Title of article :
Uncertainty analysis of hierarchical granular structures for multi-granulation typical hesitant fuzzy approximation space
Author/Authors :
Zhang, H. Y. School of Mathematics and Statistics - Xi'an Jiaotong University, Xi'an, Shaan'xi Province, P.R. China , Yang, Y. School of Mathematics and Statistics - Xi'an Jiaotong University, Xi'an, Shaan'xi Province, P.R. China
Abstract :
Hierarchical structures and uncertainty measures are two main aspects in granular computing, approximate reasoning
and cognitive process. Typical hesitant fuzzy sets, as a prime extension of fuzzy sets, are more
exible to re
ect
the hesitance and ambiguity in knowledge representation and decision making. In this paper, we mainly investigate
the hierarchical structures and uncertainty measures in typical hesitant fuzzy backgrounds. Firstly, we propose the
parameterized scalar cardinalities of typical hesitant fuzzy elements, typical hesitant fuzzy sets and typical hesitant
fuzzy relations based on a more reasonable partial orders with a disjunctive semantic meaning, respectively, where
the parameters represent the decision makers' risk preferences. Secondly, we present four ordered relations for typical
hesitant fuzzy space and four uncertainty measures to characterize the ambiguity in typical hesitant fuzzy approximation
space and discuss their relationships. Thirdly, the hierarchical structures of a multi-granulation typical hesitant fuzzy
space are analyzed by various multi-granulation typical hesitant fuzzy knowledge bases. In addition, we construct
the framework of multi-granulation typical hesitant fuzzy rough sets in terms of optimistic and pessimistic attitudes.
Finally, we study the uncertainty measures for the multi-granulation typical hesitant fuzzy approximation space based
on the maximal and minimal knowledge bases, respectively.
Keywords :
Typical hesitant fuzzy set , partial order , hierarchical structure , multi-granulation typical hesitant fuzzy approximation space , uncertainty measure
Journal title :
Iranian Journal of Fuzzy Systems (IJFS)