In the present communication, we introduce the theory of Type-II generalized Pythagorean bipolar fuzzy soft sets and define complementation, union, intersection, AND, and OR. The Type-II generalized Pythagorean bipolar fuzzy soft sets are presented as a generalization of soft sets. We showed De Morgan’s laws, associate laws, and distributive laws in Type-II generalized Pythagorean bipolar fuzzy soft set theory. Also, we advocate an algorithm to solve the decision-making problem based on a soft set model.
Many uncertain theories put forward as fuzzy set [1], intuitionistic fuzzy set [2], bipolar fuzzy sets [3] and Pythagorean fuzzy set [4]. Zadeh, introduced fuzzy set, suggests that decision-makers solve uncertain problems by considering membership degree. Atanassov introduces the concept of an intuitionistic fuzzy set. It is characterized by a degree of membership and non-membership satisfying the condition that the sum of its membership degree and non-membership degree does not exceed unity. However, we may interact a problem in decision-making events where the sum of the degree of membership and non-membership of a particular attribute is exceeded one-the concept of Pythagorean fuzzy sets introduced by Yager. The theory of soft sets proposed by Molodtsov [5]. It is a tool of parameterization for coping with uncertainties. Compared with other uncertain theories, soft sets reflect the objectivity and complexity of decision-making during actual situations more accurately. It has been an outstanding achievement both in theories and applications.
Moreover, combining soft sets with other mathematical models is also a critical research area. The concept of the fuzzy soft set by Maji [6], intuitionistic fuzzy soft set [7], and Saleem Abdullah et al., initiated the concept of bipolar fuzzy soft sets [8]. Pinaki Majumdara et al., defined the concept of discussed generalized fuzzy soft sets [9]. In recent years, Peng et al., [10] has extended fuzzy soft set to Pythagorean fuzzy soft set. In 2011, Alkhazaleh et al., [11] introduced the concept of possibility fuzzy soft sets. Yager et al., [12] discuss the application for Pythagorean membership grades, complex numbers, and decision making under 2014. In 2018, Mohana et al., [13] interact bipolar Pythagorean fuzzy sets with an application under decision-making problems. Akram et al., [14] initiate the new type of models for decision making based on rough Pythagorean fuzzy bipolar soft set in 2018. Alkhazaleh et al., [15] discussed the theory of generalized interval-valued fuzzy soft set in 2012. Jana and Pal studied bipolar intuitionistic fuzzy soft sets with applications [16]. In 2019, Jana and Pal introduced Pythagorean fuzzy dombi aggregation operators [17]. Recently, Palanikumar et al., [18] discuss the application for possibility Pythagorean bipolar fuzzy soft sets.
This paper aims to extend the concept of generalized fuzzy soft sets to the parameterization of Type-II generalized Pythagorean bipolar fuzzy sets. We shall further establish a similarity measure based on the soft set model.
Definition 1. [13] Let \(X\) be a non-empty set of the universe, Pythagorean bipolar fuzzy set(PBFS) \(A\) in \(X\) is an object having the following form: \[A= \{ x, \zeta^{+}_{A}(x), \xi^{+}_{A}(x), \zeta^{-}_{A}(x), \xi^{-}_{A}(x)| x\in X \},\] where \(\zeta^{+}_{A}(x), \xi^{+}_{A}(x) \), \(\zeta^{-}_{A}(x), \xi^{-}_{A}(x)\) represent the degree of positive membership, degree of positive non-membership, degree of negative membership and degree of negative non-membership of \(A\) respectively. Consider the mapping \(\zeta^{+}_{A}, \xi^{+}_{A}: X \rightarrow [0,1]\), \(\zeta^{-}_{A}, \xi^{-}_{A}: X \rightarrow [-1,0]\) such that \[0 \leq (\zeta^{+}_{A}(x))^{2}+(\xi^{+}_{A}(x))^{2} \leq 1\;\text{ and }\;-1 \leq -\Big[ (\zeta^{-}_{A}(x))^{2}+(\xi^{-}_{A}(x))^{2}\Big] \leq 0.\] The degree of indeterminacy is determined as \[\pi^{+}_{A}(x)=\Big[\sqrt{1-(\zeta^{+}_{A}(x))^{2}-(\xi^{+}_{A}(x))^{2}}\,\,\Big]\;\text{ and }\;\pi^{-}_{A}(x)=-\Big[\sqrt{1-(\zeta^{-}_{A}(x))^{2}-(\xi^{-}_{A}(x))^{2}}\,\,\Big].\] Then \(A= \langle \zeta^{+}_{A}, \xi^{+}_{A}, \zeta^{-}_{A}, \xi^{-}_{A}\rangle\) is called a Pythagorean bipolar fuzzy number(PBFN).
Definition 2. [13] Given that \(\alpha_{1}= (\zeta^{+}_{\alpha_{1}}, \xi^{+}_{\alpha_{1}}, \zeta^{-}_{\alpha_{1}}, \xi^{-}_{\alpha_{1}})\), \(\alpha_{2} = (\zeta^{+}_{\alpha_{2}}, \xi^{+}_{\alpha_{2}}, \zeta^{-}_{\alpha_{2}}, \xi^{-}_{\alpha_{2}})\) and \(\alpha_{3}= (\zeta^{+}_{\alpha_{3}}, \xi^{+}_{\alpha_{3}}, \zeta^{-}_{\alpha_{3}}, \xi^{-}_{\alpha_{3}})\) are any three PBFN’s over \((X,E)\), then the following properties are holds:
Definition 3. [8] Let \(X\) be a non-empty set of the universe and \(E\) be a set of parameter. The pair \((\mathscr{M}, A)\) is called a bipolar fuzzy soft set(BFSS) on \(X\) if \(A \subseteq E\) and \(\mathscr{M}: A \rightarrow \mathscr{GBM}^{X},\) where \(\mathscr{GBM}^{X}\) is the set of all bipolar fuzzy subsets of \(X\).
Definition 4. [14] Let \(X\) be a non-empty set of the universe and \(E\) be a set of parameter. The pair \((\mathscr{M}, A)\) is called a Pythagorean bipolar fuzzy soft set(PBFSS) on \(X\) if \(A \subseteq E\) and \(\mathscr{M}: A \rightarrow P\mathscr{GBM}^{X},\) where \(P\mathscr{GBM}^{X}\) is the set of all Pythagorean bipolar fuzzy subsets of \(X\).
Definition 5. [9] Let \(X=\{x_{1}, x_{2},…,x_{n}\}\) be a non-empty set of the universe and \(E=\{e_{1}, e_{2},…,e_{m}\}\) be a set of parameter. The pair \((X,E)\) is a soft universe. Consider the mapping \(\mathscr{M}: E \rightarrow I^{X}\) and \(\xi\) be a fuzzy subset of \(E\), i.e. \(\xi : E \rightarrow I=[0,1]\), where \(I^{X}\) is the collection of all fuzzy subsets of \(X\). Let \(\mathscr{M}_{\xi}: E \rightarrow I^{X} \times I\) be a function defined as \(\mathscr{M}_{\xi}(e)= (\mathscr{M}(e)(x), \xi(e)), \forall x \in X\). Then \(\mathscr{M}_{\xi}\) is called a generalized fuzzy soft set(GFSS) on \((X,E)\). Here for each parameter \(e_{i}\), \(\mathscr{M}_{\xi}(e_{i})= (\mathscr{M}(e_{i})(x), \xi(e_{i}))\) indicates not only the degree of belongingness of the elements of \(X\) in \(\mathscr{M}(e_{i})\) but also the degree of possibility of such belongingness which is represented by \(\xi(e_{i})\). So we can write \(\mathscr{M}_{\xi}(e_{i})\) as follows: \[\mathscr{M}_{\xi}(e_{i}) = \left(\Big\{\frac {x_{1}} {\mathscr{M}(e_{i})(x_{1})}, \frac {x_{2}} {\mathscr{M}(e_{i})(x_{2})},…,\frac {x_{n}} {\mathscr{M}(e_{i})(x_{n})} \Big\}, \xi(e_{i})\right),\] where \(\mathscr{M}(e_{i})(x_{1})\), \(\mathscr{M}(e_{i})(x_{2})\),…,\(\mathscr{M}(e_{i})(x_{n})\) are the degrees of belongingness and \(\xi(e_{i})\) is the degree of possibility of such belongingness.
Definition 6. [11] Let \(X=\{x_{1}, x_{2},…,x_{n}\}\) be a non-empty set of the universe and \(E=\{e_{1}, e_{2},…,e_{m}\}\) be a set of parameter. The pair \((X,E)\) is a soft universe. Consider the mapping \(\mathscr{M}: E \rightarrow \mathscr{M}(X)\) and \(\xi\) be a fuzzy subset of \(E\), i.e. \(\xi : E \rightarrow \mathscr{M}(X)\). Let \(\mathscr{M}_{\xi}: E \rightarrow \mathscr{M}(X) \times \mathscr{M}(X)\) be a function defined as \(\mathscr{M}_{\xi}(e)= (\mathscr{M}(e)(x), \xi(e)(x)), \forall x \in X\). Then \(\mathscr{M}_{\xi}\) is called a possibility fuzzy soft set(PFSS) on \((X,E)\). Here for each parameter \(e_{i}\), \(\mathscr{M}_{\xi}(e_{i})= (\mathscr{M}(e_{i})(x), \xi(e_{i})(x))\) indicates not only the degree of belongingness of the elements of \(X\) in \(\mathscr{M}(e_{i})\) but also the degree of possibility of such belongingness which is represented by \(\xi(e_{i})\). So we can write \(\mathscr{M}_{\xi}(e_{i})\) as follows: \[\mathscr{M}_{\xi}(e_{i}) = \Big\{\left(\frac {x_{1}} {\mathscr{M}(e_{i})(x_{1})}, \xi(e_{i})(x_{1})\right),\left( \frac {x_{2}} {\mathscr{M}(e_{i})(x_{2})} , \xi(e_{i})(x_{2})\right),…,\left(\frac {x_{n}} {\mathscr{M}(e_{i})(x_{n})}, \xi(e_{i})(x_{n})\right) \Big\}.\]
Definition 7. Let \(X=\{x_{1}, x_{2}, …,x_{n}\}\) be a non-empty set of the universe and \( E=\{e_{1}, e_{2}, …,e_{m}\}\) be a set of parameter. The pair \((X,E)\) is called a soft universe. Suppose that \(\mathscr{M} : E \rightarrow P\mathscr{GBM}^{X}\) and \(p\) is a Pythagorean bipolar fuzzy subset of \(E\). That is \(p : E \rightarrow I\) where \(I\) denotes the collection of all Pythagorean bipolar fuzzy subsets of \(X\). If \(\mathscr{M}^{\mathscr{GB}}_{p} : E \rightarrow P\mathscr{GBM}^{X} \times I\) is a function defined as \[\mathscr{M}^{\mathscr{GB}}_{p}(e) = \big\langle \mathscr{GBM}(e)(x), p(e)\big\rangle, x\in X ,\] then \(\mathscr{M}^{\mathscr{GB}}_{p}\) is a Type-II generalized Pythagorean bipolar fuzzy soft set(Type-II GPBFSS) on \((X,E)\). For each parameter \(e\),
\(\mathscr{M}^{\mathscr{GB}}_{p}(e)=\)
\( \left( \Bigg\{\frac {x_{1}} { \zeta^{+}_{\mathscr{M}(e)}(x_{1}), \xi^{+}_{\mathscr{M}(e)}(x_{1}), \zeta^{-}_{\mathscr{M}(e)}(x_{1}), \xi^{-}_{\mathscr{M}(e)}(x_{1})},…,\frac {x_{n}} {\zeta^{+}_{\mathscr{M}(e)}(x_{n}), \xi^{+}_{\mathscr{M}(e)}(x_{n}), \zeta^{-}_{\mathscr{M}(e)}(x_{n}), \xi^{-}_{\mathscr{M}(e)}(x_{n})} \Bigg\}, \left(\zeta^{+}_{p(e)}, \xi^{+}_{p(e)},\zeta^{-}_{p(e)}, \xi^{-}_{p(e)}\right)\right) \).Example 1. Let \(X = \{x_{1}, x_{2}, x_{3}\}\) be a set of three leptospirosis patients and \(E = \{e_{1}\) = high fever, \(e_{2}\) = headache, \(e_{3}\) = chills\(\}\) is a set of parameters. Suppose that \(\mathscr{M}^{\mathscr{GB}}_{p} : E \rightarrow P\mathscr{GBM}^{X} \times I\) is given by \begin{equation*} \mathscr{M}^{\mathscr{GB}}_{p}(e_{1})= \left(\left\{\begin{array}{1r} \frac{x_{1}}{(0.6 ,0.7 , -0.3 , -0.8 )}\\ \frac{x_{2}}{(0.9 , 0.4,-0.7 , -0.5 )}\\ \frac{x_{3}}{(0.8 ,0.5 ,-0.2 ,-0.9)} \end{array}\right\} (0.6 ,0.5 ,-0.8 , -0.3 ) \right); \end{equation*} \begin{equation*} \mathscr{M}^{\mathscr{GB}}_{p}(e_{2})= \left(\left\{\begin{array}{1r} \frac{x_{1}}{(0.7 ,0.4 ,-0.2 , -0.8 )}\\ \frac{x_{2}}{(0.3 , 0.9,-0.7 ,-0.4 )}\\ \frac{x_{3}}{(0.5 , 0.6 ,-0.2 , -0.9)} \end{array}\right\}(0.9 ,0.2 ,-0.7 ,-0.4 ) \right); \end{equation*} \begin{equation*} \mathscr{M}^{\mathscr{GB}}_{p}(e_{3})= \left(\left\{\begin{array}{1r} \frac{x_{1}}{(0.3 ,0.7 ,-0.8 , -0.4 )}\\ \frac{x_{2}}{(0.8 , 0.4,-0.7 , -0.3 )}\\ \frac{x_{3}}{(0.9, 0.2 ,-0.5 , -0.6 )} \end{array}\right\}(0.6 ,0.5 ,-0.7 , -0.3 ) \right). \end{equation*}
Definition 8. Let \(X\) be a non-empty set of the universe and \(E\) be a set of parameter. Suppose that \(\mathscr{M}^{\mathscr{GB}}_{p}\) and \(\mathscr{N}^{\mathscr{GB}}_{q}\) are two Type-II GPBFSS’s on \((X, E)\). Now \(\mathscr{M}^{\mathscr{GB}}_{p} \subseteq \mathscr{N}^{\mathscr{GB}}_{q}\) if and only if
Example 2. Consider the Type-II GPBFSS \(\mathscr{M}^{\mathscr{GB}}_{p}\) over \((X, E)\) in Example 1. Let \(\mathscr{N}^{\mathscr{GB}}_{q}\) be another Type-II GPBFSS over \((X, E)\) defined as: \begin{equation*} \mathscr{N}^{\mathscr{GB}}_{q}(e_{1})= \left(\left\{\begin{array}{1r} \frac{x_{1}}{(0.7, 0.5 ,-0.6-0.7 )}\\ \frac{x_{2}}{(0.9,0.2,-0.8-0.4)} \\ \frac{x_{3}}{(0.9, 0.1 ,-0.5-0.8)} \end{array}\right\} (0.6, 0.4 ,-0.9-0.2 ) \right); \end{equation*} \begin{equation*} \mathscr{N}^{\mathscr{GB}}_{q}(e_{2})= \left(\left\{\begin{array}{1r} \frac{x_{1}}{(0.8, 0.3 ,-0.4-0.6 )}\\ \frac{x_{2}}{(0.6,0.7,-0.8 -0.3 )} \\ \frac{x_{3}}{(0.7,0.4 ,-0.3 -0.7)} \end{array}\right\}(0.9, 0.1 ,-0.8-0.3 ) \right); \end{equation*} \begin{equation*} \mathscr{N}^{\mathscr{GB}}_{q}(e_{3})= \left(\left\{\begin{array}{1r} \frac{x_{1}}{(0.5, 0.6 ,-0.9-0.3 )} \\ \frac{x_{2}}{(0.8,0.3,-0.8-0.2 )}\\ \frac{x_{3}}{(0.9, 0.1 ,-0.7-0.5 )} \end{array}\right\}(0.7, 0.4 ,-0.9-0.1 ) \right). \end{equation*}
Definition 9. Let \(X\) be a non-empty set of the universe and \(E\) be a set of parameter. Let \(\mathscr{M}^{\mathscr{GB}}_{p}\) be a Type-II GPBFSS on \((X, E)\). The complement of \(\mathscr{M}^{\mathscr{GB}}_{p}\) is denoted by \(\mathscr{M}^{\mathscr{GB}}_{{p}^{c}}\) and is defined by \[\mathscr{M}^{\mathscr{GB}}_{{p}^{c}} = \Big\langle \mathscr{GBM}^{c}(e)(x), {p}^{c}(e)\Big\rangle,\] where \(\mathscr{GBM}^{c}(e)(x) = \left(\xi^{+}_{\mathscr{M}(e)}(x),\zeta^{+}_{\mathscr{M}(e)}(x), \xi^{-}_{\mathscr{M}(e)}(x),\zeta^{-}_{\mathscr{M}(e)}(x)\right)\) and \(p^{c}(e)= \left(\xi^{+}_{p(e)},\zeta^{+}_{p(e)}, \xi^{-}_{p(e)},\zeta^{-}_{p(e)}\right)\). It is true that \(\mathscr{M}^{\mathscr{GB}}_{({p}^{c})^{c}}= \mathscr{M}^{\mathscr{GB}}_{p}\).
Definition 10. Let \(X\) be a non-empty set of the universe and \(E\) be a set of parameter. Let \(\mathscr{M}^{\mathscr{GB}}_{p}\) and \(\mathscr{N}^{\mathscr{GB}}_{q}\) be two Type-II GPBFSSs on \((X, E)\). The union and intersection of \(\mathscr{M}^{\mathscr{GB}}_{p}\) and \(\mathscr{N}^{\mathscr{GB}}_{q}\) over \((X, E)\) are denoted by \(\mathscr{M}^{\mathscr{GB}}_{p}\cup \mathscr{N}^{\mathscr{GB}}_{q}\) and \(\mathscr{M}^{\mathscr{GB}}_{p}\cap \mathscr{N}^{\mathscr{GB}}_{q}\) respectively and are defined by \[V_{v} : E \rightarrow P\mathscr{GBM}^{X} \times I\;\text{ and }\; W_{w} : E \rightarrow P\mathscr{GBM}^{X} \times I\] such that \[V_{v}(e)(x)= (V(e)(x), v(e))\;\text{ and }\;W_{w}(e)(x)= (W(e)(x), w(e)),\] where \(V(e)(x)= \mathscr{M}(e)(x)\cup \mathscr{N}(e)(x)\), \(v(e)= p(e)\cup q(e)\), \(W(e)(x)= \mathscr{M}(e)(x)\cap \mathscr{N}(e)(x)\) and \(w(e)= p(e)\cap q(e)\), for all \(x\in X\).
Example 3. Let \(\mathscr{M}^{\mathscr{GB}}_{p}\) and \(\mathscr{N}^{\mathscr{GB}}_{q}\) be the two Type-II GPBFSS’s on \((X, E)\). By the Example 1 in \(\mathscr{M}^{\mathscr{GB}}_{p}\) and \(\mathscr{N}^{\mathscr{GB}}_{q}\) is defined as, \begin{equation*} \mathscr{N}^{\mathscr{GB}}_{q}(e_{1})= \left(\left\{\begin{array}{1r} \frac{x_{1}}{(0.3, 0.4 ,-0.2,-0.3 )}\\ \frac{x_{2}}{(0.4,0.5,-0.6, -0.2 )}\\ \frac{x_{3}}{(0.6, 0.2 ,-0.1,-0.4)} \end{array}\right\} (0.5, 0.4 ,-0.3,-0.1 ) \right); \end{equation*} \begin{equation*} \mathscr{N}^{\mathscr{GB}}_{q}(e_{2})= \left(\left\{\begin{array}{1r} \frac{x_{1}}{(0.8,0.7,-0.4,-0.3 )}\\ \frac{x_{2}}{(0.6,0.4,-0.3,-0.8 )}\\ \frac{x_{3}}{(0.5,0.3 ,-0.5, -0.4)} \end{array}\right\}(0.2, 0.1 ,-0.3,-0.5 ) \right); \end{equation*} \begin{equation*} \mathscr{N}^{\mathscr{GB}}_{q}(e_{3})= \left(\left\{\begin{array}{1r} \frac{x_{1}}{(0.6, 0.4,-0.4,-0.1 )}\\ \frac{x_{2}}{(0.7,0.9,-0.6, -0.4 )}\\ \frac{x_{3}}{(0.2, 0.6,-0.3,-0.2 )} \end{array}\right\} (0.5, 0.6,-0.3,-0.4 ) \right). \end{equation*} Now, \(\mathscr{M}^{\mathscr{GB}}_{p} \cup \mathscr{N}^{\mathscr{GB}}_{q}\) can be written as: \begin{equation*} \mathscr{M}^{\mathscr{GB}}_{p} \cup \mathscr{N}^{\mathscr{GB}}_{q}(e_{1})= \left(\left\{\begin{array}{1r} \frac{x_{1}}{(0.6 ,0.4 ,-0.3 , -0.3 )}\\ \frac{x_{2}}{(0.9 , 0.4,-0.7 , -0.2 )}\\ \frac{x_{3}}{(0.8 ,0.2 ,-0.2 ,-0.4)} \end{array}\right\} (0.6 ,0.4 ,-0.8 , -0.1 ) \right); \end{equation*} \begin{equation*} \mathscr{M}^{\mathscr{GB}}_{p} \cup \mathscr{N}^{\mathscr{GB}}_{q}(e_{2})= \left(\left\{\begin{array}{1r} \frac{x_{1}}{(0.8 ,0.4 ,-0.4 , -0.3 )}\\ \frac{x_{2}}{(0.6 , 0.4,-0.4 , -0.4 )}\\ \frac{x_{3}}{(0.5 , 0.3 ,-0.5 ,-0.4)} \end{array}\right\} (0.9 ,0.1 ,-0.7 , -0.4 ) \right); \end{equation*} \begin{equation*} \mathscr{M}^{\mathscr{GB}}_{p} \cup \mathscr{N}^{\mathscr{GB}}_{q}(e_{3})= \left(\left\{\begin{array}{1r} \frac{x_{1}}{(0.6 ,0.4 ,-0.8 , -0.1 )}\\ \frac{x_{2}}{(0.8 , 0.4,-0.7 , -0.3 )}\\ \frac{x_{3}}{(0.9 , 0.2 ,-0.5 , -0.2 )} \end{array}\right\} (0.6 ,0.5 ,-0.7 , -0.3 ) \right). \end{equation*} Now, \(\mathscr{M}^{\mathscr{GB}}_{p} \cap \mathscr{N}^{\mathscr{GB}}_{q}\) can be written as: \begin{equation*} \mathscr{M}^{\mathscr{GB}}_{p} \cap \mathscr{N}^{\mathscr{GB}}_{q}(e_{1})= \left(\left\{\begin{array}{1r} \frac{x_{1}}{(0.3 ,0.7 ,-0.2 , -0.8 )}\\ \frac{x_{2}}{(0.4 , 0.5,-0.6 , -0.5 )}\\ \frac{x_{3}}{(0.6 ,0.5 ,-0.1 ,-0.9)} \end{array}\right\} (0.5 ,0.5 ,-0.3 , -0.3 ) \right); \end{equation*} \begin{equation*} \mathscr{M}^{\mathscr{GB}}_{p} \cap \mathscr{N}^{\mathscr{GB}}_{q}(e_{2})= \left(\left\{\begin{array}{1r} \frac{x_{1}}{(0.7 ,0.7 ,-0.2 , -0.8 )}\\ \frac{x_{2}}{(0.3 , 0.9,-0.3 , -0.8 )}\\ \frac{x_{3}}{(0.5 , 0.6 ,-0.2 ,-0.9)} \end{array}\right\}(0.2 ,0.2 ,-0.3 , -0.5 ) \right); \end{equation*} \begin{equation*} \mathscr{M}^{\mathscr{GB}}_{p} \cap \mathscr{N}^{\mathscr{GB}}_{q}(e_{3})= \left(\left\{\begin{array}{1r} \frac{x_{1}}{(0.3 ,0.7 ,-0.4 , -0.4 )}\\ \frac{x_{2}}{(0.7 , 0.9,-0.6 , -0.4 )}\\ \frac{x_{3}}{(0.2 , 0.6 ,-0.3 , -0.6 )} \end{array}\right\} (0.5 ,0.6 ,-0.3 , -0.4 ) \right). \end{equation*}
Definition 11. A Type-II GPBFSS \(\rho^{\mathscr{GB}}_{\epsilon}(e)(x) = \Big\langle\rho(e)(x), \epsilon(e)\Big\rangle\) is said to a null Type-II GPBFSS \(\rho^{\mathscr{GB}}_{\epsilon}: E \rightarrow P\mathscr{GBM}^{X} \times I\), where \( \rho^{+}(e)(x) = (0,1)\), \(\epsilon^{+}(e) = (0, 1)\) and \( \rho^{-}(e)(x) = (-1,0)\) and \(\epsilon^{-}(e) = (-1, 0), \,\, \forall \, x \in X\).
Definition 12. A Type-II GPBFSS \(\pi^{\mathscr{GB}}_{\sigma}(e)(x) = \Big\langle\pi(e)(x),\sigma(e)\Big\rangle\) is said to a absolute Type-II GPBFSS \(\pi^{\mathscr{GB}}_{\sigma}: E \rightarrow P\mathscr{GBM}^{X} \times I\), where \( \pi^{+}(e)(x) = (1, 0)\), \(\sigma^{+}(e) = (1, 0)\) and \( \pi^{-}(e)(x) = (0, -1)\) and \(\sigma^{-}(e)= (0, -1)\), \(\forall \, x \in X\).
Theorem 13. Let \(\mathscr{M}^{\mathscr{GB}}_{p}\) be a Type-II GPBFSS on \((X, E)\). Then the following properties are holds:
Remark 1. Let \(\mathscr{M}^{\mathscr{GB}}_{p}\) be a Type-II GPBFSS on \((X, E)\). If \(\mathscr{M}^{\mathscr{GB}}_{p} \neq \pi^{\mathscr{GB}}_{\sigma} \) or \(\mathscr{M}^{\mathscr{GB}}_{p} \neq \rho^{\mathscr{GB}}_{\epsilon}\), then \(\mathscr{M}^{\mathscr{GB}}_{p} \cup \mathscr{M}^{\mathscr{GB}}_{{p}^{c}} \neq \pi^{\mathscr{GB}}_{\sigma}\) and \(\mathscr{M}^{\mathscr{GB}}_{p} \cap \mathscr{M}^{\mathscr{GB}}_{{p}^{c}} \neq \rho^{\mathscr{GB}}_{\epsilon}\).
Theorem 14. Let \(\mathscr{M}^{\mathscr{GB}}_{p}\), \(\mathscr{N}^{\mathscr{GB}}_{q}\) and \(\mathscr{O}^{\mathscr{GB}}_{r}\) are three Type-II GPBFSS’s over \((X, E)\), then the following properties hold:
Proof. The proof follows from Definition 9 and 10.
Definition 15. Let \((\mathscr{M}^{\mathscr{GB}}_{p},A)\) and \((\mathscr{N}^{\mathscr{GB}}_{q},B)\) be two Type-II GPBFSS’s on \((X, E)\). Then the operations AND is denoted by \((\mathscr{M}^{\mathscr{GB}}_{p},A) \wedge (\mathscr{N}^{\mathscr{GB}}_{q},B)\) and is defined by \[(\mathscr{M}^{\mathscr{GB}}_{p},A) \wedge (\mathscr{N}^{\mathscr{GB}}_{q},B) = (\mathscr{O}^{\mathscr{GB}}_{r}, A \times B),\] where \(\mathscr{O}^{\mathscr{GB}}_{r} (\gamma, \delta) = \left(\mathscr{O}(\gamma, \delta)(x), r(\gamma, \delta)\right)\) such that \[\mathscr{O}(\gamma, \delta) = \mathscr{M}(\gamma) \cap \mathscr{N}(\delta)\;\text{ and }\;r(\gamma, \delta) = p(\gamma) \cap q(\delta),\] for all \((\gamma, \delta)\in A \times B \).
Definition 16. Let \((\mathscr{M}^{\mathscr{GB}}_{p},A)\) and \((\mathscr{N}^{\mathscr{GB}}_{q},B)\) be two Type-II GPBFSS’s on \((X, E)\), then the operations OR is denoted by \((\mathscr{M}^{\mathscr{GB}}_{p},A) \vee (\mathscr{N}^{\mathscr{GB}}_{q},B)\) and is defined by \[(\mathscr{M}^{\mathscr{GB}}_{p},A) \vee (\mathscr{N}^{\mathscr{GB}}_{q},B) = (\mathscr{O}^{\mathscr{GB}}_{r}, A \times B),\] where \(\mathscr{O}^{\mathscr{GB}}_{r} (\gamma, \delta) = \left(\mathscr{O}(\gamma, \delta)(x), r(\gamma, \delta)\right)\) such that \[\mathscr{O}(\gamma, \delta) = \mathscr{M}(\gamma) \cup \mathscr{N}(\delta)\;\text{ and }\;r(\gamma, \delta) = p(\gamma) \cup q(\delta),\] for all \((\gamma, \delta)\in A \times B \).
Theorem 17. Let \((\mathscr{M}^{\mathscr{GB}}_{p},A)\) and \((\mathscr{N}^{\mathscr{GB}}_{q},B)\) be two Type-II GPBFSS’s on \((X, E)\), then
Proof.
Definition 18. Let \(X\) be a non-empty set of the universe and \(E\) be a set of parameter. Suppose that \(\mathscr{M}^{\mathscr{GB}}_{p}\) and \(\mathscr{N}^{\mathscr{GB}}_{q}\) are two Type-II GPBFSS’s on \((X, E)\). The similarity measure between two Type-II GPBFSS’s \(\mathscr{M}^{\mathscr{GB}}_{p}\) and \(\mathscr{N}^{\mathscr{GB}}_{q}\) is denoted by \(Sim(\mathscr{M}^{\mathscr{GB}}_{p}, \mathscr{N}^{\mathscr{GB}}_{q})\) and is defined as \[Sim(\mathscr{M}^{\mathscr{GB}}_{p}, \mathscr{N}^{\mathscr{GB}}_{q})= \Big[\Delta^{\mathscr{GB}}(\mathscr{M}, \mathscr{N}) \cdot \Upsilon^{\mathscr{GB}}(p,q)\Big]\] such that \[\Delta^{\mathscr{GB}}(\mathscr{M}, \mathscr{N})= \frac{\mathbb{T}^{\mathscr{GB}}(\mathscr{M}(e)(x), \mathscr{N}(e)(x)) \,\, + \,\, \mathbb{S}^{\mathscr{GB}}(\mathscr{M}(e)(x), \mathscr{N}(e)(x))}{2}\] and \[\Upsilon^{\mathscr{GB}}(p, q)= 1- \frac{\sum|\alpha_{1}-\alpha_{2}|}{{\sum|\alpha_{1}+\alpha_{2}|}},\] where \(\mathbb{T}^{\mathscr{GB}}(\mathscr{M}(e)(x), \mathscr{N}(e)(x))\) can be written as \[\frac{1}{m} \sum^{m}_{j=1} \frac{\sum^{n}_{i=1} \Big[\big[\zeta^{+}_{\mathscr{M}(e_{i})}(x_{j}) \,\, \cdot\,\, \zeta^{+}_{\mathscr{N}(e_{i})}(x_{j})\big] + \big[\zeta^{-}_{\mathscr{M}(e_{i})}(x_{j}) \,\, \cdot\,\, \zeta^{-}_{\mathscr{N}(e_{i})}(x_{j})\big]\Big]} {\sum^{n}_{i=1} \Bigg[\Big[\,1- \sqrt{\big[(1-\zeta^{2+}_{\mathscr{M}(e_{i})}(x_{j})) \,\, \cdot\,\, (1-\zeta^{2+}_{\mathscr{N}(e_{i})}(x_{j}))\big]}\,\Big] + \Big[\,1- \sqrt{\big[(1-\zeta^{2-}_{\mathscr{M}(e_{i})}(x_{j})) \,\, \cdot\,\, (1-\zeta^{2-}_{\mathscr{N}(e_{i})}(x_{j}))\big]}\,\Big]\Bigg]}\] and \(\mathbb{S}^{\mathscr{GB}}(\mathscr{M}(e)(x), \mathscr{N}(e)(x))\) can be written as \[\frac{1}{m} \sum^{m}_{j=1} \sqrt{1- \frac{\sum^{n}_{i=1} \Big[\big|\xi^{2+}_{\mathscr{M}(e_{i})}(x_{j}) \,\, – \,\, \xi^{2+}_{\mathscr{N}(e_{i})}(x_{j})\big | + \big|\xi^{2-}_{\mathscr{M}(e_{i})}(x_{j}) \,\, – \,\, \xi^{2-}_{\mathscr{N}(e_{i})}(x_{j})\big|\Big]} {\sum^{n}_{i=1} \Bigg[\Big[1+\big[(\xi^{2+}_{\mathscr{M}(e_{i})}(x_{j})) \,\, \cdot\,\, (\xi^{2+}_{\mathscr{N}(e_{i})}(x_{j}))\,\big]\Big] + \Big[1+\big[(\xi^{2-}_{\mathscr{M}(e_{i})}(x_{j})) \,\, \cdot\,\, (\xi^{2-}_{\mathscr{N}(e_{i})}(x_{j}))\,\big]\Big]\Bigg]}},\] \[\alpha_{1}= \frac{\zeta^{2+}_{p(e_{i})} + \zeta^{2-}_{p(e_{i})}}{\big[\zeta^{2+}_{p(e_{i})} \,\, + \,\, \xi^{2+}_{p(e_{i})}\big] + \big[\zeta^{2-}_{p(e_{i})} \,\, + \,\, \xi^{2-}_{p(e_{i})}\big]}\] and \[\alpha_{2}= \frac{\zeta^{2+}_{q(e_{i})} + \zeta^{2-}_{q(e_{i})}}{\big[\zeta^{2+}_{q(e_{i})} \,\, + \,\, \xi^{2+}_{q(e_{i})}\big] + \big[\zeta^{2-}_{q(e_{i})} \,\, + \,\, \xi^{2-}_{q(e_{i})}\big]}.\]
Theorem 19. Let \(\mathscr{M}^{\mathscr{GB}}_{p},\,\, \mathscr{N}^{\mathscr{GB}}_{q}\) and \(\mathscr{O}^{\mathscr{GB}}_{r}\) be the any three Type-II GPBFSS’s over \((X, E)\). Then the following statements hold:
Proof.
The statements (1), (2) and (5) are trivial.
(3) Given that \(\mathscr{M}^{\mathscr{GB}}_{p}= \mathscr{N}^{\mathscr{GB}}_{q}\). Now, \begin{align*} \mathbb{T}^{\mathscr{GB}}(\mathscr{M}(e)(x_{j}),\mathscr{N}(e)(x_{j})) %&=& \frac{\sum^{n}_{i=1} \big[\zeta^{2+}_{\mathscr{M}(e_{i})}(x_{j}) + \zeta^{2-}_{\mathscr{M}(e_{i})}(x_{j})\big] } %{\sum^{n}_{i=1} \Big[\big[1-1+ \zeta^{2+}_{\mathscr{M}(e_{i})}(x_{j})\big] + \big[1-1+ \zeta^{2-}_{\mathscr{M}(e_{i})}(x_{j})\big] \Big]}\\ &= \frac{\sum^{n}_{i=1} \big[\zeta^{2+}_{\mathscr{M}(e_{i})}(x_{j}) + \zeta^{2-}_{\mathscr{M}(e_{i})}(x_{j})\big] } {\sum^{n}_{i=1} \big[\zeta^{2+}_{\mathscr{M}(e_{i})}(x_{j}) + \zeta^{2-}_{\mathscr{M}(e_{i})}(x_{j}) \big]}= 1. \end{align*} Hence, \(\mathbb{T}^{\mathscr{GB}}(\mathscr{M}(e)(x),\mathscr{N}(e)(x))=\frac{1}{m}[1+1+…+1 \text{(m times)}] =1\). Now, \(\mathbb{S}^{\mathscr{GB}}(\mathscr{M}(e)(x_{j}),\mathscr{N}(e)(x_{j}))=\sqrt{(1-0)}= 1 \). Hence, \(\mathbb{S}^{\mathscr{GB}}(\mathscr{M}(e)(x),\mathscr{N}(e)(x))=\frac{1}{m}[1+1+…+1 \text{(m times)}] =1\). Thus, \(\Delta^{\mathscr{GB}}(\mathscr{M}, \mathscr{N})= \frac{1+1}{2}= 1\) and \(\Upsilon^{\mathscr{GB}}(p, q) = 1\). Hence \(Sim(\mathscr{M}^{\mathscr{GB}}_{p}, \mathscr{N}^{\mathscr{GB}}_{q})=1\). This proves (3).(4) Given that
\[\mathscr{M}^{\mathscr{GB}}_{p} \subseteq \mathscr{N}^{\mathscr{GB}}_{q} \implies \left\{\begin{array}{1r} \zeta^{+}_{\mathscr{M}(e)}(x_{j}) \leq \zeta^{+}_{\mathscr{N}(e)}(x_{j}),\,\, \xi^{+}_{\mathscr{M}(e)}(x_{j}) \geq \xi^{+}_{\mathscr{N}(e)}(x_{j}),\,\,\\ \zeta^{-}_{\mathscr{M}(e)}(x_{j}) \geq \zeta^{-}_{\mathscr{N}(e)}(x_{j}),\,\, \xi^{-}_{\mathscr{M}(e)}(x_{j}) \leq \xi^{-}_{\mathscr{N}(e)}(x_{j}),\\ \zeta^{+}_{p(e)}(x_{j}) \leq \zeta^{+}_{q(e)}(x_{j}), \,\, \xi^{+}_{p(e)}(x_{j}) \geq \xi^{+}_{q(e)}(x_{j}), \,\,\\ \zeta^{-}_{p(e)}(x_{j}) \geq \zeta^{-}_{q(e)}(x_{j}), \,\, \xi^{-}_{p(e)}(x_{j}) \leq \xi^{-}_{q(e)}(x_{j}),\\ \end{array}\right\} \] \[ \mathscr{M}^{\mathscr{GB}}_{p} \subseteq \mathscr{O}^{\mathscr{GB}}_{r} \implies \left\{\begin{array}{1r} \zeta^{+}_{\mathscr{M}(e)}(x_{j}) \leq \zeta^{+}_{\mathscr{O}(e)}(x_{j}),\,\, \xi^{+}_{\mathscr{M}(e)}(x_{j}) \geq \xi^{+}_{\mathscr{O}(e)}(x_{j}),\,\,\\ \zeta^{-}_{\mathscr{M}(e)}(x_{j}) \geq \zeta^{-}_{\mathscr{O}(e)}(x_{j}),\,\, \xi^{-}_{\mathscr{M}(e)}(x_{j}) \leq \xi^{-}_{\mathscr{O}(e)}(x_{j}), \\ \zeta^{+}_{p(e)}(x_{j}) \leq \zeta^{+}_{r(e)}(x_{j}), \,\, \xi^{+}_{p(e)}(x_{j}) \geq \xi^{+}_{r(e)}(x_{j}), \,\,\\ \zeta^{-}_{p(e)}(x_{j}) \geq \zeta^{-}_{r(e)}(x_{j}), \,\, \xi^{-}_{p(e)}(x_{j}) \leq \xi^{-}_{r(e)}(x_{j}),\\ \end{array}\right\} \] \[ \mathscr{N}^{\mathscr{GB}}_{q} \subseteq \mathscr{O}^{\mathscr{GB}}_{r} \implies \left\{\begin{array}{1r} \zeta^{+}_{\mathscr{N}(e)}(x_{j}) \leq \zeta^{+}_{\mathscr{O}(e)}(x_{j}),\,\, \xi^{+}_{\mathscr{N}(e)}(x_{j}) \geq \xi^{+}_{\mathscr{O}(e)}(x_{j}),\,\,\\ \zeta^{-}_{\mathscr{N}(e)}(x_{j}) \geq \zeta^{-}_{\mathscr{O}(e)}(x_{j}),\,\, \xi^{-}_{\mathscr{N}(e)}(x_{j}) \leq \xi^{-}_{\mathscr{O}(e)}(x_{j}), \\ \zeta^{+}_{q(e)}(x_{j}) \leq \zeta^{+}_{r(e)}(x_{j}), \,\, \xi^{+}_{q(e)}(x_{j}) \geq \xi^{+}_{r(e)}(x_{j}), \,\,\\ \zeta^{-}_{q(e)}(x_{j}) \geq \zeta^{-}_{r(e)}(x_{j}), \,\, \xi^{-}_{q(e)}(x_{j}) \leq \xi^{-}_{r(e)}(x_{j}),\\ \end{array}\right\} \] Clearly, \(\zeta^{+}_{\mathscr{M}(e)}(x_{j}) \cdot \zeta^{+}_{\mathscr{O}(e)}(x_{j}) \leq \zeta^{+}_{\mathscr{N}(e)}(x_{j}) \cdot\zeta^{+}_{\mathscr{O}(e)}(x_{j})\;\text{ and }\;\zeta^{-}_{\mathscr{M}(e)}(x_{j}) \cdot \zeta^{-}_{\mathscr{O}(e)}(x_{j}) \leq \zeta^{-}_{\mathscr{N}(e)}(x_{j}) \cdot\zeta^{-}_{\mathscr{O}(e)}(x_{j}) \) implies thatExample 4. Calculate the similarity measure between the two Type-II GPBFSS’s namely \(\mathscr{M}^{\mathscr{GB}}_{p}\) and \(\mathscr{N}^{\mathscr{GB}}_{q}\). Let \(X=\{x_{1}, x_{2}, x_{3}\}\) and \(E = \{e_{1}, e_{2}, e_{3}\}\) can be defined as below:
\(\mathscr{M}^{\mathscr{GB}}_{p}(e)\) | \(e_{1}\) | \(e_{2}\) | \(e_{3}\) |
---|---|---|---|
\(\mathscr{M}(e)(x_{1})\) | \((0.6,0.65,-0.3,-0.8)\) | \((0.9,0.35,-0.7,-0.5)\) | \((0.8,0.45,-0.2,-0.9)\) |
\(\mathscr{M}(e)(x_{2})\) | \((0.55,0.55,-0.35,-0.75)\) | \((0.85,0.25,-0.75,-0.45)\) | \((0.75,0.35,-0.25,-0.85)\) |
\(\mathscr{M}(e)(x_{3})\) | \((0.45,0.55,-0.55,-0.7)\) | \((0.75,0.25,-0.45,-0.65)\) | \((0.65,0.35,-0.15,-0.75)\) |
\(p(e)\) | \((0.6,0.5,-0.8,-0.3)\) | \((0.8,0.3,-0.6,-0.5)\) | \((0.7,0.4,-0.8,-0.6)\) |
\(\mathscr{N}^{\mathscr{GB}}_{q}(e)\) | \(e_{1}\) | \(e_{2}\) | \(e_{3}\) |
---|---|---|---|
\(\mathscr{N}(e)(x_{1})\) | \((0.3,0.35,-0.2,-0.3)\) | \((0.4,0.45,-0.6,-0.2)\) | \((0.6,0.25,-0.1,-0.4)\) |
\(\mathscr{N}(e)(x_{2})\) | \((0.25,0.3,-0.25,-0.2)\) | \((0.35,0.4,-0.65,-0.15)\) | \((0.55,0.2,-0.15,-0.35)\) |
\(\mathscr{N}(e)(x_{3})\) | \((0.35,0.4,-0.2,-0.45)\) | \((0.55,0.45,-0.35,-0.25)\) | \((0.6,0.4,-0.25,-0.55)\) |
\(q(e)\) | \((0.5,0.35,-0.3,-0.1)\) | \((0.6,0.15,-0.4,-0.2)\) | \((0.4,0.25,-0.5,-0.6)\) |
Remark 2. Let \(\mathscr{M}_{p}\) and \(\mathscr{N}_{q}\) be two Type-II GPBFSS’s over the same soft universe \((X,E)\). We call the two Type-II GPBFSS ‘s to be significantly similar if \(Sim(\mathscr{M}_{p}, \mathscr{N}_{q}) \geq 70\).
We first construct a Type-II GPBFSS for the illness with the help of a medical person and a Type-II GPBFSS for the ill person. Then, we calculate the similarity measure between two Type-II GPBFSS’s. If they are significantly similar, then we infer that the person may have disease, and otherwise not.Suppose that there are five patients \(\mathscr{P}_{1}, \mathscr{P}_{2}, \mathscr{P}_{3}, \mathscr{P}_{4}\) and \(\mathscr{P}_{5}\) in a hospital with certain symptoms of Scrub Typhus. Let the universal set contain only three elements. That is \(X = \{x_1 :\) severe, \(x_2 \): mild, \(x_3\) : no} and the set of parameters \(E\) is the set of certain symptoms of Scrub Typhus is represented by \(E = \{e_1 :\) Fever and chills, \(e_2 \): headache, \(e_3\) : muscle pain, \(e_4\) : mental changes, \(e_5\): enlarged lymph nodes}. Table 1 represents the Scrub Typhus prepared with the help of a medical person.
\(\mathscr{L}^{\mathscr{GB}}_{p}(e)\) | \(e_{1}\) | \(e_{2}\) | \(e_{3}\) |
---|---|---|---|
\(\mathscr{L}(e)(x_{1})\) | \((0.92,0.18,-0.91,-0.25)\) | \((0.83,0.25,-0.72,-0.35)\) | \((0.91,0.35,-0.85,-0.25)\) |
\(\mathscr{L}(e)(x_{2})\) | \((0.91,0.15,-0.9,-0.2)\) | \((0.82,0.23,-0.7,-0.3)\) | \((0.9,0.33,-0.81,-0.22)\) |
\(\mathscr{L}(e)(x_{3})\) | \((0.85,0.25,-0.8,-0.25)\) | \((0.8,0.3,-0.75,-0.35)\) | \((0.7,0.4,-0.8,-0.2)\) |
\(l(e)\) | \((1,0,-1,0)\) | \((1,0,-1,0)\) | \((1,0,-1,0)\) |
\(e_{4}\) | \(e_{5}\) | ||
\((0.84,0.15,-0.92,-0.35)\) | \((0.93,0.25,-0.73,-0.36)\) | ||
\((0.8,0.13,-0.9,-0.31)\) | \((0.9,0.21,-0.71,-0.34)\) | ||
\((0.75,0.35,-0.85,-0.3)\) | \((0.85,0.25,-0.75,-0.4)\) | ||
\((1,0,-1,0)\) | \((1,0,-1,0)\) |
We construct the Type-II GPBFSS’s for five patients under consideration as in Tables 2-6.
\(\mathscr{A}^{\mathscr{GB}}_{p}(e)\) | \(e_{1}\) | \(e_{2}\) | \(e_{3}\) |
---|---|---|---|
\(\mathscr{A}(e)(x_{1})\) | \((0.75,0.45,-0.5,-0.85)\) | \((0.45,0.75,-0.5,-0.75)\) | \((0.75,0.65,-0.6,-0.45)\) |
\(\mathscr{A}(e)(x_{2})\) | \((0.6,0.4,-0.7-0.35)\) | \((0.5,0.3,0.4-0.65)\) | \((0.7,0.5,-0.45-0.55)\) |
\(\mathscr{A}(e)(x_{3})\) | \((0.75,0.3,-0.55,-0.3)\) | \((0.55,0.7,-0.45,-0.5)\) | \((0.45,0.5,-0.7,-0.3)\) |
\(p_{1}(e)\) | \((0.8,0.15,-0.55,-0.45)\) | \((0.7,0.25,-0.65,-0.55)\) | \((0.6,0.5,-0.4,-0.6)\) |
\(e_{4}\) | \(e_{5}\) | ||
\((0.35,0.65,-0.7,-0.55)\) | \((0.65,0.55,-0.3,-0.65)\) | ||
\((0.6,0.55,-0.6-0.45)\) | \((0.8,0.45,-0.5-0.65)\) | ||
\((0.55,0.6,-0.6,-0.4)\) | \((0.65,0.5,-0.45,-0.5)\) | ||
\((0.4,0.6,-0.6,-0.3)\) | \((0.5,0.7,-0.5,-0.4)\) |
\(\mathscr{B}^{\mathscr{GB}}_{p}(e)\) | \(e_{1}\) | \(e_{2}\) | \(e_{3}\) |
---|---|---|---|
\(\mathscr{B}(e)(x_{1})\) | \((0.6,0.45,-0.7,-0.65)\) | \((0.55,0.35,-0.65,-0.55)\) | \((0.7,0.4,-0.75,-0.45)\) |
\(\mathscr{B}(e)(x_{2})\) | \((0.62,0.4,-0.7,-0.35)\) | \((0.7,0.65,-0.45,-0.5)\) | \((0.65,0.5,-0.5,-0.55)\) |
\(\mathscr{B}(e)(x_{3})\) | \((0.75,0.35,-0.65,-0.45)\) | \((0.5,0.6,-0.55,-0.63)\) | \((0.55,0.65,-0.84,-0.4)\) |
\(p_{2}(e)\) | \((0.8,0.15,-0.55,-0.5)\) | \((0.7,0.35,-0.7,-0.45)\) | \((0.65,0.65,-0.45,-0.75)\) |
\(e_{4}\) | \(e_{5}\) | ||
\((0.5,0.65,-0.6,-0.5)\) | \((0.75,0.45,-0.7,-0.65)\) | ||
\((0.7,0.45,-0.6,-0.45)\) | \((0.8,0.35,-0.55,-0.6)\) | ||
\((0.65,0.45,-0.73,-0.55)\) | \((0.8,0.55,-0.52,-0.6)\) | ||
hline | \((0.45,0.75,-0.7,-0.35)\) | \((0.3,0.85,-0.45,-0.65)\) |
\(\mathscr{C}^{\mathscr{GB}}_{p}(e)\) | \(e_{1}\) | \(e_{2}\) | \(e_{3}\) |
---|---|---|---|
\(\mathscr{C}(e)(x_{1})\) | \((0.8,0.45,-0.75,-0.6)\) | \((0.7,0.35,-0.7,-0.65)\) | \((0.75,0.25,-0.8,-0.6)\) |
\(\mathscr{C}(e)(x_{2})\) | \((0.8,0.55,-0.75,-0.4)\) | \((0.75,0.6,-0.5,-0.65)\) | \((0.7,0.6,-0.65,-0.5)\) |
\(\mathscr{C}(e)(x_{3})\) | \((0.82,0.25,-0.65,-0.45)\) | \((0.7,0.55,-0.55,-0.65)\) | \((0.65,0.4,-0.8,-0.4)\) |
\(p_{3}(e)\) | \((0.8,0.25,-0.65,-0.45)\) | \((0.7,0.25,-0.7,-0.4)\) | \((0.6,0.65,-0.6,-0.55)\) |
\(e_{4}\) | \(e_{5}\) | ||
\((0.8,0.3,-0.75,-0.55)\) | \((0.6,0.4,-0.6,-0.75)\) | ||
\((0.65,0.7,-0.7,-0.4)\) | \((0.85,0.55,-0.6,-0.55)\) | ||
\((0.6,0.3,-0.75,-0.6)\) | \((0.8,0.35,-0.5,-0.65)\) | ||
\((0.5,0.45,-0.85,-0.35)\) | \((0.4,0.5,-0.65,-0.5)\) |
\(\mathscr{D}^{\mathscr{GB}}_{p}(e)\) | \(e_{1}\) | \(e_{2}\) | \(e_{3}\) |
---|---|---|---|
\(\mathscr{D}(e)(x_{1})\) | \((0.7,0.45,-0.6,-0.75)\) | \((0.5,0.75,-0.65,-0.75)\) | \((0.6,0.6,-0.7,-0.4)\) |
\(\mathscr{D}(e)(x_{2})\) | \((0.6,0.7,-0.8,-0.4)\) | \((0.55,0.6,-0.5,-0.7)\) | \((0.7,0.65,-0.5,-0.6)\) |
\(\mathscr{D}(e)(x_{3})\) | \((0.8,0.45,-0.6,-0.4)\) | \((0.65,0.8,-0.5,-0.6)\) | \((0.55,0.6,-0.85,-0.4)\) |
\(p_{4}(e)\) | \((0.85,0.2,-0.65,-0.5)\) | \((0.8,0.3,-0.75,-0.6)\) | \((0.75,0.6,-0.5,-0.85)\) |
\(e_{4}\) | \(e_{5}\) | ||
\((0.75,0.55,-0.65,-0.5)\) | \((0.7,0.35,-0.4,-0.6)\) | ||
\((0.6,0.7,-0.8,-0.5)\) | \((0.8,0.55,-0.6,-0.7)\) | ||
\((0.6,0.7,-0.7,-0.55)\) | \((0.7,0.6,-0.5,-0.6)\) | ||
\((0.5,0.75,-0.8,-0.45)\) | \((0.55,0.8,-0.65,-0.4)\) |
\(\mathscr{E}^{\mathscr{GB}}_{p}(e)\) | \(e_{1}\) | \(e_{2}\) | \(e_{3}\) |
---|---|---|---|
\(\mathscr{E}(e)(x_{1})\) | \((0.85,0.4,-0.6,-0.8)\) | \((0.5,0.7,-0.55,-0.7)\) | \((0.8,0.65,-0.75,-0.4)\) |
\(\mathscr{E}(e)(x_{2})\) | \((0.75,0.6,-0.8,-0.45)\) | \((0.5,0.65,-0.5,-0.7)\) | \((0.75,0.4,-0.65,-0.6)\) |
\(\mathscr{E}(e)(x_{3})\) | \((0.65,0.45,-0.6,-0.4)\) | \((0.55,0.7,-0.55,-0.6)\) | \((0.45,0.6,-0.8,-0.45)\) |
\(p_{5}(e)\) | \((0.9,0.2,-0.6,-0.5)\) | \((0.75,0.45,-0.7,-0.45)\) | \((0.7,0.65,-0.55,-0.8)\) |
\(e_{4}\) | \(e_{5}\) | ||
\((0.45,0.6,-0.8,-0.5)\) | \((0.7,0.55,-0.4,-0.65)\) | ||
\((0.55,0.75,-0.8,-0.5)\) | \((0.6,0.5,-0.45,-0.75)\) | ||
\((0.6,0.7,-0.7,-0.55)\) | \((0.75,0.65,-0.5,-0.65)\) | ||
\((0.45,0.55,-0.8,-0.4)\) | \((0.65,0.35,-0.6,-0.75)\) |
The generalized bipolar fuzzy values in Tables 2-6 are provided by the experts,depending on their assessment of the alternatives against the criteria under consideration. We calculate the similarity measure of Type-II GPBFSS’s in Tables 2-6 with the one in Table 1. Calculating the similarity measure for \(\mathscr{P}_{1}\) to \(\mathscr{P}_{5}\) ill persons are given below the Table 7.
\(\mathbb{T}^{\mathscr{GB}}(x_{1})\) | \(\mathbb{S}^{\mathscr{GB}}(x_{1})\) | \(\mathbb{T}^{\mathscr{GB}}(x_{2})\) | \(\mathbb{S}^{\mathscr{GB}}(x_{2})\) | \(\mathbb{T}^{\mathscr{GB}}(x_{3})\) | \(\mathbb{S}^{\mathscr{GB}}(x_{3})\) | |
---|---|---|---|---|---|---|
\(\mathscr{(L,A)}\) | \(0.823604\) | \(0.823796\) | \(0.774984\) | \(0.904968\) | \(0.903511\) | \(0.934002\) |
\(\mathscr{(L,B)}\) | \(0.89267\) | \(0.90181\) | \(0.903051\) | \(0.909339\) | \(0.953667\) | \(0.905286\) |
\(\mathscr{(L,C)}\) | \(0.945782\) | \(0.899062\) | \(0.95394\) | \(0.870195\) | \(0.970414\) | \(0.929305\) |
\(\mathscr{(L,D)}\) | \(0.879251\) | \(0.862084\) | \(0.919538\) | \(0.830471\) | \(0.94947\) | \(0.875255\) |
\(\mathscr{(L,E)}\) | \(0.897963\) | \(0.84803\) | \(0.9162\) | \(0.841527\) | \(0.934313\) | \(0.874316\) |
\(\mathbb{T}^{\mathscr{GB}}\) | \(\mathbb{S}^{\mathscr{GB}}\) | \(\Delta^{\mathscr{GB}}\) | \(\Upsilon^{\mathscr{GB}}\) | Similarity | ||
\(0.834033\) | \(0.887589\) | \(0.860811\) | \(0.742551\) | \(0.639196\) | ||
\(0.916463\) | \(0.905479\) | \(0.910971\) | \(0.68785\) | \(0.626611\) | ||
\(0.956712\) | \(0.899521\) | \(0.928116\) | \(0.8097\) | \(0.751495\) | ||
\(0.916086\) | \(0.855937\) | \(0.870668\) | \(0.744906\) | \(0.648565\) | ||
\(0.916159\) | \(0.854624\) | \(0.885392\) | \(0.769917\) | \(0.681678\) |
We find that the similarity measure of the first two patients and last two patients are \(< 0.70\), but the similarity measure of third patient \(\mathscr{P}_{3}\) is \(\mathscr{(L,{P}}_{3})={ 0.751495} \geq 0.70\). Hence these two Type-II GPBFSS's are significantly similar. Therefore, we conclude that the patient \(\mathscr{P}_{3}\) is suffering from Scrub Typhus.