear manifold learning algorithm; output embedding; polynomial mapping; real-world data; representation mapping; synthetic data; target detection; Eigenvalues and eigenfunctions; Kernel; Learning systems; Manifolds; Optimization; Polynomials; Training data; Data mining; machine learning; manifold learning; nonlinear dimensionality reduction (NDR);
fLanguage :
English
Journal_Title :
Cybernetics, IEEE Transactions on
Publisher :
ieee
ISSN :
2168-2267
Type :
jour
DOI :
10.1109/TSMCB.2012.2198916
Filename :
6220279
Link To Document :
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