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On the regularized Laplacian eigenmaps
Authors:Ying Cao  Di-Rong Chen
Institution:Department of Mathematics, LMIB, Beijing University of Aeronautics and Astronautics, Beijing 100191, PR China
Abstract:To find an appropriate low-dimensional representation for complex data is one of the central problems in machine learning and data analysis. In this paper, a nonlinear dimensionality reduction algorithm called regularized Laplacian eigenmaps (RLEM) is proposed, motivated by the method for regularized spectral clustering. This algorithm provides a natural out-of-sample extension for dealing with points not in the original data set. The consistency of the RLEM algorithm is investigated. Moreover, a convergence rate is established depending on the approximation property and the capacity of the reproducing kernel Hilbert space measured by covering numbers. Experiments are given to illustrate our algorithm.
Keywords:Nonlinear dimensionality reduction  Regularized Laplacian eigenmaps  Graph Laplacian  Learning rate
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