Near neutrosophic soft set

: In this article, the notion of near neutrosophic soft sets ( Nss ) is obtained by combining the notion of Nss and the notion of near approximation space. Accordingly, a new set was obtained by restricting the set of features with the help of the indi ffi rentiable relation defined on the set. The features and definitions that the set will provide are given, and, based on these features, the benefits that will be provided when they are implemented are investigated in the example


Introduction
The concept of near sets is a concept given by Peters [1], and is related to the nearness of objects.According to this notion, new equivalence classes are obtained by a determined selection of the properties of objects.The nearness of the objects of the sets to each other is determined according to the defined relation.Another notion, the soft set, was stated by Molodtsov [2], and soft sets and soft topological spaces have been studied by many scientists [3][4][5][6].Some concepts related to these notions were examined by Hussain and Ahmad in [7].In [8], Wardowski has studied on soft mapping.The notion of near soft sets emerged after the soft set approach and near set theory were jointly discussed by Tasbozan et al. [9].By introducing proximity-based sets with this concept, the topology has also been defined.
To eliminate ambiguities, the notion of neutrosophic sets (N s) is used.Smarandache defined this, and different features were described for this concept [10,11].Smarandache considered a situation with truth, falsehood, and uncertainty, and called this the membership function.The notion of the N s is a special notion given in fuzzy logic.N ss are expressed with triple membership functions of objects given by their features [11].In 2013, Maji defined the notion of N ss [12].Later, Deli and Broumi changed this notion [13].Additionally, this notion was studied by many different authors [14][15][16][17].In 2013, in Broumi's study, a new concept called the generalized N ss was defined.Moreover, after giving some features of this notion, the verdict-making question with the aid of generalized N ss was discussed as an application [18].In a study conducted in 2014, both N s theory and rough set theory emerged as strong candidates for directing uncertain, true, and false knowledge in order to resolve uncertainty.In addition, a unified structure called rough neutrosophic sets was developed, and its features were examined [15].In 2020, this notion was introduced into pre-open (formerly closed) sets, and preliminary separation axioms were defined along with its topology [14].In a study conducted in 2019, the notion of a N s point was defined after redefining some basic notions of N ss.Additionally, N s separation axioms and the relationship between them was given in [12].Then, Al-Quran et al. described N s rough sets [19].Das et al. [20] defined roughness on the neutrosophic soft set in a new way, different from the definitions of Al-Quran et al. [19].Al-Quran et al. used fully soft sets to achieve a neutrosophic soft rough set [19].This definition was determined to be a more effective approach for writing ambiguous and imprecise data because it does not use software content [20].A series of neutrosophic soft sets were identified.Additionally, in this series, an algorithm for the decision-making problem is proposed and applied to a real-life experiment [21].Neutrosophic vague N-soft sets consisting of neutrosophic vague sets and N-soft sets were identified.Additionally, a new method based on neutrosophic vague N-soft sets was given.The method was applied to decisionmaking problems.[22].Definitions of N s topological spaces and some properties were given with examples [11].Recently, Deli [23] studied this notion at interval values.This notion has also been studied by many authors [24,25].
In this study, obtaining near N ss is considered when lower and upper approximations are obtained with equivalence classes which are taken from objects for a subset of N ss features.Additionally, our aim in the study is to ensure that the concept of N ss in near approximation spaces can be used in practical solutions related to N ss.With the help of this set, set properties near to N ss were transferred and defined with lower and upper approaches.Moreover, the advantage provided by the set is explained with an example that can be effective in practice.The concepts defined in this study allow finding close objects with restrictive features encountered in daily life.

Preliminaries
Definition 1.Let O be an object set, P(O) be the power set of O, E be a set of all parameters, and B ⊆ E.Then, a soft set V B over O is a set defined by an approximate function v B : is a set called the ϕ-element of the soft set for all ϕ ∈ E. Hence, a soft set can be denoted by the set of ordered pairs [13] is called a near soft set (NS S ) [17].
Definition 3. Let O be an object set, E be the object set of features, and A, B ⊆ E . Definition 5. Let (F, B) be an NS S over O, and τ be the collection of near soft subsets of O.If the following are provided: then (O, τ, B) is a near soft topological space (NS T S ) [17].Definition 6.Let O be an object set, with u ∈ O.A neutrosophic set K in O is described by the truth-membership, indeterminacy, and falsity functions D K , I K , and Y K , respectively, defined as V E in O is described by the truth-membership, indeterminacy, and falsity are D△ v(ϕ) (u), I△ v(ϕ) (u), and Y△ v(ϕ) (u), respectively.Thus, the specialized family of some elements of the NS S P(O) are defined as r can be defined as near neutrosophic soft approximations of V with regard to B. The neutrosophic soft set N r (( Definition 9. Let △ V B be an NS S on an object O and V ⊆ O.Then, the accuracy measure of V is defined as where V ∅ and || denotes the cardinality of sets.
Definition 10.Let △ V B be an NNS S on an object O and V ⊆ O.Then, the affiliation function of an element v to a set V is described as where Proposition 11.Let △ V B be an NNS S on an object set O and M, Z ⊆ O. Thus, the following properties apply:

Let
} be a set of patients, and E = {ϕ 1 , ϕ 2 , ϕ 3 } be the set of each patient's characteristics, such as fever, anemia, and weight, respectively.Then, an equivalence relation R on O is obtained from the Table 1, according to the properties of O and E.
Table 2.The tabular representation of the NS S .
The neutrosophic soft set N r ( Then, accuracy measure of V = {u 1 , u 2 , u 4 } is described by Therefore, we get the accuracy measure for all alternatives from Table 3.
Table 3.The accuracy measure for all alternatives.
It is obvious that u 1 and u 4 are the two options with the maximum accuracy.Then, we get N r ( △ V △ B ) of the considered maximum options as in Table 3. Table 4 shows the tabular representation of  u 4 ϕ 1 (0.7, 0.5, 0.3) (0.7, 0.5, 0.4) ϕ 2 (0.8, 0.4, 0.3) (0.8, 0.4, 0.3) S i j = D ϕ j (u i ) + I ϕ j (u i ) − Y ϕ j (u i ) is calculated as the highest alternatives, as shown in Table 5.
Table 5.The highest alternatives.u 1 u 4 ϕ 1 0.9 0.8 ϕ 2 0.9 0.9 C(u i ) = m j=1 S i j is called the score of the considered alternatives, as shown in Table 6.
Table 6.Score of the alternatives.
From Table 6, it is obvious that the u 1 has the maximum count of 1.8.Thus, the verdict is to select u 1 as the suitable answer.

Conclusions
A new approach to N ss called near N ss was proposed.While choosing the appropriate object by restricting the set of features as desired, near N ss allowed a closer section.In addition, near neutrosophic soft approximations were defined and their properties were verified.The contribution of the model to the selection was applied in order to select the objects.
and Y K (u) are real standard or nonstandard subsets of [0, 1] [23].Definition 7. Let O be an object set, with u ∈ O, E a set of features that are described as the elements of O, B ⊆ E, V a neutrosophic set in O, and △ v : E → P(O).A neutrosophic soft set △ and Y△ v(ϕ) (u) are real standard or nonstandard subsets of [0, 1] [16].3.Near neutrosophic soft set Definition 8.
be an NS S on a universe O with ∼ Br being the equivalence relation.Let (O, E, ∼ Br , N r , υ N r ) be a nearness approximation space (NAS ), △ V B = (V, B) an NS S over O, E a set of all features, and B ⊆ E. The neutrosophic soft lower and upper approximations of any subset V based on ∼ Br respectively, N r * ( △

Proof. 1 .△M B ). 2 .
As in the definition of NNS S , we can induce that N r * ( △ M B ) ⊆ M.Moreover, let u ∈ M and R be an equivalence relation.Hence, u ∈ N * r ( △ M B ). Thus, N r * ( △ M B ) ⊆ M ⊆ N * r ( This is obvious from the definition.3.As in property (i), we get O ⊆ N * r ( △ O B ). Since O is the object set O = N * r ( △ O B ), from equivalence relation, we get N r * ( △ O B ) = O.Hence, N r * (O) = O = N * r (O). 4. Let M ⊆ D and u ∈ N r * ( △ M B ).There exists [u] Br such that u ∈ [u] Br .Thus, u ∈ [u] Br ⊆ D. Hence, u ∈ N r * ( △ D B ).As a result, N * r ( △ M B ) ⊆ N * r ( △ D B ).

Table 4 .
The tabular representation of the NNS S .