Title: A WEIGHTED FUZZY-REASONING ALGORITHM FOR MEDICAL DIAGNOSIS
Authors: CHEN, SM
交大名義發表
資訊工程學系
National Chiao Tung University
Department of Computer Science
Keywords: FUZZY PRODUCTION RULES;FUZZY SET THEORY;KNOWLEDGE BASE;KNOWLEDGE REPRESENTATION;SIMILARITY FUNCTION;SIMILARITY MEASURES
Issue Date: 1-Jan-1994
Abstract: This paper presents a weighted fuzzy reasoning algorithm for handling medical diagnostic problems, where fuzzy set theory and fuzzy production rules are used for knowledge representation. The algorithm can perform fuzzy matching between the patient's symptom manifestations and the antecedent portions of fuzzy production rules to determine the presence of diseases, where the result is interpreted as a certainty level indicating the degree of certainty of the presence of the disease. Because the algorithm allows each symptom in medical diagnosis to have a different degree of importance, it is more flexible than the ones we presented in [3] and [4]. The algorithm can be executed very efficiently. If the knowledge base contains n fuzzy production rules and there are p symptoms, then the time complexity of the algorithm is O(np).
URI: http://hdl.handle.net/11536/2696
ISSN: 0167-9236
Journal: DECISION SUPPORT SYSTEMS
Volume: 11
Issue: 1
Begin Page: 37
End Page: 43
Appears in Collections:Articles