Selecting Project Delivery Systems Based on Simplified Neutrosophic Linguistic Preference Relations
Abstract
:1. Introduction
- (1)
- Propose the Hamming distance, Euclidean distance, and Hausdorff distance of two SNLNs. In addition, several relevant properties are discussed.
- (2)
- Present a new concept, SNLPRs. Subsequently, a distance-based consistency index is introduced to measure the consistency degree of SNLPRs.
- (3)
- Develop a consistency-improving algorithm and a ranking method based on aggregation operators. A decision-making approach based on SNLPRs is described as well.
- (4)
- Apply the proposed method to the project transaction model selection process. The practicability and effectiveness are demonstrated in a comparison analysis.
2. Preliminaries
- (1)
- If , then ;
- (2)
- If and , then ;
- (3)
- If , and , then ;
- (4)
- If , and , then .
- (1)
- If , then ;
- (2)
- If and , then ;
- (3)
- If , and , then ;
- (4)
- If , and , then .
3. Distance Measures of SNLNs
- (1)
- , , and , for ;
- (2)
- , , and , for ;
- (3)
- If , then , , and , for ;
- (4)
- If , , and , then , , , , and .
- (1)
- Because and , ; Similarly, , , and , ; thus . Likewise, and .
- (2)
- , , and , therefore . Likewise, and .
- (3)
- , and therefore . Similarly, and .
- (4)
- Because , , and is a monotone increasing function, and Likewise, and , so . Similarly, , , , and .
4. Decision-Making Method Based on SNLPRs
4.1. The Concept of SNLPRs
4.2. Consistency Checking of SNLPRs
- (1)
- Because is consistent, for all , there is based on Definition 15. In the same way, and , as and are consistent. That is to say, , and for all . On the basis of Definition 16, it can be seen that is consistent.
- (2)
- Since has complete consistency, then these equations hold based on Definition 16: , and . In the light of Definition 15, , and are all consistent as well.
- (1)
- , , and ;
- (2)
- , , and ;
- (3)
- If , then , , and ;
- (4)
- Let , and be three SNLPRs, if , , and for all , then , , , , and .
- (1)
- Since , then .Likewise, and .
- (2)
- As , then . Similarly, and .
- (3)
- Because , for all , then . In the same way, and .
- (4)
- As . Similarly, , , , and .
4.3. Improving the Consistency of SNLPRs
Algorithm 1. Consistency-improving process with automatic iteration |
Input: The initial SNLPR , and the value of the consistency threshold . Output: The modified SNLPR , and its consistency index . Step 1: Let and . According to Theorem 2, acquire the consistent SNLPR of , where . Step 2: Choose an applicable distance, and calculate on the basis of Definition 18. Step 3: Determine the maximum value of iterative times . If or , then go to Step 6; otherwise, go to the next step. Step 4: Confirm the adjusted parameter . Let , and . Step 5: Let and , then is the adjusted SNFLPR. Return to Step 2. Step 6: Let , Output and . |
- (1)
- From Equation (18), , and then, so ;
- (2)
- From Equation (19), , and then, so ;
- (3)
- From Equation (20), , and then, so ; According to (1)–(3), there is , then , , , so . In addition, .
Algorithm 1. Consistency-improving process with automatic iteration |
Input: The initial SNLPR , the consistency threshold value , and the maximum value of iterative times . Output: The modified SNLPR , and its consistency index . Step 1: As , go to the next step. Step 2: Let , and . Step 3: Let , Step 4: The consistent SNLPR . Step 5: is used, and on the basis of Definition 18. Step 6: As , go to the next step. Step 7: Let , Output , and . |
4.4. A Decision-Making Approach with SNLPRs
Algorithm 2. Decision-making approach with SNLPRs |
Input: The initial SNLPR . Output: The ranking result and the best alternative . Step 1: Choose a distance measure and calculate the value of according to Equation (24) Step 2: Determine the threshold value . If , then improve it by Algorithm 1 until it is acceptably consistent. Step 3: Aggregate each row of preference values in using the SNLAM or SNLGM operator. Step 4: Calculate the score function of overall preference degree of each by Definition 7. Step 5: Rank the alternatives on the basis of comparison method in Definition 8, and then output the ranking and the optimal alternative(s) . |
5. Application and Comparison
5.1. Illustration
5.2. Comparison Analysis
- (1)
- Comparison with References [44] and [77]: the same ranking results are obtained using the methods in [44,77] and our approach. An interactive feedback is used to improve the consistency in [44]. It may be a little difficult for DMs to do this work, especially when the alternatives are numerous. In addition, the arithmetic operator used may cause a reversal of ranking in some cases. Jin et al. described information with linguistic term sets in Reference [77]. However, all of the membership degrees are missing in LPRs. And the arithmetic operator used in Reference [77] also has the limitation of sorting reversal.
- (2)
- Comparison with Reference [55]: both [55] and our method choose the automatic iteration to improve consistency. The reason for the different ranking results may be that there are only membership and non-membership degrees in ILPRs. The conversion function possibly led to a loss of the original information.
- (3)
- Comparison with Reference [54]: the difference between [54] and our approach is that there is no process of consistency improvement in HFLPRs. Moreover, the truth-membership, indeterminacy-membership, and false-membership of the linguistic values in SNLPRs have identical roles in HFLPRs. This may be another explanation of the different rankings.
6. Discussion and Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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0.8235 | 0.7576 | 0.7210 | 0.6981 | 0.6824 | 0.6710 | 0.6624 | |
0.8739 | 0.8269 | 0.8007 | 0.7844 | 0.7731 | 0.7650 | 0.7589 | |
0.9020 | 0.8653 | 0.8450 | 0.8323 | 0.8235 | 0.8172 | 0.8124 |
Approaches | Backgrounds | Improving Consistency | Ranking Methods | Ranking Orders |
---|---|---|---|---|
Liang et al. [44] | SVTNPRs | Interactive feedback | Arithmetic operator | |
Meng et al. [55] | ILPRs | Automatic iteration | Preferred degrees | |
Wu and Xu [54] | HFLPRs | Interactive feedback | Expected values | |
Jin et al. [77] | LPRs | Automatic iteration | Arithmetic operator | |
The proposed method | SNLPRs | Automatic iteration | Geometric operator |
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Luo, S.-Z.; Cheng, P.-F.; Wang, J.-Q.; Huang, Y.-J. Selecting Project Delivery Systems Based on Simplified Neutrosophic Linguistic Preference Relations. Symmetry 2017, 9, 151. https://doi.org/10.3390/sym9080151
Luo S-Z, Cheng P-F, Wang J-Q, Huang Y-J. Selecting Project Delivery Systems Based on Simplified Neutrosophic Linguistic Preference Relations. Symmetry. 2017; 9(8):151. https://doi.org/10.3390/sym9080151
Chicago/Turabian StyleLuo, Sui-Zhi, Peng-Fei Cheng, Jian-Qiang Wang, and Yuan-Ji Huang. 2017. "Selecting Project Delivery Systems Based on Simplified Neutrosophic Linguistic Preference Relations" Symmetry 9, no. 8: 151. https://doi.org/10.3390/sym9080151
APA StyleLuo, S. -Z., Cheng, P. -F., Wang, J. -Q., & Huang, Y. -J. (2017). Selecting Project Delivery Systems Based on Simplified Neutrosophic Linguistic Preference Relations. Symmetry, 9(8), 151. https://doi.org/10.3390/sym9080151