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Issue No.04 - July/August (2010 vol.25)
pp: 54-61
Junping Zhang , Fudan University Fudan University, Shanghai Shanghai
Hua Huang , Xi'an Jiaotong University, Xi'an
Jue Wang , Institute of Automation, Chinese Academy of Sciences, Beijing
ABSTRACT
<p>Assuming that high-dimensional data are generated from intrinsic variables with lower dimensions, several key manifold-learning algorithms can help effectively analyze and visualize such data.</p>
INDEX TERMS
manifold learning, machine learning, multivariate statistics, pattern analysis, data visualization, intelligent systems
CITATION
Junping Zhang, Hua Huang, Jue Wang, "Manifold Learning for Visualizing and Analyzing High-Dimensional Data", IEEE Intelligent Systems, vol.25, no. 4, pp. 54-61, July/August 2010, doi:10.1109/MIS.2010.8
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