Concept Lattice Attribute Reduction Based on Intersectional Reducible Equivalence Class
LIN Pei-Rong1,ZHANG Qi-Sen2,LI Jin-Jin2
1.Department of Computer Science and Engineering,Zhangzhou Normal University,Zhangzhou 363000 2.Department of Mathematics and Information Science,Zhangzhou Normal University,Zhangzhou,363000
Abstract:The concepts of intersectional reducible equivalence class and intersectional reducible element are introduced. The concept lattice attribute reduction and reduction algorithm based on intersectional reducible elements are studied, and attribute characters of different kinds are obtained. The linked list is used to show the logical structure of formal context, and based on the number of extension objects, the index is built to rapidly judge the validity of the intersection operation on attribute reduction. All unnecessary attributes are found out according to the different roles of attributes to intersection operation. Finally, the concept lattice attribute reduction is achieved.
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