Truth will come to light: directions and challenges in extracting the knowledge embedded within trained artificial neural networks

To date, the preponderance of techniques for eliciting the knowledge embedded in trained artificial neural networks (ANN's) has focused primarily on extracting rule-based explanations from feedforward ANN's. The ADT taxonomy for categorizing such techniques was proposed in 1995 to provide...

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Published inIEEE transactions on neural networks Vol. 9; no. 6; pp. 1052 - 1068
Main Authors Tickle, Alan B, Andrews, Robert, Golea, Mostefa, Diederich, Joachim
Format Journal Article
LanguageEnglish
Published 01.11.1998
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Summary:To date, the preponderance of techniques for eliciting the knowledge embedded in trained artificial neural networks (ANN's) has focused primarily on extracting rule-based explanations from feedforward ANN's. The ADT taxonomy for categorizing such techniques was proposed in 1995 to provide a basis for the systematic comparison of the different approaches. This paper shows that not only is this taxonomy applicable to a cross section of current techniques for extracting rules from trained feedforward ANN's but also how the taxonomy can be adapted and extended to embrace a broader range of ANN types (e.g., recurrent neural networks) and explanation structures. In addition the paper identifies some of the key research questions in extracting the knowledge embedded within ANN's including the need for the formulation of a consistent theoretical basis for what has been, until recently, a disparate collection of empirical results.
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ISSN:1045-9227