1. Introduction
Fuzzy set theory and the related fuzzy logic were proposed by Zadeh [
1] for dealing with and solving various problems in which variables, parameters, and relations are only imprecisely known, and hence, for which approximate reasoning schemes should be used. Such a situation is common in the case of virtually all nontrivial and, in particular, human-centered phenomena, processes, and systems that prevail in reality, and it is difficult to use conventional mathematics, based on binary logic, for their adequate characterization. Fuzzy set theory has been developed in many directions and has evoked great interest among mathematicians and computer scientists working in different fields of mathematics. Rosenfeld [
2] used the concept of a fuzzy subset of a set to introduce the notion of a fuzzy subgroup of a group. Rosenfeld’s paper spearheaded the development of fuzzy abstract algebra. Zadeh [
3] introduced the notion of interval-valued fuzzy sets as an extension of fuzzy sets, in which the values of the membership degrees are intervals of numbers instead of the numbers themselves. Interval-valued fuzzy sets provide a more adequate description of uncertainty than traditional fuzzy sets. It is therefore important to use interval-valued fuzzy sets in applications such as fuzzy control. One of the most computationally intensive parts of fuzzy control is defuzzification [
4]. Since interval-valued fuzzy sets are widely studied and used, we briefly describe the work of Gorzalczany on approximate reasoning [
5,
6] and Roy and Biswas on medical diagnosis [
7]. The notion of vague set theory, a generalization of Zadeh’s fuzzy set theory, was introduced by Gau and Buehrer [
8] in 1993.
A graph is a very general and powerful formal and algorithmic tool for representation modeling, analyses, and solutions of a multitude of complex real-world problems. An immediate result of the popularity of fuzzy set theory was graph theory fuzzification, which was instigated by Rosenfeld [
9], who proposed the concept of FG and many related concepts and properties, such as paths, cycles, and connectedness. Basically, an FG is a weighted graph in which the weights are in the range of
and are defined over a fuzzy set of vertices. FG models are expedient mathematical tools for dealing with different domains of combinatorial problems in algebra, topology, optimization, the computer sciences, and the social sciences. FG models outperform graph models due to the natural existence of vagueness and ambiguity. Gau and Buehrer [
8] described VS theory by providing a definition of the notion of VS by changing an element value in a set with a [0;1] subinterval. A VS is highly effective for explaining the existence of the false membership degree. Furthermore, Kauffmann [
10] introduced FGs based on Zadeh’s fuzzy relation [
3], and Gupta et al. [
11] used fuzzy set theory in medical sciences. Moreover, Akram et al. [
12,
13,
14,
15,
16,
17,
18,
19,
20,
21] developed several concepts and results on vague graphs, and Mordeson et al. [
22,
23,
24] studied some results in FGs. Pal et al. [
25,
26,
27] represented the fuzzy competition graph and presented some remarks on bipolar fuzzy graphs, and Borzooei et al. [
28,
29,
30,
31,
32] analyzed several concepts of VGs. In addition, Shao et al. [
33] defined new results in FGs and intuitionistic fuzzy graphs, Szmidt and Kacprzyk [
34] described intuitionistic fuzzy sets in some medical applications, Davvaz and Hassani Sadrabadi [
35] studied an application of an intuitionistic fuzzy set in medicine, Dutta et al. [
36] introduced fuzzy decision making in medical diagnosis using an advanced distance measure on intuitionistic fuzzy sets, and, finally, Ramakrishna [
37] proposed the concepts of VG and examined the properties. Kosari et al. [
38] defined vague graph structure and studied its properties.
A PVG is referred to as a generalized structure of an FG that delivers more exactness, adaptability, and compatibility to a system when matched with systems running on FGs. Furthermore, a PVG is able to concentrate on determining the uncertainty coupled with the inconsistent and indeterminate information of any real-world problems, whereas FGs may not lead to adequate results.
Domination in PVGs theory is one of the most widely used concepts in various sciences, including psychology, computer science, nervous systems, artificial intelligence, decision-making theory, and various combinations. Many authors today are trying to find other uses for domination in their fields of interest. The dominance of FGs has been stated by various researchers, but, as a result of PVGs being broader and more widely used than FGs, today, it is used in many branches of engineering and medical sciences. Similarly, it has many applications for the formulation and solution of a multitude of problems in various areas of science and technology, such as computer networks, artificial intelligence, combinatorial analyses, etc. Therefore, considering its importance, we attempted to study different types of domination of PVGs and examine their properties by giving examples. Furthermore, we present an application of domination in PVGs in the field of medicine. Ore [
39] pioneered the application of the expression “domination” for undirected graphs. Somasundaram [
40] defined domination and independent domination in FGs. Shubatah et al. [
41] studied edge domination in intuitionistic fuzzy graphs. Mahioub and Shubatah [
42,
43] investigated domination in product fuzzy graphs. Gani and Chandrasekaran [
44,
45] introduced notions of fuzzy DS and independent DS utilizing strong arcs. The domination concept in intuitionistic fuzzy graphs was examined by Parvathi and Thamizhendhi [
46]. Manjusha and Sunitha [
47,
48] studied coverings, matchings, and paired domination in fuzzy graphs using strong arcs. Gang et al. [
49] investigated total efficient domination in fuzzy graphs. Karunambigai et al. [
50] introduced domination in bipolar fuzzy graphs. Cockayne [
51] and Hedetniemi [
52] described the independent and irredundance domination number in graphs.
Domination in PVGs is so important that it can play a vital role in decision-making theory, which concerns finding the best possible state in a test or experiment. Although some DSs in FGs have been proposed by a number of authors, the breadth of the subject and its various applications in engineering and medicine, and the limitations of past definitions, prompted us to introduce new types of DSs on the PVG. In fact, the limitations of the old definitions in FGs forced us to come up with new definitions in PVGs. Hence, in this study, we represent different kinds of DSs, such as EDS, TEDS, GDS, and RDS, in PVGs and also try to described the properties of each by giving some examples. The relationship between IESs and ECSs are established. A comparative study between “EDS and Minimal-EDS”, and “IES and Maximal-IES” was conducted. Some remarkable properties associated with these new DSs were investigated, and the necessary and sufficient condition for a DS to be a GDS was stated. Finally, we defined RIS and RDS and examined the relationships between them in a theorem. Today, many cancer patients pass away due to the lack of the necessary medical equipment in their country. Therefore, it is indispensable to identify the countries that have the necessary conditions to treat such patients. Hence, in this paper, with the help of DS, we attempt to identify countries that are in a more favorable position in terms of medical facilities, so that we can transfer the patients to a suitable hospital in these countries, which are better suited in terms of both cost and distance.
2. Preliminaries
In the following, some basic concepts on VGs are reviewed in order to facilitate the next section.
A graph is a mathematical structure containing of a set of nodes V and a set of edges E, so that every edge is an unordered pair of distinct nodes. An FG has the form of , where and is defined as , , and is a symmetric fuzzy relation on , and ∧ denotes the minimum.
Definition 1. ([
8])
A VS A is a pair on set V, where and are used as real-valued functions, which can be defined on , so that , . is a crisp graph and a VG throughout this paper.
Definition 2. ([
37])
A pair is called a VG on a crisp graph , so that is a VS on V and is a VS on , so that and , . Example 1. Consider a VG ζ as in Figure 1, such that , . By routine computations, it is easy to show that ζ is a VG.
Definition 3. ([
17])
Let be a VG. The cardinality of ζ is defined as: The vertex cardinality of ζ is defined as , , is called the order of a VG ζ, and is denoted by ;
The edge cardinality of ζ is defined as , , is called the size of a VG ζ, and is denoted by .
Example 2. In Example 1, it is easy to show that Definition 4. ([
46])
Let be a VG. If , then the t-strength of connectedness between and is defined as and the f-strength of connectedness between and is defined as . Furthermore, we have and Example 3. In Example 1, the t-strength of connectedness and the f-strength of connectedness for edge are as follows: Definition 5. ([
46])
An edge in a VG is called the strong edge if and . Example 4. Clearly, and are strong edges.
Definition 6. ([
46])
The two vertices and are said to be neighbors in a VG ζ if either one of the following conditions holds:- (i)
;
- (ii)
;
- (iii)
.
The two vertices and are said to be strong neighbors if and .
Definition 7. ([
18])
A VG is called complete if and , .VG ζ is called strong if and , .
Definition 8. ([
29])
Let be a VG. Suppose that , we say that m dominates n in ζ if there exists a strong edge between them. A subset S of V is called a DS in if for each , ∃, so that m dominated n. A DS S of a VG is referred to as a minimal DS if no proper subset of S is a DS.
Example 5. It is easy to show that and are DSs.
Definition 9. ([
18])
The complement of a VG is a pair , where and are defined as Definition 10. ([
32])
Let be a VG. If and , , then the VG ζ is called PVG. Note that a PVG ζ is not necessarily a VG. A PVG ζ is called a complete PVG if and , . The complement of PVG is , where, and , so that and .
Example 6. Obviously, ζ is a PVG since it has the condition of Definition 10.
Definition 11. ([
43])
An edge in a PVG ζ is called an effective edge if and . Example 7. In Example 6, is an effective edge. Definition 12. ([
43])
If ζ be a PVG, then the vertex cardinality of is defined as Definition 13. ([
43])
Let be a PVG, then the edge cardinality of is defined as Definition 14. ([
43])
Two edges and in a PVG ζ are said to be adjacent if they are neighbors. Furthermore, they are independent if they are not adjacent. Definition 15. ([
29])
Let be a PVG. A vertex subset S of is called a DS of ζ if for every node , ∃ a node , so that Example 8. It is easy to show that is a DS.
Definition 16. ([
43])
Let be a PVG. Then, the degree of a node m is defined as , where and , for .A PVG ζ is said to be a -regular if , .
Definition 17. ([
43])
Two nodes in a PVG ζ are said to be independent if there is no strong arc between them. A subset S of V is said to be an independent set if every two nodes of S are independent. All the basic notations are shown in
Table 1.
3. Edge Domination in PVGs
Definition 18. An edge subset K of E in a PVG ζ is said to be independent (IES) if and , . The maximum cardinality among all maximal IES in ζ is called the EIN and it is denoted by or simply .
Example 10. Here, , , , and are IESs of ζ and .
Definition 19. An edge and a vertex z in a PVG ζ are said to cover each other if they are incident.
Definition 20. An edge subset K of E in a PVG ζ, which covers all nodes in ζ, is called an ECS of ζ. The minimum cardinality among all ECS is called the ECN of ζ and it is denoted by or simply .
Example 11. Here, and are ECSs and .
Theorem 1. An edge subset in a PVG ζ is an independent set in ζ if is an ECS of ζ.
Proof. By definition, K is an independent set if and only if no two edges of K are adjacent, if and only if every edge of K is incident with at least one vertex of , and if and only if is an ECS of . □
Example 12. Consider the PVG ζ as in Figure 7. It is easy to show that is an independent set and is an ECS. Definition 21. An edge e of a PVG ζ is said to be an isolated edge if no effective edges are incident with the vertices of e. Hence, an isolated edge does not dominate any other edge in ζ.
Example 13. In Example 11, it is easy to show that the edges and are isolated edges.
Definition 22. Let e be any edge in a PVG ζ.
Then, and is called the open edge neighborhood set of e. is called the closed neighborhood set of e.
Definition 23. Let e be any edge in a PVG ζ. Then, is called the edge neighborhood degree of e. The minimum edge neighborhood degree of a PVG ζ is . The maximum edge neighborhood degree of a PVG ζ is .
Example 14. It is clear that and .
Theorem 2. For any PVG without isolated edges, .
Proof. Let
K be an EIS in
and
S be an ECS in
so that
and
. Then, by Theorem 1,
is an ECS of
. Therefore,
and
or
Furthermore, by Theorem 1,
is an EIS in
, so
. Therefore,
or
From (
1) and (
2), we obtain
. □
Example 15. Therefore, Theorem 2 holds.
Definition 24. Let be a PVG and and be two adjacent edges of ζ. We say that dominates if is an effective edge. An edge subset K of E in a PVG ζ is called an EDS if, for each edge , ∃ an effective edge so that dominates . An EDS K of a PVG ζ is said to be a minimal EDS if for each edge , is not an EDS. The minimum cardinality between all minimal EDSs is called an EDN of ζ and is described by or simply . An EDS K of a PVG ζ is said to be independent if and , .
Example 16. In this example, , , , and are EDSs and .
Theorem 3. An EDS K in PVG ζ is a minimal EDS if and only if for each edge , one of the following two conditions holds:
- (i)
;
- (ii)
∃ an edge so that and e is an effective edge.
Proof. Let K be a minimal EDS and . Then, is not an EDS and hence ∃, so that t is not dominated by any element of . If , we obtain and if , we obtain . Conversely, assume that K is an EDS, and for each edge , one of the two conditions holds.
Suppose K is not a minimal EDS, then ∃ an edge , and is an EDS. Therefore, e is a strong neighbor to at least one edge in , and the first condition does not hold. If is an EDS, then each edge in is a strong neighbor to at least one edge in , and the second condition does not hold, which contradicts our assumption that at least one of these conditions holds. Hence, K is a minimal EDS. □
Theorem 4. Let be any PVG without isolated edges. Then, for each minimal EDS K, is also an EDS.
Proof. Let e be any edge in K. Since has no isolated edges, there is an edge . It follows from Theorem 3 that . Hence, each element of K is dominated by some element of . Thus, is an EDS in . □
Example 17. In Example 16, is a minimal EDS and is also an EDS.
Theorem 5. For any PVG without isolated nodes, .
Proof. Any PVG without isolated nodes has two disjoint EDSs and hence the result follows. □
Example 18. Consider the PVG ζ as in Figure 9. Clearly, , and we have . Theorem 6. An IES K of a PVG ζ is a maximal IES if and only if it is an IES and EDS.
Proof. Let K be a maximal IES in a PVG and, hence, for each edge , the set is not independent. For each edge , ∃ an effective edge so that t dominates e. Hence, K is an EDS. Therefore, K is both an EDS and IES. Conversely, assume K is both independent and an EDS. Suppose that K is not a maximal IES, then ∃ an edge , and the set is independent. If is independent, then no effective edge in K is strong neighbor to e. Therefore, K cannot be an EDS, which is a contradiction. Thus, is a maximal IES. □
Example 19. In Figure 10, is a minimal IES that is both an IES and EDS. Theorem 7. Every maximal IES K in a PVG ζ is a minimal EDS.
Proof. Let K be a maximal IES in a PVG . By Theorem 6, K is an EDS. Assume K is not a minimal EDS, ∃ at least one edge for which is an EDS. However, if dominates , then at least one edge in must be strong neighbor to e. This contradicts the fact that K is an IES in . Hence, K must be a minimal EDS. □
Definition 25. Let be a PVG without isolated edges. An edge subset K of E is said to be TEDS if for each edge , ∃ an edge , , so that t dominates e.
Definition 26. The minimum cardinality among all TEDSs is called the TEDN of ζ and is denoted by .
Example 20. Here, , , , , , , , , and are TEDSs of ζ and .
Definition 27. A DS K of a PVG ζ is called GDS if K is also a DS of . The minimum cardinality among all GDSs is named GDN and is denoted by .
Example 21. From Figure 12, it is obvious that and are GDSs. The GDN of ζ is . Theorem 8. The GDS K in a PVG ζ is not a singleton.
Proof. The GDS K is a DS for both and and both of them are nonempty sets. Hence, K is not a singleton. □
Example 22. Consider the PVG ζ as in Figure 12. It is obvious that and are GDSs, which are also DSs in ζ, and neither are singletons. Theorem 9. A DS K is a GDS if and only if for every node , ∃ a node so that m and n are not dominating each other.
Proof. Let be a PVG with a GDS K. Assume that m in K is dominating n in , then K is not a DS, which contradicts the statement that K is a DS of . Conversely, let for every , , so that m and n are not dominating each other, then K is a DS in both and , which gives that K is a GDS of and so is the result. □
Definition 28. Let be a PVG. A subset is called RDS if
- (i)
each node in is neighbor to some nodes in K;
- (ii)
all the nodes in K have the same degrees.
Example 23. Consider the PVG ζ as in Figure 13. Here, and are RDSs. Note that . Definition 29. An independent set K of a PVG ζ is named an RIS if all the nodes of K have the same degrees. K is a maximal RIS if , and the set is not an RIS.
Example 24. .
Theorem 10. An RIS is a maximal RIS of a PVG ζ if and only if it is an RIS and RDS.
Proof. Let K be a maximal RIS in a PVG , then for each , the set is not an independent set, i.e., , ∃ a node so that m is neighbor to n. Therefore, K is a DS of and also an RIS of . Therefore, K is an RIS and RDS.
Conversely, assume that K is both an RIS and RDS of . We have to prove that K is a maximal RIS. Suppose that K is not a maximal independent set. Then, ∃ a node so that is an independent set, there is no node in K neighbor to m, and hence, m is not dominated by K. Thus, K cannot be a DS of , which is a contradiction. Therefore, K is a maximal RIS. □
Example 25. In Figure 14, is a maximal RIS that is both RIS and RDS. 5. Conclusions
A vague model is suitable for modeling problems with uncertainty, indeterminacy, and inconsistent information in which human knowledge is necessary and human evaluation is required. Vague models give more precision, flexibility, and compatibility to the system as compared to classical, fuzzy, and intuitionistic fuzzy models. A vague graph can describe the uncertainty of all kinds of networks well. The VG concept has a wide variety of applications in different areas, such as computer sciences, operation research, topology, and natural networks. Moreover, the term domination has a wide range of applications in graph theory for the analysis of vague information. Domination in FGs theory is one of the most widely used topics in various sciences, including psychology, computer science, nervous systems, artificial intelligence, etc. Hence, in this research, we describe different kinds of DSs, such as EDS, TEDS, GDS, and RDS, in PVGs. Furthermore, we present the properties of each by giving various examples, and the relationship between IESs and ECSs are established. Moreover, we derived the necessary and sufficient condition in which an edge dominating set to be minimal. We also show when a dominance set can be a global dominance set. Finally, we introduce an application of domination in the field of medical science. In future work, we will introduce a vague competition graph and study new types of domination, such as regular perfect DS, inverse perfect DS, equitable DS, and independent DS on vague competition graphs.