Proximity-based equivalence classes in fuzzy relational database model
Aleksandar Janji\'c

TL;DR
This paper proposes a new method for forming proximity-based equivalence classes in fuzzy relational databases that depend solely on attribute domains, simplifying the construction of proximity relations.
Contribution
It introduces a domain-dependent approach for equivalence class formation and a simple method for automatic proximity relation construction.
Findings
Equivalence classes depend only on attribute domains, not on database state.
A straightforward method for automatic proximity relation construction is proposed.
The new approach simplifies the handling of fuzzy relational databases.
Abstract
One of the first attempts to set a solid theoretical foundation for extending the content of relational databases with incomplete information was the fuzzy relational model by Buckles and Petry. This structure was based on two generalizations of the traditional relational model: (1) A tuple component can be any subset of the corresponding domain, rather than a single element and (2) A similarity relation is defined on each domain. This relation satisfies the properties of reflexivity, symmetry and max-min transitivity, thus having the equality relation as a special case. This generalization keeps two key properties of the relational model - that no two different tuples represent the same information and that the application of any operation of the relation algebra has a unique result. Shenoi and Melton generalized this model and showed how the existence of equivalence classes over the…
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Taxonomy
TopicsAdvanced Database Systems and Queries · Data Management and Algorithms · Semantic Web and Ontologies
