Some Interval Neutrosophic Dombi Power Bonferroni Mean Operators and Their Application in Multi–Attribute Decision–Making
Abstract
:1. Introduction
2. Preliminaries
2.1. The INSs and Their Operational Laws
- (1)
- If then is better than , and denoted by
- (2)
- If and then is better than , and denoted by
- (3)
- If and then is equal to , and denoted by
2.2. The PA Operator
- (1)
- (2)
- (3)
- if
2.3. The BM Operator
3. Some Operations of INSs Based on Dombi TN and TCN
Dombi TN and TCN
4. The INPBM Operator Based on Dombi TN and Dombi TCN
4.1. The INDPBM Operator and INWDPBM Operator
- Step 1.
- Determine the supportsby using Equation (29), and then we get
- Step 2.
- Determine the PWVBecause and
- Step 3.
- Determine the comprehensive valueby using Equation (28), we have
4.2. The INDPGBM Operator and INWDPGBM Operator
5. MADM Approach Based on the Developed Aggregation Operator
- Step 1.
- Standardize the attribute values. Normally, in real problems, the attributes are of two types, (1) cost type, (2) benefit type. To get right result, it is necessary to change cost type of attribute values to benefit type using the following formula:
- Step 2.
- Calculate the supports
- Step 3.
- Calculate
- Step 4.
- Aggregate all the attribute values to the comprehensive value by using INWDPBM or INWDPGBM operators shown as follows.
- Step 5.
- Determine the score values, accuracy values of using Definition 5.
- Step 6.
- Rank all the alternatives according to their score and accuracy values, and select the best alternative using Definition 6.
- Step 7.
- End.
6. Illustrative Example
6.1. The Decision-Making Steps
- Step 1.
- Since are of benefit type, and is of cost type. So, will be changed into benefit type using Equation (47). So, the normalize decision matrix is given in Table 2.
- Step 2.
- Determine the supports by Equation (48) (for simplicity we denote with ), we have
- Step 3.
- Determine by Equation (49), and we get
- Step 4.
- (a)
- Determine the comprehensive value of every alternative using the INWDPBM operator, that is, Equation (50) , we have
- (b)
- Determine the comprehensive value of every alternative using the INWDPGBM operator, that is Equation (51), , we have
- Step 5.
- (a)
- Determine the score values of by Definition 5, we have
- (b)
- Determine the score values of by Definition 5, we have
- Step 6.
- (a)
- According to their score and accuracy values, by using Definition 6, the ranking order is So the best alternative is while the worst alternative is
- (b)
- According to their score and accuracy values, by using Definition 6, the ranking order is So the best alternative is while the worst alternative is
6.2. Effect of Parameters , and on Ranking Result of this Example
6.3. Comparing with the Other Methods
7. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Appendix A. Basic Concept of PBM Operator
- (1)
- , so
- (2)
- (3)
- if
Appendix B. Proof of Theorem 6
Appendix C. Proof of Theorem 7
Appendix D. Proof of Theorem 9
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Alternatives/Attributes | |||
---|---|---|---|
Alternatives/Attributes | |||
---|---|---|---|
Parameter Values | INWDPBM Operator | Ranking Orders |
---|---|---|
Parameter Values | INWDPGBM Operator | Ranking Orders |
---|---|---|
Parameter Values | INWDPBM Operator | INWDPGBM Operator | Ranking Orders |
---|---|---|---|
Aggregation Operator | Parameter | Score Values | Ranking Order |
---|---|---|---|
INWA operator [12] | No | ||
INWGA operator [12] | No | ||
Similarity measure Hamming distance [15] | No | ||
Generalized power Aggregation operator [37] | Yes | ||
INWMM operator [42] | Yes | ||
INWDMM operator [42] | Yes | ||
Proposed INWDPBM | Yes | ||
Proposed INWDPGBM | Yes | ||
INWDPBM operator in this article | Yes | ||
INWDPBM operator in this article | Yes |
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Khan, Q.; Liu, P.; Mahmood, T.; Smarandache, F.; Ullah, K. Some Interval Neutrosophic Dombi Power Bonferroni Mean Operators and Their Application in Multi–Attribute Decision–Making. Symmetry 2018, 10, 459. https://doi.org/10.3390/sym10100459
Khan Q, Liu P, Mahmood T, Smarandache F, Ullah K. Some Interval Neutrosophic Dombi Power Bonferroni Mean Operators and Their Application in Multi–Attribute Decision–Making. Symmetry. 2018; 10(10):459. https://doi.org/10.3390/sym10100459
Chicago/Turabian StyleKhan, Qaisar, Peide Liu, Tahir Mahmood, Florentin Smarandache, and Kifayat Ullah. 2018. "Some Interval Neutrosophic Dombi Power Bonferroni Mean Operators and Their Application in Multi–Attribute Decision–Making" Symmetry 10, no. 10: 459. https://doi.org/10.3390/sym10100459
APA StyleKhan, Q., Liu, P., Mahmood, T., Smarandache, F., & Ullah, K. (2018). Some Interval Neutrosophic Dombi Power Bonferroni Mean Operators and Their Application in Multi–Attribute Decision–Making. Symmetry, 10(10), 459. https://doi.org/10.3390/sym10100459