DocumentCode :
1064609
Title :
Nonlinear Dimensionality Reduction by Locally Linear Inlaying
Author :
Hou, Yuexian ; Zhang, Peng ; Xu, Xingxing ; Zhang, Xiaowei ; Li, Wenjie
Author_Institution :
Sch. of Comput. Sci. & Technol., Tianjin Univ., Tianjin
Volume :
20
Issue :
2
fYear :
2009
Firstpage :
300
Lastpage :
315
Abstract :
High-dimensional data is involved in many fields of information processing. However, sometimes, the intrinsic structures of these data can be described by a few degrees of freedom. To discover these degrees of freedom or the low-dimensional nonlinear manifold underlying a high-dimensional space, many manifold learning algorithms have been proposed. Here we describe a novel algorithm, locally linear inlaying (LLI), which combines simple geometric intuitions and rigorously established optimality to compute the global embedding of a nonlinear manifold. Using a divide-and-conquer strategy, LLI gains some advantages in itself. First, its time complexity is linear in the number of data points, and hence LLI can be implemented efficiently. Second, LLI overcomes problems caused by the nonuniform sample distribution. Third, unlike existing algorithms such as isometric feature mapping (Isomap), local tangent space alignment (LTSA), and locally linear coordination (LLC), LLI is robust to noise. In addition, to evaluate the embedding results quantitatively, two criteria based on information theory and Kolmogorov complexity theory, respectively, are proposed. Furthermore, we demonstrated the efficiency and effectiveness of our proposal by synthetic and real-world data sets.
Keywords :
computational complexity; data reduction; divide and conquer methods; information theory; learning (artificial intelligence); Kolmogorov complexity theory; data point; divide-and-conquer strategy; high-dimensional data; information processing; information theory; local tangent space alignment; locally linear coordination; locally linear inlaying; manifold learning algorithm; nonlinear dimensionality reduction; nonlinear manifold; time complexity; Isometric feature mapping; local tangent space alignment; locally linear inlaying (LLI); manifold learning; nonlinear dimensionality reduction; robustness;
fLanguage :
English
Journal_Title :
Neural Networks, IEEE Transactions on
Publisher :
ieee
ISSN :
1045-9227
Type :
jour
DOI :
10.1109/TNN.2008.2005582
Filename :
4749257
Link To Document :
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