Improvements on Correlation Coefficients of Hesitant Fuzzy Sets and Their Applications

被引:0
作者
Guidong Sun
Xin Guan
Xiao Yi
Zheng Zhou
机构
[1] Naval Aviation University,
[2] Institute of Systems Engineering,undefined
[3] Academy of Military Sciences,undefined
来源
Cognitive Computation | 2019年 / 11卷
关键词
Correlation coefficients; Hesitant fuzzy sets (HFSs); Weighted correlation coefficients; Decision making; Clustering;
D O I
暂无
中图分类号
学科分类号
摘要
Hesitant fuzzy set (HFS) can express the hesitancy and uncertainty according to human’s cognitions and knowledge. The decision making with HFSs can be regarded as a cognitive computation process. Decision making based on information measures is a hot topic, among which correlation coefficient is an important direction. Although many correlation coefficients of HFSs have been proposed in the previous papers, they suffer from different counter-intuitions to a certain extent. Therefore, we mainly focus on improving these counter-intuitions of the existing correlation coefficients of HFSs in this paper. We point out the counter-intuitions of the existing correlation coefficients of HFSs and analyze the reasons of them in the view of the rigorous mathematics and stochastic process rules. We improve these counter-intuitions and develop the correct versions. Moreover, we use two examples about medical diagnosis and cluster analysis to compare the improved correlation coefficients with the existing ones. The improved correlation coefficients can handle the examples well. Further, combining with the comparison analysis, the accuracy and discrimination property of the improved correlation coefficients are demonstrated in detail, which shows the advantages of them. The notion of the improved correlation coefficients can benefit other types of fuzzy sets too.
引用
收藏
页码:529 / 544
页数:15
相关论文
共 113 条
[1]  
Liu PD(2016)Multi-criteria group decision-making based on interval neutrosophic uncertain linguistic variables and Choquet integral Cogn Comput 8 1036-1056
[2]  
Tang GL(2018)A novel picture fuzzy linguistic aggregation operator and its application to group decision-making Cogn Comput 10 242-259
[3]  
Liu PD(2018)Multiple attribute decision-making methods based on the expected value and the similarity measure of hesitant neutrosophic linguistic numbers Cogn Comput 10 454-463
[4]  
Zhang XH(2010)Hesitant fuzzy sets Int J Intell Syst 25 529-539
[5]  
Ye J(2011)Distance and similarity measures for hesitant fuzzy sets Inf Sci 181 2128-2138
[6]  
Torra V(2015)Note on distance measure of hesitant fuzzy sets Inf Sci 321 103-115
[7]  
Xu ZS(2017)Distance and aggregation-based methodologies for hesitant fuzzy decision making Cogn Comput 9 81-94
[8]  
Xia MM(2016)Group decision making with dual hesitant fuzzy preference relations Cogn Comput 8 1119-1143
[9]  
Li DQ(2017)A multiple criteria decision making model with entropy weight in an interval-transformed hesitant fuzzy environment Cogn Comput 9 513-525
[10]  
Zeng WY(2013)Information measures for hesitant fuzzy sets and interval-valued hesitant fuzzy sets Inf Sci 240 129-144