1. Introduction
Since the fuzzy set (FS) was introduced by Zadeh [
1], it has received much attention for its applicability. Some classical extensions of the FS, such as the interval-valued fuzzy set (IVFS) [
2], intuitionistic fuzzy set (IFS) [
3], interval-valued intuitionistic fuzzy set (IVIFS) [
4], type-2 fuzzy set (T2FS) [
5], type-
n fuzzy set (T
nFS) [
5], and fuzzy multiset (FMS) [
6], were then developed. However, it is often faced with the fact that the difficulty of setting membership degree for an element in a set arises not from the possibility distribution of possible values (as in T2FS) or the margin of error (as in IVFS or IFS), but from the hesitation between several different values. The concept of hesitant fuzzy set (HFS) was introduced by Narukawa and Torra [
7,
8] to deal with such cases. The HFS has the advantage of representing the membership degree of one element to a set by a set of possible values between 0 and 1, so it is an effective tool to represent a decision-maker’s hesitation in expressing his/her preferences for objects than the FS or its classical extensions. In this regard, the HFS theory has been applied to many practical applications such as decision-making [
9,
10,
11,
12,
13,
14,
15,
16,
17,
18].
The goal of multiple-attribute decision-making (MADM), based on preferences provided by the decision-makers, is to select the most desirable alternative(s) from a given set of feasible alternatives. MADM methods classified as conventional and fuzzy. The conventional MADM methods are seen inadequate to handle uncertainty in linguistic terms [
19]. Hence, it is proposed to apply MADM methods with the FS and its extensions to cope with vagueness in a decision-making process. Furthermore, these fuzzy methods enable more concrete results. Besides, the FS and its extensions helps to decision-makers to express their opinions by means of linguistic terms. Therefore, more sensitive results can be obtained by applying fuzzy MADM methods to various science and engineering fields such as supplier selection and forecasting [
20,
21,
22,
23].
The aggregation operators are most commonly used as tools to combine each individual preference information into the overall preference information and to elicit collective preference value for each alternative. The power average (PA) and power-ordered weighted average (POWA), introduced by Yager [
24], are the nonlinear weighted average aggregation tools whose weight vectors depend on the input arguments and allow the argument values to support each other [
25]. In particular, compared to most aggregation operators, the PA and POWA operators have the advantage of incorporating information about the relationship between argument values that are combined. So these operators have received a lot of attention from researchers in recent years, particularly Xu and Yager [
25], Zhou et al. [
26] and Zhang [
15] introduced some new power-aggregation operators, including the weighted generalizations of these operators. However, these power-aggregation operators only deal with arguments, which are exact numerical values.
In real life, we often face situations where input arguments are expressed not as exact numerical values but as interval numbers [
27], intuitionistic fuzzy numbers [
28,
29,
30], interval-valued intuitionistic fuzzy numbers [
31], linguistic variables [
32,
33,
34], uncertain linguistic variables [
35,
36,
37], or hesitant fuzzy elements (HFEs) [
10,
11]. Many extensions of power-aggregation operators have been proposed to address these situations: the uncertain power-aggregation operators [
25,
38,
39], intuitionistic fuzzy power-aggregation operators [
26,
40], interval-valued intuitionistic fuzzy power-aggregation operators [
40], linguistic power-aggregation operators [
41,
42,
43,
44] and hesitant fuzzy power-aggregation operators [
15,
18]. In particular, with respect to HFEs, Zhang [
15] proposed a family of hesitant fuzzy power-aggregation operators, including the hesitant fuzzy power-weighted average/geometric (HFPWA or HFPWG), generalized hesitant fuzzy power-weighted average/geometric (GHFPWA or GHFPWG), hesitant fuzzy power-ordered weighted average/geometric (HFPOWA or HFPOWG), and generalized hesitant fuzzy power-ordered weighted average/geometric (GHFPOWA or GHFPOWG) operators, and applied them to solve multiple criteria group decision-making problems under hesitant fuzzy environment.
It is worthwhile to mention that operational rules play a key role in integrating information using power-aggregation operators. A lot of research about power-aggregation operators for the FS and its extensions has been done by operational rules using various pairs of triangular norm (shortly
t-norm) and triangular conorm (shortly
t-conorm) [
45] in recent years. The aforementioned hesitant fuzzy power-aggregation operators, such as the HFPWA, HFPWG, GHFPWA, GHFPWG, HFPOWA, HFPOWG, GHFPOWA, and GHFPOWG operators, are based on the algebraic product and algebraic sum operational rules on HFEs, which are a pair of the special dual
t-norm and
t-conorm [
45]. The algebraic product and algebraic sum are the basic operations on HFEs, they are not the only ones. The Einstein
t-norm and
t-conorm, as another pair of special
t-norm and dual
t-conorm, are alternatives to the algebraic product and algebraic sum, respectively, for operational rules on HFEs. Yu [
16] extended the Einstein
t-norm and
t-conorm to HFEs, and developed some hesitant fuzzy Einstein aggregation operators based on the Einstein product and Einstein sum operational rules on HFEs. By mean of these operational rules on HFEs, Yu et al. [
18] proposed a wide range of hesitant fuzzy power-aggregation operators, such as the hesitant fuzzy Einstein power-weighted average/geometric (HFEPWA or HFEPWG), generalized hesitant fuzzy Einstein power-weighted average/geometric (GHFEPWA or GHFEPWG), hesitant fuzzy Einstein power-ordered weighted average/geometric (HFEPOWA or HFEPOWG), and generalized hesitant fuzzy Einstein power-ordered weighted average/geometric (GHFEPOWA or GHFEPOWG) operators, and applied them to deal with MADM with hesitant fuzzy information. Hamacher [
46] proposed a more generalized
t-norm and
t-conorm, called the Hamacher
t-norm and
t-conorm. These Hamacher
t-norm and
t-conorm are more general and flexible because they are a generalization of the algebraic
t-norm and
t-conorm and the Einstein
t-norm and
t-conorm [
46]. Tan et al. [
17] gave some operations on HFEs based on Hamacher
t-norm and
t-conorm, and developed some hesitant fuzzy Hamacher aggregation operators. In this paper, by means of Hamacher operations on HFEs, we propose a family of hesitant fuzzy Hamacher power-aggregation operators that allow decision-makers to have more choices in MADM problems. This study is very necessary because it is an integrated treatment of works by Zhang [
15] and Yu et al. [
18].
To do so, this paper is organized as follows: In
Section 2, some basic concepts and notions of HFSs and Hamacher operations of HFEs based on the Hamacher
t-norm and
t-conorm are reviewed. Some results of Hamacher operations of HFEs are investigated. In
Section 3, we present a wide range of hesitant fuzzy Hamacher power-aggregation operators for hesitant fuzzy information, some of their basic properties are discussed, and the relationships between the proposed operators and the existing hesitant fuzzy aggregation operators are investigated. In
Section 4, we apply the proposed operators to develop an approach to MADM with hesitant fuzzy information. An example application of the new approach is provided, and a comparison with other hesitant fuzzy MADM approaches is performed. Some concluding remarks is given in
Section 5.
3. Hesitant Fuzzy Hamacher Power-Weighted Aggregation Operators
In this section, based on the Hamacher operation, we shall extend the power-aggregation operators to accommodate the situations where the input arguments are HFEs.
3.1. Hesitant Fuzzy Hamacher Power-Weighted Average/geometric Operators
Based on the PA operator [
24] and hesitant fuzzy Hamacher weighted average (HFHWA) operator [
17], we firstly define the hesitant fuzzy Hamacher power-weighted average (HFHPWA) operator as follows.
Definition 5. Let () be a collection of HFEs and be the weight vector of () such that and . A hesitant fuzzy Hamacher power-weighted average (HFHPWA) operator is a function such thatwhere parameter , and is the support for from , satisfying the following conditions: (1) ;
(2) ;
(3) if , where d is the hesitant normalized Hamming distance measure between two HFEs given in Equation (4).
Here, the support measure () can be used to measure the closeness of a preference value with other preference value because it is essentially similarity measure.
Theorem 2. Let () be a collection of HFEs and be the weight vector of () such that and , then the aggregated value by HFHPWA operator is also a HFE, and Proof. Equation (
6) can be proved by mathematical induction on
n as follows.
For
, the result of Equation (
6) is clear.
Suppose that Equation (
6) holds for
, that is
Then, when
, by Definitions 4 and 5, we have
Let
,
,
and
, then
i.e., Equation (
6) holds for
. Thus, Equation (
6) holds for all
n. □
Remark 1. (1) If , for all , thenwhich indicates that when all supports are the same, the HFHPWA operator reduces to the hesitant fuzzy Hamacher weighted average (HFHWA) operator [17]. (2) For the HFHPWA operator, if , then the HFHPWA operator reduces to the following:which is called the hesitant fuzzy power-weighted average (HFPWA) operator and if , then the HFHPWA operator reduces to the hesitant fuzzy Einstein power-weighted average (HFEPWA) operator [18]: To analyze the relationship between the HFHPWA operator and the HFPWA operator, we introduce the following lemma.
Lemma 1. [47,48] Let , , , and , then , with equality if and only if . Theorem 3. Let () be a collection of HFEs and be the weight vector of such that and , then Proof. For any
(
), by Lemma 1, we have
Then,
which implies that
. Thus, we obtain
. □
Theorem 3 shows that the values aggregated by the HFHPWA operator are not larger than those obtained by the HFPWA operator. That is to say, the HFHPWA operator reflects the decision-maker’s pessimistic attitude than the HFPWA operator in aggregation process. Furthermore, based on Theorem 2, we have the properties of the HFHPWA operator as follows.
Theorem 4. Let () be a collection of HFEs and be the weight vector of such that and , then we have the followings:
(1) Boundedness: If and , then (2) Monotonicity: Let () be a collection of HFEs, if is also the weight vector of , and for any and (), then
Proof. (1) Let
,
, then
and thus
is an increasing function. Since
for all
i, then
, i.e.,
. For convenience, let
. Since
is the weight vector of
satisfying
and
, then for all
i, we have
Thus, we have
.
(2) Let
,
, then by (1),
is an increasing function. If for all
and
,
, then
. For convenience, let
, then we have
Thus, by Theorem 2,
. □
However, the HFHPWA operator is neither idempotent nor commutative, as illustrated by the following example.
Example 2. Let , and be three HFEs, be the weight vector of , and . Assume that (, ) is the support for from given by , where is the hesitant Hamming distance between and . Then by Theorem 2, we haveFrom Definition 3, we have , , , and . Then and thus , which implies that the HFHPWA operator is not idempotent. Furthermore, since , we have . Thus, the HFHPWA operator is not commutative. Based on the power geometric (PG) operator [
25] and hesitant fuzzy Hamacher weighted geometric (HFHWG) operator [
17], we also define the hesitant fuzzy Hamacher power-weighted geometric operator as follows.
Definition 6. Let () be a collection of HFEs and be the weight vector of () such that and . A hesitant fuzzy Hamacher power-weighted geometric (HFHPWG) operator is a function such thatwhere parameter , and is the support for from . Theorem 5. Let () be a collection of HFEs and be the weight vector of () such that and , then the aggregated value by HFHPWG operator is also a HFE, and Proof. Similar to the proof of Theorem 2, Equation (
11) can be proved by mathematical induction on
n. □
Remark 2. (1) If , for all , thenwhich indicates that when all supports are the same, the HFHPWG operator reduces to the hesitant fuzzy Hamacher weighted geometric (HFHWG) operator [17]. (2) If , then then the HFHPWG operator reduces to the following:which is called the hesitant fuzzy power-weighted geometric (HFPWG) operator and if , then the HFHPWG operator reduces to the hesitant fuzzy Einstein power-weighted geometric (HFEPWG) operator [18]: Theorem 6. Let () be a collection of HFEs and be the weight vector of such that and , then Proof. For any
(
), by Lemma 1, we have
Then,
which implies that
, i.e.,
. □
Theorem 6 shows that the HFHPWG operator reflects the decision-maker’s more optimistic attitude than the HFPWG operator in aggregation process. Furthermore, similar to Theorem 4, we have the properties of the HFHPWG operator as follows.
Theorem 7. bLet () be a collection of HFEs and be the weight vector of such that and , then we have the followings:
(1) Boundedness: If and , then (2) Monotonicity: Let () be a collection of HFEs, if is also the weight vector of , and for any and (), then
Proof. (1) Let
,
, then
, thus
is a decreasing function. Since
for all
i, then
, i.e.,
. Since
is the weight vector of
satisfying
and
, then for all
i, let
, we have
Thus, we have
.
(2) Let
,
, then by (1),
is a decreasing function. Then for all
i,
, we have
. For convenience, let
, then we have
Thus, by Theorem 5,
. □
However, the HFHPWG operator is also neither idempotent nor commutative, as illustrated by the following example.
Example 3. Let , and be three HFEs, w be the weight vector of them, and (, ) be the support for from given in Example 2. Then by Theorem 5, we haveAccording to Definition 3, we have , and . Then and thus , which implies that the HFHPWG operator is not idempotent. Furthermore, since , we have . Thus, the HFHPWG operator is not commutative. Theorem 8. Let () be a collection of HFEs and be the weight vector of such that and , then we have
(1) ;
(2) .
Proof. Since (2) is similar (1), we only prove (1).
□
3.2. Generalized Hesitant Fuzzy Hamacher Power-Weighted Average/Geometric Operators
Definition 7. Let () be a collection of HFEs, be the weight vector of () such that and . For a parameter , a generalized hesitant fuzzy Hamacher power-weighted average (GHFHPWA) operator is a function such thatwhere parameter , and is the support for from . Theorem 9. Let () be a collection of HFEs and be the weight vector of () such that and , then the aggregated value by GHFHPWA operator is also a HFE, andwhere and . Proof. We first use the mathematical induction on
n to prove
(1) When
, since
, we have
Thus, Equation (
17) holds for
.
(2) Suppose that Equation (
17) holds for
, that is
then, when
, by the operational laws in Definition 4, we have
i.e., Equation (
17) holds for
. Thus, Equation (
17) holds for all
n.
Hence, by the operational laws in Definition 4, we have
which completes the proof of the theorem. □
Remark 3. (1) If , for all , thenand thus, the GHFHPWA operator reduces to the generalized hesitant fuzzy Hamacher weighted average (GHFHWA) operator [17]. (2) If , then the GHFHPWA operator reduces to the generalized hesitant fuzzy power-weighted average (GHFPWA) operator [15]:and if , then the GHFHPWA operator reduces to the generalized hesitant fuzzy Einstein power-weighted average (GHFEPWA) operator [18]:where , . (3) If , then and , and thus the GHFHPWA operator reduces to the HFHPWA operator.
In particular, if , then the GHFHPWA operator reduces to the generalized hesitant fuzzy Hamacher power average (GHFHPA) operator:where , and . Definition 8. Let () be a collection of HFEs and be the weight vector of () such that and . For , a generalized hesitant fuzzy Hamacher power-weighted geometric (GHFHPWG) operator is a function such thatwhere , and is the support for from . Theorem 10. Let () be a collection of HFEs and be the weight vector of () such that and , then the aggregated value by GHFHPWG operator is also a HFE, andwhere and . Proof. Similar to the proof of Theorem 9, Equation (
23) can be proved by mathematical induction on
n. □
In particular, if
, then the GHFHPWG operator reduces to the generalized hesitant fuzzy Hamacher power geometric (GHFHPG) operator:
where
,
and
.
Remark 4. (1) If , then the GHFHPWG operator reduces to the generalized hesitant fuzzy power-weighted geometric (GHFPWG) operator [15]:and if , then the GHFHPWG operator reduces to the generalized hesitant fuzzy Einstein power-weighted geometric (GHFEPWG) operator [18]:where , . (2) If , for all , thenand thus, the GHFHPWG operator reduces to the generalized hesitant fuzzy Hamacher weighted geometric (GHFHWG) operator [17]. (3) If , then and , and so the GHFHPWG operator reduces to the HFHPWG operator.
Theorem 11. Let () be a collection of HFEs and be the weight vector of such that and , then we have
(1) ;
(2) .
Proof. Similar to the proof of Theorem 8. □
3.3. Hesitant Fuzzy Hamacher Power-Ordered Weighted Average/Geometric Operators
Motivated by the idea of the POWA operator [
24], POWG operator [
25] and Hamacher operations, we define the hesitant fuzzy Hamacher power-ordered weighted average (HFHPOWA) operator and hesitant fuzzy Hamacher power-ordered weighted geometric (HFHPOWG) operator as follows.
Definition 9. Let () be a collection of HFEs. A hesitant fuzzy Hamacher power-ordered weighted average (HFHPOWA) operator is a function such thatwhere parameter , is the ith largest HFE of (), and () is a collection of weights such thatwhere denotes the support of ith largest HFE by all of the other HFEs, indicates the support of the ith largest HFE for the jth largest HFE, and is a basic unit-interval monotone (BUM) function with the following properties: (1) ; (2) ; and (3) if . Theorem 12. Let () be a collection of HFEs, then the aggregated value by HFHPOWA operator is also an HFE, andwhere () is a collection of weights satisfying the condition (29). Remark 5. (1) If for all and , then , , and sowhich indicates that the HFHPOWA operator reduces to the hesitant fuzzy Hamacher average (HFHA) operator [17]. (2) If , then the HFHPOWA operator reduces to the hesitant fuzzy power-ordered weighted average (HFPOWA) operator [15]:where () is a collection of weights satisfying the condition (29). If , then the HFHPOWA operator (30) reduces to the hesitant fuzzy Einstein power-ordered weighted average (HFEPOWA) operator [18]:where () is a collection of weights satisfying the condition (29). Similar to Theorems 3 and 4, we have the properties of HFHPOWA operator as follows.
Theorem 13. If () is a collection of HFEs and () is the collection of the weights which satisfies the condition (29), then Theorem 14. If () is a collection of HFEs and () is the collection of the weights which satisfies the condition (29), then we have the followings: (1) Boundedness: If and , then (2) Monotonicity: Let () be a collection of HFEs, if for any and (), , then
Definition 10. Let () be a collection of HFEs. A hesitant fuzzy Hamacher power-ordered weighted geometric (HFHPOWG) operator is a function such thatwhere parameter , is the ith largest HFE of (), and () is a collection of weights satisfying the condition (29). Theorem 15. If () is a collection of HFEs, then the aggregated value by HFHPOWG operator is also an HFE, andwhere is the ith largest HFE of () and () is the collection of the weights satisfying the condition (29). Remark 6. (1) If , for all , and , thenwhich indicates that the HFHPOWG operator reduces to the hesitant fuzzy Hamacher geometric (HFHG) operator [17]. (2) If , then the HFHPOWG operator (34) reduces to the hesitant fuzzy power-ordered weighted geometric (HFPOWG) operator [15]:where () is a collection of weights satisfying the condition (29). If , then the HFHPOWG operator (34) reduces to the hesitant fuzzy Einstein power-ordered weighted geometric (HFEPOWG) operator [18]:where () is a collection of weights satisfying the condition (29). Similar to Theorems 6–8, we have the properties of HFHPOWG operator as follows.
Theorem 16. If () is a collection of HFEs and () is the collection of the weights which satisfies the condition (29), then Theorem 17. If () is a collection of HFEs and () is the collection of the weights which satisfies the condition (29), then we have the followings: (1) Boundedness: If and , then (2) Monotonicity: Let () be a collection of HFEs, if for any and (), , then
Theorem 18. If () is a collection of HFEs and () is the collection of the weights satisfying the condition (29), then we have (1) ;
(2) .
In what follows, we define the generalized hesitant fuzzy Hamacher power-ordered weighted average (GHFHPOWA) operator and generalized hesitant fuzzy Hamacher power-ordered weighted geometric (GHFHPOWG) operator.
Definition 11. Let () be a collection of HFEs. For , a generalized hesitant fuzzy Hamacher power-ordered weighted average (GHFHPOWA) operator is a function such thatwhere , is the ith largest HFE of (), and () is a collection of weights satisfying the condition (29). Theorem 19. Let () be a collection of HFEs, then the aggregated value by GHFHPOWA operator is also an HFE, andwhere , and () is a collection of weights satisfying the condition (29). Remark 7. (1) If , then and , and thus the GHFHPOWA operator reduces to the HFHPOWA operator. In fact, by Equation (38), we have (2) If , then the GHFHPOWA operator reduces to the generalized hesitant fuzzy power-ordered weighted average (GHFPOWA) operator [15]:where () is a collection of weights satisfying the condition (29), and if , then the GHFHPOWA operator reduces to the generalized hesitant fuzzy Einstein power-ordered weighted average (GHFEPOWA) operator [18]:where , and () is a collection of weights satisfying the condition (29). Definition 12. Let () be a collection of HFEs. For , a generalized hesitant fuzzy Hamacher power-ordered weighted geometric (GHFHPOWG) operator is a function such thatwhere , is the ith largest HFE of (), and () is a collection of weights satisfying the condition (29). Theorem 20. Let () be a collection of HFEs, then the aggregated value by GHFHPOWG operator is also an HFE, andwhere , and () is a collection of weights satisfying the condition (29). Remark 8. (1) If , then and , and the GHFHPOWG operator reduces to the HFHPOWG operator.
(2) If , then the GHFHPOWG operator reduces to the generalized hesitant fuzzy power-ordered weighted geometric (GHFPOWG) operator [15]:where () is a collection of weights satisfying the condition (29), and if , then the GHFHPOWG operator reduces to the generalized hesitant fuzzy Einstein power-ordered weighted geometric (GHFEPOWG) operator [18]:where , , and () is a collection of weights satisfying the condition (29). 4. Method for Multiple-Attribute Decision-Making Based on Hesitant Fuzzy Hamacher Power-Aggregation Operators
In this section, we use hesitant fuzzy Hamacher power-aggregation operators to develop an approach to MADM with hesitant fuzzy information.
Let be a set of n alternatives, and be a set of m attributes, whose weight vector is , satisfying () and , where denotes the importance degree of the attribute . Suppose the group of decision-makers provides the evaluating value that the alternative () satisfies the attribute () represented by the HFEs (; ). All these HFEs are contained in the hesitant fuzzy decision matrix .
The following steps can be used to solve the MADM problem under the hesitant fuzzy environment, and obtain an optimal alternative:
Step 1: Obtain the normalized hesitant fuzzy decision matrix. In general, the attribute set
G can be divided two subsets:
and
, where
and
are the set of benefit attributes and cost attributes, respectively. If all the attributes are of the same type, then the evaluation values do not need normalization, whereas if there are benefit attributes and cost attributes in MADM, in such cases, we may transform the evaluation values of cost type into the evaluation values of the benefit type by the following normalization formula:
where
is the complement of
. Then we obtain the normalized hesitant fuzzy decision matrix
.
Step 2: Calculate the supports
which satisfy conditions (1)–(3) in Definition 5. Here we assume that
is the hesitant normalized Hamming distance between
and
given in Equation (
4).
Step 3: Calculate the weights of evaluating values. Use the weights
(
) of attributes
(
) to calculate the weighted support
of the HFE
by the other HFEs
(
, and
):
and then use the weights
(
) of attributes
(
) to calculate the weights
(
) that are associated with HFEs
(
):
where
,
, and
.
Step 4: Compute overall assessments of alternatives. Use the HFHPWA operator (Equation (
6)):
or the HFHPWG operator (Equation (
11)):
to aggregate all the evaluating values
(
) of the
jth column and get the overall rating value
corresponding to the alternative
(
).
Step 5: Rank the order of all alternatives. Use the method in Definition 3 to rank the overall rating values (), rank all the alternatives () in accordance with () in descending order, and finally select the most desirable alternative(s) with the largest overall evaluation value.
Step 6: End.
Remark 9. As previously discussed, a family of hesitant fuzzy Hamacher power-aggregation operators, including the HFHPWA, HFHPWG, GHFHPWA, GHFHPWG, HFHPOWA, HFHPOWG, GHFHPOWA, and GHFHPOWG operators, is proposed for aggregating hesitant fuzzy information. This family is composed of two kinds: the HFHPWA operator and HFHPWG operator, and other aggregation operators are developed based on them. Therefore, in Step 3, the HFHPWA and HFHPWG operators are chosen to aggregate hesitant fuzzy information.
Example 4. There is a five-member board of directors of a company. They plan to invest their money in a suitable project with a lot of potential over the next five years [17]. Assume that the board of directors will evaluate the four possible projects . To evaluate and rank these projects, four attributes are suggested by the Balances Score Card Methodology, i.e., (1) is the financial perspective; (2) is the customer satisfaction; (3) is the internal business process perspective; and (4) is the learning and growth perspective. Please note that these attributes are all benefit attributes and the corresponding weight vector is . The five members of the board of directors provide the evaluating values of the projects () with respect to attributes () and construct their hesitant fuzzy decision matrix (see Table 1), where is a HFE that denotes all of the possible values for alternative under the attribute . Then we use the above proposed approach to choose the optimal project.
Step 1: Since these attributes are all benefit attributes, it is not necessary to normalize the decision matrix D.
Step 2: Use Equation(46) to calculate the supports (, , ). For simplicity, we denote by , which refers to the supports between the ith and kth columns of D: Step 3: Use Equation (47) to calculate the weighted support of HFE by the other HFEs (, ), which are contained in the matrix :and use Equation (48) to calculate the weights of HFEs (), which are contained in the matrix : Step 4: Let and use the HFHPWA operator (Equation (49)) to aggregate all of the evaluating values () in the jth column of D and then, derive the overall rating value () of the alternative (). The overall rating values are not listed here because of limited space. Using Definition 3, we calculate the score functions of () as follows:Then we rank the () in descending order of : Step 5: Rank all the alternatives () as follows:Thus, the best alternative is . Furthermore, let , respectively, which represents different preferences for decision-makers on decision information. We can obtain the corresponding score values and rankings of the alternatives (listed in Table 2). To explain how the different parameter value ζ plays a role in the aggregation operator, we use the different values ζ, given by decision-makers. As shown in Table 2, the score values obtained by the HPHPWA operator become smaller as the parameter value ζ increases. Thus, decision-makers can choose the parameter value ζ according to their preferences. If the HFHPWA operator is replaced by HFHPWG operator in the above Step 4, Table 3 lists the score values of overall rating values and rankings of alternatives. The score values obtained by the HFHPWG operator become larger as parameter ζ increases. Comparing Table 2 with Table 3, we can observe that the score value obtained by the HFHPWA operator greater than the score value obtained by the HFHPWG operator for the same parameter value ζ and the same aggregation value. For HFHPWA operators, the parameter value does not affect the final rankings of the alternatives, but for the HFHPWG operators it is shown that the choice of parameter value has a greater impact on the score values and thus the rankings of the alternatives. In the above analysis, we see that while the best alternative obtained by the HFHPWA operator are the same as that obtained by the HFHPWG operator, the rankings of the alternatives differs between the HFHPWA and HFHPWG operators. To compare our approach with some other approaches, we apply Xia and Xu’s approach [
10], Zhu et al.’s approach [
13], and Tan et al.’s approach [
17] to above example. The results of the rankings of the alternatives are shown in
Table 4 below.
From this analysis, we can see that the best alternative is the same for the both HFHPWA and HFHPWG operators, or both HFWA and HFWG operators, or both HFHWA and HFHWG operators, but the ranking of alternatives is different between the HFHPWA and HFHPWG operators, or HFWA and HFWG operators, or HFHWA and HFHWG operators. It reflects that the final results may be different by different types of hesitant fuzzy aggregation operators. Also, the ranking of alternatives obtained by the hesitant fuzzy TOPSIS method is the same those by the HFHPWA, HFWA, and HFHWA operators. This result shows the validity of the proposed approach in this paper.
Compared with the existing hesitant fuzzy MADM approaches, our proposed approach has two advantages: First, decision-makers often have an optimistic or pessimistic attitude in the face of decision information. In this case, optimistic attitude often leads to a preference for risk-seeking, and pessimistic one results in a preference for avoiding risk. The parameter takes into account the decision-maker’s subjective attitude to decision-making problem and are therefore useful in obtaining a better decision result. Second, different parameter values clearly indicate changes in the ranking of alternatives. Compared to a fixed evaluated result obtained by existing aggregation operators such as the HFWA and HFWG operators, our evaluated result can better reflect the variety.