Fuzzy reasoning in K-means classification method
نویسندگان
چکیده
Domain analysis tries to reuse software in an e ective way New methodologies are start ing to be able to automate the process in di erent degrees with the construction of a domain model for each problem The general process is divided into several phases One of the most di cult tasks is the generation of the relationships which have to be de ned between the components in the domain In this paper the use of fuzzy logic and a statis tical classi cation method in order to get the semantic relationships for each pair of com ponents is presented
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