Disjunctive Representation of Triangular Bipolar Neutrosophic Numbers, De-Bipolarization Technique and Application in Multi-Criteria Decision-Making Problems
Abstract
:1. Introduction
1.1. Motivation
1.2. Novelties
1.3. Verbal Phrasesin theNeutrosophic Arena
1.4. Logical Relationship between the Objective and the Subjective Partsof this Paper
1.5. Structure of this Paper
2. Preliminaries
3. Single Typed Linear Triangular Bipolar Neutrosophic Number
3.1. Triangular Single Typed Bipolar NeutrosophicNumber of Category-1: The Portion of the Authenticity, Hesitation, and Untrue Are Independent
3.2. Triangular Single TypedBipolar Neutrosophic Number of Category-2: The Portion of Hesitation and Untrue Are Dependent
3.3. Triangular Single TypedBipolar Neutrosophic Number of Category-3: The Portion of the Authenticity, Hesitation, and Untrue Are Dependent
4. Single Typed Nonlinear Triangular Bipolar Neutrosophic Number
4.1. Single Typed Nonlinear Triangular Bipolar Neutrosophic Number
4.2. Single Typed Generalized Triangular Bipolar Neutrosophic Number
4.3. Single Typed Generalized Non Linear Triangular Bipolar Neutrosophic Number
5. De-Bipolarization of a Linear Neutrosophic Triangular Bipolar Fuzzy Number
- BADD (basic defuzzification distributions)
- BOA (bisector of area)
- CDD (constraint decision defuzzification)
- COA (center of area)
- COG (center of gravity)
- ECOA (extended center of area)
- EQM (extended quality method)
- FCD (fuzzy clustering defuzzification), etc.
5.1. De-Bipolarization Using the Removal Area Method
6. Multi-Criteria Decision-Making in a Triangular Bipolar Neutrosophic Fuzzy Set Environment
6.1. Illustration of the MCDM Problem
6.2. Weighted Mean and Normalisation Algorithm of the MCDM Problem
6.3. Illustrative Example
6.4. Results and Sensitivity Analysis
6.5. Comparison with Other Established Work:
7. Conclusions and Future Research Scope
Author Contributions
Funding
Conflicts of Interest
References
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Distinct Parameter | Verbal Phrase | Information |
---|---|---|
Interval Number | [Low, High] | Voter will select according to their first priority within a certain range, like [2nd,3rd] candidate. |
Triangular Fuzzy Number | [Low, Median, High] | Voter will select according to their first priority containing an intermediate candidate, like [1st,2nd,3rd] |
Intuitionistic (Triangular) | [Standard, Median, High; Very Low, Poor, Low] | Voters will select some candidates directly and reject others immediately according to their viewpoint. |
Neutrosophic (Triangular Bipolar) | [High, Standard, Very High; Intermediate, Average, Median; Very Low, Poor, Low] | Some voters will select some candidates directly, some will hesitate when casting their vote, and some will directly reject voting according to their viewpoint. |
Cases | Attribute | Verbal Phrase |
---|---|---|
Quantitative Attributes | ||
1 | Price of the product | Very high (VH), High (H), Intermediate (I), Small (S), Very small (VS) |
2 | Legibility of the product | Very high (VH), High (H), Mid (M), Low (L), Very low (VL) |
3 | Service of the product | Very high (VH), High (H), Mid (M), Low (L), Very low (VL) |
Alternatives/Attributes | C1 | C2 | C3 |
---|---|---|---|
A1 | L | M | H |
A2 | VL | M | I |
A3 | L | I | VH |
Attribute Weight | Final Decision Matrix | Ordering |
---|---|---|
<(0.33,0.30,0.37> | ||
<(0.25,0.30,0.45> | ||
<(0.35,0.25,0.40> | ||
<(0.40,0.30,0.30> | ||
<(0.20,0.30,0.50> |
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Chakraborty, A.; Mondal, S.P.; Alam, S.; Ahmadian, A.; Senu, N.; De, D.; Salahshour, S. Disjunctive Representation of Triangular Bipolar Neutrosophic Numbers, De-Bipolarization Technique and Application in Multi-Criteria Decision-Making Problems. Symmetry 2019, 11, 932. https://doi.org/10.3390/sym11070932
Chakraborty A, Mondal SP, Alam S, Ahmadian A, Senu N, De D, Salahshour S. Disjunctive Representation of Triangular Bipolar Neutrosophic Numbers, De-Bipolarization Technique and Application in Multi-Criteria Decision-Making Problems. Symmetry. 2019; 11(7):932. https://doi.org/10.3390/sym11070932
Chicago/Turabian StyleChakraborty, Avishek, Sankar Prasad Mondal, Shariful Alam, Ali Ahmadian, Norazak Senu, Debashis De, and Soheil Salahshour. 2019. "Disjunctive Representation of Triangular Bipolar Neutrosophic Numbers, De-Bipolarization Technique and Application in Multi-Criteria Decision-Making Problems" Symmetry 11, no. 7: 932. https://doi.org/10.3390/sym11070932
APA StyleChakraborty, A., Mondal, S. P., Alam, S., Ahmadian, A., Senu, N., De, D., & Salahshour, S. (2019). Disjunctive Representation of Triangular Bipolar Neutrosophic Numbers, De-Bipolarization Technique and Application in Multi-Criteria Decision-Making Problems. Symmetry, 11(7), 932. https://doi.org/10.3390/sym11070932