Title
Reverse Engineering the Neural Networks for Rule Extraction in Classification Problems
Abstract
Artificial neural networks often achieve high classification accuracy rates, but they are considered as black boxes due to their lack of explanation capability. This paper proposes the new rule extraction algorithm RxREN to overcome this drawback. In pedagogical approach the proposed algorithm extracts the rules from trained neural networks for datasets with mixed mode attributes. The algorithm relies on reverse engineering technique to prune the insignificant input neurons and to discover the technological principles of each significant input neuron of neural network in classification. The novelty of this algorithm lies in the simplicity of the extracted rules and conditions in rule are involving both discrete and continuous mode of attributes. Experimentation using six different real datasets namely iris, wbc, hepatitis, pid, ionosphere and creditg show that the proposed algorithm is quite efficient in extracting smallest set of rules with high classification accuracy than those generated by other neural network rule extraction methods.
Year
DOI
Venue
2012
10.1007/s11063-011-9207-8
Neural Processing Letters
Keywords
Field
DocType
Rule extraction,Pedagogical,Reverse engineering,Classification,Pruning,Neural networks
Data mining,Continuous mode,Extraction algorithm,Computer science,Mixed mode,Artificial intelligence,Black box,Artificial neural network,PID controller,Pattern recognition,Reverse engineering,Novelty,Machine learning
Journal
Volume
Issue
ISSN
35
2
1370-4621
Citations 
PageRank 
References 
25
0.85
38
Authors
2
Name
Order
Citations
PageRank
M. Gethsiyal Augasta1563.01
T. Kathirvalavakumar2885.75