Rules and Neural Networks. Paper announcement.
MFMISMIC%HMARL5.BITNET@vma.cc.cmu.edu
MFMISMIC%HMARL5.BITNET at vma.cc.cmu.edu
Fri Aug 2 17:43:00 EDT 1991
The following paper has been published in the proceedings of the
European Simulation Multiconference 91 in Copenhagen:
HOMOMORPHIC TRANSFORMATION FROM
NEURAL NETWORKS TO RULE BASES
Author: Michael Egmont-Petersen,
Computer Resources International a/s
and
Copenhagen Business School
Abstract: In this article a method to extract the knowl-
edge induced in a neural network is presented. The
method explicates the relation between a network's
inputs and its outputs. This relation is stored as logic
rules. The feasibility of the method is studied by means
of three test examples. The result is that the method
can be used, though some drawbacks are detected. One
is that the method sometimes generates a lot of rules.
For fast retrieval, these rules can well be stored in a B-
tree.
Contents:
1. Introduction
2. Synthesizing Rule Bases Parsimoniously
3. Description of the Experiments
4. Practical Applicability of the Algorithm
5. Conclusion
Hardcopies of the paper are avaliable. Please send requests to the
following address in Holland:
Institute of Medical Statistics and Informatics
University of Limburg
Postbus 616
NL-6200 MD Maastricht
The Netherlands
att. Michael Egmont-Petersen
Michael Egmont-Petersen
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