
Abstract In this paper, we explore the use of General Unary Hypotheses Automaton quantifiers and provide representations for their specific subclasses. Furthermore, we focus explicitly on implicational quantifiers for analyzing specific relational dependencies. We discuss their suitability in fuzzy modeling and demonstrate their integration with appropriate fuzzy rules to create a new class of weighted fuzzy rules. This study contributes to the advancement of fuzzy modeling and offers a framework for further research and practical applications.
Fuzzy logic, Quantifiers, IF–THEN Rules, GUHA Method, Weighted fuzzy rules, Association rules
Fuzzy logic, Quantifiers, IF–THEN Rules, GUHA Method, Weighted fuzzy rules, Association rules
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