
This paper discusses fuzzy IF-THEN rules in the framework of fuzzy type theory as developed by the first author in, e.g., [Fuzzy Sets Syst. 149, No. 2, 235--273 (2005; Zbl 1068.03019)]. The main aim is to treat such rules really as linguistic expressions and to model them as special cases within a broader formalization of natural language formulations. This approach opens a nice new way to study the properties of systems of linguistic control rules by logical means.
Logic in artificial intelligence, fuzzy type theory, linguistic control rules, fuzzy logic, approximate reasoning, Fuzzy logic; logic of vagueness, Reasoning under uncertainty in the context of artificial intelligence, fuzzy relation equations
Logic in artificial intelligence, fuzzy type theory, linguistic control rules, fuzzy logic, approximate reasoning, Fuzzy logic; logic of vagueness, Reasoning under uncertainty in the context of artificial intelligence, fuzzy relation equations
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