A hybrid method to construct Fuzzy Cognitive Map
نویسندگان
چکیده
This paper presents a hybrid methodology of automatically constructing fuzzy cognitive map (FCM). The proposed method is based on immune algorithm to learn the connection matrix of FCM. In the algorithm, the DNA coding method is used, and in order to utilize the experts’ knowledge and the feature of system, they are used as “vaccine”. Finally, an illustrative example is provided. The results suggest that the method is capable of automatically generating FCM model. Key-Words: fuzzy cognitive map, immune algorithm, system modeling
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