Nonlinear feature extraction based on centroids and kernel functions

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摘要

A nonlinear feature extraction method is presented which can reduce the data dimension down to the number of classes, providing dramatic savings in computational costs. The dimension reducing nonlinear transformation is obtained by implicitly mapping the input data into a feature space using a kernel function, and then finding a linear mapping based on an orthonormal basis of centroids in the feature space that maximally separates the between-class relationship. The experimental results demonstrate that our method is capable of extracting nonlinear features effectively so that competitive performance of classification can be obtained with linear classifiers in the dimension reduced space.

论文关键词:Cluster structure,Dimension reduction,Kernel functions,Kernel orthogonal centroid method,Linear discriminant analysis,Nonlinear feature extraction,Pattern classification,Support vector machines

论文评审过程:Received 14 January 2003, Revised 18 June 2003, Accepted 31 July 2003, Available online 20 February 2004.

论文官网地址:https://doi.org/10.1016/j.patcog.2003.07.011