Conference paper
Using single-antecedent fuzzy rules in fuzzy knowledge map
National University of Kaohsiung
TAAI Conference on Artificial Intelligence and Applications (TAAI2005) (Kaohsiung, Taiwan, 02/12/2005–03/12/2005)
2005
Abstract
Conventional fuzzy inference methodology relies on the mapping of the input spaces to the output space by partitioning the spaces with membership functions. In cases where there are more than one input variables, an intersection of memberships is adopted by aggregating these regions. This strategy yields an exponential growth in the number of rules as inputs are added to the system, quickly reducing performance to unacceptable levels. We present a methodology that allows the use of single antecedent fuzzy rules to approximate a class of problems in the Fuzzy Knowledge Map - a knowledge representation framework developed by us.
Details
- Title
- Using single-antecedent fuzzy rules in fuzzy knowledge map
- Authors/Creators
- S.W. Khor (Author/Creator)M.S. Khan (Author/Creator)K.W. Wong (Author/Creator)
- Conference
- TAAI Conference on Artificial Intelligence and Applications (TAAI2005) (Kaohsiung, Taiwan, 02/12/2005–03/12/2005)
- Publisher
- National University of Kaohsiung
- Identifiers
- 991005543396907891
- Murdoch Affiliation
- School of Information Technology
- Language
- English
- Resource Type
- Conference paper
Metrics
144 File views/ downloads
77 Record Views