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  5. EXTRACTING RULES FROM TRAINED RBF NEURAL NETWORKS
 
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EXTRACTING RULES FROM TRAINED RBF NEURAL NETWORKS

Journal
Environment. Technology. Resources. Proceedings of the International Scientific and Practical Conference
Date Issued
2005
Author(s)
Grabusts, Pēteris 
Rezekne Academy of Technologies 
DOI
10.17770/etr2005vol1.2128
Abstract
This paper describes a method of rule extraction from trained artificial neural networks. The statement of the problem is given. The aim of rule extraction procedure and suitable neural networks for rule extraction are outlined. The RULEX rule extraction algorithm is discussed that is based on the radial basis function (RBF) neural network. The extracted rules can help discover and analyze the rule set hidden in data sets. The paper contains an implementation example, which is shown through standalone IRIS data set.
Subjects
  • neural networks

  • rule extraction

  • RBF networks

  • RULEX algorithm

File(s)
 EXTRACTING RULES FROM TRAINED RBF NEURAL NETWORKS.pdf (486.21 KB)
Scopus© citations
0
Acquisition Date
Jan 12, 2024
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