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Triangular Fuzzy-Rough Set Based Fuzzification of Fuzzy Rule-Based Systems

Janusz T. Starczewski, Piotr Goetzen, Christian Napoli

2020Journal of Artificial Intelligence and Soft Computing Research28 citationsDOIOpen Access PDF

Abstract

Abstract In real-world approximation problems, precise input data are economically expensive. Therefore, fuzzy methods devoted to uncertain data are in the focus of current research. Consequently, a method based on fuzzy-rough sets for fuzzification of inputs in a rule-based fuzzy system is discussed in this paper. A triangular membership function is applied to describe the nature of imprecision in data. Firstly, triangular fuzzy partitions are introduced to approximate common antecedent fuzzy rule sets. As a consequence of the proposed method, we obtain a structure of a general (non-interval) type-2 fuzzy logic system in which secondary membership functions are cropped triangular. Then, the possibility of applying so-called regular triangular norms is discussed. Finally, an experimental system constructed on precise data, which is then transformed and verified for uncertain data, is provided to demonstrate its basic properties.

Topics & Concepts

DefuzzificationFuzzy set operationsMembership functionType-2 fuzzy sets and systemsFuzzy numberFuzzy setFuzzy classificationMathematicsData miningFuzzy logicRough setFuzzy ruleFuzzy mathematicsInterval (graph theory)AlgorithmArtificial intelligenceMathematical optimizationComputer scienceCombinatoricsRough Sets and Fuzzy LogicFuzzy Logic and Control SystemsMulti-Criteria Decision Making
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