Fuzzy Analysis of Statistical Evidence (FASE)
نویسنده
چکیده
Fuzzy Analysis of Statistical Evidence (FASE) is utilizing the fuzzy set and the statistical theory for solving problems of pattern recognition and/or classification. Several features of FASE are similar to the human judgment. It can evaluate the weight of statistical evidence (information); it can update inference with new information; and it can incorporate missing data. Furthermore, since it can extract expert rules from data, it can also serve as a link to machine learning and expert systems. ___________________________________________________________________________________
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