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Nonlinear Dimensionality Reduction and Data Visualization: A Review
作者姓名:Hujun  Yin
作者单位:Hujun Yin School of Electrical and Electronic Engineering,The University of Manchester,Manchester M60 1QD,UK.
摘    要:Dimensionality reduction and data visualization are useful and important processes in pattern recognition.Many techniques have been developed in the recent years.The self-organizing map (SOM) can be an efficient method for this purpose.This paper reviews recent advances in this area and related approaches such as multidimensional scaling (MDS),nonlinear PCA,principal manifolds,as well as the connections of the SOM and its recent variant,the visualization induced SOM (ViSOM),with these approaches. The SOM is shown to produce a quantized,qualitative scaling and while the ViSOM a quantitative or metric scaling and approximates principal curve/surface.The SOM can also be regarded as a generalized MDS to relate two metric spaces by forming a topological mapping between them.The relationships among various recently proposed techniques such as ViSOM,Isomap,LLE,and eigenmap are discussed and compared.

关 键 词:非线性  数据处理  计算机技术  数据汇集
收稿时间:26 May 2007
修稿时间:2007-03-262007-06-05

Nonlinear dimensionality reduction and data visualization: A review
Hujun Yin.Nonlinear dimensionality reduction and data visualization: A review[J].International Journal of Automation and computing,2007,4(3):294-303.
Authors:Hujun Yin
Affiliation:(1) School of Electrical and Electronic Engineering, The University of Manchester, Manchester, M60 1QD, UK
Abstract:Dimensionality reduction and data visualization are useful and important processes in pattern recognition.Many techniques have been developed in the recent years.The self-organizing map (SOM) can be an efficient method for this purpose.This paper reviews recent advances in this area and related approaches such as multidimensional scaling (MDS),nonlinear PCA,principal manifolds,as well as the connections of the SOM and its recent variant,the visualization induced SOM (ViSOM),with these approaches. The SOM is shown to produce a quantized,qualitative scaling and while the ViSOM a quantitative or metric scaling and approximates principal curve/surface.The SOM can also be regarded as a generalized MDS to relate two metric spaces by forming a topological mapping between them.The relationships among various recently proposed techniques such as ViSOM,Isomap,LLE,and eigenmap are discussed and compared.
Keywords:Dimensionality reduction  nonlinear data projection  multidimensional scaling  self-orgAnlzing maps  nonlinear PCA  principal manifold
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