A connectionist inference model for pattern-directed knowledge representation

Article


Mitchell, I. and Bavan, A. 2000. A connectionist inference model for pattern-directed knowledge representation. Expert Systems. 17 (2), pp. 106-113.
TypeArticle
TitleA connectionist inference model for pattern-directed knowledge representation
AuthorsMitchell, I. and Bavan, A.
Research GroupArtificial Intelligence group
PublisherLearned Information
JournalExpert Systems
ISSN0266-4720
Publication dates
Print2000
Publication process dates
Deposited18 May 2009
Output statusPublished
Additional information

Also known as The international journal of knowledge engineering.

LanguageEnglish
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