1. Introduction
In practical decision-making problems, certain attribute values can be represented by definite numerical figures, such as temperature, length, and the speed at which a car travels. However, for some issues, due to the complexity of the problem and the limitations in the decision-maker’s knowledge, it becomes challenging to provide them in a definitive form. Examples include an individual’s perception of cold or the degree of acceptance towards a particular item. Such issues often encompass multifaceted considerations and uncertainties, making it difficult to arrive at an optimal decision using traditional mathematical methods. As a solution, fuzzy set theory, proposed by the cybernetics expert Zadeh, serves as a potent tool for handling fuzzy and uncertain information in decision-making problems. He extended the classical sets to fuzzy sets and the characteristic functions to membership functions. This made it possible to mathematically characterize fuzzy concepts, pioneering a new perspective based on fuzzy sets to study uncertain phenomena [
1].
Atanassov first introduced the concept of the intuitionistic fuzzy set (IFS) in 1983 [
2]. Intuitionistic fuzzy sets encompass two dimensions, “membership degree
” and “non-membership degree
”, satisfying the conditions
. Additionally, intuitionistic fuzzy sets incorporated the notion of hesitancy, defining the hesitancy degree
= 1 −
−
to represent the level of uncertainty regarding a particular decision. Subsequently, Yager introduced the concept of the Pythagorean fuzzy set (PFS) [
3] and Fermatean fuzzy set (FFS) [
4], which broadened the constraints of intuitionistic fuzzy sets and provided a stronger capability in describing fuzzy phenomena.
However, as decision-making conditions have become increasingly complex, the applicability of the Pythagorean fuzzy set and Fermatean fuzzy set has become more restricted. For instance, when experts use 0.9 and 0.7 to represent the “membership degree
” and “non-membership degree
” of their decision opinion, respectively, since
,
, the experts’ decision opinion (0.9, 0.7) cannot be represented by the Pythagorean fuzzy set or Fermatean fuzzy set. To address such issues, Yager once again introduced the concept of the generalized orthopair fuzzy set (i.e.,
-rung orthopair fuzzy set, q-ROF) [
5]. The generalized orthopair fuzzy set not only results in less information distortion, it also offers people a broader decision-making scope and provides more possibilities for decision-making.
Information aggregation operators based on intuitionistic fuzzy sets have been extensively studied. For instance, Zhou et al. investigated the power mean operator of intuitionistic triangular fuzzy numbers [
6], while Xu and colleagues introduced the intuitionistic fuzzy hybrid average operator [
7]. Research on information aggregation operators based on Pythagorean fuzzy set and Fermatean fuzzy set has also made some progress: Akram et al. [
8] introduced a series of Pythagorean Dombi fuzzy aggregation operators. Khan et al. [
9] extended the prioritized aggregation operators to the Pythagorean fuzzy environment to address decision-making problems where attributes and decision-makers have a hierarchical relationship. Wei et al. [
10] proposed a series of Pythagorean fuzzy Hamacher power aggregation operators using Hamacher operation and power aggregation in the Pythagorean fuzzy environment. Senapati et al. [
11] studied the Fermatean fuzzy weighted averaging and geometric operators. Senapati and Yager [
12] introduced subtraction, division, and Fermatean arithmetic mean operations over the Fermatean fuzzy set. On the other hand, information aggregation operators based on the generalized orthopair fuzzy set have been attracting a significant amount of scholarly attention in recent years. For example, Jun et al. proposed the generalized orthopair fuzzy Maclaurin symmetric mean operator [
13], Riaz investigated the generalized orthopair fuzzy geometric aggregation operators [
14], Alcantud introduced complemental fuzzy sets and provided semantic justification for generalized orthopair fuzzy sets [
15], and so on.
However, most of the current studies tend to aggregate information from a single perspective; to address this limitation and propose operators that are more comprehensive and better suited to increasingly complex multi-variable decision-making problems in reality, this paper selects some of the most representative operators for multi-variable information aggregation: the power average (PA) operator [
16] and the Bonferroni mean (
) operator [
17]. The PA operator is leveraged for its ability to mitigate the negative impacts from extreme evaluations made by experts and the
operator reflects the correlation among input variables. By merging these operators and incorporating the significance of weight indicators, we introduce the generalized orthopair fuzzy weighted power Bonferroni mean operator and demonstrate its superior properties. Finally, we further illustrate the feasibility and superiority of this operator through practical examples.
The arrangement for the remainder of this paper is as follows. We introduce the preliminaries such as the definition of GOF set, distance measure, and arithmetic laws firstly in
Section 2. Secondly, we propose the generalized orthopair fuzzy weighted power Bonferroni mean operator and prove its feasibility, then study some of its desirable properties in
Section 3. In
Section 4, we introduce a novel multi-attribute decision-making (MADM) model based on the
operator. After that, we use a practical example to elucidate the superiority of this novel operator, then conduct some comparative analyses under different parameters and existing methods in
Section 5. Finally, we summarize some conclusions and point out the application scenarios of this method in
Section 6.
2. Preliminaries
Definition 1 [
5]
. Let be a non-empty general set, then the expression for the generalized orthopair fuzzy set defined on is given by where : and : represent the membership function and non-membership function of , respectively; is a positive integer independent of and . Define the degree of hesitation .
“Orthopair” refers to the simultaneous inclusion of both membership and non-membership dimensions. Consequently, the intuitionistic fuzzy set, Pythagorean fuzzy set, Fermatean fuzzy set, and generalized orthopair fuzzy set all fall within the domain of the orthopair fuzzy set. The constraint condition for the generalized orthopair fuzzy set is that the sum of the
th power of membership and the
th power of non-membership is less than or equal to 1, that is,
+
≤ 1. When
, the generalized orthopair fuzzy set evolves into an intuitionistic fuzzy set; when
, it morphs into a Pythagorean fuzzy set; and when
, it evolves into a Fermatean fuzzy set as illustrated in
Figure 1.
The generalized orthopair fuzzy set allows for a broader boundary condition in decision-making information, enabling a more comprehensive and accurate representation of fuzzy information. This aligns more closely with real-life decision-making scenarios, which Alcantud and colleagues have studied [
15]. Moreover, it encompasses the special cases of
(intuitionistic fuzzy set),
(Pythagorean fuzzy set), and
(Fermatean fuzzy set), offering greater versatility and a broader range of applications. It serves as an effective tool for depicting phenomena characterized by uncertainty.
It is noteworthy that there are other extensions of intuitionistic fuzzy set and Pythagorean fuzzy set, which do not further extend the “
” exponent, but instead hybridize the model through other methods, such as the interval-valued intuitionistic fuzzy set [
18], complex Pythagorean fuzzy set [
19], Pythagorean fuzzy soft rough set [
20], intuitionistic fuzzy soft set [
21], and so on.
Definition 2 [
22]
. Let be three generalized orthopair fuzzy numbers, is any real number greater than or equal to zero. The operational laws are defined as follows- (1)
;
- (2)
;
- (3)
;
- (4)
.
From the above, we can derive the following conclusions
- (1)
;
- (2)
;
- (3)
;
- (4)
;
- (5)
;
- (6)
.
Definition 3 [
22]
. Let be a generalized orthopair fuzzy number, then the score-valued function of is defined as , and the accuracy-valued function of is defined as . Based on the functions and , for any two generalized orthopair fuzzy numbers , , the comparison method is defined as- (1)
if , then ;
- (2)
if and , then ;
- (3)
if and , then .
Definition 4 [
22]
. Assuming are any two generalized orthopair fuzzy numbers, the hamming distance between and can be defined as The power average (PA) operator is an aggregation operator that effectively considers the interrelationships among data information. By taking into account the support relationships among input data to calculate attribute weights, it diminishes the adverse impact of outlier data on decision-making results, making the decision information processing more objective and impartial. Accordingly, it has garnered attention from many scholars [
23,
24,
25,
26].
Definition 5 [
16]
. Assuming to be a set of non-negative real numbers, the result aggregated by the power average operator of is given bywhere PA is termed as the power average operator. Here, , represents the support degree between and .
The
operator is a particular type of aggregation function. The most significant advantage of this operator is its ability to reflect interrelationships among input variables, akin to the Heronian mean operator. With the continuous advancement of contemporary society, many attributes in real-world decision-making scenarios exhibit strong interrelations. Consequently, due to this characteristic, the
operator is extensively utilized in information aggregation and multi-attribute decision-making [
27,
28,
29,
30,
31].
Definition 6 [
17]
. Let parameters and , be a series of non-negative real numbers, ifthen is referred to as the Bonferroni mean operator. 4. The MADM Model Based on the Operator
The multi-attribute decision-making model is a current research focus in the field of decision science, and is extensively utilized to address decision-making issues in real-life scenarios. For instance, Garg [
38] proposed a multi-attribute decision-making algorithm based on trigonometric generalized orthopair fuzzy numbers. Xu et al. [
39] introduced a multi-attribute decision-making method based on fuzzy soft sets. Chen et al. [
40] put forward a multi-attribute decision-making model based on the intuitionistic trapezoidal fuzzy generalized Heronian OWA operator, and Li et al. [
41] proposed a series of multi-attribute decision-making methods based on the Pythagorean fuzzy power Muirhead mean operators.
From the above analysis, it is evident that the operator combines the advantages of numerous operators in information aggregation. Based on this, we propose a multi-attribute decision-making model based on the operator. This decision-making model will be applied to an investment attraction project in a certain city to verify the feasibility and superiority of the method proposed in this paper.
In the multi-attribute decision-making problem with generalized orthopair fuzzy information, suppose there are candidate schemes , and decision attributes (). The weight vector corresponding to each decision attribute is . Experts provide generalized orthopair fuzzy evaluation information. We denote the attribute value of scheme under attribute as , where is a generalized orthopair fuzzy number. Thus, a generalized orthopair fuzzy decision matrix is obtained, where , represents the membership value and represents the non-membership value of candidate scheme regarding attribute . The specific steps are as follows.
Step 1. Based on the actual situation, establish the generalized orthopair fuzzy matrix
. Convert each decision attribute value in it to the benefit-type, resulting in the standard matrix [
42]
, where
Step 2. Using the information aggregation () operator, compute the attribute values of each solution in the generalized orthopair fuzzy standard matrix . Then, determine the score function for each solution based on these attribute values.
Step 3. Rank the score functions from high to low and select the optimal solution.
5. Case Analysis
5.1. Decision-Making Process
Since the outbreak of the COVID-19 pandemic, the economic development in various regions has been consistently sluggish. Responding to the call for national economic recovery, a particular city government took the lead in allocating funds to stimulate local economic recovery. They planned to invest in some privately-owned enterprise in the city. But, due to reasons such as financial difficulties and policy restrictions, the government aimed to raise fiscal revenue, increase employment opportunities, and reduce investment risks by seeking partners in the market. After rigorous market research, five potential partners were identified: Daily goods manufacturing, Chain catering, Internet company, Civil and building materials, Civil and building materials. Taking into consideration its own situation, the decision-making group composed of government officials and experts decided to inspect the candidates based on the following four factors. C1: Fiscal Assessment (including company’s financial reserves, investment orientation evaluation, etc.), C2: Developmental Assessment (including enterprise scale, future development plan, etc.), C3: Social Influence Assessment (including the company’s social status and public reputation, etc.), C4: Green Development Assessment (including sustainable development strategies and environment-friendly levels of the enterprise).
Following the assessment by the opinion group, a generalized orthopair fuzzy decision matrix
was established as shown in
Table 1, where the evaluation value
is a generalized orthopair fuzzy number, and the weight vector
is considered equal weight. Based on the decision matrix provided by the opinion group, we will evaluate the five prospective partner companies.
Step 1. Establishing the generalized orthopair fuzzy standard matrix
based on
Table 1. Since all attributes in this case are of benefit type, the standard matrix
is equal to
.
Step 2. Using Formula (7), we derived the comprehensive attribute values for each scheme. In this case study, to show the complete results, the value of q is set to be greater than or equal to 2. Here, = 3. The comprehensive attribute values for each scheme are: , , , , . Based on these comprehensive values, the score function values for each scheme are: , , , , .
Step 3. According to the aforementioned score function values and ranking them from highest to lowest, we have the order > > > > . Thus, the optimal scheme is (Chain catering company).
5.2. Parameters Analysis
The analysis and conclusion above were drawn under the condition of
. To ensure generality and robustness in the decision-making process, it is pertinent to discuss the ranking of the best candidate schemes under different parameter values for
, as shown in
Table 2.
Table 2 shows the composite attribute values of each scheme under different parameters. Based on this table, the score rankings under different parameters are calculated in
Table 3.
Table 3 presents the ranking results under different parameters using the generalized orthopair fuzzy weighted power Bonferroni mean (
) operator. Due to the novel operator having two parameters,
s and
t, it allows for greater flexibility and convenience in information aggregation. Therefore, during the decision-making process, the expert group can select appropriate parameter values based on the complexity of the problem combined with their risk preferences. Moreover, the comparison results from the
Table 3 above show that the scores of each candidate will increase as the values of the parameters
s and
t increase. However, due to the stability of the
operator, it does not distort information with excessively large values of
s and
t like other operators. This avoids influencing the final judgment results, making it more suitable for today’s increasingly complex decision-making environment.
5.3. Comparative Analysis
To further demonstrate the superiority of the operator proposed in this paper, the following text will compare this operator with existing operators. Specifically, we selected the generalized orthopair fuzzy power average
operator and the generalized orthopair fuzzy Bonferroni mean
operator for comparison. For convenience of calculation, parameter values in various information aggregation operators are uniformly taken as one. The comparison results are shown in
Table 4.
Based on the comparative outcomes presented in the
Table 4, it is discernible that score values and the resultant rankings exhibit slight differences across various methodologies. The underlying reason for these divergences can be attributed to the distinct information aggregation methodologies employed by each of the emblematic information aggregation operators. Even though all these operators are grounded in the average-based paradigm, their focal points during the information aggregation process vary notably. It can be observed that the candidate scheme
consistently exhibits extreme values across various attributes. As a result, using the
operator, the outcome points to
. This is primarily because the
operator can negate the adverse impact brought about by extreme values encountered in expert evaluations. Additionally, it emphasizes the support degree between data, ensuring cohesion among them. However, it does not take into consideration potential inter-relationships between attributes. In this particular case, it is evident that the attribute
influences the development of
. On the other hand, the
operator primarily captures the interrelationships between pieces of information. Yet, its vulnerability to extreme values can lead to distorted outcomes. Consequently, in this instance, after being influenced by the extreme value, the result derived from
operator is
.
The newly defined operator in this study combines the advantages of both: it not only takes into account the overall balance among the data but also considers the weights of each attribute and the potential correlations that may exist between different attributes. This helps prevent biased decision-makers from skewing the results with outlier preference values (i.e., exceptionally high or low values in the original data), ensuring a more fair and objective decision-making process. Furthermore, the operator retains the parameters and , allowing decision-makers to adjust the parameters based on their risk preferences, making the decision-making process more flexible. Additionally, the operator introduces the concept of weights, providing an avenue to account for the intrinsic importance of the data, thereby rendering the decision-making process more rational and in line with real-world multi-attribute decision-making problems.