Nature Disaster Risk Evaluation with a Group Decision Making Method Based on Incomplete Hesitant Fuzzy Linguistic Preference Relations
Abstract
:1. Introduction
Some characteristics of an additive consistent HFLPR are studied. Two theorems to facilitate further study on estimating the missing information of a HFLPR are given. To deal with the situation in which the calculation results over the HFLEs do not fall in the original Linguistic Term Set (LTS), a linear function to unify the terms within the given LTS is proposed.The definition of the IHFLPR, the normalized IHFLPR and the acceptable IHFLPR are initially introduced. The IHFLPRs are divided into three categories: the IHFLPR with known judgments (one particular alternative is compared with all other alternatives only once), the IHFLPR with more than judgments, and the IHFLPR with one alternative with totally missing information. We put forward three approaches to estimate the missing values of IHFLPRs with the above three categories.A novel method to measure the distance between two HFLTSs is proposed. Based on which, an algorithm for group decision making with IHFLPRs is established.A real-world case study about flood disaster risk evaluation is provided to verify the feasibility of the Group Decision Making (GDM) model.
2. Preliminaries
2.1. HFLTS
2.2. HFLPR
3. Properties of the Additive Consistent HFLPR
- (a)
- is additive consistent;
- (b)
- , ;
- (c)
- , .
- (1)
- Sufficiency. If , . Let . Since = 0, we have , . That is, , . Therefore, is additive consistent.
- (2)
- Necessity. If is additive consistent, we can get and , . Similarly, and , . Thus, , . This completes the proof of Theorem 2. ☐
4. Incomplete HFLPR and Some Repairing Procedures for Inconsistent IHFLPR
4.1. The Incomplete HFLPRs
4.2. An Estimation Process for Acceptable IHFLPR with Only Judgments
Algorithm 1. Estimating missing information of IHFLPR with known judgments |
Step 1. There are a set of alternatives . Because of various reasons, an expert only compares one alternative with the other alternatives. The comparison information of the other alternatives is missing. Thus, judgments related to all alternatives can be obtained. An acceptable IHFLPR is constructed by these judgments. Go to Step 2. |
Step 2. Obtain the normalized IHFLPR based on Definition 8. Go to Step 3. |
Step 3. Estimate the missing elements of the normalized IHFLPR by Theorems 1 and 2. We can obtain a new additive consistent HFLPR . If there are linguistic terms that are not in , then the transformation function can be used to preserve the additive consistency and reciprocity, resulting in a new consistent HFLPR . |
Step 4. End. |
4.3. An Estimation Process for Acceptable IHFLPR with More Than Judgments
4.4. A Strategy to Deal with Ignorance Situations
- (1)
- ;
- (2)
- if and only if;
- (3)
- .
5. A GDM Model with Incomplete HFLPRs
5.1. Determining the Weights of Experts
5.2. The Selection Process
5.2.1. The Aggregation Phase
5.2.2. The Exploitation Phase
5.3. An Algorithm for GDM with IHFLPRs
Algorithm 2. GDM with IHFLPRs |
Step 1. Determine the alternatives , the experts , the subjective weight vector of the experts , and the original IHFLPR regarding each expert. |
Step 2. Transform each IHFLPR into the corresponding normalized IHFLPR with based on Definition 8. Then, these normalized IHFLPRs are classified into three categories: (1) the IHFLPRs with only judgments; (2) the IHFLPRs with more than known judgments; and (3) the IHFLPRs including an alternative that has no information. |
Step 3. Estimate the missing information of the normalized IHFLPRs and obtain the complete HFLPRs . If there are values that are not in , the conversion function is applied to convert all the linguistic terms in the complete HFLPRs to new HFLPRs. |
Step 4. Determine the comprehensive weight vector of the experts by Equation (20). |
Step 5. Use the linguistic weighted averaging operator shown as Equation (21) to fuse all the individual HFLPRs into a collective HFLPR . |
Step 6. Use the HFLWA operator shown as Equation (2) to fuse all the preference degrees in the th line of and obtain the overall value of the th alternative over all of other alternatives. |
Step 7. Rank all the alternatives and choose the best one. Then, we end the algorithm. |
6. Case Study and Comparative Analyses
6.1. Case Study about Flood Disaster Risk Evaluation
6.2. Comparisons and Analyses
- (1)
- After defining the syntax, semantics and the context-free grammar related to HFLTSs, Rodríguez et al. [6] transformed the HFLPRs provided by experts into HFLTSs and obtained their envelopes to obtain the optimistic and pessimistic collective preference relations and establish the vector of alternatives. Then the non-dominance choice degree was used to rank alternatives and select the best one.
- (2)
- Liu et al. [13] transformed the HFLPRs provided by experts into their corresponding 2-tuple fuzzy preference relations. Afterwards, a consistency reaching method to make the 2-tuple fuzzy preference relations acceptable was proposed. Finally, they utilized the linguistic 2-tuple arithmetic mean operator to rank the alternatives and obtain the best one.
- (3)
- Wu and Xu [16] first introduced a consistency measure of HFLPR. If a HFLPR was not additive consistent, they developed an algorithm to improve the consistency degree. A consensus reaching model based on the distances between experts was introduced. Finally, the HFLWA operator was used to obtain the ranking of alternatives.
- (4)
- Based on the envelope matrices of HFLPRs, Wang and Gong [19] constructed the equivalent interval-valued fuzzy preference relations and transformed them into the normal distributed preference relation. They ranked the alternatives and selected the best one based on the chance-restricted model.
- (5)
- After calculating the weight vector of the experts, Gou et al. [24] calculated the synthetic HFLPR and the averaging value of each alternative over the other alternatives. They obtained a complementary matrix and summed all the elements in each line of it. Finally, the ranking of alternatives in descending order was obtained.
- (6)
- Zhang and Wu [18] proposed a method to obtain the acceptable multiplicative consistent HFLPRs. Based on these, they used the HFLWA and hesitant fuzzy linguistic weighted geometric (HFLWG) operator to aggregate the preferences and rank the alternatives.
7. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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References | Preference Relation | Method Used | Consistency Measure |
---|---|---|---|
Our method | Complete or Incomplete HFLPR | Additive consistency | No |
Rodríguez et al. [6] | HFLPR | Envelope | No |
Liu et al. [13] | HFLPR | Envelope | Additive |
Wu and Xu [15] | HFLPR | Interactive | Yes |
Wang and Gong [18] | HFLPR | Envelope | No |
Gou et al. [23] | HFLPR | Compatibility | No |
Zhang and Wu [17] | HFLPR | Normalization | Multiplicative |
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Tang, M.; Liao, H.; Li, Z.; Xu, Z. Nature Disaster Risk Evaluation with a Group Decision Making Method Based on Incomplete Hesitant Fuzzy Linguistic Preference Relations. Int. J. Environ. Res. Public Health 2018, 15, 751. https://doi.org/10.3390/ijerph15040751
Tang M, Liao H, Li Z, Xu Z. Nature Disaster Risk Evaluation with a Group Decision Making Method Based on Incomplete Hesitant Fuzzy Linguistic Preference Relations. International Journal of Environmental Research and Public Health. 2018; 15(4):751. https://doi.org/10.3390/ijerph15040751
Chicago/Turabian StyleTang, Ming, Huchang Liao, Zongmin Li, and Zeshui Xu. 2018. "Nature Disaster Risk Evaluation with a Group Decision Making Method Based on Incomplete Hesitant Fuzzy Linguistic Preference Relations" International Journal of Environmental Research and Public Health 15, no. 4: 751. https://doi.org/10.3390/ijerph15040751
APA StyleTang, M., Liao, H., Li, Z., & Xu, Z. (2018). Nature Disaster Risk Evaluation with a Group Decision Making Method Based on Incomplete Hesitant Fuzzy Linguistic Preference Relations. International Journal of Environmental Research and Public Health, 15(4), 751. https://doi.org/10.3390/ijerph15040751