Supervised Kernel Principal Component Analysis by Most Expressive Feature Reordering

Authors

  • Krzysztof Ślot
  • Krzysztof Adamiak
  • Piotr Duch
  • Dominik Żurek

DOI:

https://doi.org/10.26636/jtit.2015.2.782

Keywords:

feature selection, kernel methods, pattern classification

Abstract

The presented paper is concerned with feature space derivation through feature selection. The selection is performed on results of kernel Principal Component Analysis (kPCA) of input data samples. Several criteria that drive feature selection process are introduced and their performance is assessed and compared against the reference approach, which is a combination of kPCA and most expressive feature reordering based on the Fisher linear discriminant criterion. It has been shown that some of the proposed modifications result in generating feature spaces with noticeably better (at the level of approximately 4%) class discrimination properties.

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Published

2015-06-30

Issue

Section

ARTICLES FROM THIS ISSUE

How to Cite

[1]
K. Ślot, K. Adamiak, P. Duch, and D. Żurek, “Supervised Kernel Principal Component Analysis by Most Expressive Feature Reordering”, JTIT, vol. 60, no. 2, pp. 3–10, Jun. 2015, doi: 10.26636/jtit.2015.2.782.