Publication | Closed Access
Integrating fuzzy knowledge by genetic algorithms
163
Citations
33
References
1998
Year
Artificial IntelligenceFuzzy LogicEngineeringFuzzy ComputingData ScienceData MiningNeuro-fuzzy SystemFuzzy MathematicsFuzzy Expert SystemFuzzy RulesComputer ScienceIntelligent SystemsFuzzy RuleFuzzy Knowledge IntegrationFuzzy Pattern RecognitionFuzzy Knowledge
We propose a genetic algorithm-based fuzzy knowledge integration framework that can simultaneously integrate multiple fuzzy rule sets and their membership function sets. The proposed approach consists of two phases: fuzzy knowledge encoding and fuzzy knowledge integration. In the encoding phase, each fuzzy rule set with its associated membership functions is first transformed into an intermediary representation and then further encoded as a string. The combined strings form an initial knowledge population, which is then ready for integration. In the knowledge-integration phase, a genetic algorithm is used to generate an optimal or nearly optimal set of fuzzy rules and membership functions from the initial knowledge population. Two application domains, the hepatitis diagnosis and the sugarcane breeding prediction, were used to show the performance of the proposed knowledge-integration approach. Results show that the fuzzy knowledge base derived using our approach performs better than every individual knowledge base.
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