| Literature DB >> 33265152 |
Gagandeep Kaur1, Harish Garg1.
Abstract
Cubic intuitionistic fuzzy (CIF) set is the hybrid set which can contain much more information to express an interval-valued intuitionistic fuzzy set and an intuitionistic fuzzy set simultaneously for handling the uncertainties in the data. Unfortunately, there has been no research on the aggregation operators on CIF sets so far. Since an aggregation operator is an important mathematical tool in decision-making problems, the present paper proposes some new Bonferroni mean and weighted Bonferroni mean averaging operators between the cubic intuitionistic fuzzy numbers for aggregating the different preferences of the decision-maker. Then, we develop a decision-making method based on the proposed operators under the cubic intuitionistic fuzzy environment and illustrated with a numerical example. Finally, a comparison analysis between the proposed and the existing approaches have been performed to illustrate the applicability and feasibility of the developed decision-making method.Entities:
Keywords: Bonferroni mean; aggregation operator; cubic intuitionistic fuzzy set; group decision-making; interval-valued intuitionistic fuzzy numbers
Year: 2018 PMID: 33265152 PMCID: PMC7512265 DOI: 10.3390/e20010065
Source DB: PubMed Journal: Entropy (Basel) ISSN: 1099-4300 Impact factor: 2.524
Rating values of the alternatives in terms of CIFNs.
| Alternatives | |||
|---|---|---|---|
Normalized decision ratings.
| Alternatives | |||
|---|---|---|---|
Effects on the ranking with the variation of the parameters p and q.
| Sc | Sc | Sc | Sc | Ranking Order | ||
|---|---|---|---|---|---|---|
Figure 1Effect of the parameter q on to the score value by fixing the parameter p.
Ranking order of the alternatives with accuracy value at .
| Figure | Value of | Accuracy Value at | Ranking Order | ||
|---|---|---|---|---|---|
| When | When | When | |||
| H | |||||
| H | |||||
| - | - | ||||
| - | - | ||||
Figure 2Score values of alternative for different values of p and q.
Surface readings (Sr’s) for each alternative’s rear view.
| Sc | Sc | Sc | Sc | |||||
|---|---|---|---|---|---|---|---|---|
| Sr(1)(B) | −1.294 | −1.199 | −1.302 | −1.147 | ||||
| Sr(1)(E) | −1.226 | −1.053 | −1.166 | −0.9665 | ||||
| Sr(2)(B) | −1.353 | −1.102 | −1.227 | −1.029 | ||||
| Sr(2)(E) | −1.35 | −1.115 | −1.239 | −1.027 | ||||
| Sr(3)(B) | −1.412 | −1.173 | −1.458 | – | – | |||
| Sr(3)(E) | −1.41 | −1.174 | −1.458 | – | – | |||
| Sr(4)(B) | – | – | -1.323 | – | – | – | – | |
| Sr(4)(E) | – | – | -1.323 | – | – | – | – | |
Comparison analysis with some of the existing approaches.
| Comparison with | Score Values | Ranking | |||
|---|---|---|---|---|---|
| Xu and Chen [ | −0.7152 | −0.5847 | −0.6880 | −0.5830 | |
| Shi and He [ | −0.2680 | −0.0685 | −0.2244 | −0.0301 | |
| Wang and Liu [ | −0.2593 | −0.0635 | −0.1552 | 0.0194 | |
| Chen et al. [ | −0.2633 | −0.0630 | −0.1425 | 0.0096 | |
| Chen et al. [ | −0.2608 | −0.0613 | −0.2154 | −0.0315 | |
| Sivaraman et al. [ | −0.2120 | −0.0792 | −0.1910 | 0.0214 | |
| Wan et al. [ | −0.2610 | −0.0705 | −0.1835 | −0.0100 | |
| Dugenci [ | 0.7940 | 0.7316 | 0.7693 | 0.7106 | |
| Garg [ | 0.1082 | 0.1101 | 0.1230 | 0.1649 | |