A unified view of multi-grade fuzzy-set models in J-CO-QL

NEUROCOMPUTING(2024)

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摘要
The complexity of reality has driven the evolution of Fuzzy-Set Theory from the initial proposal made by Zadeh in 1965, towards more complex models. Moving from a quick survey of the evolution of Fuzzy-Set Theory, this paper highlights the aspects that are common to many Fuzzy-Set Models, in order to define a meta-model that is capable of providing a unified view to a wide variety of fuzzy-set models. In particular, this work focuses the attention on the family of "Multi-grade Fuzzy Sets", which are fuzzy sets characterized by more than one degree.The lack of tools capable of querying the large amount of data that are nowadays available in NoSQL databases, has pushed us to devise the J-CO Framework: it is a platform-independent tool that is capable to manage, transform and query collections of JSON documents; the J-CO Framework relies on J-CO-QL(+), which is a high-level, general-purpose language with soft-querying capabilities. The latest advancements of J-CO-QL(+) allow for defining and exploiting user-defined Multi-grade Fuzzy-Set Models and Operators. In the paper, a case-study demonstrates the effectiveness of the J-CO Framework in performing a non-trivial soft query based on a Multi-grade Fuzzy-Set Model defined by the user.
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关键词
Quick review of fuzzy-set models,Meta-model for multi-grade fuzzy sets,User-defined fuzzy-set models inJ-CO-QL(+),Soft querying with multi-grade fuzzy-set models
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