Fuzzy Logic Models in some Categories
نویسنده
چکیده
Models of a fuzzy logic in two categories of sets with similarity relations are introduced. Interpretations of formulas in these models are defined and some relations between different interpretations are investigated. Keywords—Many-Valued and Fuzzy Logics.
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