An Improved PCA Algorithm with Local Structure Preserving
WANG Qing-Gang1, LI Jian-Wei1,2
1.Key Laboratory of Optoelectronic Technology and Systems of Ministry of Education,College of Optoelectronic Engineering, Chongqing University, Chongqing 400030 2.Chongqing University of Technology, Chongqing 400050
Abstract:Locality preserving projection (LPP) is a local structure preserving method and the distances of neighboring points are minimized in the subspace of LPP. Combined with the geometric idea of LPP, an improved PCA with local structure preserving is proposed called locality preserving PCA (LP-PCA). By constructing the neighborhood graph and its complement, LP-PCA deals with the neighboring points and the far points distinguishingly. LP-PCA minimizes the distances between the neighboring points and simultaneously maximizes the distances between the far points. The improved algorithm can find the global structure of the high dimensional dataset with preserving its local structure. Some examples of the improved algorithm are given on toy datasets as well as on actual datasets. Experimental results show the effectiveness of LP-PCA.
王庆刚,李见为. 具有局部结构保留性质的PCA改进算法[J]. 模式识别与人工智能, 2009, 22(3): 388-392.
WANG Qing-Gang, LI Jian-Wei. An Improved PCA Algorithm with Local Structure Preserving. , 2009, 22(3): 388-392.
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