Abstract
Pythagorean fuzzy sets (briefly, PFSs) were created as an upgrade to intuitionistic fuzzy sets (briefly, IFSs) which helped to address some problems that IFSs couldn’t solve. The definition of q-rung orthopair fuzzy sets (briefly, q-ROFS) is then declared to generalize and solve PFS and IFS failures. Using the concept of PF \(\beta \)-neighborhood, Zhan et al. defined the description of the covering through the Pythagorean fuzzy rough set (briefly, CPFRS). Hussain et al. also developed the concept of q-ROF \(\beta \)-neighborhood to build the concept of covering through q-rung orthopair fuzzy rough sets (Cq-ROFRS). To enhance the results in Zhan et al.’s and Hussain et al.’s method and in a related context, the concept of PF complementary \(\beta \)-neighborhood is constructed. Hence, using PF \(\beta \)-neighborhood and PF complementary \(\beta \)-neighborhood, three novel kinds of CPFRS are investigated and the related characteristics are analyzed. The interrelationships between Zhan et al.’s approach and our approaches are also discussed. Besides, the concept of q-ROF complementary \(\beta \)-neighborhood is examined. Three new Cq-ROFRS models are differentiated using the principles of q-ROF \(\beta \)-neighborhood and q-ROF complementary \(\beta \)-neighborhood. As a result, the related properties and relationships between these various models and Hussain et al.’s model are established. Because of these correlations, we may consider our approach to be a generalization of Zhan et al.’s and Hussain et al’s approaches. Finally, we developed applications to solve MADM problems using CPFRS and Cq-ROFRS, as well as variances of the two methods using numerical examples are presented.
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Abbreviation
- RS:
-
Rough set
- FS:
-
Fuzzy set
- CRS:
-
Covering based rough set
- FRS:
-
Fuzzy rough set
- RFS:
-
Rough fuzzy set
- CFRS:
-
Covering based fuzzy rough set
- IFSs:
-
Intuitionistic fuzzy sets
- CIFRS:
-
Covering based intuitionistic fuzzy rough set
- PFSs:
-
Pythagorean fuzzy sets
- CPFRS:
-
Covering based pythagorean fuzzy rough set
- PF\(\beta \) CAS \((\varLambda ,\widetilde{\varUpsilon })\):
-
Pythagorean fuzzy \(\beta \)-covering approximation space \((\varLambda ,\widetilde{\varUpsilon })\)
- PFN:
-
Pythagorean fuzzy number
- q-ROFS:
-
q-Rung orthopair fuzzy sets
- Cq-ROFRS:
-
Covering based q-Rung orthopair fuzzy rough sets
- q-ROF\(\beta \)CAS \((\varTheta ,\widetilde{\Re })\):
-
q-ROF \(\beta \)-covering approximation space \((\varTheta ,\widetilde{\Re })\)
- q-ROFN:
-
q-ROF number
- MADM:
-
Multi-attribute decision making
- MCDM:
-
Multi-criteria decision making
- MAPFDM:
-
Multi-attribute pythagorean fuzzy decision making
- MAq-ROFDM:
-
Multi-attribute q-ROF decision making
Introduction
Rough set (RS) theory was established for adapting the ambiguity and granularity in data via Pawlak [1, 2]. It is also utilized in various areas such as neighborhood systems, graphs, kernel, reduction, granulation, probabilistic rough set, variable precision and so on [3,4,5,6,7,8,9,10,11,12,13]. The most important generalization of this theory is covering via rough set (CRS). Many researchers worked on CRS as Pomykala [14, 15] studied the two pairs of dual operator, Yao [16, 17] extent these operators via the neighborhood and granularity, Couso et al. [18] construct CRS with incomplete data, Bonikowski et al. [19] established CRS through minimal description, Zhu [20] discussed topological properties to CRS, Zhu et al. [21] presented the reduction on CRS, Zhu et al. [22, 23], Tsang et al. [24] and Xu et al. [25] introduced other kinds of CRS, Liu et al. [26] built the differences between CRS Zhu’s and Xu’s models, Ma [27] investigated some kinds of neighborhoods via CRS.
The concept of fuzzy rough set (FRS) and rough fuzzy set (RFS) was constructed by Dubois et al. [28]. Deng et al. [29] proposed new model of fuzzy covering according to FRS. Atef et al. and Li et al. studied additional kinds of fuzzy rough covering (FRC) [30,31,32,33,34]. Also, Ma [35] discovered kinds of fuzzy covering rough set (FCRS) using the fuzzy \(\beta \)-neighborhood. Moreover, the notions of a fuzzy complementary \(\beta \)-neighborhood and fuzzy \(\beta \) minimal and maximal description were found by Yang et al. [36, 37].
Fuzzy set theory (FS) was initiated by Zadeh [38]. There are some problems in FS for dealing with uncertain data, so the definition of IFSs was appeared by Atanassov [39] which contain two parts membership degree and non-membership degree. In IFSs, the sum of membership and non-membership classes is between [0, 1]. Atanassov et al. [40] used IFS to make a decision multi-person problem. Huang et al. [41, 42] introduced the notion of intuitionistic fuzzy multi-granulation rough sets and intuitionistic fuzzy via CRS. Alcantud et al. [43] discussed the decomposition theorems.
In realistic problems, much difficult application can not be solved via IFSs. Therefore, Yager [44] introduced the concept of PFSs. The main adding in PFSs is the sum of squares of membership class and non-membership class is in [0,1]. Yager [45, 46] suggested the usage of PFSs to solve real problem and make a decision. Garg [47, 48] studied the generalized Pythagorean fuzzy information aggregation using Einstein operations and Pythagorean geometric aggregation operations using Einstein t-norm with their applications. Zhang et al. [49] extend the PFSs to solve MCDM issues. Hussain et al. [50] defined the concept of Pythagorean fuzzy soft rough sets. Wang and Garg [51] introduced an algorithm for MADM by Pythagorean fuzzy archimedean norm operations. Recently, Zhan et al. [52] established the definition of CPFRS according to a PF \(\beta \)-neighborhood. They used these notions to solve problems in multi-attribute Pythagorean fuzzy decision making (MAPFDM).
From profounding in the real application, there were some problems not solved by IFSs and PFSs. So, In 2017, Yager [53] demonstrate a new notion to solve these issues in IFSs and PFSs. This notion called the q-rung orthopair fuzzy sets (q-ROFSs) are considered a generalization of PFSs and IFSs. The sum of qth power of membership class and qth power of nonmembership class is in the interval [0, 1] in q-ROFSs. In recent years, q-ROFSs studied and applied more widely in many distinct areas. Yager and Alajlan [54] discussed the relevant characteristics of q-ROFSs. In 2019, there was a new think of q-ROFSs via orbits by Ali [55]. The notions of connection number based q-ROFS is developed by Garg [56]. Especially, Hussain et al. [57] introduced the definition of Cq-ROFRS through the notion of q-ROF \(\beta \)-neighborhood and applied it in multi-attribute q-ROF decision making (MAq-ROFDM). These differences illustrate that 3-PF\(\beta \)CRS is the best approximations among 1-PF\(\beta \)CRS (Zhan et al.’s model), 2-PF\(\beta \)CRS and 4-PF\(\beta \)CRS.
The main aim of this study is to improve Zhan et al.’s [52] and Hussain et al.’s [57] studies, by overgrowing the lower approximation and diminish the upper approximation of the proposed methods. Thus, we set the meaning of PF complementary \(\beta \)-neighborhood and hence we present a new type of CPFRS model (2-PF\(\beta \)CRS). To generalize this study, we obtain two new PF \(\beta \)-neighborhoods by joining PF \(\beta \)-neighborhood and PF complementary \(\beta \)-neighborhood and then two new CPFRS models are built (3-PF\(\beta \)CRS and 4-PF\(\beta \)CRS). The properties of these models are also discussed. Further, the relationships through the Zhan et al.’s model and our models (i.e., 1-PF\(\beta \)CRS, 2-PF\(\beta \)CRS, 3-PF\(\beta \)CRS and 4-PF\(\beta \)CRS) are investigated. Moreover, we put forward the definition of q-ROF complementary \(\beta \)-neighborhood and using it to introduce a novel model of Cq-ROFRS (2-q-ROF\(\beta \)CRS). Hence, we merge the definitions of q-ROF \(\beta \)-neighborhood and q-ROF complementary \(\beta \)-neighborhood to generate two new kinds of q-ROF \(\beta \)-neighborhood (3-q-ROF\(\beta \)CRS and 4-q-ROF\(\beta \)CRS). We use these kinds to give two other paradigms of Cq-ROFRS and also study relevant properties. Relationships between Hussain et al.’s model and our’s (i.e., 1-q-ROF\(\beta \)CRS, 2-q-ROF\(\beta \)CRS, 3-q-ROF\(\beta \)CRS and 4-q-ROF\(\beta \)CRS) are also given. We put forward some examples to explain the differences between these two approaches which conclude that 3-PF\(\beta \)CRS is the best among others (i.e., 1-PF\(\beta \)CRS, 2-PF\(\beta \)CRS and 4-PF\(\beta \)CRS) and 3-q-ROF\(\beta \)CRS is more accurate than others (i.e., 1-q-ROF\(\beta \)CRS, 2-q-ROF\(\beta \)CRS and 4-q-ROF\(\beta \)CRS). Finally, we apply the presented work to solve MAPFDM and MAq-ROFDM problems.
The rest of the article is as follows. The basic notions about PFSs and q-ROFSs are set in “Preliminaries”. “PF complementary \(\beta \)-neighborhood and three novel kinds of CPFRS” constructs three new models of CPFRS by means of PF \(\beta \)-neighborhood and PF complementary \(\beta \)-neighborhood. We determine the definition of q-ROF complementary \(\beta \)-neighborhood and use it to build three models of Cq-ROFRS with the help of q-ROF \(\beta \)-neighborhood in “q-ROF complementary \(\beta \)-neighborhood and three novel kinds of Cq-ROFRS”. In “Decision-making approach using PF\(\beta \)CAS”, we give numerical examples via our methods to explain the theoretical studies. We put forward the main goals of this study in “Conclusion”.
Preliminaries
In the following, we supply a short scanning of some concepts consumed over the paper.
Definition 1
[49] Let \(\varLambda \) be a universe. For every \(u \in \varLambda \), if we have a membership function \(\vartheta _{{\mathcal {P}}} : \varLambda \rightarrow [0,1]\) and a non-membership function \(\zeta _{{\mathcal {P}}}: \varLambda \rightarrow [0,1]\). Define the PFS \(\mathcal {P}\) as indicated below.
where \(0\le \vartheta _{{\mathcal {P}}}^{2}(u)+\zeta _{{\mathcal {P}}}^{2}(u)\le 1\).
Definition 2
[49] Consider a PFS \(\mathcal {P} \in \varLambda \), define the grade of indeterminacy of \(u \in \varLambda \) to \(\mathcal {P}\) as follows.
Definition 3
[49] Let \(\mathcal {P}_{1}=(\vartheta _{{{\mathcal {P}}}_{1}},\zeta _{{{\mathcal {P}}}_{1}})\) and \(\mathcal {P}_{2}=(\vartheta _{{{\mathcal {P}}}_{2}},\zeta _{{{\mathcal {P}}}_{2}})\), for \(\mathcal {P}_{1},\mathcal {P}_{2} \in {\text {PF}} (\varLambda )\). Then \(\forall u \in \varLambda \), we have the following properties
-
(1)
\(\mathcal {P}_{1}^{c}=\{(u,\zeta _{{{\mathcal {P}}}_{1}}(u),\vartheta _{{{\mathcal {P}}}_{1}}(u))\}\).
-
(2)
\(\mathcal {P}_{1}=\mathcal {P}_{2} \iff \vartheta _{{{\mathcal {P}}}_{1}}(u)=\vartheta _{{{\mathcal {P}}}_{2}}(u)\) and \(\zeta _{{{\mathcal {P}}}_{1}}(u)=\zeta _{{{\mathcal {P}}}_{2}}(u)\).
-
(3)
\(\mathcal {P}_{1} \subseteq \mathcal {P}_{2} \text { if } \vartheta _{{{\mathcal {P}}}_{1}}(u) \le \vartheta _{{{\mathcal {P}}}_{2}}(u)\) and \(\zeta _{{{\mathcal {P}}}_{1}}(u) \le \zeta _{{{\mathcal {P}}}_{2}}(u)\).
-
(4)
\(\mathcal {P}_{1} \cap \mathcal {P}_{2}=\{ (u, \vartheta _{{{\mathcal {P}}}_{1}}(u) \wedge \vartheta _{{{\mathcal {P}}}_{2}}(u),\zeta _{{{\mathcal {P}}}_{1}}(u) \vee \zeta _{{{\mathcal {P}}}_{2}}(u))\}\).
-
(5)
\(\mathcal {P}_{1} \cup \mathcal {P}_{2}=\{ (u, \vartheta _{{{\mathcal {P}}}_{1}}(u) \vee \vartheta _{{{\mathcal {P}}}_{2}}(u),\zeta _{{{\mathcal {P}}}_{1}}(u) \wedge \zeta _{{{\mathcal {P}}}_{2}}(u))\}\).
-
(6)
\(\mathcal {P}_{1} - \mathcal {P}_{2}=\mathcal {P}_{1} \cap \mathcal {P}_{2}^{c}.\)
Definition 4
[49] Let \(\mathcal {P}_{1}=(\vartheta _{{{\mathcal {P}}}_{1}},\zeta _{{{\mathcal {P}}}_{1}})\) and \(\mathcal {P}_{2}=(\vartheta _{{{\mathcal {P}}}_{2}},\zeta _{{{\mathcal {P}}}_{2}})\) be two PFNs. Then the distances among them is defined as follows.
Zhan et al. [52] introduced the notion of CPFRS and put forward the definition of PF \(\beta \)-neighborhood as indicated below.
Definition 5
[52] Consider \(\varLambda \) be a universe and \({\widetilde{\varUpsilon }}=\{{\widetilde{\varDelta }}_{1}, \widetilde{\varDelta }_{2},\ldots , \widetilde{\varDelta }_{m} \}\) where \(\widetilde{\varDelta }_{i} \in {\text {PF}}(\varLambda )\) and \(i=1,2,...,m\). Then for each PFN \(\beta =(\vartheta _{\beta },\zeta _{\beta })\), a Pythagorean fuzzy \(\beta \) covering of \(\varLambda \), if \(\widetilde{\varDelta }_{i}(u) \ge \beta \) for each \(u \in \varOmega \). Now \((\varLambda , \widetilde{\varUpsilon })\) is called the Pythagorean fuzzy \(\beta \)-covering approximation space (briefly, PF\(\beta \)CAS).
Definition 6
[52] Consider a PF\(\beta \)CAS \((\varLambda ,\widetilde{\varUpsilon })\), for some PFN \(\beta =(\vartheta _{\beta },\zeta _{\beta })\). For every \(u \in \varLambda \), define the PF \(\beta \)-neighborhood of u as follows.
Definition 7
[52] Consider a PF\(\beta \)CAS \((\varLambda ,\widetilde{\varUpsilon })\), for some PFN \(\beta =(\vartheta _{\beta },\zeta _{\beta })\). For every \(u \in \varLambda \) and \(\mathcal{X}\in PF(\varLambda )\), that is, \(\mathcal{X}=\{(\vartheta _\mathcal{X}(u_i),\zeta _\mathcal{X}(u_i)):i=1,2,\ldots ,m\}\). Define the first type of PF lower approximation (1-PFLA) \(\mathcal {L}^{PF}_{1}(\mathcal{X})\) and the first type of PF upper approximation (1-PFUA) \(\mathcal {U}^{PF}_{1}(\mathcal{X})\) as follows.
Then the pair \(\left( \mathcal {L}^{PF}_{1}(\mathcal{X}), \mathcal {U}^{PF}_{1}(\mathcal{X})\right) \) is called the 1-PF\(\beta \)CRS.
Definition 8
Consider \(\varTheta \) be a universe. For every \(u \in \varTheta \), if we have a membership function \(\mu _\mathcal{X} : \varTheta \rightarrow [0,1]\) and a non-membership function \(\nu _\mathcal{X} : \varTheta \rightarrow [0,1]\). Define the q-ROFS \(\mathcal {X}\) as indicated below.
where \(0\le \mu _\mathcal{X}^{q}(u)+\nu _\mathcal{X}^{q}(u)\le 1\).
Definition 9
[53] Consider a q-ROFS \(\mathcal {X} \in \varTheta \), define the grade of indeterminacy of \(u \in \varTheta \) to \(\mathcal {X}\) as follows.
Definition 10
[53] Let \(\mathcal {X}_{1}=(\mu _{{{\mathcal {X}}}_{1}},\nu _{{{\mathcal {X}}}_{1}})\) and \(\mathcal {X}_{2}=(\mu _{{{\mathcal {X}}}_{2}},\nu _{{{\mathcal {X}}}_{2}})\), for \(\mathcal {X}_{1},\mathcal {X}_{2} \in {\text {q-ROF}} (\varTheta )\). Then \(\forall u \in \varTheta \), we have the following properties
-
(1)
\(\mathcal {X}_{1}^{c}=\{(u,\nu _{{{\mathcal {X}}}_{1}}(u),\mu _{{{\mathcal {X}}}_{1}}(u))\}\).
-
(2)
\(\mathcal {X}_{1}=\mathcal {X}_{2} \iff \mu _{{{\mathcal {X}}}_{1}}(u)=\mu _{{{\mathcal {X}}}_{2}}(u)\) and \(\nu _{{{\mathcal {X}}}_{1}}(u)=\nu _{{{\mathcal {X}}}_{2}}(u)\).
-
(3)
\(\mathcal {X}_{1} \subseteq \mathcal {X}_{2} \text { if } \mu _{{{\mathcal {X}}}_{1}}(u) \le \mu _{{{\mathcal {X}}}_{2}}(u)\) and \(\nu _{{{\mathcal {X}}}_{1}}(u) \le \nu _{{{\mathcal {X}}}_{2}}(u)\).
-
(4)
\(\mathcal {X}_{1} \cap \mathcal {X}_{2}=\{ (u, \mu _{{{\mathcal {X}}}_{1}}(u) \wedge \mu _{{{\mathcal {X}}}_{2}}(u),\nu _{{{\mathcal {X}}}_{1}}(u) \vee \nu _{{{\mathcal {X}}}_{2}}(u))\}\).
-
(5)
\(\mathcal {X}_{1} \cup \mathcal {X}_{2}=\{ (u, \mu _{{{\mathcal {X}}}_{1}}(u) \vee \mu _{{{\mathcal {X}}}_{2}}(u),\nu _{{{\mathcal {X}}}_{1}}(u) \wedge \nu _{{{\mathcal {X}}}_{2}}(u))\}\).
-
(6)
\(\mathcal {X}_{1} - \mathcal {X}_{2}=\mathcal {X}_{1} \cap \mathcal {X}_{2}^{c}.\)
Hussian et al. [57] presented the concept of CPFRS with the aid of the definition of q-ROF \(\beta \)-neighborhood as indicated below.
Definition 11
[57] Consider \(\varTheta \) be a universe and \(\widetilde{\Re }=\{\widetilde{{{\mathcal {R}}}}_{1}, \widetilde{{{\mathcal {R}}}}_{2},\ldots , \widetilde{{{\mathcal {R}}}}_{m} \}\) where \(\widetilde{{{\mathcal {R}}}}_{i} \in {\text {q-ROF}}(\varTheta )\) and \(i=1,2,...,m\). Then for each q-ROFN \(\beta =(\mu _{\beta },\nu _{\beta })\), a q-ROF \(\beta \) covering of \(\varTheta \), if \(\widetilde{{{\mathcal {R}}}}_{i}(u) \ge \beta \) for each \(u \in \varTheta \). Now \((\varTheta , \widetilde{{{\mathcal {R}}}})\) is called the q-ROF\(\beta \)-covering approximation space (briefly, q-ROF\(\beta \)CAS).
Definition 12
[57] Consider a q-ROF\(\beta \)CAS \((\varTheta ,\widetilde{{\Re }})\), for some q-ROFN \(\beta =(\mu _{\beta },\nu _{\beta })\). For every \(u \in \varTheta \), define the q-ROF \(\beta \)-neighborhood of u as follows.
Definition 13
[57] Consider a q-ROF\(\beta \)CAS \((\varTheta ,\widetilde{{\Re }})\), for some q-ROFN \(\beta =(\mu _{\beta },\nu _{\beta })\). For every \(u \in \varTheta \) and \({{\mathcal {X}}}\in {\text {q-ROF}}(\varLambda )\), that is, \({{\mathcal {X}}}=\{(\mu _{{\mathcal {X}}}(u_i),\nu _{{\mathcal {X}}}(u_i)):i=1,2,...,m\}\). Define the first type of q-ROF lower approximation (1-q-ROFLA) \(\mathcal {L}^{{\text {q-ROF}}}_{1}({{\mathcal {X}}})\) and the first type of q-ROF upper approximation (1-q-ROFUA) \(\mathcal {U}^{{\text {q-ROF}}}_{1}({{\mathcal {X}}})\) as follows.
Then the pair \(\left( \mathcal {L}^{{\text {q-ROF}}}_{1}({{\mathcal {X}}}), \mathcal {U}^{{\text {q-ROF}}}_{1}({{\mathcal {X}}})\right) \) is called the 1-q-ROF\(\beta \)CRS.
Definition 14
[57] Let \(\mathcal {X}_{1}=(\mu _{{{\mathcal {X}}}_{1}},\nu _{{{\mathcal {X}}}_{1}})\) and \(\mathcal {X}_{2}=(\mu _{{{\mathcal {X}}}_{2}},\nu _{{{\mathcal {X}}}_{2}})\) be two q-ROFNs. Then the distances among them is defined as follows \(\forall q \ge 1\).
PF complementary \(\beta \)-neighborhood and three novel kinds of CPFRS
This section’s objective is to investigate the definition of PF complementary \(\beta \)-neighborhood and then construct three new types of a CPFRS model. Further, we discuss the relationships via these models.
PF complementary \(\beta \)-neighborhood
Definition 15
Consider a PF\(\beta \)CAS \((\varLambda ,\widetilde{\varUpsilon })\) and PFN \(\beta =(\vartheta _{\beta },\zeta _{\beta })\). Then for each \(u \in \varLambda \), define the PF complementary \(\beta \)-neighborhood of u as follows.
Example 1
Consider a PF\(\beta \)CAS \((\varLambda ,\widetilde{\varUpsilon })\), \(\varLambda =\{u_1,u_2,u_3,u_4,u_5,u_6\}\) and \(\widetilde{\varUpsilon }=\{\widetilde{{\varDelta }}_1\), \(\widetilde{{\varDelta }}_2\), \(\widetilde{{\varDelta }}_3\), \(\widetilde{{\varDelta }}_4, \widetilde{{\varDelta }}_5\}\), where \(\beta =(0.7,0.4)\) are summarized in Table 1.
It is computed that
The rating corresponding to them are computed and listed in Table 2. However, the values of their complement \(\hat{\widetilde{{{\mathcal {P}}}}^{(0.7,0.4)}_{u}}\) is given in Table 3.
The first type of a CPFRS
Definition 16
Consider a PF\(\beta \)CAS \((\varLambda ,\widetilde{\varUpsilon })\) and PFN \(\beta =(\vartheta _{\beta },\zeta _{\beta })\). For all \(u \in \varLambda \) and \({{\mathcal {X}}}\in {\text {PF}}(\varLambda )\). Define the 2-PFLA \(\mathcal {L}^{{\text {PF}}}_{2}({{\mathcal {X}}})\) and 2-PFUA \(\mathcal {U}^{{\text {PF}}}_{2}({{\mathcal {X}}})\) as follows.
Then the pair \(\left( \mathcal {L}^{{\text {PF}}}_{2}({{\mathcal {X}}}), \mathcal {U}^{{\text {PF}}}_{2}({{\mathcal {X}}})\right) \) is called the 2-PF\(\beta \)CRS.
Example 2
Consider Example 1 and \({{\mathcal {X}}}=(u_1,0.7,0.4)+(u_2,0.4,0.7)+(u_3,0.8,0.6)+(u_4,0.8,0.1)+(u_5,0.6,0.5)+(u_6,0.9,0.1).\) Then the following results hold.
-
(1)
\(\mathcal {L}^{{\text {PF}}}_{1}({{\mathcal {X}}})=(u_1,0.7,0.6)+(u_2,0.4,0.7)+(u_3,0.4,0.7)+(u_4,0.4,0.7) +(u_5,0.5,0.6)+(u_6,0.6,0.5),\)
\(\mathcal {U}^{{\text {PF}}}_{1}({{\mathcal {X}}})=(u_1,0.7,0.4)+(u_2,0.6,0.4)+(u_3,0.7,0.4)+(u_4,0.8,0.4) +(u_5,0.7,0.5)+(u_6,0.7,0.2).\)
-
(2)
\(\mathcal {L}^{{\text {PF}}}_{2}({{\mathcal {X}}})=(u_1,0.6,0.7)+(u_2,0.6,0.5)+(u_3,0.7,0.4)+(u_4,0.6,0.5) +(u_5,0.4,0.6)+(u_6,0.4,0.7),\)
\(\mathcal {U}^{{\text {PF}}}_{2}({{\mathcal {X}}})=(u_1,0.8,0.5)+(u_2,0.7,0.4)+(u_3,0.7,0.4)+(u_4,0.6,0.4)+(u_5,0.8,0.3)+(u_6,0.8,0.3).\)
Theorem 1
Consider a PF\(\beta \)CAS \((\varLambda ,\widetilde{\varUpsilon })\). Then, we have the following properties
-
(1)
\(\mathcal {L}^{{\text {PF}}}_{2}({{\mathcal {X}}})=(\mathcal {U}^{{\text {PF}}}_{2}({{\mathcal {X}}}^c))^c\).
-
(2)
\(\mathcal {U}^{{\text {PF}}}_{2}({{\mathcal {X}}})=(\mathcal {L}^{{\text {PF}}}_{2}({{\mathcal {X}}}^c))^c\).
-
(3)
If \({{\mathcal {X}}} \subseteq {{\mathcal {Y}}}\), then \(\mathcal {L}^{{\text {PF}}}_{2}({{\mathcal {X}}}) \subseteq \mathcal {L}^{{\text {PF}}}_{2}({{\mathcal {Y}}})\).
-
(4)
If \({{\mathcal {X}}} \subseteq {{\mathcal {Y}}}\), then \(\mathcal {U}^{{\text {PF}}}_{2}({{\mathcal {X}}}) \subseteq \mathcal {U}^{{\text {PF}}}_{2}({{\mathcal {Y}}})\).
-
(5)
\(\mathcal {L}^{{\text {PF}}}_{2}({{\mathcal {X}}} \cap {{\mathcal {Y}}})=\mathcal {L}^{{\text {PF}}}_{2}({{\mathcal {X}}}) \cap \mathcal {L}^{{\text {PF}}}_{2}({{\mathcal {Y}}})\).
-
(6)
\(\mathcal {U}^{{\text {PF}}}_{2}({{\mathcal {X}}} \cap {{\mathcal {Y}}}) \subseteq \mathcal {U}^{{\text {PF}}}_{2}({{\mathcal {X}}}) \cap \mathcal {U}^{{\text {PF}}}_{2}({{\mathcal {Y}}})\).
-
(7)
\(\mathcal {L}^{{\text {PF}}}_{2}({{\mathcal {X}}} \cup {{\mathcal {Y}}}) \supseteq \mathcal {L}^{{\text {PF}}}_{2}({{\mathcal {X}}}) \cup \mathcal {L}^{{\text {PF}}}_{2}({{\mathcal {Y}}})\).
-
(8)
\(\mathcal {U}^{{\text {PF}}}_{2}({{\mathcal {X}}} \cup {{\mathcal {Y}}})=\mathcal {U}^{{\text {PF}}}_{2}({{\mathcal {X}}}) \cup \mathcal {U}^{{\text {PF}}}_{2}({{\mathcal {Y}}})\).
Proof of Theorem 1
We just prove (1), (3), (5) and (7).
-
(1)
$$\begin{aligned}&\mathcal {L}^{PF}_{2}({\mathcal X}^{c})\\&\quad = \left\{ \begin{aligned} \big (u_s,\wedge _{s=1}^{n}\big (\zeta _{\hat{\widetilde{\mathcal{P}}^{\beta }_{u}}}(u_s,u_t)\vee \vartheta _\mathcal{X}{^{c}}(u_t) \big ), \\ \vee _{s=1}^{n}\big (\vartheta _{\hat{\widetilde{\mathcal{P}}^{\beta }_{u}}}(u_s,u_t)\wedge \zeta _\mathcal{X}{^{c}}(u_t) \big )\big ) \end{aligned} \right\} \\&\quad = \left\{ \begin{aligned} \big (u_s,\wedge _{s=1}^{n}\big (\zeta _{\hat{\widetilde{\mathcal{P}}^{\beta }_{u}}}(u_s,u_t)\vee (1-\vartheta _\mathcal{X}(u_t)) \big ), \\ \vee _{s=1}^{n}\big (\vartheta _{\hat{\widetilde{\mathcal{P}}^{\beta }_{u}}}(u_s,u_t)\wedge (1-\zeta _\mathcal{X}(u_t)) \big )\big ) \end{aligned} \right\} \\&\quad = \big (\mathcal {U}^{PF}_{2}({\mathcal X})\big )^c \end{aligned}$$
-
(3)
Let \({\mathcal X}, {\mathcal Y} \in \text {PF} (\varLambda )\) such that \({\mathcal X} \subseteq {\mathcal Y}\) (i.e., \({\vartheta }_\mathcal{X} \le {\vartheta }_\mathcal{Y}\) and \({\zeta }_\mathcal{X} \ge {\zeta }_\mathcal{Y}\)) and \(u \in \varLambda \). Then we get the following result.
$$\begin{aligned} \mathcal {L}^{PF}_{2}({\mathcal X})(u)= & {} \left\{ \begin{aligned} \big (u_s,\wedge _{s=1}^{n}\big (\zeta _{\hat{\widetilde{\mathcal{P}}^{\beta }_{u}}}(u_s,u_t)\vee \vartheta _\mathcal{X}(u_t) \big ), \\ \vee _{s=1}^{n}\big (\vartheta _{\hat{\widetilde{\mathcal{P}}^{\beta }_{u}}}(u_s,u_t)\wedge \zeta _\mathcal{X}(u_t) \big )\big ) \end{aligned} \right\} \end{aligned}$$Now for \({\mathcal X} \subseteq {\mathcal Y}\), we have
$$\begin{aligned} {\vartheta }_{\mathcal {L}^{PF}_{2}({\mathcal X})}= & {} \wedge _{s=1}^{n}\big (\vartheta _{\hat{\widetilde{\mathcal{P}}^{\beta }_{u}}}(u_s,u_t)\vee \vartheta _\mathcal{X}(u_t) \big ) \\\le & {} \wedge _{s=1}^{n}\big (\vartheta _{\hat{\widetilde{\mathcal{P}}^{\beta }_{u}}}(u_s,u_t)\vee \vartheta _\mathcal{Y}(u_t) \big ) \\= & {} {\vartheta }_{\mathcal {L}^{PF}_{2}({\mathcal Y})} \end{aligned}$$and
$$\begin{aligned} {\zeta }_{\mathcal {L}^{PF}_{2}({\mathcal X})}= & {} \vee _{s=1}^{n}\big (\vartheta _{\hat{\widetilde{\mathcal{P}}^{\beta }_{u}}}(u_s,u_t)\wedge \zeta _\mathcal{X}(u_t) \big ) \\\ge & {} \vee _{s=1}^{n}\big (\vartheta _{\hat{\widetilde{\mathcal{P}}^{\beta }_{u}}}(u_s,u_t)\wedge \zeta _\mathcal{Y}(u_t) \big ) \\= & {} {\zeta }_{\mathcal {L}^{PF}_{2}({\mathcal Y})} \end{aligned}$$Therefore, \(\mathcal {L}^{PF}_{2}({\mathcal X}) \subseteq \mathcal {L}^{PF}_{2}({\mathcal Y})\).
-
(5)
$$\begin{aligned}&\mathcal {L}^{PF}_{2}(\mathcal{X} \cap \mathcal{Y})\\&\quad = \left\{ \begin{aligned} \big (u_s,\wedge _{s=1}^{n}\big (\zeta _{\hat{\widetilde{\mathcal{P}}^{\beta }_{u}}}(u_s,u_t)\vee \vartheta _{\mathcal{X}\cap \mathcal{Y}}(u_t) \big ), \\ \vee _{s=1}^{n}\big (\vartheta _{\hat{\widetilde{\mathcal{P}}^{\beta }_{u}}}(u_s,u_t)\wedge \zeta _{\mathcal{X} \cap \mathcal{Y}}(u_t) \big )\big ) \end{aligned} \right\} \\&\quad = \left\{ \begin{aligned} \big (u_s,\wedge _{s=1}^{n}\big (\zeta _{\hat{\widetilde{\mathcal{P}}^{\beta }_{u_s}}}(u_s,u_t)\vee ({\vartheta }_{\mathcal{X}}(u_t) \cap {\vartheta }_{\mathcal{Y}}(u_t)) \big ), \\ \vee _{t=1}^{m}\big ({\vartheta }_{\hat{\widetilde{\mathcal{P}}^{\beta }_{u_s}}}(u_s,u_t)\wedge ({\zeta }_{\mathcal{X}}(u_t) \cap {\zeta }_{\mathcal{Y}}(u_t))\big )\big ) \end{aligned} \right\} \\&\quad = \left\{ \begin{aligned} \big (u_s,\wedge _{s=1}^{n}\big (\zeta _{\hat{\widetilde{\mathcal{P}}^{\beta }_{u_s}}}(u_s,u_t)\vee {\vartheta }_{\mathcal{X}}(u_t)\big ) \\ \wedge \ \wedge _{s=1}^{n} \big (\zeta _{\hat{\widetilde{\mathcal{P}}^{\beta }_{u_s}}}(u_s,u_t)\vee {\vartheta }_{\mathcal{Y}}(u_t)\big ), \\ \vee _{t=1}^{m}\big ({\vartheta }_{\hat{\widetilde{\mathcal{P}}^{\beta }_{u_s}}}(u_s,u_t)\wedge {\zeta }_{\mathcal{X}}(u_t)\big ) \\ \wedge \vee _{t=1}^{m} \big ({\vartheta }_{\hat{\widetilde{\mathcal{P}}^{\beta }_{u_s}}}(u_s,u_t)\wedge {\zeta }_{\mathcal{Y}}(u_t)\big )\big ) \end{aligned} \right\} \\&\quad = \mathcal {L}^{PF}_{2}({\mathcal X})\cap \mathcal {L}^{PF}_{2}({\mathcal Y}) \end{aligned}$$
-
(7)
$$\begin{aligned}&\mathcal {L}^{PF}_{2}(\mathcal{X} \cup \mathcal{Y})\\&\quad = \left\{ \begin{aligned} \big (u_s,\wedge _{s=1}^{n}\big (\zeta _{\hat{\widetilde{\mathcal{P}}^{\beta }_{u_s}}}(u_s,u_t)\vee \vartheta _{(\mathcal{X} \cup \mathcal{Y})}(u_t) \big ),\\ \vee _{s=1}^{n}\big (\vartheta _{\hat{\widetilde{\mathcal{P}}^{\beta }_{u_s}}}(u_s,u_t)\wedge \zeta _{(\mathcal{X} \cup \mathcal{Y})}(u_t) \big )\big ) \end{aligned} \right\} \\&\quad = \left\{ \begin{aligned} \big (u_s,\wedge _{s=1}^{n}\big (\zeta _{\hat{\widetilde{\mathcal{P}}^{\beta }_{u_s}}}(u_s,u_t) \\ \vee ({\vartheta }_{\mathcal{X}}(u_t) \cup {\vartheta }_{\mathcal{Y}}(u_t)) \big ),\\ \vee _{s=1}^{m}\big ({\vartheta }_{\hat{\widetilde{\mathcal{P}}^{\beta }_{u_s}}}(u_s,u_t) \\ \wedge ({\zeta }_{\mathcal{X}}(u_t) \cup {\zeta }_{\mathcal{Y}}(u_t))\big )\big ) \end{aligned} \right\} \\&\quad \ge \left\{ \begin{aligned} \big (u_s,\wedge _{s=1}^{n}\big (\zeta _{\hat{\widetilde{\mathcal{P}}^{\beta }_{u_s}}}(u_s,u_t)\vee {\vartheta }_{\mathcal{X}}(u_t)\big ) \\ \vee \ \wedge _{s=1}^{n} \big (\zeta _{\hat{\widetilde{\mathcal{P}}^{\beta }_{u_s}}}(u_s,u_t)\vee {\vartheta }_{\mathcal{Y}}(u_t)\big ),\\ \vee _{t=1}^{m}\big ({\vartheta }_{\hat{\widetilde{\mathcal{P}}^{\beta }_{u_s}}}(u_s,u_t)\wedge {\zeta }_{\mathcal{X}}(u_t)\big ) \\ \wedge \ \vee _{t=1}^{m} \big ({\vartheta }_{\hat{\widetilde{\mathcal{P}}^{\beta }_{u_s}}}(u_s,u_t)\wedge {\zeta }_{\mathcal{Y}}(u_t)\big )\big ) \end{aligned} \right\} \\&\quad = \mathcal {L}^{PF}_{2}({\mathcal X})\cup \mathcal {L}^{PF}_{2}({\mathcal Y}) \end{aligned}$$
\(\square \)
Definition 17
Consider a PF\(\beta \)CAS \((\varLambda ,\widetilde{\varUpsilon })\) and PFN \(\beta =(\vartheta _{\beta },\zeta _{\beta })\). Thus the rough and precision degrees of \({{\mathcal {X}}}\in {\text {PF}}(\varLambda )\) are respectively seen as follows.
Example 3
Consider Examples 1 and 2. Then the following results hold.
The second type of a CPFRS
Definition 18
Consider a PF\(\beta \)CAS \((\varLambda ,\widetilde{\varUpsilon })\) and PFN \(\beta =(\vartheta _{\beta },\zeta _{\beta })\). Then for each \(u \in \varLambda \), define a new kind of PF \(\beta \)-neighborhood as follows.
Example 4
Consider Example 1. We compute \(_{1}\widetilde{\P }^{\beta }_{u}\) as set in Table 4.
Definition 19
Consider a PF\(\beta \)CAS \((\varLambda ,\widetilde{\varUpsilon })\) and PFN \(\beta =(\vartheta _{\beta },\zeta _{\beta })\). For all \(u \in \varLambda \) and \({{\mathcal {X}}}\in {\text {PF}}(\varLambda )\). Define the 3-PFLA \(\mathcal {L}^{{\text {PF}}}_{3}({{\mathcal {X}}})\) and 3-PFUA \(\mathcal {U}^{{\text {PF}}}_{3}({{\mathcal {X}}})\) as follows.
Then the pair \(\left( \mathcal {L}^{{\text {PF}}}_{3}({{\mathcal {X}}}), \mathcal {U}^{{\text {PF}}}_{3}({{\mathcal {X}}})\right) \) is called the 3-PF\(\beta \)CRS.
Example 5
Consider Examples 1 and 2. Then we have the following outcomes.
Now, we obtain the following theorem which has the properties of the 3-PF\(\beta \)CRS model. The proof of this theorem is straightforward from Definition 19 and Theorem 1, so, we omit this proof.
Theorem 2
Consider a PF\(\beta \)CAS \((\varLambda ,\widetilde{\varUpsilon })\). Then, we have the following properties
-
(1)
\(\mathcal {L}^{{\text {PF}}}_{3}({{\mathcal {X}}})=(\mathcal {U}^{{\text {PF}}}_{3}({{\mathcal {X}}}^c))^c\).
-
(2)
\(\mathcal {U}^{{\text {PF}}}_{3}({{\mathcal {X}}})=(\mathcal {L}^{{\text {PF}}}_{3}({{\mathcal {X}}}^c))^c\).
-
(3)
If \({{\mathcal {X}}} \subseteq {{\mathcal {Y}}}\), then \(\mathcal {L}^{{\text {PF}}}_{3}({{\mathcal {X}}}) \subseteq \mathcal {L}^{{\text {PF}}}_{3}({{\mathcal {Y}}})\).
-
(4)
If \({{\mathcal {X}}} \subseteq {{\mathcal {Y}}}\), then \(\mathcal {U}^{{\text {PF}}}_{3}({{\mathcal {X}}}) \subseteq \mathcal {U}^{{\text {PF}}}_{3}({{\mathcal {Y}}})\).
-
(5)
\(\mathcal {L}^{{\text {PF}}}_{3}({{\mathcal {X}}} \cap {{\mathcal {Y}}})=\mathcal {L}^{{\text {PF}}}_{3}({{\mathcal {X}}}) \cap \mathcal {L}^{{\text {PF}}}_{3}({{\mathcal {Y}}})\).
-
(6)
\(\mathcal {U}^{{\text {PF}}}_{3}({{\mathcal {X}}} \cap {{\mathcal {Y}}}) \subseteq \mathcal {U}^{{\text {PF}}}_{3}({{\mathcal {X}}}) \cap \mathcal {U}^{{\text {PF}}}_{3}({{\mathcal {Y}}})\).
-
(7)
\(\mathcal {L}^{{\text {PF}}}_{3}({{\mathcal {X}}} \cup {{\mathcal {Y}}}) \supseteq \mathcal {L}^{{\text {PF}}}_{3}({{\mathcal {X}}}) \cup \mathcal {L}^{{\text {PF}}}_{3}({{\mathcal {Y}}})\).
-
(8)
\(\mathcal {U}^{{\text {PF}}}_{3}({{\mathcal {X}}} \cup {{\mathcal {Y}}})=\mathcal {U}^{{\text {PF}}}_{3}({{\mathcal {X}}}) \cup \mathcal {U}^{{\text {PF}}}_{3}({{\mathcal {Y}}})\).
Definition 20
Consider a PF\(\beta \)CAS \((\varLambda ,\widetilde{\varUpsilon })\) and PFN \(\beta =(\vartheta _{\beta },\zeta _{\beta })\). Thus the rough and precision degrees of \({{\mathcal {X}}}\in {\text {PF}}(\varLambda )\) are respectively seen as follows.
Example 6
Consider Examples 1 and 2. Then the following results hold.
The third type of a CPFRS
Definition 21
Consider a PF\(\beta \)CAS \((\varLambda ,\widetilde{\varUpsilon })\) and PFN \(\beta =(\vartheta _{\beta },\zeta _{\beta })\). Then for each \(u \in \varLambda \), define a new kind of PF \(\beta \)-neighborhood as follows.
Example 7
Consider Example 1. We compute \(_{2}\widetilde{\P }^{\beta }_{u}\) as follows in Table 5.
Definition 22
Consider a PF\(\beta \)CAS \((\varLambda ,\widetilde{\varUpsilon })\) and PFN \(\beta =(\vartheta _{\beta },\zeta _{\beta })\). For all \(u \in \varLambda \) and \({{\mathcal {X}}}\in {\text {PF}}(\varLambda )\). Define the 4-PFLA \(\mathcal {L}^{{\text {PF}}}_{4}({{\mathcal {X}}})\) and 4-PFUA \(\mathcal {U}^{{\text {PF}}}_{4}({{\mathcal {X}}})\) as follows.
Then the pair \(\left( \mathcal {L}^{{\text {PF}}}_{4}({{\mathcal {X}}}), \mathcal {U}^{{\text {PF}}}_{4}({{\mathcal {X}}})\right) \) is called the 4-PF\(\beta \)CRS.
Example 8
Consider Examples 1 and 2. Then the following results hold.
Theorem 3
Consider a PF\(\beta \)CAS \((\varLambda ,\widetilde{\varUpsilon })\). Then, we have the following properties
-
(1)
\(\mathcal {L}^{{\text {PF}}}_{4}({{\mathcal {X}}})=(\mathcal {U}^{{\text {PF}}}_{4}({{\mathcal {X}}}^c))^c\).
-
(2)
\(\mathcal {U}^{{\text {PF}}}_{4}({{\mathcal {X}}})=(\mathcal {L}^{{\text {PF}}}_{4}({{\mathcal {X}}}^c))^c\).
-
(3)
If \({{\mathcal {X}}} \subseteq {{\mathcal {Y}}}\), then \(\mathcal {L}^{{\text {PF}}}_{4}({{\mathcal {X}}}) \subseteq \mathcal {L}^{{\text {PF}}}_{4}({{\mathcal {Y}}})\).
-
(4)
If \({{\mathcal {X}}} \subseteq {{\mathcal {Y}}}\), then \(\mathcal {U}^{{\text {PF}}}_{4}({{\mathcal {X}}}) \subseteq \mathcal {U}^{{\text {PF}}}_{4}({{\mathcal {Y}}})\).
-
(5)
\(\mathcal {L}^{{\text {PF}}}_{4}({{\mathcal {X}}} \cap {{\mathcal {Y}}})=\mathcal {L}^{{\text {PF}}}_{4}({{\mathcal {X}}}) \cap \mathcal {L}^{{\text {PF}}}_{4}({{\mathcal {Y}}})\).
-
(6)
\(\mathcal {U}^{{\text {PF}}}_{4}({{\mathcal {X}}} \cap {{\mathcal {Y}}}) \subseteq \mathcal {U}^{{\text {PF}}}_{4}({{\mathcal {X}}}) \cap \mathcal {U}^{{\text {PF}}}_{4}({{\mathcal {Y}}})\).
-
(7)
\(\mathcal {L}^{{\text {PF}}}_{4}({{\mathcal {X}}} \cup {{\mathcal {Y}}}) \supseteq \mathcal {L}^{{\text {PF}}}_{4}({{\mathcal {X}}}) \cup \mathcal {L}^{{\text {PF}}}_{4}({{\mathcal {Y}}})\).
-
(8)
\(\mathcal {U}^{{\text {PF}}}_{4}({{\mathcal {X}}} \cup {{\mathcal {Y}}})=\mathcal {U}^{{\text {PF}}}_{4}({{\mathcal {X}}}) \cup \mathcal {U}^{{\text {PF}}}_{4}({{\mathcal {Y}}})\).
Proof
The proof is similar to Theorem 1 using Definition 22. \(\square \)
Definition 23
Consider a PF\(\beta \)CAS \((\varLambda ,\widetilde{\varUpsilon })\) and PFN \(\beta =(\vartheta _{\beta },\zeta _{\beta })\). Thus the rough and precision degrees of \({{\mathcal {X}}}\in {\text {PF}}(\varLambda )\) are respectively seen as follows.
Example 9
Consider Examples 1 and 2. Then the following results hold.
Relationships between the proposed methods
Below, we proceed to explain some relationships among these kinds.
Proposition 1
Consider a PF\(\beta \)CAS \((\varLambda ,\widetilde{\varUpsilon })\) and \({{\mathcal {X}}}\in {\text {PF}}(\varLambda )\). Then the following properties holds.
-
(1)
\(\mathcal {L}^{{\text {PF}}}_{4}({{\mathcal {X}}}) \le \mathcal {L}^{{\text {PF}}}_{2}({{\mathcal {X}}}) \le \mathcal {L}^{{\text {PF}}}_{3}({{\mathcal {X}}}).\)
-
(2)
\(\mathcal {L}^{{\text {PF}}}_{4}({{\mathcal {X}}}) \le \mathcal {L}^{{\text {PF}}}_{1}({{\mathcal {X}}}) \le \mathcal {L}^{{\text {PF}}}_{3}({{\mathcal {X}}}).\)
-
(3)
\(\mathcal {U}^{{\text {PF}}}_{3}({{\mathcal {X}}}) \le \mathcal {U}^{{\text {PF}}}_{2}({{\mathcal {X}}}) \le \mathcal {U}^{{\text {PF}}}_{4}({{\mathcal {X}}}).\)
-
(4)
\(\mathcal {U}^{{\text {PF}}}_{3}({{\mathcal {X}}}) \le \mathcal {U}^{{\text {PF}}}_{1}({{\mathcal {X}}}) \le \mathcal {U}^{{\text {PF}}}_{4}({{\mathcal {X}}}).\)
Proof
It is clear from Definitions 7, 16, 19 and 22. \(\square \)
Proposition 2
Consider a PF\(\beta \)CAS \((\varLambda ,\widetilde{\varUpsilon })\) and \({{\mathcal {X}}}\in {\text {PF}}(\varLambda )\). Then the following properties holds.
-
(1)
\(\mathcal {L}^{{\text {PF}}}_{3}({{\mathcal {X}}})\ge \mathcal {L}^{{\text {PF}}}_{1}({{\mathcal {X}}}) \cup \mathcal {L}^{{\text {PF}}}_{2}({{\mathcal {X}}}).\)
-
(2)
\(\mathcal {U}^{{\text {PF}}}_{3}({{\mathcal {X}}})\le \mathcal {U}^{{\text {PF}}}_{1}({{\mathcal {X}}}) \cap \mathcal {U}^{{\text {PF}}}_{2}({{\mathcal {X}}}).\)
-
(3)
\(\mathcal {L}^{{\text {PF}}}_{4}({{\mathcal {X}}})\le \mathcal {L}^{{\text {PF}}}_{1}({{\mathcal {X}}}) \cap \mathcal {L}^{{\text {PF}}}_{2}({{\mathcal {X}}}).\)
-
(4)
\(\mathcal {U}^{{\text {PF}}}_{4}({{\mathcal {X}}})\ge \mathcal {U}^{{\text {PF}}}_{1}({{\mathcal {X}}}) \cup \mathcal {U}^{{\text {PF}}}_{2}({{\mathcal {X}}}).\)
Proof
It is obvious. \(\square \)
Remark 1
Consider a PF\(\beta \)CAS \((\varLambda ,\widetilde{\varUpsilon })\) and \({{\mathcal {X}}}\in {\text {PF}}(\varLambda )\). According to Example 2, you can see the following relations.
-
(1)
\(\mathcal {L}^{{\text {PF}}}_{1}({{\mathcal {X}}})\nleq \mathcal {L}^{{\text {PF}}}_{2}({{\mathcal {X}}})\) and \(\mathcal {L}^{{\text {PF}}}_{2}({{\mathcal {X}}})\nleq \mathcal {L}^{{\text {PF}}}_{1}({{\mathcal {X}}})\).
-
(2)
\(\mathcal {U}^{{\text {PF}}}_{1}({{\mathcal {X}}})\nleq \mathcal {U}^{{\text {PF}}}_{2}({{\mathcal {X}}})\) and \(\mathcal {U}^{{\text {PF}}}_{2}({{\mathcal {X}}})\nleq \mathcal {U}^{{\text {PF}}}_{1}({{\mathcal {X}}})\).
Based on the above remark and Example 2, the two model 1-PF\(\beta \)CRS and 2-PF\(\beta \)CRS are distinct from some of them.
q-ROF complementary \(\beta \)-neighborhood and three novel kinds of Cq-ROFRS
To treat the insufficiency in PF, Yager’s set the notion of q-ROF. In this section, we define the q-ROF complementary \(\beta \)-neighborhood and then we present three models of Cq-ROFRS. In addition, we study the relationships between us and the last method by Hussian et al. [56].
q-ROF complementary \(\beta \)-neighborhood
Definition 24
Consider a q-ROF\(\beta \)CAS \((\varTheta ,\widetilde{\Re })\) and q-ROF \(\beta =(\mu _{\beta },\nu _{\beta })\). Then for each \(u \in \varTheta \), define the q-ROF complementary \(\beta \)-neighborhood of u as follows.
Example 10
Consider a q-ROF\(\beta \)CAS \((\varTheta ,\widetilde{\Re })\), \(\varTheta =\{u_1,u_2,u_3,u_4,u_5,u_6\}\) and \(\widetilde{{{\mathcal {R}}}}=\{\widetilde{{{\mathcal {R}}}}_1, \widetilde{{{\mathcal {R}}}}_2\), \(\widetilde{{{\mathcal {R}}}}_3\), \(\widetilde{{{\mathcal {R}}}}_4\), \(\widetilde{{{\mathcal {R}}}}_5\}\), where \(\beta =\langle 0.5,0.3,0.8 \rangle \) are summarized in Table 6.
It is computed that
and the complete values of \(\widetilde{{\mathcal {Q}}}^{(0.8,0.7)}_{u}\) are listed in Table 7.
Thus, we can obtain their complement values \(\hat{\widetilde{{{\mathcal {Q}}}}^{(0.8,0.7)}_{u}}\) as in Table 8.
The first type of a Cq-ROFRS
Definition 25
Consider a q-ROF\(\beta \)CAS \((\varTheta ,\widetilde{\Re })\) and \(\beta = (\mu _{\beta },\nu _{\beta })\). For all \(u \in \varTheta \) and \(\mathcal{X}\in q-ROF(\varTheta )\). Define the 2-q-ROFLA \(\mathcal {L}^{q-ROF}_{2}(\mathcal{X})\) and 2-q-ROFUA \(\mathcal {U}^{q-ROF}_{2}(\mathcal{X})\) as follows.
Then the pair \(\left( \mathcal {L}^{q-ROF}_{2}(\mathcal{X}), \mathcal {U}^{q-ROF}_{2}(\mathcal{X})\right) \) is called the 2-q-ROF\(\beta \)CRS.
Example 11
Consider Example 10 and
Then we get the following results.
-
(1)
\(\mathcal {L}^{{\text {q-ROF}}}_{1}({{\mathcal {X}}})= \left\{ \begin{aligned}&\big (u_1,0.35,0.9\big ), \big (u_2,0.39,0.95\big ),\\&\big (u_3,0.5,0.9\big ), \big (u_4,0.55,0.9\big ),\\&\big (u_5,0.58,0.9\big ), \big (u_6,0.5,0.9\big ) \end{aligned} \right\} ,\)
\(\mathcal {U}^{{\text {q-ROF}}}_{1}({{\mathcal {X}}})=\left\{ \begin{aligned}&\big (u_1,0.98,0.35\big ), \big (u_2,0.98,0.3\big ),\\&\big (u_3,0.98,0.35\big ), \big (u_4,0.98,0.35\big ), \\&\big (u_5,0.98,0.35\big ), \big (u_6,0.98,0.35\big ) \end{aligned} \right\} \).
-
(2)
\(\mathcal {L}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}})= \left\{ \begin{aligned}&\big (u_1,0.58,0.83\big ), \big (u_2,0.3,0.83\big ),\\&\big (u_3,0.35,0.95\big ), \big (u_4,0.58,0.92\big ),\\&\big (u_5,0.58,0.83\big ), \big (u_6,0.58,0.88\big ) \end{aligned} \right\} ,\)
\(\mathcal {U}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}})=\left\{ \begin{aligned}&\big (u_1,0.98,0.35\big ), \big (u_2,0.98,0.35\big ),\\&\big (u_3,0.98,0.35\big ), \big (u_4,0.98,0.35\big ), \\&\big (u_5,0.98,0.35\big ), \big (u_6,0.98,0.35\big ) \end{aligned} \right\} \).
Theorem 4
Consider a q-ROF\(\beta \)CAS \((\varTheta ,\widetilde{\Re })\). Then, we have the following properties
-
(1)
\(\mathcal {L}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}})=(\mathcal {U}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}}^c))^c\).
-
(2)
\(\mathcal {U}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}})=(\mathcal {L}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}}^c))^c\).
-
(3)
If \({{\mathcal {X}}} \subseteq {{\mathcal {Y}}}\), then \(\mathcal {L}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}}) \subseteq \mathcal {L}^{{\text {q-ROF}}}_{2}({{\mathcal {Y}}})\).
-
(4)
If \({{\mathcal {X}}} \subseteq {{\mathcal {Y}}}\), then \(\mathcal {U}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}}) \subseteq \mathcal {U}^{{\text {q-ROF}}}_{2}({{\mathcal {Y}}})\).
-
(5)
\(\mathcal {L}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}} \cap {{\mathcal {Y}}})=\mathcal {L}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}}) \cap \mathcal {L}^{{\text {q-ROF}}}_{2}({{\mathcal {Y}}})\).
-
(6)
\(\mathcal {U}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}} \cap {{\mathcal {Y}}}) \subseteq \mathcal {U}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}}) \cap \mathcal {U}^{{\text {q-ROF}}}_{2}({{\mathcal {Y}}})\).
-
(7)
\(\mathcal {L}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}} \cup {{\mathcal {Y}}}) \supseteq \mathcal {L}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}}) \cup \mathcal {L}^{{\text {q-ROF}}}_{2}({{\mathcal {Y}}})\).
-
(8)
\(\mathcal {U}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}} \cup {{\mathcal {Y}}})=\mathcal {U}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}}) \cup \mathcal {U}^{{\text {q-ROF}}}_{2}({{\mathcal {Y}}})\).
-
(9)
\(\mathcal {L}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}}) \subseteq {{\mathcal {X}}} \subseteq \mathcal {U}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}})\).
Proof of Theorem 4:
We prove (1), (3), (5), (7) and (9) only.
-
(1)
$$\begin{aligned}&\mathcal {L}^{q-ROF}_{2}({\mathcal X}^{c}) \\&\quad = \left\{ \begin{aligned} \big (u_k,\wedge _{k=1}^{n}\big (\mu _{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\vee \mu _{\mathcal{X}^{c}}(u_r) \big ), \\ \vee _{k=1}^{n}\big (\nu _{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\wedge \nu _{\mathcal{X}^{c}}(u_r) \big )\big )_{q} \end{aligned} \right\} \\&\quad = \left\{ \begin{aligned} \big (u_k,\wedge _{k=1}^{n}\big (\mu _{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\vee (1-\mu _{\mathcal{X}}(u_j)) \big ),\\ \vee _{k=1}^{n}\big (\nu _{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\wedge (1-\nu _{\mathcal{X}}(u_r)) \big )\big )_{q} \end{aligned} \right\} \\&\quad = \left( \mathcal {U}^{q-ROF}_{2}({\mathcal X})\right) ^c \end{aligned}$$
-
(3)
Let \({\mathcal X}, {\mathcal Y} \in \text {q-ROF} (\varTheta )\) such that \({\mathcal X} \subseteq {\mathcal Y}\) (i.e., \({\mu }_\mathcal{X} \le \mathcal{\mu }_\mathcal{Y}\) and \({\nu }_\mathcal{X} \ge {\nu }_\mathcal{Y}\)) and \(u \in \varTheta \). Then we get the following result.
$$\begin{aligned}&\mathcal {L}^{q-ROF}_{2}({\mathcal X})(u) \\&\quad = \left\{ \begin{aligned} \big (u_k,\wedge _{k=1}^{n}\big (\mu _{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\vee \mu _\mathcal{X}(u_r) \big ), \\ \vee _{k=1}^{n}\big (\nu _{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\wedge \nu _\mathcal{X}(u_r) \big )\big )_{q} \end{aligned} \right\} \end{aligned}$$Now for \({\mathcal X} \subseteq {\mathcal Y}\), we have
$$\begin{aligned} {\mu }_{\mathcal {L}^{q-ROF}_{2}({\mathcal X})}= & {} \wedge _{k=1}^{n}\big (\mu _{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\vee \mu _\mathcal{X}(u_r) \big ) \\\le & {} \wedge _{k=1}^{n}\big (\mu _{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\vee \mu _\mathcal{Y}(u_r) \big ) \\= & {} {\mu }_{\mathcal {L}^{q-ROF}_{2}({\mathcal Y})} \end{aligned}$$and
$$\begin{aligned} {\nu }_{\mathcal {L}^{q-ROF}_{2}({\mathcal X})}= & {} \vee _{k=1}^{n}\big (\mu _{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\wedge \nu _\mathcal{X}(u_r) \big ) \\\ge & {} \vee _{k=1}^{n}\big (\mu _{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\wedge \nu _\mathcal{Y}(u_r) \big ) \\= & {} {\nu }_{\mathcal {L}^{q-ROF}_{2}({\mathcal Y})} \end{aligned}$$Therefore, \(\mathcal {L}^{q-ROF}_{2}({\mathcal X}) \subseteq \mathcal {L}^{q-ROF}_{2}({\mathcal Y})\).
-
(5)
$$\begin{aligned}&\mathcal {L}^{q-ROF}_{2}(\mathcal{X} \cap \mathcal{Y})\\&\quad = \left\{ \begin{aligned} \big (u_k,\wedge _{k=1}^{n}\big (\mu _{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\vee \mu _{(\mathcal{X} \cap \mathcal{Y})}(u_r) \big ), \\ \vee _{k=1}^{n}\big (\nu _{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\wedge \nu _{(\mathcal{X} \cap \mathcal{Y})}(u_r) \big )\big )_{q} \end{aligned} \right\} \\&\quad = \left\{ \begin{aligned} \big (u_k,\wedge _{k=1}^{n}\big (\mu _{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\vee ({\mu }_{\mathcal{X}}(y) \cap {\mu }_{\mathcal{Y}}(y)) \big ), \\ \vee _{r=1}^{m}\big ({\nu }_{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\wedge ({\nu }_{\mathcal{X}}(y) \cap {\nu }_{\mathcal{Y}}(y))\big )\big ) \end{aligned} \right\} \\&\quad = \left\{ \begin{aligned} \big (u_k,\wedge _{k=1}^{n}\big (\mu _{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\vee {\mu }_{\mathcal{X}}(y)\big ) \\ \wedge _{k=1}^{n} \big (\mu _{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\vee {\mu }_{\mathcal{Y}}(y)\big ), \\ \vee _{r=1}^{m}\big ({\nu }_{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\wedge {\nu }_{\mathcal{X}}(y)\big ) \\ \vee _{r=1}^{m} \big ({\nu }_{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\wedge {\nu }_{\mathcal{Y}}(y)\big )\big ) \end{aligned} \right\} \\&\quad = \mathcal {L}^{q-ROF}_{2}({\mathcal X})\cap \mathcal {L}^{q-ROF}_{2}({\mathcal Y}) \end{aligned}$$
-
(7)
$$\begin{aligned}&\mathcal {L}^{q-ROF}_{2}(\mathcal{X} \cup \mathcal{Y}) \\&\quad = \left\{ \begin{aligned} \big (u_k,\wedge _{k=1}^{n}\big (\mu _{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\vee \mu _{(\mathcal{X} \cup \mathcal{Y})}(u_r) \big ),\\ \vee _{k=1}^{n}\big (\nu _{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\wedge \nu _{(\mathcal{X} \cup \mathcal{Y})}(u_r) \big )\big )_{q} \end{aligned} \right\} \\&\quad = \left\{ \begin{aligned} \big (u_k,\wedge _{k=1}^{n}\big (\mu _{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\wedge ({\mu }_{\mathcal{X}}(y) \cup {\mu }_{\mathcal{Y}}(y)) \big ),\\ \vee _{r=1}^{m}\big ({\nu }_{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\wedge ({\nu }_{\mathcal{X}}(y) \cup {\nu }_{\mathcal{Y}}(y))\big )\big ) \end{aligned} \right\} \\&\quad \ge \left\{ \begin{aligned} \big (u_k,\wedge _{k=1}^{n}\big (\mu _{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\vee {\mu }_{\mathcal{X}}(y)\big ) \\ \vee \ \wedge _{k=1}^{n} \big (\mu _{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\vee {\mu }_{\mathcal{Y}}(y)\big ),\\ \vee _{r=1}^{m}\big ({\nu }_{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\wedge {\nu }_{\mathcal{X}}(y)\big ) \\ \wedge \ \vee _{r=1}^{m} \big ({\nu }_{\hat{\widetilde{\mathcal{Q}}^{\beta }_{u_k}}}(u_k,u_r)\wedge {\nu }_{\mathcal{Y}}(y)\big )\big ) \end{aligned} \right\} \\&\quad = \mathcal {L}^{q-ROF}_{2}({\mathcal X})\cup \mathcal {L}^{q-ROF}_{2}({\mathcal Y}) \end{aligned}$$
-
(9)
Straightforward. \(\square \)
Definition 26
Consider a q-ROF\(\beta \)CAS \((\varTheta ,\widetilde{\Re })\) and \(\beta = (\mu _{\beta },\nu _{\beta })\). Thus the rough and precision degrees of \({{\mathcal {X}}}\in {\text {q-ROF}}(\varTheta )\) are respectively seen as follows.
Example 12
Consider Example 11, then we have the following outcomes.
The second type of a Cq-ROFRS
Definition 27
Consider a q-ROF\(\beta \)CAS \((\varTheta ,\widetilde{\Re })\) and \(\beta = (\mu _{\beta },\nu _{\beta })\). Then for each \(u \in \varTheta \), define a new kind of q-ROF \(\beta \)-neighborhood as follows.
Example 13
Consider Example 10 and we can obtain the following results for \(_{1}\widetilde{\mathbb {Q}}^{\beta }_{u}\) as listed in Table 9.
Definition 28
Consider a q-ROF\(\beta \)CAS \((\varTheta ,\widetilde{\Re })\) and \(\beta = (\mu _{\beta },\nu _{\beta })\). For all \(u \in \varTheta \) and \(\mathcal{X}\in q-ROF(\varTheta )\). Define the 3-q-ROFLA \(\mathcal {L}^{q-ROF}_{3}(\mathcal{X})\) and 3-q-ROFUA \(\mathcal {U}^{q-ROF}_{3}(\mathcal{X})\) as follows.
Then, the pair \(\left( \mathcal {L}^{q-ROF}_{3}(\mathcal{X}), \mathcal {U}^{q-ROF}_{3}(\mathcal{X})\right) \) is called the 3-q-ROF\(\beta \)CRS.
Example 14
Consider Example 10 and 11. Then we have the following results.
Theorem 5
Consider a q-ROF\(\beta \)CAS \((\varTheta ,\widetilde{\Re })\). Then, we have the following properties
-
(1)
\(\mathcal {L}^{{\text {q-ROF}}}_{3}({{\mathcal {X}}})=(\mathcal {U}^{{\text {q-ROF}}}_{3}({{\mathcal {X}}}^c))^c\).
-
(2)
\(\mathcal {U}^{{\text {q-ROF}}}_{3}({{\mathcal {X}}})=(\mathcal {L}^{{\text {q-ROF}}}_{3}({{\mathcal {X}}}^c))^c\).
-
(3)
If \({{\mathcal {X}}} \subseteq {{\mathcal {Y}}}\), then \(\mathcal {L}^{{\text {q-ROF}}}_{3}({{\mathcal {X}}}) \subseteq \mathcal {L}^{{\text {q-ROF}}}_{3}({{\mathcal {Y}}})\).
-
(4)
If \({{\mathcal {X}}} \subseteq {{\mathcal {Y}}}\), then \(\mathcal {U}^{{\text {q-ROF}}}_{3}({{\mathcal {X}}}) \subseteq \mathcal {U}^{{\text {q-ROF}}}_{3}({{\mathcal {Y}}})\).
-
(5)
\(\mathcal {L}^{{\text {q-ROF}}}_{3}({{\mathcal {X}}} \cap {{\mathcal {Y}}})=\mathcal {L}^{{\text {q-ROF}}}_{3}({{\mathcal {X}}}) \cap \mathcal {L}^{{\text {q-ROF}}}_{3}({{\mathcal {Y}}})\).
-
(6)
\(\mathcal {U}^{{\text {q-ROF}}}_{3}({{\mathcal {X}}} \cap {{\mathcal {Y}}}) \subseteq \mathcal {U}^{{\text {q-ROF}}}_{3}({{\mathcal {X}}}) \cap \mathcal {U}^{{\text {q-ROF}}}_{3}({{\mathcal {Y}}})\).
-
(7)
\(\mathcal {L}^{{\text {q-ROF}}}_{3}({{\mathcal {X}}} \cup {{\mathcal {Y}}}) \supseteq \mathcal {L}^{{\text {q-ROF}}}_{3}({{\mathcal {X}}}) \cup \mathcal {L}^{{\text {q-ROF}}}_{3}({{\mathcal {Y}}})\).
-
(8)
\(\mathcal {U}^{{\text {q-ROF}}}_{3}({{\mathcal {X}}} \cup {{\mathcal {Y}}})=\mathcal {U}^{{\text {q-ROF}}}_{3}({{\mathcal {X}}}) \cup \mathcal {U}^{{\text {q-ROF}}}_{3}({{\mathcal {Y}}})\).
-
(9)
\(\mathcal {L}^{{\text {q-ROF}}}_{3}({{\mathcal {X}}}) \subseteq {{\mathcal {X}}} \subseteq \mathcal {U}^{{\text {q-ROF}}}_{3}({{\mathcal {X}}})\).
Proof
It is obvious. \(\square \)
Definition 29
Consider a q-ROF\(\beta \)CAS \((\varTheta ,\widetilde{\Re })\) and \(\beta = (\mu _{\beta },\nu _{\beta })\). Thus the rough and precision degrees of \({{\mathcal {X}}}\in {\text {q-ROF}}(\varTheta )\) are respectively seen as follows.
Example 15
Consider Example 14, then we have the following outcomes.
The third type of a Cq-ROFRS
Definition 30
Consider a q-ROF\(\beta \)CAS \((\varTheta ,\widetilde{\Re })\) and \(\beta = (\mu _{\beta },\nu _{\beta })\). Then for each \(u \in \varTheta \), define a new kind of q-ROF \(\beta \)-neighborhood as follows.
Example 16
Consider Example 10 and we can obtain the following results for \(_{2}\widetilde{\mathbb {Q}}^{\beta }_{u}\) as listed in Table 10.
Definition 31
Consider a q-ROF\(\beta \)CAS \((\varTheta ,\widetilde{\Re })\) and \(\beta = (\mu _{\beta },\nu _{\beta })\). For all \(u \in \varTheta \) and \(\mathcal{X}\in q-ROF(\varTheta )\). Define the 4-q-ROFLA \(\mathcal {L}^{q-ROF}_{4}(\mathcal{X})\) and 4-q-ROFUA \(\mathcal {U}^{q-ROF}_{4}(\mathcal{X})\) as follows.
Then the pair \(\left( \mathcal {L}^{q-ROF}_{4}(\mathcal{X}), \mathcal {U}^{q-ROF}_{4}(\mathcal{X})\right) \) is called the 4-q-ROF\(\beta \)CRS.
Example 17
Consider Examples 10 and 11. Then we get the following results.
Theorem 6
Consider a q-ROF\(\beta \)CAS \((\varTheta ,\widetilde{\Re })\). Then, we have the following properties
-
(1)
\(\mathcal {L}^{{\text {q-ROF}}}_{4}({{\mathcal {X}}})=(\mathcal {U}^{{\text {q-ROF}}}_{4}({{\mathcal {X}}}^c))^c\).
-
(2)
\(\mathcal {U}^{{\text {q-ROF}}}_{4}({{\mathcal {X}}})=(\mathcal {L}^{{\text {q-ROF}}}_{4}({{\mathcal {X}}}^c))^c\).
-
(3)
If \({{\mathcal {X}}} \subseteq {{\mathcal {Y}}}\), then \(\mathcal {L}^{{\text {q-ROF}}}_{4}({{\mathcal {X}}}) \subseteq \mathcal {L}^{{\text {q-ROF}}}_{4}({{\mathcal {Y}}})\).
-
(4)
If \({{\mathcal {X}}} \subseteq {{\mathcal {Y}}}\), then \(\mathcal {U}^{{\text {q-ROF}}}_{4}({{\mathcal {X}}}) \subseteq \mathcal {U}^{{\text {q-ROF}}}_{4}({{\mathcal {Y}}})\).
-
(5)
\(\mathcal {L}^{{\text {q-ROF}}}_{4}({{\mathcal {X}}} \cap {{\mathcal {Y}}})=\mathcal {L}^{{\text {q-ROF}}}_{4}({{\mathcal {X}}}) \cap \mathcal {L}^{{\text {q-ROF}}}_{4}({{\mathcal {Y}}})\).
-
(6)
\(\mathcal {U}^{{\text {q-ROF}}}_{4}({{\mathcal {X}}} \cap {{\mathcal {Y}}}) \subseteq \mathcal {U}^{{\text {q-ROF}}}_{4}({{\mathcal {X}}}) \cap \mathcal {U}^{{\text {q-ROF}}}_{4}({{\mathcal {Y}}})\).
-
(7)
\(\mathcal {L}^{{\text {q-ROF}}}_{4}({{\mathcal {X}}} \cup {{\mathcal {Y}}}) \supseteq \mathcal {L}^{{\text {q-ROF}}}_{4}({{\mathcal {X}}}) \cup \mathcal {L}^{{\text {q-ROF}}}_{4}({{\mathcal {Y}}})\).
-
(8)
\(\mathcal {U}^{{\text {q-ROF}}}_{4}({{\mathcal {X}}} \cup {{\mathcal {Y}}})=\mathcal {U}^{{\text {q-ROF}}}_{4}({{\mathcal {X}}}) \cup \mathcal {U}^{{\text {q-ROF}}}_{4}({{\mathcal {Y}}})\).
-
(9)
\(\mathcal {L}^{{\text {q-ROF}}}_{4}({{\mathcal {X}}}) \subseteq {{\mathcal {X}}} \subseteq \mathcal {U}^{{\text {q-ROF}}}_{4}({{\mathcal {X}}})\).
Proof
\(\square \)
Definition 32
Consider a q-ROF\(\beta \)CAS \((\varTheta ,\widetilde{\Re })\) and \(\beta = (\mu _{\beta },\nu _{\beta })\). Thus the rough and precision degrees of \({{\mathcal {X}}}\in {\text {q-ROF}}(\varTheta )\) are respectively seen as follows.
Example 18
Consider Example 17, then we have the following outcomes.
Relationships between the proposed methods
Next, we explain some relationships among these kinds.
Proposition 3
Consider a q-ROF\(\beta \)CAS \((\varTheta ,\widetilde{\Re })\) and \({{\mathcal {X}}}\in {\text {q-ROF}}(\varTheta )\). Then the following properties holds.
-
(1)
\(\mathcal {L}^{{\text {q-ROF}}}_{3}({{\mathcal {X}}}) \le \mathcal {L}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}}) \le \mathcal {L}^{{\text {q-ROF}}}_{4}({{\mathcal {X}}}).\)
-
(2)
\(\mathcal {L}^{{\text {q-ROF}}}_{3}({{\mathcal {X}}}) \le \mathcal {L}^{{\text {q-ROF}}}_{1}({{\mathcal {X}}}) \le \mathcal {L}^{{\text {q-ROF}}}_{4}({{\mathcal {X}}}).\)
-
(3)
\(\mathcal {U}^{{\text {q-ROF}}}_{4}({{\mathcal {X}}}) \le \mathcal {U}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}}) \le \mathcal {U}^{{\text {q-ROF}}}_{3}({{\mathcal {X}}}).\)
-
(4)
\(\mathcal {U}^{q-ROF}_{4}({{\mathcal {X}}}) \le \mathcal {U}^{{\text {q-ROF}}}_{1}({{\mathcal {X}}}) \le \mathcal {U}^{{\text {q-ROF}}}_{3}({{\mathcal {X}}}).\)
Proof
The proof is clear from Definitions 28 and 31. \(\square \)
Proposition 4
Consider a q-ROF\(\beta \)CAS \((\varTheta ,\widetilde{\Re })\) and \({{\mathcal {X}}}\in {\text {q-ROF}}(\varTheta )\). Then the following properties holds.
-
(1)
\(\mathcal {L}^{{\text {q-ROF}}}_{4}({{\mathcal {X}}})\ge \mathcal {L}^{{\text {q-ROF}}}_{1}({{\mathcal {X}}}) \cup \mathcal {L}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}}).\)
-
(2)
\(\mathcal {U}^{{\text {q-ROF}}}_{4}({{\mathcal {X}}})\le \mathcal {U}^{{\text {q-ROF}}}_{1}({{\mathcal {X}}}) \cap \mathcal {U}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}}).\)
- (3)
-
(4)
\(\mathcal {U}^{{\text {q-ROF}}}_{3}({{\mathcal {X}}})\ge \mathcal {U}^{{\text {q-ROF}}}_{1}({{\mathcal {X}}}) \cup \mathcal {U}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}}).\)
Proof
Straightforward. \(\square \)
Remark 2
Consider a q-ROF\(\beta \)CAS \((\varTheta ,\widetilde{\Re })\) and \({{\mathcal {X}}}\in {\text {q-ROF}}(\varTheta )\). From Example 11, you can see the following relations.
-
(1)
\(\mathcal {L}^{{\text {q-ROF}}}_{1}({{\mathcal {X}}})\nleq \mathcal {L}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}})\) and \(\mathcal {L}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}})\nleq \mathcal {L}^{{\text {q-ROF}}}_{1}({{\mathcal {X}}})\).
-
(2)
\(\mathcal {U}^{{\text {q-ROF}}}_{1}({{\mathcal {X}}})\nleq \mathcal {U}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}})\) and \(\mathcal {U}^{{\text {q-ROF}}}_{2}({{\mathcal {X}}})\le \mathcal {U}^{{\text {q-ROF}}}_{1}({{\mathcal {X}}})\).
Based on the above remark and Example 11, the two model 1-q-ROF\(\beta \)CAS and 2-q-ROF\(\beta \)CAS are distinct from some of them.
Decision-making approach using PF\(\beta \)CAS
Now, we illustrate the proposed theoretical study with a real example to clarify how this study is beneficial for the real problems.
Method on a CPFRS
Description and process
Assume that \(\varLambda =\{u_r:r=1,...,k\}\) is the set of alternatives, the m main attributes \(\widetilde{\varUpsilon }=\{\widetilde{{\varDelta }}_i: i=1,2,...,m\}\). Then \(\widetilde{\varUpsilon }(u_r)=(x_{rj},y_{rj})\) indicates the experts assessment outcome relevant to the alternatives \(u_r\) and the attribute \(\widetilde{{\varDelta }}_i\). Also, we suppose that PFN \(\beta =(\vartheta _{\beta },\zeta _{\beta })\). Thus \((\varLambda ,\widetilde{\varUpsilon })\) is a PF\(\beta \)CAS. Therefore, by using the proposed covering method, we set up the following steps to solve problems in MAPFDM.
Step 1: Construct MAPFDM with information system \((\varLambda ,\widetilde{\varUpsilon },\mathscr {S},\mathscr {E})\). So, we have the following formula.
and
where \(\bigvee \) and \(\bigwedge \) denotes to “max” and “min”, respectively, and \(\mathcal {R}\) is the score function. If we have \(\mathcal {P}=(\vartheta _{\mathcal {P}},\zeta _{\mathcal {P}})\), then \(\mathcal {R}(\mathcal {P})=\vartheta _{\mathcal {P}}^{2}-\zeta _{\mathcal {P}}^{2}\) and \(-1 \le \mathcal {R}(\mathcal {P}) \le 1.\)
Step 2: Counting the adequate distances \(\mathscr {E}_{\uparrow }\) and \(\mathscr {E}_{\downarrow }\) as follows:
and
where \(\mathcal {T}_{j}=(\mathcal {T}_{1},\mathcal {T}_{2},...,\mathcal {T}_{m})\) is the weight vector such that \(\sum \nolimits _{j=1}^{m}\mathcal {T}_{j}=1.\) And if we have two PFNs \(\mathcal {P}_{1}=(\vartheta _{\mathcal {P}_{1}},\zeta _{\mathcal {P}_{1}})\) and \( \mathcal {P}_{2}=(\vartheta _{\mathcal {P}_{2}},\zeta _{\mathcal {P}_{2}})\), then \(\mathcal {E}(\mathcal {P}_{1},\mathcal {P}_{2})=\frac{1}{2}\bigg [|\vartheta _{\mathcal {P}_{1}}^{2}-\vartheta _{\mathcal {P}_{2}}^{2}|+|\zeta _{\mathcal {P}_{1}}^{2}-\zeta _{\mathcal {P}_{2}}^{2}|+|\xi _{\mathcal {P}_{1}}-\xi _{\mathcal {P}_{2}}|\bigg ]\) and \(\xi _{\mathcal {P}}=\sqrt{1-\vartheta _{\mathcal {P}}^{2}-\zeta _{\mathcal {P}}^{2}}\). \(\mathscr {E}=(\mathscr {E}_{\uparrow },\mathscr {E}_{\downarrow })\)
Step 3: Based on the presented knowledge, calculate the lower and upper approximation of \({\mathcal {X}}\) using 3-PF\(\beta \)CRSs as the following equations.
Step 4: If \(0< \gamma \le 1\) is a threshold and \(\mathscr {T}(u,v)=\frac{uv}{\sqrt{1+(1-u^{2})(1-v^{2})}}\). Calculate the sorting function of the MAPFDM problem as follows.
and hence sorting the alternatives.
The following algorithm is established from the above data and it put forward in Algorithm 1.
Test example
Presume that \(\varLambda =\{u_1,u_2,...,u_8\}\) is a set of eight emergency plans and \(\widetilde{\varUpsilon }=\{\)Comprehensiveness and completeness \((\widetilde{{\varDelta }}_1)\), Timely Response \((\widetilde{{\varDelta }}_2)\), Feasibility \((\widetilde{{\varDelta }}_3)\), Budgeting the cost \((\widetilde{{\varDelta }}_4)\), Ability to adjust the plan \((\widetilde{{\varDelta }}_5)\) \(\}\) is the attribute set. The proceedings of the mentioned algorithm 1 are indicated below.
Step 1: In the set of attributes, an expert analyses each alternative and provides its conclusions with relevant values that are concise in Table 11.
Step 2: Expert gives the following results, according to the significance of these five attributes.
Step 3: If we have the following weights \(\mathcal {T}_{1}=0.18,\ \mathcal {T}_{2}=0.32,\ \mathcal {T}_{3}=0.1,\ \mathcal {T}_{4}=0.25,\ \mathcal {T}_{5}=0.15\), then we compute the suitable distances as follows.
Therefore,
Step 4: Using 3-PF\(\beta \)CRSs, compute the lower and upper approximation as the following results.
First, we calculate the PF \(\beta \)-neighborhoods as follows.
The complete values of \(\widetilde{{{\mathcal {P}}}}^{(0.7,0.4)}_{u_s}, s = 1,2,...,6\) are given in Table 12.
The PF complementary \(\beta \)-neighborhood of \(\widetilde{{{\mathcal {P}}}}^{(0.7,0.4)}_{u_s}, s = 1,2,...,6\) is given in Table 13.
Moreover, the \(_{1}\widetilde{\P }^{\beta }_{u}\) neighborhood as follow in Table 14.
Then using such information, we can obtain the results as follows.
Step 5: Compute the sorting function \(\varkappa (u)\) as follows.
and the sorting values as below
Method on a Cq-ROFRS
Description and process
Assume that \(\varTheta =\{u_r:r=1,...,k\}\) is the set of alternatives, the m main attributes \(\widetilde{\Re }=\{\widetilde{{\delta }}_i: i=1,2,..,m\}\). Then \(\hat{{\mathcal {E}}}_{{\text {in}}}\) and \(\hat{{\mathcal {E}}}_{{\text {out}}}\) are the experts assessment outcomes relevant to the alternatives \(u_r\) and the attribute \(\widetilde{{\delta }}_i\) by \(\mu _{ri}\) and \(\nu _{ri}\). Thus \(\widetilde{{\delta }}_i(u_r)=(\mu _{ri},\nu _{ri})\) is q-ROFN and represents by the following matrix, where \(\hat{{\mathcal {E}}}_{{\text {in}}}\) is the membership grade \(\mu _{ri}\) and \(\hat{{\mathcal {E}}}_{{\text {out}}}\) is the membership grade \(\nu _{ri}\).
So, \((\varTheta ,\widetilde{\Re })\) is a q-ROF\(\beta \)CAS. Therefore, we give the following steps to solve MADM problems through presented method on a Cq-ROFRS.
Step 1: Construct q-ROF plus ideal and q-ROF minus ideal as the following formulas.
and
where \(\bigvee \) and \(\bigwedge \) denotes to “max” and “min”, respectively, and \(\mathcal {S}\) is the score function. If we have \(\mathcal {X}=(\mu _{\mathcal {X}},\nu _{\mathcal {X}})\), then \(\mathcal {S}(\mathcal {X})=\frac{1}{2}\big (1+\mu _{\mathcal {X}}^{q}-\nu _{\mathcal {X}}^{q}\big )\) and \(q \ge 1\).
Step 2: Counting the adequate distances \(\mathscr {D}^{\oplus }\) and \(\mathscr {D}^{\ominus }\) as follows:
where \(\mathcal {W}_{j}=(\mathcal {W}_{1},\mathcal {W}_{2},...,\mathcal {W}_{m})\) is the weight vector such that \(\sum \nolimits _{j=1}^{m}\mathcal {W}_{j}=1.\) So, we have \(\mathscr {D}=(\mathscr {D}^{\oplus },\mathscr {D}^{\ominus }).\)
Step 3: Compute the lower and upper approximation of \({\mathcal {X}}\) using 4-q-ROF\(\beta \)CRSs as the following equations.
Step 4: If \(0< \xi \le 1\) is a threshold and \(\mathcal {T}(u,v)=\frac{uv}{\root q \of {1+(1-u^{q})(1-v^{q})}}\), then compute the sorting function of the MAq-ROFDM problem as follows.
and hence sorting the alternatives.
The following algorithm is established from the above data and it put forward in Algorithm 2.
Test example
Assume that \(\varTheta =\{u_1,u_2,...,u_5\}\) is a set of five candidates for the faculty position in U university and \(\widetilde{\Re }=\{\)Research productivity \((\widetilde{{\delta }}_1)\), Managerial skill \((\widetilde{{\delta }}_2)\), Impact on research community \((\widetilde{{\delta }}_3)\), Ability to work under pressure \((\widetilde{{\delta }}_4)\), Academic leadership qualities \((\widetilde{{\delta }}_5)\), Contribution to U University \((\widetilde{{\delta }}_6)\) \(\}\) is the attribute set. The proceedings of the mentioned algorithm 2 are indicated below.
Step 1: The decision maker’s evaluate \(\hat{{\mathcal {E}}}_{{\text {in}}}\) and \(\hat{{\mathcal {E}}}_{{\text {out}}}\) are established in Table 15.
Step 2: Compute \({\mathscr {L}}^{\oplus }\) and \({\mathscr {L}}^{\ominus }\) as the following.
Step 3: If we have the weights for all attribute as follows \(\mathcal {W}_{j}=\)(0.2,0.18, 0.22, 0.12, 0.15, 0.13), then we compute the distances as indicated below.
Step 4: The lower and upper approximation of \(\mathscr {D}\) using 3-q-ROF\(\beta \)CRSs are calculated as the following.
First, we investigate the q-ROF \(\beta \)-neighborhood and q-ROF complementary \(\beta \)-neighborhood as established, respectively, in Tables 16 and 17.
Now, we can calculate \(_{2}\widetilde{\mathbb {Q}}^{\beta }_{u}\) as the following Table 18.
Step 4: Compute the sorting function of the MAq-ROFDM problem as follows.
Then the order of these candidates is \(u_2 \approx u_3> u_4> u_1 > u_5,\) thus the second candidate is proper for this job.
Comparative analysis
The goal of this part is to explain the differences between our proposed study and the previous work. We split our vision into two parts, that is, CPFRS and Cq-ROFRS, respectively.
-
(1)
The prime objective of the given method of CPFRS is capable of promoting the lower approximation and minimizing the upper approximation of the former investigation by Zhan’s in [52] as apparent in Examples 2, 5 and 8. To state the rapprochements through different processes, that is Yager’s process [45], Zhang’s process [49], Zhan’s process [52] and our process, the classification score of these decision-making samples are recorded in Table 19 and 20 . Also, we demonstrate Fig. 1, to show the values of ordering variables between Zhan’s model and our model. From this figure, you can see that our outcomes are greater than Zhan’s outcomes, and also the first candidate is the suitable one among all in the two presented models. Tables 19 and 20 interpreted that the optimal decision is the same alternative \(u_1\) for the four processes i.e., (Yager’s [45], Zhang’s [48], Zhan’s [52] and our’s), that is make our approach is feasible and effective. Figures 2 and 3 states the another way to show that the variances through Zhan’s method [52] and our method.
Figure 2 contains two parts. The left part illustrates that our membership \(\vartheta \) of the lower approximation is higher than in Zhan et al. [52]. On the other hand, the right part shows that our non-membership \(\zeta \) of the lower approximation is lower than in Zhan et al. [52]. This means that our lower is better than Zhan’s lower from the view of raising the lower approximation which makes our approach is suitable than others.
Figure 3 also have two figures. The left one explained that the our membership \(\vartheta \) of the upper approximation is lower than in Zhan et al. [52]. In contrast, the other figure clarifies that the our non- membership \(\zeta \) of the upper approximation is higher than in Zhan et al. [52]. This shows that our upper is better than Zhan’s upper from the view of lowering the upper approximation that makes our model is more appropriate than others.
To sum, these two images mean that our lower approximation is better than Zhan-lower and our upper approximation is lower than Zhan-upper which makes our proposed study is more appropriate than others. Therefore, the presented method is reliable, and effective and is considered as a generalization of the Zhan’s method.
-
(2)
q-ROF is considered as the generalization of PFS (where q = 2) and IFS (where q = 1). The presented model of Cq-ROFRS is the natural extension to Hussain et al. [57] which investigates the novel covering method under the notion of q-ROF \(\beta \)-neighborhoods. Here, we present the definition of q-ROF complementary \(\beta \)-neighborhoods and combine these two types of neighborhoods to investigate two other kinds of q-ROF \(\beta \)-neighborhoods. Hence, we used these types to construct three novel kinds of Cq-ROFRS model. Now, we build the Tables 21 and 22 to demonstrate the outcomes between Hussain et al. [57] and our’s.
From Tables 21 and 22, we can say that the best decree is the second candidate \(u_2\) among two different approaches (i.e., Hussain et al. [57] and our’s). This means that the decision is the same alternative. This proofs that the proposed model is effective and reliable.
Figures 4 and 5 states the another way to show that the variances through Hussain’s method [52] and our method.
Figure 4 splits into two parts. The left split illustrates that the \(\mu \) of the lower approximation is higher than in Hussain et al. [57]. On the other hand, the right split shows that the \(\nu \) of the lower approximation is lower than in Hussain et al. [57].
Figure 5 also have two images. These figures explained the differences between \(\mu \) and \(\nu \) in Hussain et al. [57] and ours.
In particular, the above two images mean that our lower approximation is better than Hussain-lower and our upper approximation is lower than Hussain-upper. Therefore, the presented method is reliable, and effective and is considered as a generalization of the Hussain method.
To simplify our studies and the relations between our presented models in CPFRS and Cq-ROFRS, we give the following Fig. 6 that explained in briefly our vision in this study. This Figure clarifies that the Cq-ROFRS is a generalization of CPFRS.
Conclusion
The main purpose of the proposed article is to improve Zhan et al’s model in [52] and Hussain et al.’s model in [57]. The chief investigation of the study is summarized as follows.
-
(1)
We extend the study of CPFRS through PF complementary \(\beta \)-neighborhood. By joining the concept of PF \(\beta \)-neighborhood and PF complementary \(\beta \)-neighborhood, we obtain three novel methods on a CPFRS. Also, we investigate the comparisons between the Zhan et al.’s process and our process. These differences illustrate that 3-PF\(\beta \)CRS is the best approximations among 1-PF\(\beta \)CRS (Zhan et al.’s model), 2-PF\(\beta \)CRS and 4-PF\(\beta \)CRS. It is easy to see Tables 19 and 20 and Figs. 1, 2 and 3, which shows these comparisons clearly.
-
(2)
To generalize Hussain et al.’s model and our models via PF in “PF complementary \(\beta \)-neighborhood and three novel kinds of CPFRS”, the meaning of q-ROF complementary \(\beta \)-neighborhood are distinguished. Also, we combine the q-ROF \(\beta \)-neighborhood and q-ROF complementary \(\beta \)-neighborhood to estimate new models of Cq-ROFRS. Moreover, we discuss the differences between Hussain et al.’s method and our’s. These comparisons explain that 4-q-ROF\(\beta \)CRS is the best approximations among 1-q-ROF\(\beta \)CRS (Hussain et al.’s model), 2-q-ROF\(\beta \)CRS and 3-q-ROF\(\beta \)CRS. It is handy to see Tables 15 and 16 and Figs. 4 and 5, which shows these differences clearly.
-
(3)
In short, the proposed models are extended on the first studies on CPFRS by Zhan et al’s [52] and Cq-ROFRS by Hussain et al.’s [57] methods. Zhan et al.’s paper is a generalization to the notions on covering method by IFS and Hussain et al.’s article is a generalization to the last studies on CPFRS by Zhan et al.’s, so it is already generalized to IFS. This article is working in the same direction as these studies and is splits into two main parts. The first one talks about the CPFRS model and makes a generalization of Zhan et al.’s model. The second part presents the new generalization of Zhan et al.’s model, Hussain et al.’s model, and our’s in the first part by the methodology of a Cq-ROFRS model.
-
(4)
Cq-ROFRS investigates to solve the limitations in the CPFRS, CIFRS, and CFRS. CIFRS deals with the membership and non-membership degrees not only on the membership degree as CFRS. CPFRS is more accurate than CIFRS because it deals with membership and non-membership degrees that their square sum is less than or equal to 1. To treat the limitation on CPFRS, Cq-ROFRS is considered as a generalization of CPFRS, CIFRS, and CFRS because of the values of q. Further studies will focus on explaining the topological properties of the CPFRS and Cq-ROFRS as in [58, 59] and extend to the graph theory as in [60].
Data availability
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References
Pawlak Z (1982) Rough sets. Int J Comput Inf Sci 11(5):341–356
Pawlak Z (1985) Rough concept analysis. Bull Pol Acad Sci Math 33:9–10
Atef M, Khalil AM, Li SG, Azzam A, El Atik AA (2020) Comparison of six types of rough approximations based on j-neighborhood space and j-adhesion neighborhood space. J Intell Fuzzy Syst 39:4515–4531
El Atik AA, Nawar AS, Atef M (2021) Rough approximation models via graphs based on neighborhood systems. Granul Comput 6:1025–1035. https://doi.org/10.1007/s41066-020-00245-z
Hu Q, Zhang L, Chen D, Pedrycz W, Yu D (2010) Gaussian kernel based fuzzy rough sets: model, uncertainty measures and applications. Int J Approx Reason 51(4):453–471
Jensen R, Shen Q (2004) Semantics-preserving dimensionality reduction: rough and fuzzy-rough-based approaches. IEEE Trans Knowl Data Eng 16(12):1457–1471
Liu G, Zhu W (2008) The algebraic structures of generalized rough set theory. Inf Sci 178:4105–4113
Pal S, Mitra P (2004) Case generation using rough sets with fuzzy representation. IEEE Trans Knowl Data Eng 16:293–300
Qian Y, Liang J, Dang C (2009) Knowledge structure, knowledge granulation and knowledge distance in a knowledge base. Int J Approx Reason 50(1):174–188
Yang XP, Li TJ (2006) The minimization of axiom sets characterizing generalized approximation operators. Inf Sci 176:887–899
Yao YY (2010) Three-way decisions with probabilistic rough sets. Inf Sci 180(3):341–353
Zhang H, Liang H, Liu D (2004) Two new operators in rough set theory with applications to fuzzy sets. Inf Sci 166(1–4):147–165
Ziarko W (1993) Variable precision rough set model. J Comput Syst Sci 46(1):39–59
Pomykala JA (1987) Approximation operations in approximation space. Bull Pol Acad Sci 35:653–662
Pomykala JA (1988) On definability in the nondeterministic information system. Bull Pol Acad Sci 36:193–210
Yao YY (1998) Relational interpretations of neighborhood operators and rough set approximation operators. Inf Sci 111:239–259
Yao YY, Yao B (2012) Covering based rough set approximations. Inf Sci 200:91–107
Couso I, Dubois D (2011) Rough sets, coverings and incomplete information. Fund Inf 108(3–4):223–247
Bonikowski Z, Bryniarski E, Wybraniec-Skardowska U (1998) Extensions and intentions in rough set theory. Inf Sci 107:149–167
Zhu W (2007) Topological approaches to covering rough sets. Inf Sci 177:1499–1508
Zhu W, Wang F (2003) Reduction and axiomization of covering generalized rough sets. Inf Sci 152:217–230
Zhu W, Wang F (2007) On three types of covering rough sets. IEEE Trans Knowl Data Eng 19:1131–1144
Zhu W, Wang F (2012) The fourth types of covering-based rough sets. Inf Sci 201:80–92
Tsang ECC, Chen D, Yeung DS (2008) Approximations and reducts with covering generalized rough sets. Comput Math Appl 56:279–289
Xu WH, Zhang WX (2007) Measuring roughness of generalized rough sets induced a covering. Fuzzy Sets Syst 158:2443–2455
Liu G, Sai Y (2009) A comparison of two types of rough sets induced by coverings. Int J Approx Reason 50:521–528
Ma L (2012) On some types of neighborhood related covering rough sets. Int J Approx Reason 53:901–911
Dubois D, Prade H (1990) Rough fuzzy sets and fuzzy rough sets. Int J Gen Syst 17:191–201
Deng T, Chen Y, Xu W, Dai Q (2007) A novel approach to fuzzy rough sets based on a fuzzy covering. Inf Sci 177:2308–2326
Atef M, Nada S, Gumaei A, Nawar AS (2021) On three types of soft rough covering-based fuzzy sets. J Math. https://doi.org/10.1155/2021/6677298 (Article ID 6677298)
Atef M, Nada SI (2021) On three types of soft fuzzy coverings based rough sets. Math Comput Simul 185:452–467
Li TJ, Leung Y, Zhang WX (2008) Generalized fuzzy rough approximation operators based on fuzzy covering. Int J Approx Reason 48:836–856
Ma J, Atef M, Nada S, Nawar A (2020) Certain types of covering-based multigranulation \((\mathscr {I},\mathscr {T})\)-fuzzy rough sets with application to decision-making. Complexity 2020:1–20. https://doi.org/10.1155/2020/6661782
Ma J, Atef M, Khalil AM, Hassan N, Chen G-X (2020) Novel models of fuzzy rough coverings based on fuzzy \(\alpha \)-neighborhood and its application to decision-making. IEEE Access 8:224354–224364. https://doi.org/10.1109/ACCESS.2020.3044213
Ma L (2016) Two fuzzy covering rough set models and their generalizations over fuzzy lattices. Fuzzy Sets Syst 294:1–17
Yang B, Hu BQ (2017) On some types of fuzzy covering based rough sets. Fuzzy Sets Syst 312:36–65
Yang B, Hu BQ (2019) Fuzzy neighborhood operators and derived fuzzy coverings. Fuzzy Sets Syst 370:1–33
Zadeh LA (1965) Fuzzy sets. Inf Control 8:338–353
Atanassov KT (1986) Intuitionistic fuzzy sets. Fuzzy Sets Syst 20:87–96
Atanassov KT, Pasi G, Yager RR (2015) Intuitionistic fuzzy interpretations of multi-criteria multi-person and multi-measurement tool decision-making. Int J Syst Sci 36:859–868
Huang B, Guo C, Zhang Y, Li H, Zhou X (2014) Intuitionistic fuzzy multigranulation rough sets. Inf Sci 277:299–320
Huang B, Guo C, Zhang Y, Li H, Zhou X (2016) An intuitionistic fuzzy graded covering rough sets. Knowl-Based Syst 107:155–178
Alcantud JCR, Torra V (2018) Decomposition theorems and extension principles for hesitant fuzzy sets. Inf Fusion 41:48–56
Yager RR (2013) Pythagorean fuzzy subsets. In: Joint IFSA world congress and NAFIPS annual meeting (IFSA/NAFIPS), Edmonton, AB, pp 57–61. https://doi.org/10.1109/IFSA-NAFIPS.2013.6608375
Yager RR (2014) Pythagorean membership grades in multi-criteria decision making. IEEE Trans Fuzzy Syst 22:958–965
Yager RR (2016) Properties and applications of Pythagorean fuzzy sets. Springer, Berlin
Garg H (2016) A new generalized Pythagorean fuzzy information aggregation using Einstein operations and its application to decision making. Int J Intell Syst 31:886–920
Garg H (2017) Generalized Pythagorean geometric aggregation operations using Einstein t-norm for multicriteria decision-making problem. Int J Intell Syst 32:597–630
Zhang XL, Xu ZS (2014) Extensions of TOPSIS for multiple criteria decision making with Pythagorean fuzzy sets. Int J Intell Syst 29:1061–1078
Hussain A, Ali MI, Mahmood T (2020) Pythagorean fuzzy soft rough sets and their applications in decision-making. J Taibah Univ Sci 14(1):101–113
Wang L, Garg H (2021) Algorithm for multiple attribute decision-making with interactive archimedean norm operations under Pythagorean fuzzy uncertainty. Int J Comput Intell Syst 14(1):503–527
Zhan J, Sun B, Zhang X (2020) PF-TOPSIS method based on CPFRS models: an application to unconventional emergency events. Comput Ind Eng 139:106192
Yager RR (2017) Generalized orthopair fuzzy sets. IEEE Trans Fuzzy Syst 25(5):1222–1230
Yager RR, Alajlan N (2017) Approximate reasoning with generalized orthopair fuzzy sets. Inf Fusion 38:65–73
Ali MI (2019) Another view on q-rung orthopair fuzzy sets. Int J Intell Syst 33:2139–2153
Garg H (2021) CN-q-ROFS: connection number based q-rung orthopair fuzzy set and their application to decision-making process. Int J Intell Syst 36(7):2106–2143
Hussain A, Ali AI, Mahmood T (2019) Covering based q-rung orthopair fuzzy rough set model hybrid with TOPSIS for multi-attribute decision making. J Intell Fuzzy Syst 37:981–993
Olgun M, Unver M, Yardimci S (2021) Pythagorean fuzzy points and applications in pattern recognition and Pythagorean fuzzy topologies. Soft Comput 25(7):5225–5232
Turkarslan E, Unver M, Olgun M (2021) \({\varvec {q}} \)-Rung orthopair fuzzy topological spaces. Lobachevskii J Math 42(2):470–478
Atef M, El Atik AA, Nawar A (2021) Fuzzy topological structures via fuzzy graphs and their applications. Soft Comput 25(8):6013–6027
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Garg, H., Atef, M. Cq-ROFRS: covering q-rung orthopair fuzzy rough sets and its application to multi-attribute decision-making process. Complex Intell. Syst. 8, 2349–2370 (2022). https://doi.org/10.1007/s40747-021-00622-4
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DOI: https://doi.org/10.1007/s40747-021-00622-4