1. Introduction
The concept of symmetry holds tremendous significance in science and engineering and is widely observed in nature, fine arts, and various human creative pursuits. Its foundations are rooted in mathematics, while its artistic expression and communication medium can be traced back to early human endeavors. Symmetry can be defined as an object’s property that identifies two or more parts as identical concerning a point, line, or plane. In geometry, symmetry is formally defined as the invariance of a configuration of elements under a group of automorphic transformations [
1,
2,
3]. Recent research has emphasized the versatility of symmetry as a tool for establishing connections across a wide range of disciplines, encompassing mathematics, physics, chemistry, biology, archaeology, geology, and pattern recognition. By integrating the deep theoretical foundations of symmetry and similarity with its practical applications in various domains, this research aims to advance our understanding and utilization of this fundamental concept. This interdisciplinary exploration will contribute to the comprehension of symmetry and its implications for diverse fields, opening the path to novel discoveries and practical advancements.
The fusion of technology and generalized forms of classical sets is instrumental in solving many real-world complex problems, which involve incomplete and uncertain information. A classical set is defined by its characteristic function from a universe of discourse to two point sets {0, 1}. The classical set theory falls short when dealing with intricate issues that encompass vague and uncertain information. To handle the vagueness and impreciseness in complex problems, fuzzy sets (FSs) were created by Zadeh [
4] as a generalization of classical sets. The application of the Fuzzy set theory extends to multiple fields, including control theory, artificial intelligence, pattern recognition, database system, and medical diagnosis. In 1986, Atanassov [
5] created intuitionistic fuzzy sets (IFSs), a superclass of FSs. After the occurrence of the Atanassov [
5] paper, several generalizations of IFSs have appeared in the literature. In 2013, Yager [
6] presented a superclass of IFSs called Pythagorean fuzzy sets (PFSs). PFSs are more extensive than the IFSs and can describe more imprecise and vague information in the decision-making process. In 2017, Yager introduced the q-rung ortho-pair fuzzy sets (q-ROFSs) [
7]. This innovative approach offers a highly effective and powerful tool to manage imprecise and uncertain information across various real-world applications and problems. In 2019, Senapati and Yager [
8] developed and introduced the concept of Fermatean fuzzy sets (FFSs), a specific instance of q-ROFSs when q = 3. Recently, Ibrahim and Alshamari [
9] initiated the study of (m, n)-rung orthopair fuzzy sets ((m, n)-ROFSs) as a superclass of q-ROFSs. They discuss the applications of these fuzzy sets in the context of multi-criteria decision-making methods. This concept is also independently investigated by Jun and hur [
10] and AI-Shami [
11] with the name of (m, n)-fuzzy sets. The (m, n)-ROFSs are more flexible and effective as compared to q-ROFSs in handling the uncertainty and vagueness in MADM and MCDM.
Symmetry plays a fundamental role in shape analysis and object recognition, as it is considered a pre-attentive feature that enhances object recognition and reconstruction. After the invention of fuzzy sets, several authors have proposed methods and algorithms based on fuzzy measures of symmetry and similarity for pattern recognition and classification of fuzzy objects. Helgason and Jobe [
12] investigated fuzzy measures of symmetry breaking, similarity, and comparison within the context of non-statistical information pertaining to a single patient. This research may be relevant to healthcare and medical decision-making. Zainuddin and Pauline [
13] presented an effective fuzzy C-means algorithm based on a symmetry–similarity approach. The algorithm aims to improve the performance of fuzzy C-means clustering in handling symmetric patterns in data. Miranda and Grabisch [
14] created p-symmetric fuzzy measures and explored the properties and applications of these measures in uncertainty, fuzziness, and knowledge-based systems. Saha and Bandyopadhyay [
15] presented a new point symmetry-based fuzzy genetic clustering technique for automatically evolving clusters. This technique combines symmetry principles and genetic algorithms to improve the clustering process. Colliota and Tuzikovb [
16] studied approximate reflectional symmetries of fuzzy objects and their application in model-based object recognition. This research focused on developing fuzzy models to recognize and analyze objects based on their approximate reflectional symmetries and similarities.
The similarity measure is a crucial metric that can evaluate the degree of similarity between two objects, making it an essential tool for distinguishing diverse patterns in practical applications. Adlassnig [
17], Zwick et al. [
18], Pappis and Karacapilidis [
19], Chen et al. [
20], Zeng and Li [
21], Mitchel [
22], and others, have extensively studied the similarity measures between fuzzy sets. Their research explored the potential of fuzzy sets to facilitate the development of corresponding applications in areas such as image processing, medical diagnosis, pattern recognition, and decision-making. Since the emergence of interval type-2 fuzzy sets (IFSs), several similarity measures between IFSs have appeared in this literature [
23,
24,
25,
26,
27,
28,
29,
30,
31,
32,
33,
34,
35,
36]. Some researchers have investigated and studied these similarity measures between IFSs based on cosine functions, including Ye [
37,
38,
39], Shi and Ye [
40], Zhau et al. [
41], and Liu et al. [
42,
43]. Tian [
44] and Rajarajeswari and Uma [
45] proposed similarity measures between IFSs based on cotangent functions and demonstrated their applications in medical diagnoses. Recently, Garg et al. [
46] proposed Choquet integral-based cosine similarity measures for interval-valued IFSs and presented their applications in pattern recognition.
PFS is a powerful tool for depicting vagueness and impreciseness in MADM and MCDM. Recently, many researchers, such as Garg [
47], Zeng, Li, and Yin [
48], Peng, Yuan, and Yang [
49], Husain, and Yang [
50], Wei and Wei [
51], Ejeiwa et al. [
52,
53,
54], and others, presented different similarity measures between PFSs for solving MADM problems. Recently, different similarity measures between FFSs and their applications in MADM and MCDM have appeared in the literature [
55,
56,
57,
58,
59,
60]. q-ROFSs are powerful mathematical tools for handling uncertain, imprecise, and vague information in real-world problems, surpassing PFS and FFS regarding capability. In 2019, Peng and Dai [
61] introduced a similarity measure between q-ROFSs that assessed the quality of classroom teaching. Jan et al. [
62] considered the generalized dice similarity between ROFSs. Farhadinia et al. explored a range of similarity measures for q-ROFSs. Peng and Liu [
63] investigated information measures for q-ROFSs. Liu, Chen, and Peng [
64], as well as Wang et al. [
65], introduced several similarity measures between q-ROFSs based on cosine and cotangent functions and explored their properties and applications.
The existing generalizations of PFSs, FSSs, and q-ROFSs of IFSs exhibit symmetry between the powers of MD and NMD of an attribute within the universe of discourse. In decision-making, it is not flexible in prioritizing different powers of the MD or NMD of an attribute in these extensions of IFSs. The motivations for writing this research are to consider a new class of IFSs, called (m, n)-round orthopair fuzzy sets((m, n)-ROFSs) for creating cosine and cotangent similarity measures, which helps to expand the MD and NMD more than all types of q-ROFSs. Classes with distinct powers enable us to evaluate the input data with different levels of significance for MD and NMD, which is appropriate in MADM problems. This matter does not apply to the other generalizations of IFSs because they give equal significance to MD and NMD viz 1 in IFSs, 2 in PFSs, 3 in FFSs, and q in q-ROFSs. In (m, n)-orthopair fuzzy sets, different power function scales are utilized to widen the scope of the decision-making problems.(m, n)-rung orthopair fuzzy sets can be applied to more diverse scenarios than FFSs, PFSs, and IFSs sets, due to their wider range in depicting membership grades. The main advantage of(m, n)-rung orthopair fuzzy sets is that they can describe more uncertainties than q-ROFSs, which can be applied to many decision-making problems. The (m, n)-ROFSs through double universes are more flexible and efficient than m-ROFS and n-ROFS when discussing the similarity between multiple objects. In other words, (m, n)-ROFSs can more effectively address MADM problems, including all q-ROFS decision-making problems as a special case.
The structure of this article is as follows. Section two presents a review of generalized fuzzy structures along with their cosine and cotangent similarity measures. Section three establishes similarity and weighted similarity measures between (m, n)-ROFSs based on cosine and cotangent functions. Section four compares the newly established similarity measures for (m, n)-ROFSs with existing q-ROFSs, PFSs, and IFSs based on cosine and cotangent functions. The comparison is made by considering pattern recognition, medical diagnosis, and building material problems discussed in the literature. In section five, the established similarity measures are utilized to classify plant leaf disease, and the effectiveness and reasonableness of the proposed measures are demonstrated. Finally, section six concludes the article with some closing remarks.
All the abbreviations and their description used in the paper are presented in
Table 1.
3. Cosine and Cotangent Similarity Measures for (m, n)-ROFSs
The (m, n)-ROFSs described by the degrees of membership and non-membership, for which the sum of the n-th power of the membership degree and the n-th power of the non-membership degree lies between 0 and 1, are more general than the IFSs, PFSs, and q-ROFSs, and can describe more vague and imprecise information. In other words, the (m, n)-ROFSs can deal with the MADM and MCDM problems, which IFSs, PFSs, and q-ROFSs cannot, and it is clear that IFSs, PFSs, and q-ROFSs are the special (m, n)-ROFSs, which indicates that (m, n)-ROFSs can be a more effective and powerful tool to deal with the vagueness and impreciseness involved in MADM and MCDM problems. In this section, we shall propose the(m, n)-rung ortho-pair fuzzy cosine similarity measures and (m, n)-rung orthopair fuzzy cotangent similarity measures under the (m, n)-ROFSs environment, which are new extensions of the similarity measures of IFSs, PFSs, and q-ROFSs.
3.1. Cosine Similarity Measures for (m, n)-ROFSs
This section introduces a cosine similarity measure and a weighted cosine similarity measure using (m, n)-ROFSs information in a manner analogous to the cosine similarity measure and weighted cosine similarity measure for IFSs, PFSs, and q-ROFSs.
Definition 6. Let be a fixed set. Assume that = and = are two (m, n)-ROFSs of , then the (m, n)-ROFSs cosine measure between and is defined as follows:
Remark 5. The cosine measures (resp., , ) for IFSs (resp., PFSs, q-ROFSs) are special cases of cosine similarity measures of of (m, n)-ROFSs for m = n = 1 (resp., m = n = 2, m = n = q).
Proposition 3. Let and , then the cosine similarity measure of satisfies the following conditions:
- (i)
.
- (ii)
.
- (iii)
Proof. - (i)
It is true because of the cosine values within the closed interval [0,1].
- (ii)
It follows, noting that:
- (iii)
If
, then
and
for
j = 1, 2, ⋯, n. Thus, from Equation (
1), we have the following:
= 1
□
Proposition 4. Let and . The distance measure of angle is defined as follows:meeting the specified conditions: - (i)
d() ≤ 1.
- (ii)
= 0.
- (iii)
.
- (iv)
if for any .
Proof. Proof of conditions (i), (ii), and (iii) follows from Proposition 3.
- (iv)
Suppose that
for any (m, n)-ROFS
over
. Since Equation (
1) is a sum of terms, it is appropriate to examine the distance measures based on the angle between the vectors:
,
,
,
, where,
For three vectors,
,
,
,
in one plane, if the
,
, r, then by the triangle inequality, we have the following:
. Combining the inequality with Equation (
1), we can obtain
. Hence, the distance measure of angle d(
) satisfies the property (iv). □
Now, we define the (m, n)-ROFS cosine measure by considering three terms, i.e., MD, NMD, and IMD of (m, n)-ROFSs.
Definition 7. Let = , and = be two (m, n)-ROFSs in , then the (m, n)-rung orthopair fuzzy cosine measure () between and can be expressed as follows:
= Proposition 5. Consider two (m, n)-ROFSs, denoted by and , defined over , the cosine similarity measure satisfies the following conditions:
- (i)
.
- (ii)
.
- (iii)
= 1.
Remark 6. The cosine measures (resp., , ) for IFSs (resp., PFSs, q-ROFSs) are special cases of cosine similarity measures of (m, n)-ROFSs for m = n = 1 (resp., m = n = 2, m = n = q).
Now, we define the (m, n)-ROFS-weighted cosine measures between two (m, n)-ROFSs, and , by considering the weighting vector of the elements in (m, n)-ROFSs.
Definition 8. Let be a fixed set and . Assume = is the weighting vector of the elements (j = 1, 2, ⋯, r), satisfying the condition , ∀∈ [0, 1] and j = 1, 2, ⋯, r. Then, the (m, n)-rung orthopair fuzzy-weighted cosine measures, i.e., and , between and , can be expressed as follows:
= = When we take the weighting vector = , then the weighted cosine similarity measures , and will reduce to cosine similarity measures and , respectively.
Remark 7. The weighted cosine similarity measures (resp., , ) for IFSs (resp., PFSs, q-ROFSs) are special cases of the weighted cosine similarity measures (k = 1, 2) of (m, n)-ROFSs for m = n = 1 (resp., m = n = 2, m = n = q).
Example 1. Let andbe two (m, n)-ROFSs over . Assuming m = 4, n = 3, and is a weighting vector of the elements , then, = 0.8150 and = 0.8610. Proposition 6. Let and be two (m, n)-ROFSs over a fixed set . Assuming = is the weighting vector of the elements (j = 1, 2, ⋯, r), satisfying the conditions , ∀∈ [0, 1] and j = 1, 2, ⋯, r, then the weighted cosine similarity measures (k = 1, 2) meet the following conditions:
- (a)
.
- (b)
.
- (c)
= 1.
3.2. Similarity Measures of (m, n)-ROFSs Based on the Cosine Function
This section introduces several (m, n)-ROFS cosine similarity measures between (m, n)-ROFSs, which are based on the cosine function, and examines their properties.
Definition 9. Let andbe two (m, n)-ROFSs over , then two (m, n)-ROFS cosine similarity measures (k = 1, 2) between and can be expressed as follows: = = Proposition 7. Let and , then the (m, n)-rung orthopair fuzzy cosine similarity measures (k = 1, 2) meet the following properties:
- (a)
.
- (b)
.
- (c)
.
- (d)
If , . Then, and .
Proof. - (a)
The values of cosine functions lie between 0 and 1, which makes it evident.
- (b)
If for any two (m, n)-ROFSs and in , then for each j = 1, 2, ⋯, r, and . It implies that || = 0 and || = 0. Hence, = 1 for k = 1, 2. Suppose that = 1, k = 1, 2, then | | = 0 and || = 0, for all j= 1, 2, ⋯, r. Since cos(0) = 1, there are , (j = 1, 2, ⋯, r). Hence, .
- (c)
Obvious.
- (d)
If , ∀j = 1, 2, ⋯, r, then and , j = 1, 2, ⋯, r. It follows that and . Thus, we obtain the following:
||≤||,
||≤||,
||≤||,
||≤||.
□
The cosine function is a decreasing function with the interval [0, ]; therefore, we obtain that , for k = 1, 2.
Next, we introduce (m, n)-rung orthopair fuzzy cosine measures based on the cosine function. These measures are obtained by considering MD, NMD, and IMD for two (m, n)-ROFSs, i.e., and of .
Definition 10. Let andbe the two (m, n)-ROFSs over , then two (m, n)-ROFS cosine similarity measures, i.e., (k = 3, 4) between and , by considering MD, NMD, and IMD, can be expressed as follows: = = Remark 8. The cosine measures (resp., , ) for IFSs (resp., PFSs, q-ROFSs) are special cases of cosine measures (k = 1, 2, 3, 4) of (m, n)-ROFSs for m = n = 1 (resp., m = n = 2, m = n = q).
We will now introduce the (m, n)-ROFS weighted cosine measures between two (m, n)-ROFSs, which are based on cosine functions and , by taking into account the weighting vector associated with the elements in (m, n)-ROFSs.
Definition 11. Let = and = be two (m, n)-ROFSs in and let ω = be the weighting vector of the elements (j = 1, 2, ⋯, r) that satisfies the condition , ∀∈ [0, 1] and j = 1, 2, ⋯, r. The (m, n)-ROFS weighted cosine measures , (k = 1, 2, 3, 4) between and on the bases of cosine functions can be presented as follows:
= = () = = When the weighting vector , , then for k = 1, 2, 3, 4, we have (m, n)-ROFWCS = (m, n)-ROFCS.
Remark 9. The weighted cosine similarity measures (resp., , ) for IFSs (resp., PFSs, q-ROFSs) are special cases of weighted cosine measures (k = 1, 2, 3, 4) of (m, n)-ROFSs for m = n = 1 (resp., m = n = 2, m = n = q).
Example 2. Let andbe two (m, n)-ROFSs over . Assuming m = 4, n = 6 and are the weights for the elements , then: Proposition 8. Assuming that there are any two (m, n)-ROFSs, and in , the (m, n)-ROFS weighted cosine similarity measures (m, n)- ()(k = 1, 2, 3, 4) should satisfy properties (a)–(b):
- (a)
.
- (b)
.
- (c)
.
- (d)
If , . Then (m, n)-ROFWCS≤(m, n)-ROFWCS, (m, n)-ROFWCS≤ (m, n)-ROFWCS.
3.3. Cotangent-Based Similarity Measures for (m, n)-ROFSs
Definition 12. Let and
= ,
Let = be two (m, n)-ROFSs; the (m, n)-ROFS cotangent measures and between and are defined as follows:
= = We will now incorporate MD, NMD, and IMD, all of which are components of (m, n)-ROFSs, to define two additional cotangent similarity measures between two (m, n)-ROFSs.
Definition 13. Let andbe two (m, n)-ROFSs in , then the (m, n)-ROFSs cotangent similarity measures and between and can be expressed as follows: = () = Remark 10. The cotangent measures (resp., , ) for IFSs (resp., PFSs, q-ROFSs) are special cases of cotangent measures (k = 1, 2, 3, 4) of (m, n)-ROFSs for m = n = 1 (resp., m = n = 2, m = n = q).
We will now introduce the (m, n)-ROFS weighted cotangent measures between two (m, n)-ROFSs, and , by taking into account the weighting vector associated with the elements in (m, n)-ROFSs.
Definition 14. Let be a fixed set and = , = be two (m, n)-ROFSs in . Assume that ω = is the weighting vector of the elements (j = 1, 2, ⋯, r) that satisfies the condition , ∀∈ [0,1] and j = 1, 2, ⋯, r.
The (m, n)-ROFS weighted cotangent measures (k = 1, 2, 3, 4) between and are expressed as follows:
= = = = When we let the weighting vector = , then coincides with , for k = 1, 2, 3, 4.
Example 3. Let andbe two (m, n)-ROFSs over . Assuming that m = 5, n = 7 and = 0.25, = 0.35 and =0.40 are the weights for the elements , then Remark 11. The weighted cotangent similarity measures (resp., , for IFSs (resp., PFSs, q-ROFSs) are special cases of weighted cotangent measures (k = 1, 2, 3, 4) of (m, n)-ROFSs for m = n = 1 (resp., m = n = 2, m = n = q).
4. Comparisons of Existing Similarity Measures and Proposed Similarity Measures
The following section presents a comparison between the cosine and cotangent similarity measures for q-ROFSs and the newly introduced cosine and cotangent similarity measures for (m, n)-ROFSs. The evaluation is based on the example of the building material classification by Wang et al. [
65].
Example 4 ([
65]).
Let us consider a scenario where there are five known building construction materials, represented by q-ROFSs (i = 1, 2, 3, 4, 5), in the feature space , as shown in Table 4. We also have an unknown building material that needs to be classified into one of the following classes: , , , , . Assuming that the weights w = (0.15, 0.20, 0.25, 0.10, 0.30), we aim to determine the degree of similarity between and . According to the findings presented in
Table 5, the degree of weighted similarity between
and
is the highest among all ten weighted similarity measures from
Table 3 for most building materials, except for
and
. As a result, based on the principle of maximum weighted q-ROFWS similarity, the unknown building material
can be classified as similar to the known building material
using these ten similarity measures.
Table 6 shows the results obtained by the proposed weighted similarity measures
for
and
. Based on these results, it is evident in
Table 6 that all ten similarity measures allocate unknown building material
to building material
, with the degree of weighted similarity between
and
being the largest. This result suggests that the proposed weighted
method accurately allocates unknown building materials to known building materials.
By comparing the results presented in
Table 5 and
Table 6, it is clear that the proposed weighted
method is more accurate than the method proposed by Wang et al. [
65] for assigning unknown building materials to the consistent class (
,
). Therefore, our results are more reliable and accurate.
Figure 1 shows that for the weighted q-ROFWS values of all building materials, except for
and
, the degree of weighted similarity between (
,
) is the largest among the ten weighted similarity measures, and the proposed weighted (m, n)-ROFWSs for
show that
has the most significant and consistent value. This result indicates that the unknown pattern
is the most similar to
.
5. Applications of Proposed Similarity Measures in the Classification of Plant Leaf Disease
Plants are integral components of our ecosystem that provide us with vital resources such as oxygen and food. However, these crucial organisms are vulnerable to diseases that can significantly impact their growth and survival. One of the most prevalent problems plants face is leaf disease, which can considerably reduce crop yield and quality, significantly affecting farmers’ livelihoods and the economy. This section aims to explore the issue of plant leaf disease and the measures that can be taken to prevent and manage it.
Several factors, such as bacteria, fungi, viruses, and other pathogens, can cause plant leaf diseases. Common types of leaf diseases include powdery mildew, downy mildew, leaf spot, and rust. These diseases can affect various parts of plants, including leaves, stems, and fruits, leading to discoloration, distortion, and wilting. The leaves may fall off in severe cases, leading to stunted growth and reduced yield. Several factors can facilitate the spread of plant leaf diseases, such as high humidity, poor air circulation, and contaminated soil or water. Additionally, using infected planting materials and inadequate crop management practices can contribute to the spreading of these diseases.
Plant leaf diseases pose significant problems that can adversely affect crop yield and quality, ultimately impacting farmers’ livelihoods and the economy. Preventing and managing these diseases require a combination of preventive and curative measures, including disease-resistant plant varieties, good agricultural practices, and judicious chemical treatments. By taking these measures, we can ensure that our plants remain healthy and continue to provide us with the essential resources that we need for our survival.
Tomato plants are susceptible to various leaf diseases that can negatively impact their growth and yield. These diseases can be prevented by planting disease-resistant tomato varieties, keeping the soil well-drained, and avoiding overhead watering. Additionally, it is essential to remove any infected plant parts and keep the garden clean to prevent the spread of disease.
In the following illustrative example, we proposed a method to classify the plant leaf disease using the proposed cosine and cotangent similarity and weighted similarity measures for the study of the leaf disease classification that we generated
Table 7 after carefully studying the dataset (the plant village dataset) [
66] containing the different diseases and their symptoms.
Example 5. Let us consider a set of five symptoms , where = dark brown leaf, = brown leaf, = yellow leaf, = patches, = spots and five diagnoses , which are presented by (m, n)-ROFSs, (Gray leaf spot), (Bacterial Canker), (Bacterial Speck), (Bacterial Spot), and (Early Blight), defined in Table 7; let us also consider a sample pattern that will be recognized. For the given plant leaf disease example, the proposed cosine and cotangent similarity measures for
for the values m = 5, n = 7, and m = 6, n = 10, and m = 10, n = 100, and m = 100, n = 10 are shown in
Table 8,
Table 9,
Table 10 and
Table 11. The results show consistent and accurate results, indicating that all ten proposed similarity measures show
as having the largest value, suggesting that sample
is the most similar to
.
For the given plant leaf disease example, the cosine and cotangent similarity measures
for the values
and
are shown in
Table 12 and
Table 13. The similarity measures for
and
, respectively, show inconsistent results, indicating that the six
similarity measures of
Table 2, given by Wang et al. [
65], failed to classify.
If we consider the weights of
, the proposed weighted cosine and cotangent similarity measures for (m, n)-ROFWSs with values of m = 5, n = 7, m = 6, n = 10, m = 10, n = 100, and m = 100, n = 10 are presented in
Table 14,
Table 15,
Table 16 and
Table 17, respectively. The accurate and consistent results indicate that all ten proposed weighted similarity measures show
as having the largest value, suggesting that the sample
is the most similar to
.
The
weighted similarity measures in
Table 3, given by Wang et al. [
65], for the values q = 100 and q = 50 with same weighted values, and the results presented in
Table 18 and
Table 19, shows that six weighted similarity measures failed to classify.
7. Conclusions
This research article demonstrates the effectiveness of (m, n)-ROFS, a generalized fuzzy structure, in addressing uncertainty and imprecision in decision-making problems. The (m, n)-ROFS framework surpasses other fuzzy structures, such as IFS, PFS, FFS, and q-ROFS (for q > 3), by accommodating a wider range of information. Our study introduces cosine, cotangent, and weighted similarity measures specifically designed for (m, n)-ROFSs, including measures for q-ROFSs information in special cases. We applied these similarity measures to evaluate their performances in building material problems. We compared the q-ROFSs cosine and cotangent measures with the existing ones. We also presented a numerical example to demonstrate the practical applications of these similarity measures in plant leaf disease classification.
The findings of our study indicate that the defined similarity measures are more suitable and applicable to real-world problems than existing measures. This research significantly contributes to decision-making under uncertainty and imprecision, providing improved tools for measuring similarity within the (m, n)-ROFSs framework. These findings have broad implications in domains such as medicine, pattern recognition, and material engineering, where robust decision-making techniques are essential. Future research can build upon this work by further exploring and expanding the (m, n)-ROFS framework and its similarity measures to address complex decision-making problems in diverse applications, by continually advancing the (m, n)-ROFS methodology, we can foster the innovation and improve the decision-making processes in various domains.