Extraction of Symbolic Rules from Artificial Neural Networks

نویسندگان

  • S. M. Kamruzzaman
  • Md. Monirul Islam
چکیده

Although backpropagation ANNs generally predict better than decision trees do for pattern classification problems, they are often regarded as black boxes, i.e., their predictions cannot be explained as those of decision trees. In many applications, it is desirable to extract knowledge from trained ANNs for the users to gain a better understanding of how the networks solve the problems. A new rule extraction algorithm, called rule extraction from artificial neural networks (REANN) is proposed and implemented to extract symbolic rules from ANNs. A standard three-layer feedforward ANN is the basis of the algorithm. A four-phase training algorithm is proposed for backpropagation learning. Explicitness of the extracted rules is supported by comparing them to the symbolic rules generated by other methods. Extracted rules are comparable with other methods in terms of number of rules, average number of conditions for a rule, and predictive accuracy. Extensive experimental studies on several benchmarks classification problems, such as breast cancer, iris, diabetes, and season classification problems, demonstrate the effectiveness of the proposed approach with good generalization ability. Keywords—Backpropagation, clustering algorithm, constructive algorithm, continuous activation function, pruning algorithm, rule extraction algorithm, symbolic rules.

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عنوان ژورنال:
  • CoRR

دوره abs/1009.4570  شماره 

صفحات  -

تاریخ انتشار 2005