AISep 22, 2012

Matroidal structure of rough sets based on serial and transitive relations

arXiv:1209.4976v216 citations
AI Analysis

This work is incremental, combining existing theories to potentially enhance applications in machine learning and data mining.

The paper tackles the problem of integrating rough set theory with matroid theory by proposing a matroidal structure based on serial and transitive relations, proving that minimal neighborhoods satisfy matroid circuit axioms and exploring relationships between approximation and closure operators.

The theory of rough sets is concerned with the lower and upper approximations of objects through a binary relation on a universe. It has been applied to machine learning, knowledge discovery and data mining. The theory of matroids is a generalization of linear independence in vector spaces. It has been used in combinatorial optimization and algorithm design. In order to take advantages of both rough sets and matroids, in this paper we propose a matroidal structure of rough sets based on a serial and transitive relation on a universe. We define the family of all minimal neighborhoods of a relation on a universe, and prove it satisfy the circuit axioms of matroids when the relation is serial and transitive. In order to further study this matroidal structure, we investigate the inverse of this construction: inducing a relation by a matroid. The relationships between the upper approximation operators of rough sets based on relations and the closure operators of matroids in the above two constructions are studied. Moreover, we investigate the connections between the above two constructions.

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