1. Introduction
The intricacies inherent in objective phenomena, combined with the constraints of human understanding, inevitably give rise to uncertainty [
1,
2]. A great number of theories have been proposed to model uncertainty, such as fuzzy sets [
3,
4], neutrosophic sets [
5,
6], rough sets [
7,
8], and evidence theory [
2,
9]. Fuzzy sets (FSs) [
10], initially introduced by Zadeh, facilitate the handling of uncertainty by incorporating membership degree, offering a mathematical framework more adept at managing uncertainties. FSs have proven effective for addressing complexities and ambiguities. However, FSs represent only a certain level of uncertain information.
To encompass a broader spectrum and a higher degree of uncertainty, Atanassov [
11] expanded upon this concept by introducing intuitionistic fuzzy sets (IFSs). IFSs include both membership (
) and non-membership (
) degrees, thereby providing a more detailed representation of uncertainty. Numerous researchers have explored various measures of distance or similarity between IFSs since the inception of the theory. Szmidt and Kacprzyk [
12] introduced the Hamming distance and the Euclidean distance measures along with their normalized forms. Wang and Xin [
13] formulated an expanded distance measure specifically for IFSs and effectively employed it to tackle pattern recognition challenges. Park et al. [
14] introduced a new distance measure for IFSs, building upon the framework established by Wang and Xin [
13]. Yang and Chiclana [
15] introduced an innovative spherical distance measure specifically tailored for IFSs within a three-dimensional framework, effectively leveraging it in decision-making analysis for enhanced precision and accuracy. Further contributions include Son and Phong [
16], who developed intuitionistic vector similarity measures, applying these measures to medical diagnosis. Ye [
17] introduced two novel measures, i.e., cosine similarity and weighted cosine similarity, based on the cosine function, which effectively incorporate fuzzy information within the framework of IFSs. Xu [
18] developed the Minkowski distance measure for IFSs and utilized it in solving pattern recognition and medical diagnosis. More recently, Xiao [
19] introduced a novel distance measure based on the Jensen–Shannon divergence between IFSs. Li et al. [
20] presented an intuitionistic fuzzy distance measure based on the Hellinger distance and applied it to pattern classification. These measures, however, face challenges when the sum of the membership and non-membership degrees exceeds one, complicating their applications.
Later, Yager [
21] introduced an extension to IFSs, known as Pythagorean fuzzy sets (PFSs), which are characterized by membership
and non-membership
. In PFSs, the sum of the squares of these degrees does not exceed one, offering a richer representation of uncertainty. This development initiated numerous studies into the properties and applications of PFSs [
22,
23,
24]. Liang and Xu [
25] developed a measure for the TOPSIS within the context of PFSs. Wei and Lu [
26] proposed a set of power-based aggregation functions tailored for PFSs. Wei [
27] suggested some PF interaction aggregation functions with their utility in multicriteria decision-making (MCDM). Zhang and Xu developed a distance measure for PFSs that evaluates alternatives and introduced a modified TOPSIS method to tackle multicriteria decision-making. Zeng et al. [
28] demonstrated the application of Pythagorean fuzzy measures to assess both distance and similarity in MCDM, underscoring the utility of these advanced fuzzy sets in complex decision-making scenarios. Farhadinia [
29] introduced a variety of new similarity measures for PFSs. Xiao et al. [
30] applied the distance measures based on the Jensen–Shannon divergence to the PFSs environment. Liu [
31] proposed two Hellinger distance measures for PFSs. Senapati and Yager [
32] further proposed Fermatean fuzzy sets (FFSs), which expand the constraint on the sum of membership and non-membership degrees to the cubic. A number of researchers have delved into FFSs to handle uncertain information. Zhou et al. [
33] introduced a new distance measure based on the Jensen–Shannon divergence to the Fermatean fuzzy context. Deng and Wang [
34] designed two distance measures for FFSs based on the Hellinger distance and the triangular divergence. Liu [
35] proposed a new distance measure for FFSs to overcome the limitations of the previous triangular divergence. Recently, Liu [
36] developed some Fermatean fuzzy similarity measures according to Tanimoto and Sørensen coefficients and applied them to various applications.
Expanding the field of fuzzy logic, Yager [
37] introduced the concept of
q-rung orthopair fuzzy sets (
q-ROFSs), which enhance the representation of uncertainty by utilizing the adjustable parameter
q. The key characteristics of
q-ROFSs include membership
and non-membership
degrees, where the sum of their
q powers does not exceed 1, expressed as
. One significant benefit of
q-ROFSs is their flexible and comprehensive depiction of uncertainty. By varying the
q value, the granularity of the uncertainty representation can be adjusted over a wider spectrum, making
q-ROFSs particularly suitable for more complex decision-making scenarios and handling a diverse range of information. Since their introduction,
q-ROFSs have been extensively explored in the literature, with numerous studies contributing to their development. An increasing array of distance or similarity measures have been proposed, enhancing their utility. For example, Wang et al. [
38] extended some similarity measure based on the cosine and cotangent functions from PFSs to
q-ROFSs. Liu et al. [
39] proposed a new similarity measure for
q-ROFSs by combining cosine similarity and Euclidean distance. Singh [
40] developed new correlation coefficients to assess the degree and nature of the correlation between
q-ROFSs. Ali [
41] proposed a new distance measure for
q-ROFSs, rooted in the matrix norm and strictly monotonic functions. Rani et al. [
42] developed a distance measure inspired by the Hausdorff distance for
q-ROFSs. Du [
43] introduced distance measures of the Minkowski type for
q-ROFSs. Turkarslan [
44] proposed a distance measure between
q-ROFSs using the Choquet integral, and great results were achieved in pattern recognition.
Evidently, q-ROFSs possess a broader scope than both IFSs and PFSs, enabling them to encapsulate a richer array of fuzzy information and offer a more comprehensive representation of uncertainty and vagueness. However, there are challenges with some existing distance measures for q-ROFSs, such as producing identical results when assessing differences between distinct q-ROFSs, which can lead to unreasonable outcomes. This limits their discriminative capacity in more complex ambiguous environments. Therefore, it is logical to propose new solutions to address this limitation. Moreover, to date, the literature lacks examples of using the Jensen–Shannon divergence as a basis for defining a distance measure for q-ROFSs. Motivated by these gaps, we aim to introduce two novel distance measures for q-ROFSs that utilize the Jensen–Shannon divergence, potentially offering a more robust and effective tool for measuring differences within this framework.
The main contributions of this paper are displayed as follows:
We propose two new distance measures, i.e., a two-dimensional distance measure of a q-ROFS, which considers membership and non-membership degrees, and a three-dimensional distance measure of q-ROFSs, considering membership, non-membership, and hesitancy degrees.
We analyze some properties that the proposed distance measures satisfy, such as non-degeneracy, symmetry, boundedness, and triangle inequality.
We apply the proposed distance measures to pattern recognition and multicriteria decision-making issues, and excellent results are obtained to verify their performance.
The rest of this paper is structured as follows. In
Section 2, we review some essential knowledge of IFSs, PFSs, FFSs, and
q-ROFSs briefly. In
Section 3, we first introduce the concept of the Jensen–Shannon divergence. Then, we define two novel distance measures for
q-ROFSs based on the Jensen–Shannon divergence and prove some properties. In
Section 4, the effectiveness of the proposed measures is verified by some numerical examples. Subsequently, we apply the proposed measures to practical applications including pattern recognition and multicriteria decision-making in
Section 5. We conclude this paper in
Section 6.
5. Applications
In this section, we will present two examples involving the developed distance measures within a q-rung orthopair fuzzy environment. The measures introduced in this study are utilized in pattern recognition and multicriteria decision-making, showcasing the efficiency of these measures.
5.1. Pattern Recognition
Problem description: Given a finite UOD . There are k patterns . Every pattern is depicted by a q-ROFS denoted as (). For m test samples, are represented by q-ROFSs as (). The objective is to classify the test sample according to the designated pattern, ensuring accurate categorization.
Step 1: We use the suggested measures for measuring the distance between the known pattern and the test sample .
Step 2: The minimum distance
among all the calculated distances
between the pattern
and the sample
will be selected by using the equation below:
Step 3: The result of classifying the sample
is determined as follows:
The pseudocode of the proposed algorithm is shown in Algorithm 1.
Algorithm 1 Pattern classification algorithm. |
- Require:
, - Ensure:
Classification of sample - 1:
for ; do - 2:
for ; do - 3:
Compute the distance using Equations ( 19) and ( 20); - 4:
end for - 5:
end for - 6:
for ; do - 7:
Choose the smallest distance using Equation ( 21); - 8:
end for - 9:
for ; do - 10:
Classify the sample according to Equation ( 22); - 11:
end for
|
Example 5. Assume that are four known patterns in . Each pattern is represented by a q-ROFS as and the sample Q is expressed as . The purpose is to categorize the sample Q based on the known patterns. The distance between Q and computed by different distance measures is displayed in Table 2, where . Aiming to probe deeply into the flexibility and sensitivity characteristics of the parameter q, we choose a different value q to measure the distance between and Q, and the result is shown in Table 3.
Step 1: Different distance measures are employed to compute the distances between Q and . Table 2 shows the results. Step 2: The minimum distances between Q and based on and are depicted as follows: Step 3: The classification outcome of Q is determined as follows: As shown in Table 2, it is obvious that there is a minimum distance between and Q calculated by the majority of the q-ROFS distance measures, including the suggested q-ROFS measures. Thus, the sample Q should be assigned to . Furthermore, we notice that and classify Q as . This does not align with our initial expectations. Therefore, the existing measures and make it difficult to obtain satisfactory results in practical application. To assess the impact of altering the parameter q on the outcomes, we incorporate various values into the proposed distance measures. From Table 3 and Table 4, we can find that as the value of q rises, the distance between and Q remains consistently the smallest, which indicates that the sample Q should be allocated to the known pattern . Hence, we conclude that the distance measures we introduced are capable of achieving identical results as the existing measures and avoiding counter-intuitive results in the application of pattern recognition.
Table 2.
Compare with various distance measures for Example 5.
Table 2.
Compare with various distance measures for Example 5.
Method | | | | | |
---|
| 0.0514 | 0.0956 | 0.2982 | 0.0638 | |
| 0.0975 | 0.1738 | 0.4360 | 0.1169 | |
| 0.0978 | 0.1746 | 0.4593 | 0.1200 | |
| 0.4141 | 0.6233 | 0.7383 | 0.5184 | |
| 0.0789 | 0.1483 | 0.3285 | 0.0699 | |
| 0.1030 | 0.1441 | 0.1750 | 0.1084 | |
| 0.0379 | 0.0586 | 0.0719 | 0.0434 | |
| 0.0775 | 0.1395 | 0.3721 | 0.0936 | |
| 0.0624 | 0.1214 | 0.2637 | 0.0554 | |
| 0.0852 | 0.1742 | 0.3955 | 0.0998 | |
| 0.0845 | 0.1766 | 0.4316 | 0.1033 | |
| 0.1003 | 0.1835 | 0.3140 | 0.1119 | |
| 0.1016 | 0.1907 | 0.4302 | 0.1174 | |
Table 3.
between Q and with different q value in Example 5.
Table 3.
between Q and with different q value in Example 5.
q | | | | | |
---|
3 | 0.1003 | 0.1835 | 0.3140 | 0.1119 | |
4 | 0.0831 | 0.1544 | 0.2999 | 0.0894 | |
5 | 0.0654 | 0.1233 | 0.2743 | 0.0691 | |
6 | 0.0501 | 0.0958 | 0.2458 | 0.0521 | |
7 | 0.0378 | 0.0733 | 0.2182 | 0.0387 | |
8 | 0.0282 | 0.0556 | 0.1930 | 0.0285 | |
Table 4.
between Q and with different q value in Example 5.
Table 4.
between Q and with different q value in Example 5.
q | | | | | |
---|
3 | 0.1016 | 0.1907 | 0.4302 | 0.1174 | |
4 | 0.0834 | 0.1568 | 0.3575 | 0.0916 | |
5 | 0.0655 | 0.1242 | 0.3097 | 0.0698 | |
6 | 0.0501 | 0.0961 | 0.2692 | 0.0523 | |
7 | 0.0378 | 0.0734 | 0.2343 | 0.0388 | |
8 | 0.0282 | 0.0556 | 0.2045 | 0.0285 | |
5.2. Multicriteria Decision-Making
In this study, we showcase the effectiveness of the proposed q-ROFS distance measures in tackling multicriteria decision-making issues that are inherently uncertain and ambiguous.
Problem description: We have m feasible alternatives expressed as and n criteria expressed as . The goal is to determine the best alternative.
Step 1: Construct the decision matrix that includes the data pertaining to the available options in relation to the criteria. In this matrix, signifies the extent to which option fulfills the criteria , whereas denotes the extent to which it falls short of satisfying the same criteria.
Step 2: Formulate the normalized decision matrix using Equation (
23).
Step 3: Determine the q-ROFSs’s ideal opinion where and
Step 4: Compute the distance of the alternative from the q-ROFSs’s ideal solution utilizing the proposed q-ROFS distance measures and .
Step 5: Rank the alternatives in ascending order according to their distance, with the one having the minimum distance deemed as the most optimal alternative.
Example 6. Considering the problem for choosing one among five different houses to purchase, a prospective homebuyer will take into account the following criteria when making a purchase decision.
: Ceiling height, : Design, : Location, : Purchase price, and : Ventilation.
Step 1: The details regarding the five houses based on the previously mentioned criteria are represented by q-ROFSs within Table 5. Step 2: Given that attribute is the only cost attribute, we utilize Equation (23) to establish the normalized decision matrix, as depicted in Table 6. Step 3: Assume that all the attributes have the same weight. Then, we will determine the q-ROFS’s ideal opinion where and . So, the q-ROFS’s ideal solution is expressed as:
Step 4: We compute the distance of each alternative from the q-ROFS’s ideal solution with the novel distance measures given in Equations (19) and (20). The result is shown in Table 7 (suppose ). Step 5: In ascending order of distance, the final ranking of alternatives is depicted in Table 8. Table 8 demonstrates that while the ranking outcomes derived from various distance measures may vary, the optimal alternative consistently remains , and the second most desirable choice is . Thus, we conclude that is the most feasible option considering all the proposed q-ROFS distance measures. This demonstrates that our proposed measures can attain consistent outcomes with the established measures when addressing multicriteria decision-making challenges. In other words, the two proposed q-ROFS distance measures are effective for evaluation.
Table 5.
Decision matrix.
Table 5.
Decision matrix.
| | | | | |
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Table 6.
Normalized decision matrix.
Table 6.
Normalized decision matrix.
| | | | | |
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Table 7.
The distance of each alternative from the q-ROFS ideal solution.
Table 7.
The distance of each alternative from the q-ROFS ideal solution.
| | | | | |
---|
| 0.2366 | 0.1302 | 0.3788 | 0.3362 | 0.3886 |
| 0.3429 | 0.2100 | 0.5296 | 0.4711 | 0.5233 |
| 0.3824 | 0.2304 | 0.5494 | 0.5032 | 0.5597 |
| 0.5510 | 0.4658 | 0.7878 | 0.7680 | 0.7696 |
| 0.2768 | 0.1485 | 0.4656 | 0.4260 | 0.4695 |
| 0.2920 | 0.2486 | 0.6159 | 0.5134 | 0.4663 |
| 0.1328 | 0.1166 | 0.2883 | 0.2405 | 0.2136 |
| 0.2933 | 0.1739 | 0.4588 | 0.4075 | 0.4595 |
| 0.2146 | 0.1482 | 0.3464 | 0.3148 | 0.3436 |
| 0.2933 | 0.1739 | 0.4588 | 0.4075 | 0.4595 |
| 0.2776 | 0.1697 | 0.4547 | 0.4020 | 0.4571 |
| 0.2526 | 0.1839 | 0.4062 | 0.3876 | 0.3757 |
| 0.2698 | 0.1854 | 0.4340 | 0.4013 | 0.4009 |
Table 8.
Ranking of the alternatives.
Table 8.
Ranking of the alternatives.
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