An Innovative Decision Model Utilizing Intuitionistic Hesitant Fuzzy Aczel-Alsina Aggregation Operators and Its Application
Abstract
:1. Introduction
Motivation
2. Preliminaries
2.1. Intuitionistic Hesitant Fuzzy Sets
- (i)
- (ii)
- (iii)
- (iv)
- (v)
2.2. A Summary of Aczel-Alsina Operators
- 1.
- Symmetry: = .
- 2.
- Associativity:
- 3.
- Monotonicity:
- 4.
- One Identity: ;
- 1.
- Product triangular norm: =;
- 2.
- Minimum triangular norm: ) = min .
- 3.
- Lukasiewicz triangular norm: = max (+).
- 4.
- Drastic triangular norm:
- 1.
- Symmetry: = (, ).
- 2.
- Associativity: (, (, )) = ( (, ), ).
- 3.
- Monotonicity: (, ) (, ) if
- 4.
- Zero Identity: (0, ) = ;
- 1.
- Probabilistic sum : = +;
- 2.
- Maximum : = max .
- 3.
- Lukasiewicz : = min { + }.
- 4.
- Drastic :
2.3. A Review of Three-Way Decision Theory
3. A New Three-Way Decision Model Developed on Intervals for Intuitionistic Hesitant Fuzzy Sets
4. Aczel–Alsina Operators for Intuitionistic Hesitant Fuzzy Sets
- (i)
- =
- (ii)
- (iii)
- (iv)
- (i)
- (ii)
- (iii)
- (iv)
- (v)
- (i)
- (ii)
- This is straightforward.
- (iii)
- Let ; then, ; using this, we obtain
- (iv)
- Now
- (v)
- (vi)
5. A Novel Model for MADM
6. An Algorithm of Three-Way Decision Based on Established Approach
7. Numerical Example
7.1. Evaluation of a Case Study for MADM Approach
7.2. Evaluation of Case Study for Three-Way Decision Approach
7.3. Effect of the Parameter on the Information System
7.4. Benefits of the Approach
- 1.
- Generalization: One of the key advantages of this approach is its greater level of generalization. It extends the theory of IFSs and provides a more inclusive framework. By reducing membership values and non-membership values to singletons, intuitionistic hesitant fuzzy sets can be converted into intuitionistic fuzzy sets.
- 6.
- Aczel–Alsina aggregation operators: The use of Aczel–Alsina aggregation operators is particularly advantageous for decision-making in fuzzy environments. These operators are simple yet effective, and they also consider the element of time. They have been designed specifically for novel data and are employed to aggregate information in a meaningful way.
- 7.
- Improved three-way decision (3WD) approach: Existing approaches in the literature, such as those proposed by Yao [28], are often considered traditional. In contrast, this model introduces new stages for 3WD, containing the plan of Aczel–Alsina aggregation operators and the utilization of interval-valued equivalence classes for approximation spaces. These enhancements make the approach more efficient thanexisting methods.
- 8.
- Business investment decision-making: Making optimal investment decisions is a critical and challenging task for investors, especially in a business context. In this study, we address this problem by establishing an approach that incorporates multiple companies. The effect of the parameter ℶ is demonstrated, showcasing the variation in the positive, negative, and boundary regions. This information aids in making well-informed investment decisions.
8. Comparative Analysis
- Our observations further indicate that [18,45,46,47] demonstrate an effective ability to handling IF and HF information. However, it is important to note that there are specific scenarios where these models may not be suitable. This emphasizes the reliability and efficacy of our established idea for decision-makers.
- The data presented in Table 7 shed light on the contributions of Senapati et al. [45,47], who devised interval-valued IFAAW, interval-valued IFAAWG, and HFAAWA operators specifically for interval-valued intuitionistic fuzzy information and hesitant fuzzy data. Nonetheless, comparative studies have revealed that these approaches lack effectiveness when dealing with intuitionistic hesitant fuzzy data. Hence, our proposed approach provides a solution that addresses more intricate and ambiguous scenarios.
Approaches | Information | Ranking |
---|---|---|
Xu, et al. [46] | IFSs | No |
Xu, et al. [18] | IFSs | No |
Senapati, et al. [45] | Interval-IFSs | No |
Senapati, et al. [45] | Interval-IFSs | No |
Senapati, et al. [47] | HFSs | No |
Seikh, et al. [48] | IFSs | No |
Ahmmad, et al. [49] | IFRSs | No |
Mahmood, et al. [15] | IHFSs | |
Wajid, et al. [50] | IHFSs | |
Proposed approach | IHFSs |
Approaches | Information | Ranking | ||
---|---|---|---|---|
Approaches | Information | Ranking | ||
Xu, et al. [46] | IFSs | No | No | No |
Xu, et al. [18] | IFSs | No | No | No |
Senapati, et al. [45] | Interval-IFSs | No | No | No |
Senapati, et al. [45] | Interval-IFSs | No | No | No |
Senapati, et al. [47] | HFSs | No | No | No |
Seikh, et al. [48] | IFSs | No | No | No |
Ahmmad, et al. [49] | IFRSs | No | No | No |
Mahmood, et al. [15] | IHFSs | |||
Wajid, et al. [50] | IHFSs | |||
Proposed approach | IHFSs |
9. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Objects\Operators | |
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Objects | |
---|---|
Operator | Ranking |
---|---|
D | |||||
---|---|---|---|---|---|
Yes | |||||
Yes | |||||
Yes | |||||
No | |||||
Yes | |||||
No | |||||
No | |||||
Yes | |||||
No | |||||
No |
Positive Regions | Negative Regions | Boundary Regions | |
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Ali, W.; Shaheen, T.; Toor, H.G.; Akram, F.; Uddin, M.Z.; Hassan, M.M. An Innovative Decision Model Utilizing Intuitionistic Hesitant Fuzzy Aczel-Alsina Aggregation Operators and Its Application. Mathematics 2023, 11, 2768. https://doi.org/10.3390/math11122768
Ali W, Shaheen T, Toor HG, Akram F, Uddin MZ, Hassan MM. An Innovative Decision Model Utilizing Intuitionistic Hesitant Fuzzy Aczel-Alsina Aggregation Operators and Its Application. Mathematics. 2023; 11(12):2768. https://doi.org/10.3390/math11122768
Chicago/Turabian StyleAli, Wajid, Tanzeela Shaheen, Hamza Ghazanfar Toor, Faraz Akram, Md. Zia Uddin, and Mohammad Mehedi Hassan. 2023. "An Innovative Decision Model Utilizing Intuitionistic Hesitant Fuzzy Aczel-Alsina Aggregation Operators and Its Application" Mathematics 11, no. 12: 2768. https://doi.org/10.3390/math11122768
APA StyleAli, W., Shaheen, T., Toor, H. G., Akram, F., Uddin, M. Z., & Hassan, M. M. (2023). An Innovative Decision Model Utilizing Intuitionistic Hesitant Fuzzy Aczel-Alsina Aggregation Operators and Its Application. Mathematics, 11(12), 2768. https://doi.org/10.3390/math11122768