Induced OWA Operator for Group Decision Making Dealing with Extended Comparative Linguistic Expressions with Symbolic Translation
Abstract
:1. Introduction
- (i)
- According to Zadeh’s extension principle, an IOWA operator is extended to ELICIT information with the crisp weight, the so-called ELICIT-IOWA operator. Generally, the weight is computed by the linguistic quantifier that is expressed by the basic unit-interval monotonic (BUM) function [28]. However, if the argument variables have associated importance, the BUM function is used to obtain the important ELICIT-IOWA (ELICIT-I-IOWA) operator. Simultaneously, when considering that the ELICIT expression can be equivalently converted into a trapezoidal fuzzy number [15], by adding the continuous monotonic function g to the ELICIT-IOWA operator, we will obtain a wide range of ELICIT-IOWA operators.
- (ii)
- When considering the type-1 OWA operator, the induced type-1 OWA operator with fuzzy weights, so-called the t1-IOWA operator, will be introduced. Using Zadeh’s expansion principle, the t1-IOWA operator is extended to ELICIT information in order to obtain the ELICIT-t1-IOWA operator.
- (iii)
- Eventually, it will be proved that both the ELICIT-IOWA and ELICIT-t1-IOWA operators have the general properties of the IOWA operator, because they are both IOWA-based operators.
2. Preliminaries
2.1. The Induced Owa Operator
2.2. Fuzzy Linguistic Quantifiers: Computing Weights for Owa Operators
- (1)
- If , then BUM function Q represents the linguistic quantifier “for all”;
- (2)
- If , then BUM function Q represents the linguistic quantifier “there exist”;
- (3)
- If , then BUM function Q represents the linguistic quantifier “mean”;
- (4)
- If , then BUM function Q represents the linguistic quantifier “most”;
- (5)
- If , then BUM function Q represents the linguistic quantifier “at least half”; and,
- (6)
- If , then BUM function Q represents the linguistic quantifier “as many as possible”.
2.3. Elicit Information
- (1)
- if and is the fuzzy envelope of , then
- (2)
- if and is the fuzzy envelope of , then
- (3)
- if and is the fuzzy envelope of , then
3. Iowa Operators for Aggregating Elicit Information
- ELICIT-IOWA operator: this operator extends the IOWA operator to aggregate ELICIT arguments with crisps weights. It will also describe the way to compute the crisp weights for this operator.
- ELICIT-t1-IOWA operator: this operator extends the IOWA operator to aggregate ELICIT arguments with fuzzy weights. How to compute these fuzzy weights for this operator will be described.
- The ELICIT order inducing variable: a brief study will also be described in order to investigate the use of ELICIT variables as the order inducing variable in previous operators.
3.1. Elicit-Iowa Operator
- (1)
- If , then the ELICIT-GIOWA operator reduces to the ELICIT-IOWA operator;
- (2)
- If , then
- (3)
- If , then the ELICIT-GIOWA operator is close to the Harmonic average as
- (4)
- If , then
- (5)
- If , then
- (1)
- If , then
- (2)
- If , then
- (3)
- If , thenIt is the same as the fuzzy arithmetic mean operator that was introduced in [15];
3.2. Elicit-T1-Iowa Operator
- Step 1: Initialization
- (1)
- Given the interval weights with for are two endpoints of the interval weight and ordered fuzzy arguments that are defined on the domain for all .
- (2)
- For simplified the process, let be a trapezoidal fuzzy number as , and then the -cut of them as:
- (3)
- Let :Additionally, represent the lower and upper endpoints of interval , respectively.
- (4)
- Let be a two tuple and let be a permutation that only acts on the first item of the two tuple, such that , then be the reordered two tuple with is the smallest elements in the set . It is the same to deal with . It helps to more easily implement the EKM algorithm.
- Step 2: To obtain the initial lower bounded of
- Step 3: To obtain the initial upper bounded of
- Step 4: To obtain the final result , A and ;
- Step 5: To execute an approximation of A as a trapezoidal fuzzy numberAccording to literature [34,41] regarding the operation of trapezoidal fuzzy numbers, we know that the result of A is a generalized trapezoidal fuzzy number, so we need to approximate it with trapezoidal fuzzy number .Let , then we will obtain andLet , and then we can obtain andWhen considering that the area of the trapezoidal membership function graph can represent the size of the information carried, then , where is the granularity of the linguistic term set S used for the ELICIT expression, such thatLet , since , thenBecause and are defined on , thenSo far, we obtain thatTherefore, , such thatIn general, the approximation of A is the trapezoidal function .
3.3. The Order Inducing Variable in the Form of Elicit Expression
More generally, we see, that if Ω is any set of objectives such that there exists a linear ordering on Ω, for any distinct , then either or , but not both, then we can draw our the order inducing variable value from Ω.
- (i)
- (ii)
- (iii)
4. The General Properties of the Elicit-Iowa Operator
- Idempotency: if , then
- Commutativity: if is a permutation of , then
- Monotonicity: if for two OWA pairs and , thenThe condition for the establishment of the monotonicity property is that the order inducing variable is unchanged, if not this property does not necessarily hold [27].
- Boundedness:;
5. A Majority-Driven Gdm Process for Elicit Information
- A finite set of experts ;
- A finite set of alternatives ; and,
- A preference relations matrix has been constructed for the expert, where represents the evaluation of the expert. The expert expresses the preference of over in the form of CLE or ELICIT expressions. The preference relations and based on the negation operator of ELICIT information [15] and function [16].
- Step 1: for each expert , constructing a matrix with represented by CLEs or ELICIT information;
- Step 2: to obtain the induced similarity order of the set , which is the row of the matrix . It is slightly different from the classical order inducing variable, which induces the argument variable by the similar order [29] under the concept of the “majority opinion”, so that the majority of similar arguments are aggregated.
- (1)
- Let be the set of all possible ELICIT expressions, and then and have no inherent order. When considering the predefined function that aims to find the middle position of the vertex of the ELICIT expression, then we can measure the distance between two ELICIT information in order to estimate it similarly. The measure of distance is defined as follows:
- (2)
- Let represent the overall distance value that over . If the value we obtain is smaller, it means that the distance between and is closer, which further shows that them are very similar, which is in line with the idea of “majority opinion”. Additionally, at the same time, we will obtain the induced similarity order of the aggregated argument following the increasing lexicographic order of the pair for all . If has qties, then set the average of q items to replace them in order to solve this problem.
- Step 3: using the ELICIT-t1-IOWA operator with interval weight computed by the type-2 linguistic quantifier “most” [32] to aggregate reordered set , noted as vector with and represents the aggregated result of the alternative for the expert. Where is the permutation function on the set upon the induced similarity order.
- Step 4: utilizing the ELICIT-I-IOWA operator to aggregate with the functional generated weight [35] for all .Each expert is associated with a degree of prestige , is the order inducing variable, constituting the 2-tuple , then apply the I-ELICIT-IOWA operator with linguistic quantifier “most” so that the BUM function with , we will obtain the result with and , where and is permutation function only acting on the variable , such that is the largest element of set , then the noted corresponding reordered 2-tuple as .
- Step 5: ranking the element of set in order to select the top one corresponding to the alternative as the solution of the GDM problem and obtaining the final result with function as in the form of ELICIT expressions.
6. Illustrative Example
6.1. Gdm Problem with Elicit Information
6.2. A Majority-Driven Solving Process Driven by Elicit-T1-Owa and Elicit-I-Iowa with Most Linguistic Quantifier
- Step 1: the five ELICIT preference relation matrix are provided as follows:
- Step 2: to obtain the induced similarity order of row of .Using the first row of as an example to illustrate how to obtain the induced similarity order.The first row of is and the overall distance measure for the 1st row of the matrix is shown in Table 2.Upon Table 2 and the increasing lexicographic order of the pair , we obtain and .Therefore, the induced similarity orderSimilarly, we obtain the induced similarity order of each row of the as follows:Hence, we obtain the ordered as as the following one:
- Step 3: using the ELICIT-t1-IOWA operator to aggregate the ordered matrix with the assigned finite fuzzy weighting vector is , such that the interval weight is computed by the type-2 linguistic quantifier “most” introduced in [32], thenApplying the ELICIT-t1-IOWA operator with fuzzy weight to the ordered in order to obtain the following results:Hence, .Similarly, we will obtain the ordered and the aggregated results for all , as follows:
- Step 4: using the ELICIT-I-IOWA operator to aggregate with linguistic quantifier Q “most”, then the BUM function is .Suppose that the experts associated with the degree of prestige that is a proportion of are recorded asWe will obtain the reorder of and the weight asApplying the ELICIT-I-IOWA operator to , we will obtain the result
- Step 5: ranking to select top one alternative as a solution to this problem and then complete the ELICIT-CW scheme [15] in order to obtain the final ELICIT expressions.Because is a trapezoidal fuzzy number with no inherent order, we need to choose a method for defining a comparison operator between fuzzy numbers. Here, we choose the method, the so-called “Magnitude” function, provided by Abbasbandy and Hajjari [45], because, the larger magnitude, the larger the fuzzy number. Following the definition of the “Magnitude”, , we obtain the results: , then . Hence, the ranking of alternatives is , so that the alternative is the top one as a solution to this problem. Table 3 represents the overall result upon “majority opinion”.
6.3. Comparative Analysis
- In the previous resolution scheme, the ELICIT-t1-IOWA operator with fuzzy interval weight is only computed by the type-2 linguistic quantifier “most” in order to aggregate the most similar opinions. However, the weights of the ELICIT-I-IOWA operator can be obtained from different linguistic quantifiers according to the aggregated opinion chased. Therefore, we will apply various linguistic quantifiers to compute the weights ELICIT-I-IOWA operator combining with the same ELICIT-t1-IOWA operator and comparing the results.
- A second view for comparison is related to previous operators in order to aggregate ELICIT information. However, so far, just two of them have been introduced; namely, the fuzzy arithmetic mean [15] and the Bonferroni mean aggregation operator [21]. Because of the type of problem that we are dealing with, the Bonferroni mean operator cannot be used because there is no interaction among the criteria. Therefore, we propose replacing the ELICIT-t1-IOWA operator with the fuzzy arithmetic mean in the majority-driven GDM processes to combine it with the ELICIT-I-IOWA operator in the previous GDM problem. Additionally, compare the final ranking results with the ones from the previous subsection.
6.3.1. A Majority-Driven Solving Process Driven by Elicit-T1-Owa and Elicit-I-Iowa with Different Linguistic Quantifiers
- While using linguistic quantifier “at least half” with .In this case, we obtain the weightsApplying the ELICIT-I-IOWA operator to in order to obtain the result as follows:Implementing the “Magnitude” function , we obtainHence, the ranking of alternatives is .
- Using linguistic quantifier “as many as possible” with .In this case we obtain the weightsApplying the ELICIT-I-IOWA operator to to obtain the result as follows:Implementing the “Magnitude” function , we obtainHence, the ranking of alternatives is .
- Using linguistic quantifier “mean”with .In this case, we obtain the weightsApplying the ELICIT-I-IOWA operator to to obtain the result as follows:Implementing the “Magnitude” function , we obtainHence, the ranking of alternatives is .
6.3.2. A Solving Process Driven by Fuzzy Arithmetic Mean and The Elicit-I-Owa
- (1)
- Using the same example in Section 6.1, applying the Equation (40) on the preference relation matrix , we will obtain the result as
- (2)
- Utilizing various linguistic quantifiers of the ELICIT-I-IOWA operator on the matrix : linguistic quantifier “most” with , linguistic quantifier “at least half” with , linguistic quantifier “as many as possible” with and linguistic quantifier “mean” with . Therefore, the process is similar to the previous section; we will skip the process and directly give the following results:Implementing the “Magnitude” function , we will obtainHence, the ranking of alternatives is .Implementing the “Magnitude” function , we will obtainHence, the ranking of alternatives is .Implementing the “Magnitude” function , we will obtainHence, the ranking of alternatives is .Implementing the “Magnitude” function , we will obtainThence, the ranking of alternatives is .
- (3)
- Comparing the final ranking results between the fuzzy arithmetic mean operator and ELICIT-t1-IOWA operator combining various ELICIT-I-IOWA operator. Looking at Table 5, it can be observed that the overall results of applying the fuzzy arithmetic mean operator to the previous example are quite steady disregarding the aggregation of the ELICIT-I-IOWA operator and the linguistic quantifiers that are used by it. However, the ELICIT-t1-IOWA operator is much more sensitive to different situations that are modeled by the linguistic quantifiers used in the ELICIT-I-IOWA operator. This is due to there being significant differences when considering the induced similarity order. Therefore, it can be concluded that ELICIT-t1-IOWA operator is more sensitive to different situations that are modeled by linguistic quantifiers in the ELICIT-I-IOWA operator. Hence, we can say that our proposal opens a way to deal with different views of solving GDM problems with ELICIT information in a more flexible way that could not be done previously.
7. Concluding Remarks
Author Contributions
Funding
Conflicts of Interest
Abbreviations
GDM | Group decision making |
ELICIT | Extended comparative linguistic expressions with symbolic translation |
HFLTSs | Hesitant fuzzy linguistic term sets |
CLEs | Comparative Linguistic Expressions |
OWA | Ordered weighted averaging |
IOWA | Induced ordered weighted averaging |
BUM | Basic unit-interval monotonic |
C-OWA | Continuous ordered weighted averaging |
CW | Computing with words |
ELICIT-CW | Computing with words for ELICIT information |
ELICIT-IOWA | Induced ordered weighted averaging aggregation over ELICIT information |
ELICIT-I-IOWA | Important induced ordered weighted averaging aggregation over ELICIT information |
FOU | Footprint of uncertainty |
t1-IOWA | Type-1 induced ordered weighted averaging |
ELICIT-t1-IOWA | Type-1 induced ordered weighted averaging aggregation over ELICIT information |
WA | Weighted average |
QFIOWA | Fuzzy induced quasi-arithmetic ordered weighted averaging |
FIGOWA | Fuzzy induced generalized ordered weighted averaging |
ELICIT-QIOWA | Induced quasi-arithmetic ordered weighted averaging aggregation over ELICIT information |
ELICIT-GIOWA | Induced generalized ordered weighted averaging aggregation over ELICIT information |
EKM | Enhanced Karnik-Mendel |
CI | Centroid index |
NS | Numerical scale |
CRP | Consensus reaching process |
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row | ⋯ | ⋯ | ||||
0 | ||||||
⋮ | ||||||
0 | ||||||
⋮ | ||||||
0 |
0 | |||||
0 | 5 | 1 | |||
5 | 0 | 6 | |||
2 | 6 | 0 |
Alternative | ||
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Aggregated Results | ELICIT Expression | Ranking Result | |
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“most” | |||
ine Case 1 | |||
ine Case 2 | |||
ine Case 3 | |||
Family of ELICIT-I-IOWA Operator | Ranking Result of | Ranking Result of |
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“most” | ||
“at least half” | ||
“as many as possible” | ||
“mean” |
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He, W.; Dutta, B.; Rodríguez, R.M.; Alzahrani, A.A.; Martínez, L. Induced OWA Operator for Group Decision Making Dealing with Extended Comparative Linguistic Expressions with Symbolic Translation. Mathematics 2021, 9, 20. https://doi.org/10.3390/math9010020
He W, Dutta B, Rodríguez RM, Alzahrani AA, Martínez L. Induced OWA Operator for Group Decision Making Dealing with Extended Comparative Linguistic Expressions with Symbolic Translation. Mathematics. 2021; 9(1):20. https://doi.org/10.3390/math9010020
Chicago/Turabian StyleHe, Wen, Bapi Dutta, Rosa M. Rodríguez, Ahmad A. Alzahrani, and Luis Martínez. 2021. "Induced OWA Operator for Group Decision Making Dealing with Extended Comparative Linguistic Expressions with Symbolic Translation" Mathematics 9, no. 1: 20. https://doi.org/10.3390/math9010020
APA StyleHe, W., Dutta, B., Rodríguez, R. M., Alzahrani, A. A., & Martínez, L. (2021). Induced OWA Operator for Group Decision Making Dealing with Extended Comparative Linguistic Expressions with Symbolic Translation. Mathematics, 9(1), 20. https://doi.org/10.3390/math9010020