Analytic and inductive learning in an efficient connectionist rule-based reasoning system

Hayward, Ross (2001) Analytic and inductive learning in an efficient connectionist rule-based reasoning system. PhD thesis, Queensland University of Technology.

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ID Code: 36865
Item Type: QUT Thesis (PhD)
Additional Information: Presented to the Machine Learning Research Centre, School of Computing Science and Software Engineering, Queensland University of Technology.
Keywords: Neural networks (Computer science), Connectionism, Artificial intelligence, Knowledge acquisition (Expert systems), machine learning, structured connectionist architectures, analytical learning, concept learning, explanation-based learning, artificial neural networks, rule extraction, thesis, doctoral
Institution: Queensland University of Technology
Copyright Owner: Copyright Ross Hayward
Deposited On: 22 Sep 2010 13:06
Last Modified: 23 Dec 2015 05:38

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