Algorithms (Aug 2009)

Radial Basis Function Cascade Correlation Networks

  • Peter de B. Harrington,
  • Weiying Lu

DOI
https://doi.org/10.3390/a2031045
Journal volume & issue
Vol. 2, no. 3
pp. 1045 – 1068

Abstract

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A cascade correlation learning architecture has been devised for the first time for radial basis function processing units. The proposed algorithm was evaluated with two synthetic data sets and two chemical data sets by comparison with six other standard classifiers. The ability to detect a novel class and an imbalanced class were demonstrated with synthetic data. In the chemical data sets, the growth regions of Italian olive oils were identified by their fatty acid profiles; mass spectra of polychlorobiphenyl compounds were classified by chlorine number. The prediction results by bootstrap Latin partition indicate that the proposed neural network is useful for pattern recognition.

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