Rough approximation operators based on quantale-valued fuzzy generalized neighborhood systems

Authors

  • F. F. Zhao Department of Mathematics, Liaocheng University, Liaocheng, P.R.China
  • L. Q. Li Department of Mathematics, Liaocheng University, Liaocheng, P.R.China
  • Q. Jin Department of Mathematics, Liaocheng University, Liaocheng, P.R.China
  • S. B. Sun School of Computer Science and Technology, Liaocheng University, Liaocheng, P.R.China
Abstract:

Let $L$ be an integral and commutative quantale. In this paper, by fuzzifying the notion of generalized neighborhood systems, the notion of $L$-fuzzy generalized neighborhoodsystem is introduced and then a pair of lower and upperapproximation operators based on it are defined and discussed. It is proved that these approximation operators include generalized neighborhood system-based approximation operators, $L$-fuzzyrelation-based approximation operators and $L$-fuzzycovering-based approximation operators as their specialcircumstances. Therefore, the research on $L$-fuzzy generalizedneighborhood system-based approximation operators has more generalsignificance. In addition, when the $L$-fuzzy generalizedneighborhood system is serial, reflexive, unary and transitive,then the corresponding approximation operators are discussed and characterized, respectively.

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Journal title

volume 16  issue 6

pages  53- 63

publication date 2019-12-01

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