Abstract: A major drawback of artificial neural networks is their black-box character. Therefore, the rule
extraction algorithm is becoming more and more important in explaining the extracted rules from the neural
networks. In this paper, we use a method that can be used for symbolic knowledge extraction from neural
networks, once they have been trained with desired function. The basis of this method is the weights of the neural
network trained. This method allows knowledge extraction from neural networks with continuous inputs and
output as well as rule extraction. An example of the application is showed. This example is based on the
extraction of average load demand of a power plant.
Keywords: Neural Network, Backpropagation, Control Feedback Methods.
ACM Classification Keywords: F.1.1 Models of Computation: Self-modifying machines (neural networks); F.1.2
Modes of Computation: Alternation and nondeterminism.
Link:
CLASSIFICATION OF DATA TO EXTRACT KNOWLEDGE
FROM NEURAL NETWORKS
Ana Martinez, Angel Castellanos, Rafael Gonzalo