FuNN/2—a fuzzy neural network architecture for adaptive learning and knowledge acquisition
Kasabov, Nikola; Kim, Jaesoo; Watts, Michael; Gray, Andrew

View/ Open
Cite this item:
Kasabov, N., Kim, J., Watts, M., & Gray, A. (1996). FuNN/2—a fuzzy neural network architecture for adaptive learning and knowledge acquisition (Information Science Discussion Papers Series No. 96/23). University of Otago. Retrieved from http://hdl.handle.net/10523/1101
Permanent link to OUR Archive version:
http://hdl.handle.net/10523/1101
Abstract:
Fuzzy neural networks have several features that make them well suited to a wide range of knowledge engineering applications. These strengths include fast and accurate learning, good generalisation capabilities, excellent explanation facilities in the form of semantically meaningful fuzzy rules, and the ability to accommodate both data and existing expert knowledge about the problem under consideration. This paper investigates adaptive learning, rule extraction and insertion, and neural/fuzzy reasoning for a particular model of a fuzzy neural network called FuNN. As well as providing for representing a fuzzy system with an adaptable neural architecture, FuNN also incorporates a genetic algorithm in one of its adaptation modes. A version of FuNN—FuNN/2, which employs triangular membership functions and correspondingly modified learning and adaptation algorithms, is also presented in the paper.
Date:
1996-12
Publisher:
University of Otago
Pages:
30
Series number:
96/23
Research Type:
Discussion Paper
Notes:
Please note that this is a searchable PDF derived via optical character recognition (OCR) from the original source document. As the OCR process is never 100% perfect, there may be some discrepancies between the document image and the underlying text.
Collections
- Knowledge Engineering Laboratory [25]
- Information Science [488]
- Discussion Paper [441]