Fuzzy Modeling with Linguistic Integrity 1

نویسندگان

  • Jairo J. Espinosa
  • Joos Vandewalle
  • Jairo Espinosa
چکیده

The current paper presents an algorithm to build a fuzzy relational model from input-output data. The paper discuss the trade-oo between linguistic integrity and accuracy and propose an algorithm for rule extraction (AFRELI). The algorithm uses a routine named FuZion to merge consecutive membership functions and guaranteed the distinguishability between the fuzzy sets on each domain.

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تاریخ انتشار 1998