J4 ›› 2010, Vol. 32 ›› Issue (6): 158-161.doi: 10.3969/j.issn.1007130X.2010.
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ZHAN Yubin,YIN Jianping,LIU Xinwang
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Abstract:
Recently, nonlinear dimensionality reduction has attracted extensive interests of researchers in the machine learning community. The techniques for nonlinear dimensionality reduction can be divided into two categories: kernelbased methods and manifold learning. These two methods have different motivations and derivations. This paper interprets the wellknown manifold learning algorithm LTSA as a kernel method. We show that LTSA can be described as the kernel PCA, and LTSA utilizes the local neighborhood information to construct a special kernel matrix, and the global embedding obtained by LTSA with modified constraints is equivalent to principal coordinates by the kernel PCA with this special kernel.
Key words: dimensionality reduction;manifold learning;kernel method;kernel principal component analysis;local tangent space alignment
CLC Number:
TP18
ZHAN Yubin,YIN Jianping,LIU Xinwang. A Kernel PCA View of the Local Tangent Space Alignment Algorithm[J]. J4, 2010, 32(6): 158-161.
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URL: http://joces.nudt.edu.cn/EN/10.3969/j.issn.1007130X.2010.
http://joces.nudt.edu.cn/EN/Y2010/V32/I6/158