Supplier Selection through Multicriteria Decision-Making Algorithmic Approach Based on Rough Approximation of Fuzzy Hypersoft Sets for Construction Project
Abstract
:1. Introduction
1.1. Research Gap and Motivation
- Ambiguousness of decision-makers: When the decision-makers are unsure about the selection of suppliers, and they furnish their opinions in the form of linguistic terms which are auxiliary need to be converted to fuzzy membership grades (i.e., fuzzy numbers) for the approximation of suppliers based on chosen parameters to handle with approximation-based vagueness.
- Consideration of rough information: The as an problem may have a variety of criteria for supplier selection. These criteria may be qualitative or quantitative and traditional or typical. Thus a firm is intended to conduct a general survey about the suppliers based on customary decisive factors like market-based exposure, community-based reputation, trust-based status etc., in addition to standard parameters set by employed decision-makers of the firm. With the help of this process, a dataset of rough information (information obtained through a local survey) is developed. The concept of rough approximations is required to manage such informational roughness.
- The entitlement of -function: In various scenarios like , clinical diagnosis, human resource management etc., the consideration of parameters is insufficient to have reliable and unbiased decisions. Therefore, categorising the parameters into their associated disjoint sub-classes having their sub-parametric values is necessary. Such sub-classes are tackled with the entitlement of a novel approximate function called -function, which provides multi-argument-based sub-parametric tuples by taking the C-product of these sub-classes as its domain. It further provides approximations for alternatives (suppliers) based on these tuples. Such kind of scenario is usually termed as -environment.
1.2. Main Contributions
- The -set based rough approximations are characterized by taking attributes and their respective sub-attributes in the form of linguistic variables (L-variables).
- As the rough information and opinions of hired experts are both pertinent to be emphasized, both aspects are considered as two separate -sets, which are then integrated with rough approximations. These features are collected in the form of L-variables represented by TrFn.
- A -based application is discussed for with the proposal of an intelligent algorithm.
- The signed method is employed to transform TrFn-based L-variables into fuzzy values for having a discrete decision.
- The advantageous aspects of the proposed study are assessed through comparison with some existing relevant models.
2. Preliminaries
- 1.
- if and for .
- 2.
- where is complement of set for all .
- 3.
- where and
- 4.
- where and for , .
3. Methodology
3.1. Essential Definitions
- 1.
- is upper semi-continuous.
- 2.
- For all ,
- 3.
- such that
- 4.
- is compact, where bar denotes closure and denotes support.
- 1.
- Addition: .
- 2.
- Multiplication: .
- 3.
- Scalar Multiplication: .
3.2. Procedure for Criteria Selection
3.3. Decision Makers and Their Role
4. Rough Approximation of Fuzzy Hypersoft Set
- ,
- ,
- ,
- ,
- and
- ,
- ,
- ,
- ,
- .
- If then .
- If and then .
- If , and then .
- If min then for any , is remained unchanged from the respective decision of . In Example 3, the expert has recommended as decision for candidate therefore organization rated by w.r.t all attribute-valued tuples i.e., min therefore its in TrFn is .
- For any , is remained unchanged from the respective decision of if
- (i)
- then it necessary implies that .
- (ii)
- then it necessary implies that .
- (iii)
- where keeping j fixed.
In Example 3, the expert has recommended as decision for candidate therefore organization rated by w.r.t all attribute-valued tuples and conditions (i), (ii) and (iii) are validated by and respectively therefore its is that is expressed in TrFn as . - For any expert , for all .
- If and are two matrices containing opinions of experts and lower approximation respectively then identical valued entries in jth column of will have similar result in . This result is also valid for upper approximation as well.
4.1. Procedure for Optimal Selection of Supplier for Construction Project
Algorithm 1: Optimal Selection of Supplier by using rough approximation of -set |
▹Start ▹Input: 1. Consider and as initial universe (set of suppliers), set of experts, set of parameters and C-product of corresponding respectively and . ▹Construction: 2. Construct a -set based on predefined real linguistic terms of the firm with - variables (e.g., Effectual Suppliers) over . 3. Construct module -sets for all over characterized by firm’s TrFn-based L-variables for and tabulate them with th entries such that ith row and jth column for attribute-valued tuples and suppliers (see Table 2). 4. Construct a -set based on opinions of experts hired by the firm with - variables (e.g., Effectual Suppliers) over . 5. Construct module -sets for all over characterized by TrFn-based L-variables for assigned by experts and tabulate them with th entries such that ith row and jth column for experts and suppliers (see Table 3). ▹Computation: 6. Compute rough approximations and of -set w.r.t and tabulate the values of module -sets and for expert with and respectively as th-entries and can be computed in accordance with Equations (2) and (3). Their tabular representations are provided in Table 4 and Table 5 respectively. 7. Compute three -sets and based on and respectively and compute their respective membership functions , and in the following way: 8. Compute a -set over based on computations done in previous step where is the C-product of with respect to confidence-level based attributes (i.e., Low (SLC), medium (SMC), high (SHC)) such that , and . 9. Compute score for each supplier where and are weights estimated for SLC, SMC and SHC respectively such that . 10. Compute crisp score by applying Equation (1). ▹Output: 11. Select the Supplier with maximum crisp score. ▹End |
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4.2. Application of Proposed Rough Approximations for Supplier Selection
- Problem Statement:
- Input Stage:
- Construction Stage:
- Computation Stage:
- Output Stage:
5. Discussion and Comparison Analysis
- As procurement has turned out to be imperative in shaping the effectiveness and endurance of production groups, it has been getting significant interest. As Sarkis & Talluri [59] specified, purchaser-dealer correlations based merely on cost are not adequate to any further extent. The growing significance of supplier selection decisions is compelling companies to reconsider their procuring and assessment approaches as a thriving procuring assessment directly depends on selecting the “right” supplier.
- As discussed earlier in the literature review, the is a problem, and it can easily be examined that the key aspect of each is the partiality shown by experts for the objects under observation regarding each decisive factor. It can also be scrutinized that the views of experts are the major source of study in numerous researches. However, if the views of experts depict some sort of inaccuracies, then the computational process may likely be influenced. In this context, computational and informational roughness is observed to be involved.
- In , several features like market-based experience, community-based character, trust-based status etc., are necessitated to be regarded along with the views of employed experts. These features are generally named rough information. Such information can be collected by carrying out various surveys in the locality or by interviewing the firm’s local employees.
- As parameters and their respective sub-parametric values have an imperative part in . The meditation of such aspects may vary from situation to situation basis, i.e., in some states of affairs, only parameters are considered, whereas others prefer to necessitate categorising parameters into their related sub-classes consisting of their relevant parametric values. The former is used in the S-set environment, and the latter is utilized in -environment. The disregarding of such decisive factors may influence the integrity and trustworthiness of decisions. The , being the problem, may involve several decisive parameters which are required to be classified into their respective sub-classes having their sub-parametric values to have reliable results. In other words, the demands for HS-environment.
- Keeping in view the above discussion, the contributions of researchers Chang & Hung [47], Xiao et al. [48], Chatterjee et al. [51], Liu et al. [60] and Mukherjee et al. [61] are observed as the most significant and relevant to proposed approach for . These approaches have ignored the -setting, the consideration of rough approximations to tackle with rough information and impreciseness in the views of experts. Whereas the proposed approach is capable of managing the above aspects collectively. The decisive features like rough information and impreciseness in the opinions of experts are tackled by introducing the concept of rough approximations with the fuzzy setting. The -function is employed to equip the approach with an -environment. This function is meant to tackle sub-classes of parameters by taking their C-product as its domain. Consequently sub-parametric tuples are then used to approximate the alternatives (suppliers).
- It is now vivid that the proposed approach is thoroughly distinct from existing approaches therefore its computational results are not comparable with above existing models. However, for the sake of advantageous assessment, its structural comparison is elaborated with the above mentioned approaches in Table 10. In this regards, the following evaluating features are considered:
- (i).
- Consideration of fuzzy membership (FM),
- (ii).
- Soft approximate function (SAF),
- (iii).
- Hypersoft approximate function (HAF) and
- (iv).
- The entitlement of company’s collected information rather than opinions of experts (ECCI).
The first feature is meant to judge whether the impreciseness relating to the opinions of experts is tackled or not, the second feature is used to assess whether the S-set environment is employed or not, the third feature is used to check whether the -environment is observed or not and similarly the last feature is meant to examine whether the concept of rough approximation is used to tackle rough information or not. With the help of this comparison, it is vivid that the proposed approach is superior to the existing ones as it addresses all above features collectively as single model. In Table 10, the symbols ✔ and × stand for YES and NO respectively.
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Linguistic Terms | Relevant TrFns |
---|---|
Very Poor () | (1, 1, 2) |
Poor () | (2, 3, 4) |
Mild Poor () | (3, 4, 5) |
Fair () | (4, 5, 6) |
Mild Good () | (5, 6, 7) |
Good () | (6, 7, 8) |
Very Good () | (8, 9, 10) |
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Rahman, A.U.; Saeed, M.; Mohammed, M.A.; Majumdar, A.; Thinnukool, O. Supplier Selection through Multicriteria Decision-Making Algorithmic Approach Based on Rough Approximation of Fuzzy Hypersoft Sets for Construction Project. Buildings 2022, 12, 940. https://doi.org/10.3390/buildings12070940
Rahman AU, Saeed M, Mohammed MA, Majumdar A, Thinnukool O. Supplier Selection through Multicriteria Decision-Making Algorithmic Approach Based on Rough Approximation of Fuzzy Hypersoft Sets for Construction Project. Buildings. 2022; 12(7):940. https://doi.org/10.3390/buildings12070940
Chicago/Turabian StyleRahman, Atiqe Ur, Muhammad Saeed, Mazin Abed Mohammed, Arnab Majumdar, and Orawit Thinnukool. 2022. "Supplier Selection through Multicriteria Decision-Making Algorithmic Approach Based on Rough Approximation of Fuzzy Hypersoft Sets for Construction Project" Buildings 12, no. 7: 940. https://doi.org/10.3390/buildings12070940
APA StyleRahman, A. U., Saeed, M., Mohammed, M. A., Majumdar, A., & Thinnukool, O. (2022). Supplier Selection through Multicriteria Decision-Making Algorithmic Approach Based on Rough Approximation of Fuzzy Hypersoft Sets for Construction Project. Buildings, 12(7), 940. https://doi.org/10.3390/buildings12070940