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Wavelet Kernel Principal Component Analysis in Noisy Multiscale Data Classification
Author(s) -
Shengkun Xie,
Anna T. Ławniczak,
Sridhar Krishnan,
Píetro Lió
Publication year - 2012
Publication title -
isrn computational mathematics
Language(s) - English
Resource type - Journals
ISSN - 2090-7842
DOI - 10.5402/2012/197352
Subject(s) - kernel principal component analysis , pattern recognition (psychology) , artificial intelligence , wavelet , computer science , principal component analysis , kernel (algebra) , kernel method , feature extraction , wavelet transform , robustness (evolution) , mathematics , support vector machine , biochemistry , chemistry , combinatorics , gene
We introduce multiscale wavelet kernels to kernel principal component analysis (KPCA) to narrow down the search of parameters required in the calculation of a kernel matrix. This new methodology incorporates multiscale methods into KPCA for transforming multiscale data. In order to illustrate application of our proposed method and to investigate the robustness of the wavelet kernel in KPCA under different levels of the signal to noise ratio and different types of wavelet kernel, we study a set of two-class clustered simulation data. We show that WKPCA is an effective feature extraction method for transforming a variety of multidimensional clustered data into data with a higher level of linearity among the data attributes. That brings an improvement in the accuracy of simple linear classifiers. Based on the analysis of the simulation data sets, we observe that multiscale translation invariant wavelet kernels for KPCA has an enhanced performance in feature extraction. The application of the proposed method to real data is also addressed.

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