Hesitant Fuzzy Linguistic Aggregation Operators Based on the Hamacher t-norm and t-conorm
Abstract
:1. Introduction
2. Preliminaries
2.1. Hamacher Operations
2.2. Hesitant Fuzzy Linguistic Term Set
- (1)
- ;
- (2)
- ;
- (3)
- ;
- (4)
- .
- (1)
- ;
- (2)
- ;
- (3)
- ;
- (4)
- .
- (1)
- ;
- (2)
- ;
- (3)
- ;
- (4)
- .
- (1)
- If, thenis superior, denoted by ;
- (2)
- If, thenis equal to, denoted by .
3. Hesitant Fuzzy Linguistic Hamacher Aggregation Operators
3.1. HFLHWA and HFLHWG Operators
3.2. GHFLHWA and GHFLHWG Operators
4. Hesitant Fuzzy Linguistic Hamacher Power Aggregation Operators
4.1. The HFLHPWA and HFLHPWG Operators
- (1)
- ;
- (2)
- ;
- (3)
- , if.
4.2. The GHFLHPWA and GHFLHPWG Operators
5. Methods for MCDM Based on the Hesitant Fuzzy Linguistic Hamacher Operators
- Step 1.
- Determine the linguistic term set that is applied to evaluate each alternative with respect to each criterion; then the hesitant fuzzy linguistic evaluation matrix is obtained.
- Step 2.
- Normalized the evaluation matrix according to Equation (33).
- Step 3.
- Aggregate the criteria values by the GHFLHWA or GHFLHWG operator as follow:
- Step 4.
- Compute the score value of each alternative by Equation (2).
- Step 5.
- Obtained the ranking order of alternatives by the decreasing of the score value.
- Step 1.
- Determine the linguistic term set that is applied to evaluate each alternative with respect to each criterion; then the hesitant fuzzy linguistic evaluation matrix is obtained.
- Step 2.
- Normalize the evaluation matrix according to Equation (33).
- Step 3.
- Calculate the support degree of using the following formula.
- Step 4.
- Obtained the power weight vector p by the following formula.
- Step 5.
- Aggregate the criteria values by the GHFLHPWA or GHFLHPWG operators.
- Step 6.
- Compute the score value of each alternative by Equation (2).
- Step 7.
- Determined the priority order of alternatives by the decreasing of score value.
6. An Application of the Proposed Operators to MCDM
6.1. Numeric Example
- Step 1.
- The board of directors constructs a nine-point linguistic term set to evaluate the ratings of cities, that is, . Then the decision makers utilize the linguistic term to evaluate the ratings of the cities and the obtained hesitant fuzzy linguistic evaluation matrix is presented in Table 1.
- Step 2.
- Since these criteria are all benefit criterions, the evaluate matrix is not necessary to be normalized.
- Step 3.
- Let and , aggregate all of the criteria evaluation values according to the GHFLHWA operator into the total evaluation value of alternative .
- Step 4.
- Calculate the score values of by Definition 6.The obtained results are as follows:
- Step 5.
- Based on the decreasing order of score values, we have . Therefore, the best city is .
- Step 3.
- Compute the support degree .
- Step 4.
- Calculate the power weight matrix.
- Step 5.
- Let and , aggregate all of the criteria values into the total evaluation value of alternative by the GHFLHPWA operator.
- Step 6.
- Calculate the score values of by Definition 6; the obtained results are as follows: , , , .
- Step 7.
- Based on the decreasing order of score values, we have . Therefore, the best city is .
6.2. Comparison with Existing Methods of Hesitant Fuzzy Linguistic MCDM
- Step 1.
- For an MCDM problem with HFL information, let be a collection of m alternatives and be a collection of n criteria with weight vector satisfying and . Suppose is an HFL evaluation matrix provided by the decision makers, where is an HFLE.
- Step 2.
- Based on the evaluation matrix R, an HFL positive ideal solution (HFLPIS) and an HFL negative ideal solution (HFLNIS) can be determined by
- Step 3.
- The distance from each alternative to HFLPIS and HFLNIS are calculated as follows:
- Step 4.
- The closeness coefficients of alternatives can be calculated by
- Step 5.
- Determine the priority orders of all alternatives in the light of the decrease of the closeness coefficient .
- Step 1.
- The hesitant fuzzy linguistic evaluation matrix R is shown in Table 4.
- Step 2.
- Based on the hesitant fuzzy linguistic evaluation matrix R, the HFLPIS and the HFLNIS are determined as
- Step 3.
- The distance from each alternative to HFLPIS and HFLNIS are obtained as
- Step 4.
- Employ Equation (43) to compute the closeness coefficient of alternative .
- Step 5.
- The final priority order of all alternatives obtained as follows: .
7. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Cities | ||||
---|---|---|---|---|
GHFLHPWA | Ranking | ||||
---|---|---|---|---|---|
0.6464 | 0.7480 | 0.6832 | 0.8034 | ||
0.6066 | 0.7231 | 0.6529 | 0.7843 | ||
0.5441 | 0.6816 | 0.6005 | 0.7542 | ||
0.4550 | 0.6118 | 0.5173 | 0.7016 | ||
0.3856 | 0.5467 | 0.4470 | 0.6493 |
GHFLHPWG | Ranking | ||||
---|---|---|---|---|---|
0.4409 | 0.5693 | 0.5328 | 0.6400 | ||
0.4969 | 0.6400 | 0.5985 | 0.7143 | ||
0.5727 | 0.7162 | 0.6779 | 0.7836 | ||
0.6638 | 0.7909 | 0.7608 | 0.8454 | ||
0.7253 | 0.8347 | 0.8107 | 0.8796 |
Cities | ||||
---|---|---|---|---|
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Zhu, J.; Li, Y. Hesitant Fuzzy Linguistic Aggregation Operators Based on the Hamacher t-norm and t-conorm. Symmetry 2018, 10, 189. https://doi.org/10.3390/sym10060189
Zhu J, Li Y. Hesitant Fuzzy Linguistic Aggregation Operators Based on the Hamacher t-norm and t-conorm. Symmetry. 2018; 10(6):189. https://doi.org/10.3390/sym10060189
Chicago/Turabian StyleZhu, Jianghong, and Yanlai Li. 2018. "Hesitant Fuzzy Linguistic Aggregation Operators Based on the Hamacher t-norm and t-conorm" Symmetry 10, no. 6: 189. https://doi.org/10.3390/sym10060189
APA StyleZhu, J., & Li, Y. (2018). Hesitant Fuzzy Linguistic Aggregation Operators Based on the Hamacher t-norm and t-conorm. Symmetry, 10(6), 189. https://doi.org/10.3390/sym10060189