1. Introduction
As an important branch of modern decision science, the MAGDM problems have widely existed in various areas, such as economics, management, military, society and so on. With the development of society, economy and information technology, decision makers (DMs) are confronted with the complexity of decision-making problems and the limitations of their knowledge; thus, sometimes, they cannot make the correct judgment in the decision-making process. In order to obtain more reasonable and comprehensive decision-making results, Zadeh [
1] first developed the concept of a fuzzy set (FS). However, the FS contains only the membership degree, which makes it difficult to accurately express the uncertainty and fuzziness in the decision-making process. To solve the above problems, Atanassov [
2,
3] introduced the non-membership degree into FS and presented the intuitionistic fuzzy sets (IFSs), which are the generalizations of FS. Fan and Xiao [
4] presented two-dimensional IFSs (TDIFSs), which integrate the uncertainty and reliability expressions of IFSs. Through the continuous research by researchers, a new concept of linguistic variables (LVs) was presented by Zadeh [
5], which plays an important role in qualitative information analysis. After that, LVs have attracted the attention of many experts and been thoroughly studied. Xu [
6] defined uncertain LVs (ULVs) based on LVs and proposed two uncertain linguistic aggregation operators to deal with MAGDM problems under the uncertain linguistic environment. Chai et al. [
7] proposed Z-uncertain probabilistic linguistic variables (Z-UPLVs) and defined the operational rules, normalization, distance and similarity measures, as well as a comparison method of Z-UPLVs. Herrera and Martínez [
8] developed a 2-tuple linguistic representation model that can overcome the loss of information in the decision-making process. Ju et al. [
9] presented the trapezoid fuzzy 2-tuple linguistic approach and applied it to multi-attribute decision-making (MADM) problems with trapezoid fuzzy linguistic information. Subsequently, on the basis of LVs and ULVs, Xu [
10] defined the trapezoid fuzzy LVs (TFLVs), which has great advantages in dealing with vague data.
In the real decision-making process, DMs have difficultly expressing their ideas clearly by utilizing LVs or IFSs. Therefore, Wang and Li [
11] further extended LVs and IFSs to the intuitionistic fuzzy linguistic set (ILS). Furthermore, Liu and Jin [
12] presented intuitionistic ULVs (IULVs) based on ILS. In addition, Liu [
13] defined the interval-valued intuitionistic uncertain linguistic set (IVIULS) by combing ULVs and interval-valued intuitionistic fuzzy sets (IVIFSs) [
14]. In order to make the decision-making process more precise and objective, Ju et al. [
15] further proposed TIFLVs, which are composed of a trapezoid fuzzy linguistic part and an intuitionistic fuzzy part.
The aggregation operators are an efficient and practical tool in coping with the MAGDM issues. These operators can not only combine the massive input individual data into aggregate data but also rank the alternatives on the basis of the comprehensive value. Therefore, the study of aggregation operators has aroused great interest among researchers; for example, the Bonferroni mean (BM) operator [
16], Heronian mean (HM) operator [
17,
18], Maclaurin symmetric mean (MSM) operator [
19] and so forth. The BM operator was initially developed by Bonferroni [
16], which can effectively capture the interrelationships between two input arguments. Chu et al. [
20] proposed some TIFLBM aggregation operators and utilized them for solving MAGDM problems. Moreover, Beliakov [
21] introduced the HM aggregation operator, which has the same characteristic of being able to consider the correlation between any two input parameters as the BM operator. Some new generalizations of HM operators have been presented [
22,
23,
24]. However, both the BM operator and the HM operator have the weakness, that is, they can only reflect the relevance between two arguments and ignore the interrelationships among multiple parameters. Therefore, in order to avoid the above defect, Maclaurin [
19] firstly presented the MSM operator, which has the characteristic of considering the correlations among multiple input parameters. Then, the extended MSM operator was developed further by Detemple and Robertson [
25]. In addition, based on the above merit, researchers have conducted in-depth research on the MSM operator and achieved many accomplishments. Qin and Liu [
26] extended the MSM operator to the intuitionistic fuzzy environment and then applied it to deal with intuitionistic fuzzy MAGDM problems. Liu and Qin [
27] further investigated the uncertain linguistic dual MSM (ULDMSM) operator. Liu and zhang [
28] developed some single-valued trapezoidal neutrosophic MSM (SVTNMSM) operators. Geng et al. [
29] presented the MSM operator for interval neutrosophic linguistic numbers (INLNs). Ali and Mahmood [
30] initiated some complex q-rung orthopair fuzzy MSM (Cq-ROFMSM) operators.
With the increasing complexity of the current MAGDM issues, DMs can hardly process problems existing in decision making and obtain reasonable results. In order to cope with the ambiguity and uncertainty in complex problems more precisely and flexibly, we can take the following steps. Firstly, we aim at uncertain and vague information; the form of TIFL numbers (TIFLNs) can be used to represent attribute values. Moreover, a significant feature of the MSM operator is that it can capture the relationships among multiple parameters. So far, there is a lack of literature on the MSM operator dealing with MAGDM problems under TIFL environments. Therefore, in this paper, we extend the MSM operator to TIFLNs and further propose the TIFLMSM operator, TIFLGMSM operator, TIFLWMSM operator and TIFLWGMSM operator. Then, some properties and some peculiar cases of these operators mentioned above are analyzed. In addition, an MAGDM approach for TIFLNs is proposed, and we demonstrate its validity and superiority by comparing it with other methods.
The structure of this paper is shown below.
Section 2 briefly introduces the basic notions of TFLVs, IFLS, TIFLS and MSM operators.
Section 3 proposes TIFLMSM, TIFLGMSM, TIFLWMSM and TIFLGWMSM operators; furthermore, some of their properties and special cases are analyzed. In
Section 4 of this paper, two MAGDM methods based on the TIFLWMSM operator and TIFLWGMSM operator are introduced. In
Section 5, we utilize illustrative examples of the proposed approaches and show its validity and usability.
3. Some MSM Operators Based on TIFLNs
In this section, based on TIFLNs and MSM operators, we developed the TILFMSM operator, TIFLGMSM operator, TIFLWMSM operator and TIFLWGMSM operator.
3.1. The TILFMSM and TIFLGMSM Operators
Definition 9. Let be a set of the TIFLNs, then the TILFMSM operator: is given as follows.where Ω
is a collection of TIFLNs and . According to the calculation laws of TIFLNs, we can obtain the following result of the TIFLMSM operator as follows.
Theorem 2. Let be a set of the TIFLNs, then the aggregated result from Definition 9 is still a TIFLN. Proof. By the operational laws of TIFLNs, we can obtain
and
then,
□
Property 1. Let and be collections of TIFLNs, then the following properties of are shown.
- (1)
Idempotency. If .
- (2)
Commutativity. If .
- (3)
Monotonicity. If .
- (4)
Boundedness. .
Next, some particular cases of operator with regard to parameter k are discussed.
- (1)
When
k = 1, we can obtain the formula as follows.
When k = 1, the TIFLMSM operator degenerates to the trapezoid intuitionistic fuzzy linguistic average (TIFLA) operator.
- (2)
When
k = 2, we can obtain formula as follows.
When k = 2, the TIFLMSM operator degenerates to the trapezoid intuitionistic fuzzy linguistic Bonferroni mean (TIFLBM) operator (p = 1, q = 1).
- (3)
When
k =
n, we can obtain the formula as follows.
When k = n, the TIFLMSM operator degenerates to the trapezoid intuitionistic fuzzy linguistic geometric (TIFLG) operator.
Definition 10. Let be a set of the TIFLNs, then the TILFMSM operator: is given as follows.where Ω
is a collection of TIFLNs and . According to the operational laws of TIFLNs, we can obtain the following result of the TIFLGMSM operator below.
Theorem 3. Let be a set of the TIFLNs, then the aggregated result from Definition 11 is still a TIFLN. The proof with respect to the TIFLGMSM operator is similar with Theorem 2, so it is omitted here.
Property 2. Let and be collections of TIFLNs, then the following properties of are shown.
- (1)
Idempotency. If .
- (2)
Commutativity. If is a permutation of for each i, then .
- (3)
Monotonicity. If and for all i then and .
- (4)
Boundedness. .
The proof of the Property 2 with respect to the TIFLGMSM operator is similar to Property 1, so it is omitted here.
Next, some particular cases of the operator with regard to parameter k are discussed.
- (1)
When
k = 1, we can obtain formula as follows.
- (2)
When
k = 2, we can obtain formula as follows.
When k = 2, the TIFLGMSM operator degenerates to the trapezoid intuitionistic fuzzy linguistic Bonferroni mean (TIFLBM) operator with arguments .
- (3)
When
k =
n, we can obtain formula as follows.
3.2. The TIFLWMSM and TIFLWGMSM Operators
Definition 11. Let be a set of the TIFLNs, then the TIFLWMSM operator: is given as follows.where Ω
is a collection of TIFLNs and . According to the calculation laws of TIFLNs, we can obtain the following result of the TIFLWMSM operator as follows.
Theorem 4. Let be a set of the TIFLNs, then the aggregated result from Definition 12 is still a TIFLN. The proof with respect to the TIFLWMSM operator is similar to Theorem 2, so it is omitted here.
Property 3. Let and be collections of TIFLNs, then the following properties of are shown.
- (1)
Reducibility. When
- (2)
Monotonicity. If and for all i then and .
- (3)
Boundedness. .
Proof. Let
, then
□
The proof of Monotonicity and Boundedness for the TIFLWMSM operator is similar to Property 1, so the proof is omitted here.
Next, some particular cases of the operator with regard to parameter k are discussed.
- (1)
When
k = 1, we can obtain formula as follows.
- (2)
When
k = 2, we can obtain formula as follows.
When k = 2, the TIFLWMSM operator degenerates to the trapezoid intuitionistic fuzzy linguistic weighted Bonferroni mean (TIFLWBM) operator (p = 1, q = 1).
- (3)
When
k =
n, we can obtain formula as follows.
Definition 12. Let be a set of the TIFLNs, then the TIFLGWMSM operator: is given as follows.where Ω
is a collection of TIFLNs and . According to the calculation laws of TIFLNs, we can obtain the following result of TIFLGWMSM operator as follows.
Theorem 5. Let be a set of the TIFLNs, then the aggregated result from Definition 12 is still a TIFLN. The proof with respect to the TIFLGWMSM operator is similar to Theorem 2, so it is omitted here.
Property 4. Let and be collections of TIFLNs, the following properties of are shown.
- (1)
Reducibility. When
- (2)
Monotonicity. If .
- (3)
Boundedness. .
The proof of property for the TIFLGWMSM operator is similar to Property 3; therefore, it is ommitted here.
Next, some particular cases of the operator with regard to parameter k are discussed.
- (1)
When
k = 1, we can obtain formula as follows.
- (2)
When
k = 2, we can obtain formula as follows.
- (3)
When
k =
n, we can obtain formula as follows.
4. MAGDM Method Based on the TIFLWMSM Operator and TIFLWGMSM Operator
For a MAGDM issue under trapezoid intuitionistic fuzzy linguistic environment: Suppose is a collection of alternatives; is the set of attributes; and is the weight vector of the attributes , where . Let be the set of decision makers, and be the weight vector of decision makers , where . Suppose are the decision matrices, where takes the form of the TIFLVs given by the decision maker for an alternative with respect to attribute . Finally, we will obtain the ranking of alternatives.
The steps are given below:
Step 1. Utilize the following TIFLWMSM operator or the TIFLWGMSM operator to aggregate all decision matrices
into one decision matrix M.
or
where
denotes the weight of the decision maker.
Step 2. Utilize the following TIFLWMSM operator or the TIFLWGMSM operator to aggregate all attribute values
and obtain a comprehensive value
.
or
where
w denotes the weight of the attribute.
Step 3. Calculate the expected value of with Equation(21).
Step 4. Rank according to the size of the expected value.
Step 5. End.
5. A Numerical Example
In this section, we will illustrate the application of the proposed method with an instance adapted from [
20]. An investment company wishes to invest in one of the following five alternative companies
, including (1)
is a insurance company; (2)
is a beverage company; (3)
is an airline company; (4)
is a motor company; (5)
is an advertisement company. The investment company needs to make decisions based on the following four attributes (whose weight vector is
): (1)
denotes the risk index; (2)
denotes the growth index; (3)
denotes the social–political impact index; (4)
denotes the environmental impact index. The decision makers
(assume that their weight vector is
) evaluate the five companies
according to the attributes
mentioned above. The decision makers can evaluate through LTS
, and the following
Table 1,
Table 2,
Table 3 and
Table 4 represent decision matrices
, respectively.
5.1. The Evaluation Steps by the TIFLWMSM Operator
The following specific steps are shown:
Firstly, we can aggregate all decision matrices into one decision matrix using the TIFLWMSM operator (let k = 2) and the calculation process of as follows:
According to the above calculation method, we can aggregate all the results into the following decision matrix:
| | | | |
| ⟨c, (0.6713, 0.2058)⟩ | ⟨c, (0.6221, 0.2803)⟩ | ⟨c, (0.5721, 0.3223)⟩ | ⟨c, (0.6037, 0.2041)⟩ |
| ⟨c, (0.6488, 0.2536)⟩ | ⟨c, (0.5991, 0.2459)⟩ | ⟨c, (0.6978, 0.1952)⟩ | ⟨c, (0.5734, 0.301)⟩ |
| ⟨c, (0.6221, 0.2524)⟩ | ⟨c, (0.6211, 0.2058)⟩ | ⟨c, (0.6226, 0.3016)⟩ | ⟨c, (0.7221, 0.2275)⟩ |
| ⟨c, (0.5970, 0.2487)⟩ | ⟨c, (0.6230, 0.3236)⟩ | ⟨c, (0.5961, 0.2286)⟩ | ⟨c, (0.5959, 0.3307)⟩ |
| ⟨c, (0.5708, 0.3523)⟩ | ⟨c, (0.7243, 0.1989)⟩ | ⟨c, (0.5456, 0.3217)⟩ | ⟨c, (0.5708, 0.2986)⟩ |
To acquire the collective comprehensive values by the TIFLWMSM operator (let
k = 2), the calculation process of
is as follows:
According to the above calculation method, we can obtain the following collective comprehensive values of alternatives
Calculate the value
of
(
) by Equation (
21). The calculation process of
is as follows:
According to the above calculation method, we can obtain the following expected values of alternatives
We can obtain the following results according to the above expected values.
The best choice is .
End.
5.2. The Evaluation Steps by the TIFLWGMSM Operator
The following specific steps are shown:
Firstly, we will utilize the TIFLWGMSM operator (let
k = 2,
); the calculation process is similar to the step 1 of the TIFLWMSM operator, so it is omitted. Therefore, we can obtain:
| | | | |
| ⟨c, (0.6843, 0.1899)⟩ | ⟨c, (0.6182, 0.2611)⟩ | ⟨c, (0.5942, 0.2899)⟩ | ⟨c, (0.6176, 0.1998)⟩ |
| ⟨c, (0.6615, 0.2372)⟩ | ⟨c, (0.6178, 0.2150)⟩ | ⟨c, (0.6964, 0.2126)⟩ | ⟨c, (0.5823, 0.2785)⟩ |
| ⟨c, (0.6182, 0.2594)⟩ | ⟨c, (0.6353, 0.1899)⟩ | ⟨c, (0.6037, 0.3277)⟩ | ⟨c, (0.7362, 0.2262)⟩ |
| ⟨c, (0.6196, 0.2375)⟩ | ⟨c, (0.6067, 0.3578)⟩ | ⟨c, (0.6090, 0.2164)⟩ | ⟨c, (0.6139, 0.3169)⟩ |
| ⟨c, (0.5624, 0.3728)⟩ | ⟨c, (0.7446, 0.3728)⟩ | ⟨c, (0.5449, 0.3186)⟩ | ⟨c, (0.5553, 0.3167)⟩ |
To acquire the collective comprehensive values by TIFLWGMSM (let
k = 2,
), the calculation process is similar to step 2 of TIFLWMSM operator, so it is omitted. Thus, we can obtain:
Calculate the value
of
(
) by Equation (
21); the calculation process is similar to the step 3 of TIFLWMSM operator, so it is omitted. Thus, we can obtain:
We can obtain the following results according to the above expected values.
The best choice is .
End.
5.3. Comparative Analysis and Discussion
In this part, we firstly compare the two methods presented in this paper with other methods, which include Chu et al.’s [
20] proposed TIFLWBM and TIFLWGBM operators and the ITrFLWA and ITrFLOWA operators developed by Ju et al. [
15]. The results of the comparison are shown in
Table 5. From
Table 5, we originally find that the best alternative in all the methods is
, which proves that the methods proposed in this paper are valid and applicable. In addition, the sorting results are slightly different in this paper and other methods because the two methods proposed in [
20] can only capture the interrelationships between two input arguments, while the two methods from this paper can consider interrelations among multi-input parameters. Additionally, the methods developed by [
15] ignore the correlations between arguments, which leads to a different sorting result from the two methods in this paper. Moreover, the ranking results of the two methods are slightly different in this paper because different values of
and
in the
operator result in different sorting.
Furthermore, we take different values for
when
in the
operator, whose comparison results are shown in
Table 6. From
Table 6, we find that the ordering results are obviously different and inconsistent with a practical situation when
. The reason for the above situation is that the relationship between the input parameters is not considered. Therefore, the value of
must be assigned to real numbers in actual applications. Moreover, we can also know the best choice is
, followed by
, and the worst alternative is
when
are not equal to zero. Finally, alternatives
are easily influenced when values of
change.
By the above analysis, we can learn that the two methods presented in this paper are adaptable and valid compared to other existing methods for solving the problems. In addition, selecting the suitable arguments is of vital significance in coping with MAGDM problems. Thus, the methods proposed in this paper are more advisable to solve the MAGDM problems.