The Extraction of Refined Rules from Knowledge-Based Neural Networks (1993)
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| Venue: | Machine Learning |
| Citations: | 176 - 4 self |
BibTeX
@INPROCEEDINGS{Towell93theextraction,
author = {Geoffrey G. Towell and Jude W. Shavlik},
title = {The Extraction of Refined Rules from Knowledge-Based Neural Networks},
booktitle = {Machine Learning},
year = {1993},
pages = {71--101}
}
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Abstract
Neural networks, despite their empirically-proven abilities, have been little used for the refinement of existing knowledge because this task requires a three-step process. First, knowledge in some form must be inserted into a neural network. Second, the network must be refined. Third, knowledge must be extracted from the network. We have previously described a method for the first step of this process. Standard neural learning techniques can accomplish the second step. In this paper, we propose and empirically evaluate a method for the final, and possibly most difficult, step. This method efficiently extracts symbolic rules from trained neural networks. The four major results of empirical tests of this method are that the extracted rules: (1) closely reproduce (and can even exceed) the accuracy of the network from which they are extracted; (2) are superior to the rules produced by methods that directly refine symbolic rules; (3) are superior to those produced by previous techniques fo...







