Linguistic Pythagorean Einstein Operators and Their Application to Decision Making
Abstract
:1. Introduction
- To extend he Einstein T-norm and T-conorm to LPFS and propose novel operational laws of LPFNs to improve the flexibility and robustness of the proposed approach;
- To propose several LPF Einstein operators such as LPF Einstein averaging operators, LPF Einstein geometry operators, LPF Einstein hybrid operators and discuss several related properties of these operators;
- To present a novel DM method based on the proposed operators to solve MAGDM problems in practical situations;
- To provide an application example to illustrate the validity of the presented approach and give a comparative analysis to show its advantages.
2. Preliminaries
2.1. Linguistic Pythagorean Fuzzy Set
- if > , then ;
- if = , then
- if < , then ;
- if = , then .
2.2. Einstein T-Norm and S-Norm
3. Einstein Operations of LPFNs
- 1.
- ;
- 2.
- ;
- 3.
- ;
- 4.
- .
- 1.
- ;
- 2.
- ;
- 3.
- ;
- 4.
- ;
- 5.
- ;
- 6.
- .
4. LPFE Aggregation Operators
4.1. LPFE Averaging Operators
4.1.1. LPFEWA Operator
4.1.2. LPFEOWA Operator
4.1.3. LPFEHA Operator
4.2. LPFE Geometric Operators
4.2.1. LPFEWG Operator
4.2.2. LPFEOWG Operator
4.2.3. LPFEHG Operator
5. The Developed Decision Making Approach
6. Numerical Example and Comparative Analysis
6.1. Numerical Example
- 1.
- : Expand to Asia;
- 2.
- : Expand to African;
- 3.
- : Expand to Northern American;
- 4.
- : Expand to all three continent.
- 1.
- : Short term interests;
- 2.
- : Medium-term interest;
- 3.
- : Long-term interests;
- 4.
- : Strategic risk.
6.2. Comparative Analysis
7. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Ranking Orders | Ranking Orders | |
---|---|---|
in the Original Literature | Based on Proposed Approach | |
Example in [57] | ||
Example in [58] | ||
Example in [60] |
Approaches | Whether Quantitative Description of Information | Whether Qualitative Description of Information | Describe a Wider Range of Information | Have Generalized Features |
---|---|---|---|---|
The method propounded by Xu in [17] | NO | NO | NO | NO |
The method propounded by Xia et al. in [18] | NO | NO | NO | YES |
The method propounded by Chen et al. in [57] | YES | YES | NO | YES |
The method propounded by Garg in [60] | YES | YES | YES | NO |
The propounded method in this paper | YES | YES | YES | YES |
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Rong, Y.; Pei, Z.; Liu, Y. Linguistic Pythagorean Einstein Operators and Their Application to Decision Making. Information 2020, 11, 46. https://doi.org/10.3390/info11010046
Rong Y, Pei Z, Liu Y. Linguistic Pythagorean Einstein Operators and Their Application to Decision Making. Information. 2020; 11(1):46. https://doi.org/10.3390/info11010046
Chicago/Turabian StyleRong, Yuan, Zheng Pei, and Yi Liu. 2020. "Linguistic Pythagorean Einstein Operators and Their Application to Decision Making" Information 11, no. 1: 46. https://doi.org/10.3390/info11010046
APA StyleRong, Y., Pei, Z., & Liu, Y. (2020). Linguistic Pythagorean Einstein Operators and Their Application to Decision Making. Information, 11(1), 46. https://doi.org/10.3390/info11010046