Rule extraction from differential evolution trained radial basis function network using genetic algorithms

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Date
2009-11-12
Authors
Naveen, Nekuri
Ravi, V.
Rao, C. Raghavendra
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Abstract
In this paper, we present a GA based methodology for extracting rules from radial basis function neural network trained by differential evolution. Rules are extracted using GATree. Here outputs predicted by the differential evolution trained radial basis function network along with the input variables are fed to the GATree for rule extraction purpose. The performance of the hybrid method was tested on three benchmark datasets namely Iris, Wine and Wisconsin Breast Cancer, using 10-fold cross validation. The rules extracted by the hybrid yielded high accuracies on all datasets. © 2009 IEEE.
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Keywords
Classification, Differential evolution trained radial basis function network (DERBF), GATree, Rule extraction
Citation
2009 IEEE International Conference on Automation Science and Engineering, CASE 2009