Robust kernel Isomap

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摘要

Isomap is one of widely used low-dimensional embedding methods, where geodesic distances on a weighted graph are incorporated with the classical scaling (metric multidimensional scaling). In this paper we pay our attention to two critical issues that were not considered in Isomap, such as: (1) generalization property (projection property); (2) topological stability. Then we present a robust kernel Isomap method, armed with such two properties. We present a method which relates the Isomap to Mercer kernel machines, so that the generalization property naturally emerges, through kernel principal component analysis. For topological stability, we investigate the network flow in a graph, providing a method for eliminating critical outliers. The useful behavior of the robust kernel Isomap is confirmed through numerical experiments with several data sets.

论文关键词:Isomap,Kernel PCA,Manifold learning,Multidimensional scaling (MDS),Nonlinear dimensionality reduction

论文评审过程:Received 12 July 2005, Revised 23 January 2006, Accepted 20 April 2006, Available online 27 June 2006.

论文官网地址:https://doi.org/10.1016/j.patcog.2006.04.025