Back to Search Start Over

Rule Extraction using Artificial Neural Networks

Authors :
Kamruzzaman, S. M.
Hasan, Ahmed Ryadh
Source :
Proc. International Conference on Information and Communication Technology in Management (ICTM 2005), Multimedia University, Malaysia, May 2005
Publication Year :
2010

Abstract

Artificial neural networks have been successfully applied to a variety of business application problems involving classification and regression. Although backpropagation neural networks generally predict better than decision trees do for pattern classification problems, they are often regarded as black boxes, i.e., their predictions are not as interpretable as those of decision trees. In many applications, it is desirable to extract knowledge from trained neural networks so that the users can gain a better understanding of the solution. This paper presents an efficient algorithm to extract rules from artificial neural networks. We use two-phase training algorithm for backpropagation learning. In the first phase, the number of hidden nodes of the network is determined automatically in a constructive fashion by adding nodes one after another based on the performance of the network on training data. In the second phase, the number of relevant input units of the network is determined using pruning algorithm. The pruning process attempts to eliminate as many connections as possible from the network. Relevant and irrelevant attributes of the data are distinguished during the training process. Those that are relevant will be kept and others will be automatically discarded. From the simplified networks having small number of connections and nodes we may easily able to extract symbolic rules using the proposed algorithm. Extensive experimental results on several benchmarks problems in neural networks demonstrate the effectiveness of the proposed approach with good generalization ability.<br />Comment: 14 Pages, International Conference

Details

Database :
arXiv
Journal :
Proc. International Conference on Information and Communication Technology in Management (ICTM 2005), Multimedia University, Malaysia, May 2005
Publication Type :
Report
Accession number :
edsarx.1009.4984
Document Type :
Working Paper