Title of article
Derivation of Fuzzy Rules from Interval-Valued Data
Author/Authors
Dmitri A. Viattchenin، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2010
Pages
8
From page
13
To page
20
Abstract
Fuzzy inference systems are widely used for classification and control. They can be designed from the training data. This paper describes a technique for deriving fuzzy classification rules from the interval-valued data. The technique based on a heuristic method of possibilistic clustering and a special method of the interval-valued data preprocessing. Basic concepts of the heuristic method of possibilistic clustering based on the allotment concept are described and the method of the interval-valued data preprocessing is also given. The method of constructing of fuzzy rules based on clustering results is presented. An illustrative example of the methodʹs application to the Sato and Jainʹs interval-valued data is carried out. Preliminary conclusions are formulated.
Keywords
Interval-valued data , Possibilistic clustering , typical point , tolerance threshold , fuzzy cluster , fuzzy classification rule
Journal title
International Journal of Computer Applications
Serial Year
2010
Journal title
International Journal of Computer Applications
Record number
660116
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