Multiple Attribute Decision-Making Method Using Similarity Measures of Neutrosophic Cubic Sets
Abstract
:1. Introduction
2. Basic Definitions of CSs and NCSs
- (i)
- as an internal CS if for ;
- (ii)
- as an external CS if for .
- (i)
- An internal NCS if , , and for ;
- (ii)
- An external NCS if , , and for .
- (1)
- ) (the complement of );
- (2)
- if and only if , , , , , and (P-order);
- (3)
- if and only if and , i.e., and .
3. Similarity Measures of NCSs
- (1)
- Dice Measure between the NCSs R and H
- (2)
- Cotangent Measure between the NCSs R and H
- (3)
- Jaccard Measure between the NCSs R and H
- (I)
- ;
- (II)
- ;
- (III)
- if R = H, i.e.,and.
- (I)
- The inequality is obvious. Then, we only prove .
- (II)
- The equality is obvious.
- (III)
- When R = H, we have and . Thus , , , , , and for i = 1, 2, …, n. Hence holds.
- (I)
- The inequality is obvious. Similarly, we obtain other inequalities , , , , and .
- (I)
- ;
- (II)
- ;
- (III)
- if R = H, i.e., and . □
4. MADM Method Using the Proposed Measures of NCSs
- Step 1: By considering the benefit and cost types of attributes, setup an ideal solution (ideal alternative) , where the desired NCNs (t = 1, 2, …, n) are expressed by for the benefit attributesorfor the cost attributes.
- Step 2: Compute the measure value between an alternative Rs (s = 1, 2, …, m) and the ideal solution R* by using Equation (4) or Equation (5) or Equation (6), and then obtain the values of or or (s = 1, 2, …, m).
- Step 3: Corresponding to the measure values of or or , rank the alternatives in descending order and choose the best one regarding the bigger measure value.
- Step 4: End.
5. Decision-Making Example
5.1. Practical Example 1
5.2. Related Comparison
5.3. Practical Example 2
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Zθm(Rs,R*) | Measure Result | Ranking | The Best One |
---|---|---|---|
Zθ1(Rs,R*) | 0.9517,0.9822,0.9498,0.9945 | Z4 > Z2 > Z1 > Z3 | Z4 |
Zθ2(Rs,R*) | 0.8246,0.9248,0.8474,0.9668 | Z4 > Z2 > Z3 > Z1 | Z4 |
Zθ3(Rs,R*) | 0.9085,0.9654,0.9054,0.9893 | Z4 > Z2 > Z1 > Z3 | Z4 |
Measure | Measure Value | Ranking Order | SD | The Best One |
---|---|---|---|---|
Zθ1(Rs,R*) | 0.9945,0.9822,0.9517,0.9498 | Z4 > Z2 > Z1 > Z3 | 0.0193 | Z4 |
Zθ2(Rs,R*) | 0.9668,0.9248,0.8474,0.8246 | Z4 > Z2 > Z3 > Z1 | 0.0574 | Z4 |
Zθ3(Rs,R*) | 0.9085,0.9654,0.9054,0.9893 | Z4 > Z2 > Z1 > Z3 | 0.0362 | Z4 |
Sw1(R1,R*) [30] | 0.9451, 0.9794, 0.9524, 0.9846 | Z4 > Z2 > Z3 > Z1 | 0.0169 | Z4 |
Sw2(R2,R*) [30] | 0.9700, 0.9906, 0.9732, 0.9877 | Z2 > Z4 > Z3 > Z1 | 0.0089 | Z2 |
Sw2(R2,R*) [30] | 0.9867, 0.9942, 0.9877, 0.9968 | Z4 > Z2 > Z3 > Z1 | 0.0043 | Z4 |
Alternative | R1 | R2 | R3 | R4 |
---|---|---|---|---|
Reducing mechanism | Gear reducer | Gear head motor | Gear reducer | Gear head motor |
Punching mechanism | Crank-slider mechanism | Six bar punching mechanism | Six bar punching mechanism | Crank-slider mechanism |
Dial feed intermittent mechanism | Sheave mechanism | Ratchet feed mechanism |
Zθm(Rs,R*) | Measure Value | Ranking | The Best One |
---|---|---|---|
Zθ1(Rs,R*) | 0.9683,0.9704,0.9847,0.9924 | Z4 > Z3 > Z2 > Z1 | Z4 |
Zθ2(Rs,R*) | 0.8652,0.8937,0.8813,0.9701 | Z4 > Z2 > Z3 > Z1 | Z4 |
Zθ3(Rs,R*) | 0.9386,0.9445,0.9699,0.9853 | Z4 > Z3 > Z2 > Z1 | Z4 |
Zθm(Rs,R*) | Measure Value Based on θ = (0.36, 0.3, 0.34) | Measure Value Based on θ = (1/3, 1/3, 1/3) | Ranking | The Best One |
---|---|---|---|---|
Zθ1(Rs,R*) | 0.9683,0.9704,0.9847,0.9924 | 0.9684,0.9697,0.9845,0.991 | Z4 > Z3 > Z2 > Z1 | Z4 |
Zθ2(Rs,R*) | 0.8652,0.8937,0.8813,0.9701 | 0.8659,0.8927,0.8795,0.966 | Z4 > Z2 > Z3 > Z1 | Z4 |
Zθ3(Rs,R*) | 0.9386,0.9445,0.9699,0.9853 | 0.9387,0.9432,0.9695,0.983 | Z4 > Z3 > Z2 > Z1 | Z4 |
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Tu, A.; Ye, J.; Wang, B. Multiple Attribute Decision-Making Method Using Similarity Measures of Neutrosophic Cubic Sets. Symmetry 2018, 10, 215. https://doi.org/10.3390/sym10060215
Tu A, Ye J, Wang B. Multiple Attribute Decision-Making Method Using Similarity Measures of Neutrosophic Cubic Sets. Symmetry. 2018; 10(6):215. https://doi.org/10.3390/sym10060215
Chicago/Turabian StyleTu, Angyan, Jun Ye, and Bing Wang. 2018. "Multiple Attribute Decision-Making Method Using Similarity Measures of Neutrosophic Cubic Sets" Symmetry 10, no. 6: 215. https://doi.org/10.3390/sym10060215
APA StyleTu, A., Ye, J., & Wang, B. (2018). Multiple Attribute Decision-Making Method Using Similarity Measures of Neutrosophic Cubic Sets. Symmetry, 10(6), 215. https://doi.org/10.3390/sym10060215