The Application of Z-Numbers in Fuzzy Decision Making: The State of the Art
Abstract
:1. Introduction
2. Theoretical Preliminaries
3. Decision-Making Methods and Approaches
4. Ranking Methods
4.1. Multiplication of Graded Mean Integration
4.2. Centroid Point and Spread
4.3. Centroid, Height, and Spread
4.4. Hyperbolic Tangent Function and Convex Combination
4.5. Sigmoid Function and Convex Combination
4.6. Value and Ambiguity
4.7. Magnitude Value
4.8. Momentum Ranking Function
4.9. Comparison of Ranking Methods
5. Evaluative Analysis
- The hybridization of more than one MCDM method using Z-numbers produced a better result [59]. When applied to MCDM models, the selection of alternatives is much better than the single MCDM model based on Z-numbers. In fact, the hybrid MCDM methods are designed to cancel out the drawbacks of their respective methods when used alone [103].
- The invention of software that can process decision information in the form of Z-numbers is vital to simplify mathematical calculation [14]. The availability of such software helps experts from other fields such as business, economy, finance, psychology, and education solve their problems that involve various attributes and alternatives.
- It is important to note that Z-numbers are not only composed of the restriction and reliability components, but the hidden probability distribution is another important concept regarding Z-numbers since it connects the restriction component to the reliability component [36].
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
AHP | Analytic hierarchy process |
CFPR | Consistent fuzzy preference relations |
CODAS | Combinative distance-based assessment |
COPRAS | Complex proportional assessment |
CWW | Computing With Words |
DE | Differential evolution |
DEMATEL | Decision making trial and evaluation laboratory |
DST | Dempster–Shafer theory |
ELECTRE | Élimination et choix traduisant la realité |
GA | Genetic algorithm |
HEART | Human error assessment and reduction technique |
IZN | Intuitionistic Z-number |
MCDM | Multi-criteria decision making |
MILP | Mixed integer linear programming |
NL | Natural language |
NZN | Neutrosophic Z-number |
OWA | Ordered weighted averaging |
PCA | Principle component analysis |
PROMETHEE | Preference ranking for organization method for enrichment evaluation |
SWOT | Strength, weakness, opportunity, and threat |
TODIM | Tomada de decisao interativa multicriterio |
TOPSIS | Technique for order of preferences by similarity to ideal solutions |
VIKOR | Visekriterijumska optimizacija I kompromisno resenje |
WASPAS | Weighted aggregated sum product assessment |
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---|---|---|
[43] | ELECTRE | The ranking of alternatives is done by selecting the best one in which the low-attractive alternatives are eliminated. |
[44] | DEMATEL | Describes the interrelations among the attributes that can be partitioned into a cause group and an effect group. |
[45] | AHP | The evaluation of decision-makers is performed using a pairwise comparison matrix. |
[46] | TOPSIS | The prioritization of alternatives is based on the distance measure from the positive and negative ideal solutions. |
[47] | PROMETHEE | An outranking method that allows the pairwise comparison of alternatives, in which they are being evaluated according to different criteria, which have to be maximized or minimized. |
[48] | VIKOR | The ranking and selection from a set of alternatives that allows for the determining of the compromise solutions when there are conflicting criteria. |
[49] | TODIM | The evaluation of alternatives is based on the dominance degree of each alternative over other alternatives using the overall value. |
[50] | WASPAS | The ranking of alternatives is determined based on the utility value using the additive and multiplicative relative importance. |
[51] | CODAS | The best alternative is determined based on the maximum distances from the negative ideal solution. |
Reference | Method | Processing of Z-Numbers | Ranking of Alternatives | Application | Advantage | Disadvantage |
---|---|---|---|---|---|---|
[56] | TOPSIS | Conversion using fuzzy expectation | Euclidean distance between fuzzy numbers | Stock selection problem | Simplified the calculation on Z-numbers | Loss of information |
[59] | CFPR-TOPSIS | Conversion using intuitive multiple centroid | Euclidean distance from vertical and horizontal centroids | Staff recruitment selection | Improved the method of determining the vertical and horizontal centroids | The reduction of Z-numbers into regular fuzzy numbers does not keep the initial information |
[60] | PCA-TOPSIS-MILP | Conversion using fuzzy expectation | Distance between fuzzy numbers | Supplier selection in the pharmaceutical supply chain | The integration of PCA reduced the number of criteria | The conversion of Z-numbers leads to a loss of information |
[61] | COPRAS | Conversion using centroid of triangular fuzzy number | Relative significance and utility degree | Prioritization of renewable energy resources | The combination of subjective weights from decision-makers and objective weights using Shannon entropy | The conversion of reliability parts into centroid leads to the dissipation of information |
[63] | AHP | Direct calculation on discrete Z-numbers | Pairwise comparison and Pareto optimality principle | Selection of technical institutions | The preservation of information of Z-numbers as no conversion into regular fuzzy numbers was involved | The calculation of hidden probability is tedious |
[19] | VIKOR | Direct computation of discrete Z-numbers | Hellinger distance of Z-numbers | Selection of regional circular economy development plan | The inclusion of reliability measure and underlying probability distribution in determining the weighted distance of Z-numbers give a more precise measure | Complicated and tedious calculation to solve simple problems |
[64] | TODIM | Conversion using centroid of trapezoidal fuzzy number | Dominance of alternative over each alternative | Vehicle selection and clothing evaluation | The dominance of alternative over other alternatives is checked one by one | The consideration of centroid of reliability in the conversion dissipates some information |
[33] | TOPSIS | Paired calculation on restriction and reliability components separately | Weighted paired distance of restriction and reliability components | Supplier selection in an automobile manufacturing company | The weight coefficients of decision makers are obtained via a programming model and the implementation of power aggregation operators in combining the decisions from all decision makers | The final relative closeness coefficient is in pairs of restriction and reliability components, which requires a further approach to combine them |
[66] | CODAS | Conversion of Z-numbers using center of gravity defuzzification | Euclidean and Taxicab distances of regular fuzzy numbers | Supplier selection problem | The calculation of relative assessment scores based on Euclidean and Taxicab distances | The defuzzification of reliability parts via center of gravity leads to a loss of information |
[68] | PROMETHEE | Possibility degree of Z-numbers is calculated by combining the restriction and reliability components using a convex compound | Priority index and outgoing and incoming flows | Travel plan selection | The possibility degree of Z-numbers and outranking relations do not involve the conversion of Z-numbers into regular fuzzy numbers | Priority index matrix can only be obtained when the possibility degrees of an alternative over each of the other alternatives are obtained; this is not practical when there are too many alternatives |
[76] | AHP-WASPAS | Conversion of Z-numbers using center of gravity defuzzification | Utility score combining the weighted sum and product of fuzzy numbers | Prioritization of public services for digitalization | The consideration of weighted sum and product of fuzzy numbers in the utility score can determine the rank of alternatives effectively | The conversion of Z-numbers into regular fuzzy numbers dissipates some information |
[77] | AHP-TOPSIS | Conversion using fuzzy expectation | Euclidean distance between fuzzy numbers | Conceptual design evaluation of kitchen waste containers | The simplification of the fuzzy TOPSIS method based on Z-numbers based on conversion into regular fuzzy numbers | Loss of information |
[28] | TOPSIS | The relative entropy of Z-numbers | Relative entropy from the positive and negative ideal solutions | Supplier selection problem | The determination of the underlying probability distributions gives a more precise measure of the reliability components | The consideration of the underlying probability distributions in finding the entropy of Z-numbers made the calculation more tedious |
[79] | ELECTRE-III | Defuzzification of reliability components into centroid of gravity | Credibility index of fuzzy outranking relation | Property concealment risk ranking | The expert-weight-determining method is introduced in this paper based on group consistency and reliability | The dissipation of information occurs when the reliability components of Z-numbers are defuzzified |
[80] | ELECTRE-III | Bimodal uncertainty of Z-numbers without conversion into regular fuzzy numbers | Dominance, support, and opposition relations based on Z-numbers | Renewable energy selection problem | The outranking relations based on bimodal uncertainty of Z-numbers have a stronger role in ranking alternatives effectively | The tedious calculation involving the underlying probability of the reliability components despite solving simpler problems |
[81] | VIKOR | The defuzzification of Z-numbers after obtaining the fuzzy best and worst values | The separation measures from the fuzzy best and worst values | Supplier selection in the pharmaceutical supply chain | The ranking approach based on fuzzy best value and fuzzy worst value can effectively prioritize the alternatives | The defuzzification of the separation measures of the restriction and reliability components dissipates some information before the final ratings are obtained |
References | Type of Z-Numbers | Approach | Applications |
---|---|---|---|
[56] | Continuous trapezoidal | Conversion of Z-numbers using fuzzy expectation | Selection of stock company |
[85] | Continuous triangular | Pairwise closeness coefficients of restriction and reliability components | Accident on a construction site by a worker |
[86] | Continuous triangular | Pairwise closeness coefficients of restriction and reliability components | Selection of agreement from the MoU |
[60] | Continuous triangular | Conversion of Z-numbers using fuzzy expectation | Supplier selection in a pharmaceutical company |
[87] | Continuous trapezoidal | Conversion of Z-numbers using intuitive vectorial centroid | Company performance assessment |
[33] | Continuous triangular | Pairwise closeness coefficients of restriction and reliability components | Supplier selection in the automobile manufacturing industry |
[64] | Continuous triangular | Conversion of Z-numbers using fuzzy expectation | Vehicle selection [53] and clothing evaluation by male customers [88] |
[20] | Continuous trapezoidal | Direct calculation on Z-numbers | Vehicle selection [53] |
[89] | Continuous triangular | Conversion of Z-numbers using fuzzy expectation | Supplier selection in the automobile manufacturing industry |
[90] | Continuous triangular | Pairwise closeness coefficients of restriction and reliability components | Engineer selection in a software company |
[91] | Continuous triangular | Choquet integral-based distance | Supplier selection in an enterprise |
Continuous triangular | Conversion of Z-numbers using fuzzy expectation | Evaluation of the conceptual design of waste containers | |
[28] | Discrete | Underlying probability distributions and relative entropy of Z-numbers | Supplier selection |
Reference | Method | Limitation |
---|---|---|
[55] | Fuzzy Pareto optimality | - |
[92] | Spread, horizontal centroid, vertical centroid | Conversion of Z-numbers into regular fuzzy numbers |
[93] | Mean, height, and spread | Conversion of Z-numbers into regular fuzzy numbers |
[69] | Centroid, spread, and Minkowski degree of fuzziness | - |
[94] | Total utility of Z-numbers | Involves double conversion from Z-numbers to fuzzy numbers and further converted into crisps |
[95] | Hyperbolic tangent function and convex combination | Conversion of Z-numbers into regular fuzzy numbers |
[96] | Sigmoid function and convex combination | Conversion of Z-numbers into regular fuzzy numbers |
[97] | Value and ambiguity | The ignorance of the ambiguity index when the value index is not unique |
[100] | Magnitude value | The magnitude could not make a difference on Z-numbers having similar central points with different spreads |
Z-Number | Ranking Approaches | |||||||||
---|---|---|---|---|---|---|---|---|---|---|
Z | A | R | [53] | [92] | [93] | [95] | [96] | [97] | [100] | [101] |
Z1 | (0.3,0.4,0.5,0.6;1) | (0.1,0.2,0.3,0.4;1) | 0.1125 | 0.1641 | 0.1012 | 0.2642 | 0.5672 | 0.2945 | 0.3500 | 0.1125 |
Z2 | (0.3,0.4,0.5,0.6;1) | (0.7,0.8,0.9,1.0;1) | 0.3825 | 0.1641 | 0.3440 | 0.4935 | 0.6320 | 0.4525 | 0.6500 | 0.3825 |
Z3 | (0.3,0.4,0.5,0.6;1) | (0.7,0.8,0.9,1.0;0.7) | 0.3825 | 0.1641 | 0.3440 | 0.4935 | 0.6320 | 0.2984 | 0.5863 | 0.3825 |
Z4 | (0.6,0.7,0.8,0.9;1) | (0.7,0.8,0.9,1.0;1) | 0.6375 | 0.2734 | 0.4829 | 0.6616 | 0.6890 | 0.5883 | 0.8000 | 0.6375 |
Z5 | (0.3,0.4,0.5,0.6;1) | (0.1,0.25,0.25,0.4;1) | 0.1125 | 0.1641 | 0.1012 | 0.2642 | 0.5672 | 0.2945 | 0.3500 | 0.1125 |
Z6 | (0.3,0.4,0.5,0.6;1) | (0.2,0.25,0.25,0.3;1) | 0.1125 | 0.1641 | 0.1012 | 0.2642 | 0.5672 | 0.2945 | 0.3500 | 0.1125 |
Z7 | (0.3,0.4,0.5,0.6;1) | (0.25,0.25,0.25,0.25;1) | 0.1125 | 0.1641 | 0.1012 | 0.2642 | 0.5672 | 0.2945 | 0.3500 | 0.1125 |
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Alam, N.M.F.H.N.B.; Ku Khalif, K.M.N.; Jaini, N.I.; Gegov, A. The Application of Z-Numbers in Fuzzy Decision Making: The State of the Art. Information 2023, 14, 400. https://doi.org/10.3390/info14070400
Alam NMFHNB, Ku Khalif KMN, Jaini NI, Gegov A. The Application of Z-Numbers in Fuzzy Decision Making: The State of the Art. Information. 2023; 14(7):400. https://doi.org/10.3390/info14070400
Chicago/Turabian StyleAlam, Nik Muhammad Farhan Hakim Nik Badrul, Ku Muhammad Naim Ku Khalif, Nor Izzati Jaini, and Alexander Gegov. 2023. "The Application of Z-Numbers in Fuzzy Decision Making: The State of the Art" Information 14, no. 7: 400. https://doi.org/10.3390/info14070400
APA StyleAlam, N. M. F. H. N. B., Ku Khalif, K. M. N., Jaini, N. I., & Gegov, A. (2023). The Application of Z-Numbers in Fuzzy Decision Making: The State of the Art. Information, 14(7), 400. https://doi.org/10.3390/info14070400