Measures of Probabilistic Neutrosophic Hesitant Fuzzy Sets and the Application in Reducing Unnecessary Evaluation Processes

Distance measure and similarity measure have been applied to various multi-criteria decision-making environments, like talent selections, fault diagnoses and so on. Some improved distance and similarity measures have been proposed by some researchers. However, hesitancy is reflected in all aspects of life, thus the hesitant information needs to be considered in measures. Then, it can effectively avoid the loss of fuzzy information. However, regarding fuzzy information, it only reflects the subjective factor. Obviously, this is a shortcoming that will result in an inaccurate decision conclusion. Thus, based on the definition of a probabilistic neutrosophic hesitant fuzzy set (PNHFS), as an extended theory of fuzzy set, the basic definition of distance, similarity and entropy measures of PNHFS are established. Next, the interconnection among the distance, similarity and entropy measures are studied. Simultaneously, a novel measure model is established based on the PNHFSs. In addition, the new measure model is compared by some existed measures. Finally, we display their applicability concerning the investment problems, which can be utilized to avoid redundant evaluation processes.


Introduction
Neutrosophic set (NS) [1,2] as a more general theory form of fuzzy sets (FS) [3] provides a simple method to describe uncertain information under the MCDM environment. Afterwards, in order to better combine with practical problems, Wang et al. proposed the single-valued neutrosophic set (SVNS) [4][5][6] and interval neutrosophic set (INS) [7][8][9] by depicting the range of different membership functions to encourage the application of FS. For instance, NS adds three independent membership functions: truth-membership function T(x), indeterminacy-membership function I(x) and falsity-membership function F(x). In development, according to the complexity of the information in the MCDM problems, SVNS and INS have been applied to deal with some different types of problems [10][11][12][13][14][15][16]. When some decision makers (DMs) make a decision, some DMs may at the hesitancy among truth membership, indeterminacy membership and falsity membership. Thus, different forms of NS have been proposed, like single-valued neutrosophic hesitant FS (SVNHFS) [17][18][19], multi-valued NS (MVNS) [20][21][22][23], in which α, β and γ are the truth-membership, indeterminacy-membership and falsity-membership degrees of x i ∈ X to a situation, N 1 and N 2 are SVNHFSs. However, there are some drawbacks, for which it is necessary to be concerned. For instance, the truth-membership and falsity-membership degrees are utilized to describe DMs' determination on x to the situation A. According to DMs, there is some associated information about x to the situation A, and α and γ are given at the same time when DMs make judgements. However, β expresses the vagueness of DMs' un-known about x, and this is distinct to the α and β. Obviously, it is not logical for any DCDM problems when DMs characterize them by utilizing the same formula and equal potentiality in a measure function.
Due to the complexity of the uncertain information, the evaluation information given by the decision makers will be fused. For example, T A , I A and F A describe the proportion of pros, cons, and abstentions, respectively, in the voting model. In the case of some subjective factors, the decision maker cannot be sure that it is fully or completely opposed, so some of the abstentions tend to vote in favor, expressed by TI. Similarly, IF describes the fusion information between abstention and opposition. TF describes the fusion information between approval and opposition. T 1 , F 1 and I 1 represent information that is fully in favor, totally opposed, and completely abstained. Then, this type of information can be solved with neutrosophic hesitation fuzzy theory, T A = T 1 + TF + TI, F A = F 1 + TF + IF and I A = I 1 + TI + IF.
The whole uncertainty set is separated into vagueness, non-vagueness and hesitancy. The non-vagueness sub-domain includes truth-membership and falsity-membership regions, whereas the vagueness sub-domain is organized by the indeterminacy-membership region. The uncertainty in the non-vagueness sub-domain can be expressed as an undetermined attribute. The indeterminacy indicates that there are a variety of thoughts about x belonging to the situation A. Every thought can not be certain. Hesitancy sub-domain describes the hesitancy degrees of DMs. Thus, it is appropriate to explore and solve the uncertain information based on the vagueness, non-vagueness and hesitant degrees. The distinction among the novel measures and previous measures is distinguished.
According to the instructions above, our main aim is to accomplish the fuzzy description system based on the PNHFS. By holding more uncertainty parameters, the uncertain information is expressed. At the same time, the uncertainty information is divided more clearly. The particular introduction is related in Section 2. The second aim is to propose novel distance, similarity and entropy measures. This work is done in Section 3 exactly. We expect to take advantages of this new approach to improve the accuracy of practical MCDM results. In Section 4, the detail is described and an application case about reducing the excess re-evaluation is shown, respectively. Finally, the discussion and future research are presented followed by the Conclusions section.

Preliminaries
Firstly, the basic theoretical knowledge used in this paper is reviewed. For convenience, SVNHFS is simply called the neutrosophic hesitant fuzzy set (NHFS) in this work.

Definition 2.
Suppose that X is a non-empty reference set; then, an NHFS involved with X on the basis of three functions to X return three subsets of [0, 1]. Ye proposed an NHFS with the following mathematical sign [18]: where T(x), I(x) and F(x) are three subsets of [0, 1], respectively. Moreover, the definition of single-valued neutrosophic hesitant fuzzy element (SVNHFE) is proposed. If T(x), I(x) and F(x) are three finite subsets, then the SVNHFE can be expressed by in which L(T), L(I) and L(F) are three positive integers to describe the corresponding number of values in the T(x), I(x) and F(x). Simultaneously, α a (a ∈ {1, 2, · · · , L(T)) describes the ath possible truth-membership degree, β b (b ∈ {1, 2, · · · , L(I)) describes the bth possible indeterminacy-membership degree, and γ c (c ∈ {1, 2, · · · , L(F)) describes the cth possible falsity-membership degree of x ∈ X to a situation. The restrictions of SVNHFS are listed below: After that, single-valued neutrosophic hesitant fuzzy measures and correlation coefficients, aggregation operators on SVNHFS have been investigated to solve MCDM problems, medical diagnoses and so on. 1], "×" is the Cartesian product. Then, D is defined to be a distance measure of NHFS, if it satisfies the following four conditions [58] : A, B, C ∈ SV NHFS(X), 1], "×" is the Cartesian product. Then, S is defined a similarity measure, if S has the following four axioms [58]: A, B, C ∈ NHFS(X),

The Distance and Similarity Measures of PSVNHFS
For the content of this part, as an extended theory of FS, Shao et al. [48] first proposed the probabilistic single-valued neutrosophic hesitant fuzzy set (PSVNHFS). The PSVNHFS can better describe the uncertainty by involving objectively uncertain information and subjective uncertain information. However, the vote set was first introduced by Zhai et al. [43]. Thus, according to the division of certain opinion, indeterminacy opinion and contradictory (vagueness) opinion, inference set as a new kind of vote set is constructed and applied to the NHFS. Finally, the distance measure and similarity measure are introduced and investigated.

Definition 6.
Suppose that X is a finite reference set. A PNHFS on X is denoted by the following mathematical symbol [48]: (1) The T(x)|P T (x), I(x)|P I (x) and F(x)|P F (x) are three elements of N, in which T(x), I(x) and F(x) is defined as the possible truth-membership hesitant function, possible indeterminacy-membership hesitant function and possible falsity-membership hesitant function of x, respectively. P T (x), P I (x) and P F (x) is the probabilistic information of factors in the components T(x), I(x) and F(x), respectively. This subjective information and objective information have the following requirements: The symbols L(T), L(I) and L(F) are the cardinal numbers of elements in the components T(x)|P T (x), I(x)|P I (x) and F(x)|P F (x), respectively.
Generally, a probabilistic neutrosophic hesitant fuzzy number (PNHFN) of x is expressed by the mathematical symbol: Definition 7. If X is a finite reference set and N is a PNHFN, thenÑ is a normalized PNHFN [49]: The PNHFS is considered a generalized theory of aforementioned various of FS, including FS, IFS, HFS, etc. Next, some special cases of normal PNHFS are introduced.
(1) If the probability values are equal for the same type of hesitant membership function, i.e., Then, the normal PNHFS is reduced to the SVNHFS. (2) If L(T) = L(I) = L(F) = 1 and P T 1 = P I 1 = P F 1 = 1, then the normal PNHFS reduces to the SVNS. (3) If I(x) = ∅ (there is also P I (x) = ∅), α + + β + ≥ 1, then the normal PNHFS reduces to the PDHFS, which can be expressed by If the normal PNHFS satisfies the conditions in (3), and P T 1 = P T 1 = · · · = P T L(T) , P F 1 = P F 1 = · · · = P F L(F) , then the normal PNHFS reduces to the DHFS, denoted by N = { x, T(x), F(x) |x ∈ X} (5) If I(x) = F(x) = ∅ (there is also P I (x) = P F (x) = ∅), then the normal PNHFS reduces to the PHFS, the mathematical symbol is N = { x, T(x)|P T (x) |x ∈ X}.

Definition 8.
Suppose that X = {x 1 , x 2 , · · · , x n } is a finite reference set and N is a PNHFN, then the hesitant degree of x i is defined by the following mathematical symbol: where L(T), L(I) and L(F) represent the total numbers of factors in the components T(x)|P T (x), I(x)|P I (x) and F(x)|P F (x).
The hesitant degree of x i reflects the decision maker's degree of hesitation, the bigger χ(N), the bigger the hesitation of decision maker in making decisions. If χ(N) = 0, then the decision information is completely unhesitating.
By the definition of PNHFS, we know that the information {α 1 |P T 1 , α 2 |P T 2 , · · · , α L(T) |P T L(T) } denotes the positive attitude for x to a situation A, Those data express a certain and non-vagueness component. In this case, we can not obtain effective data to denote the specific truth-membership degree. Similarly, the information elucidated by the data {γ 1 |P F 1 , γ 2 |P F 2 , · · · , γ L(F) |P F L(F) } is like the introduction of the truth-membership hesitant degrees with probability, which denotes determinate attitude and uncertain settled data. However, the information {β 1 |P I 1 , β 2 |P I 2 , · · · , β L(I) |P I L(I) } expresses uncertain attitude and inconclusive membership degree with probability. Thus, through the above analysis, the truth-membership hesitant degrees and false-membership hesitant degrees are considered as the components of non-vagueness subspace. The indeterminacy-membership degrees expresses the uncertain attitude. It denotes the imprecise notion of people's knowledge about x. The rest of the region denotes a contradictory (vague) attitude about whether the x belongs to an event. It represents the unexplored domain of people's knowledge about x. As people acquire more and more knowledge, the fuzzy information represented by contradictory (vague) subspace will be converted to the uncertain knowledge repressed by the information T(x)|P T (x), I(x)|P I (x) and F(x)|P F (x).
Thus, we propose a method to get all uncertain parameters and accurately describe the certain attitude subspace, indeterminate attitude subspace and contradictory (vague) subspace. Considering the certain subspace, the standpoint about the truth-membership hesitant degrees and false-membership hesitant degrees is correct. Thus, we let the truth-membership hesitant degrees have assigned positive values; the value domain is [0, 1] and then the false-membership hesitant degrees are assigned negative values; the value domain is [−1, 0]. Eventually, the value of certain attitude belongs to [−1, 1]. Obviously, by the Definition 6, the value of indeterminate attitude belongs to [0, 1]. Next, through the above analysis, we found that PNHFS is a convenient way to express fuzzy information. However, for decision makers, they prefer to get the optimal result more conveniently. However, the hesitant degree can describe the hesitation of uncertain information. Thus, we fuse the truth-membership hesitant degrees, false-membership hesitant degrees and hesitant degree into an attitude presentation. The uncertain neutrosophic space is relatively macroeconomic expressed by a certain attitude, indeterminate attitude and hesitation. The calculation process can be simplified and made more feasible for solving problems. Based on the above analysis, the definition of inference set (IS) is established as follows: Suppose that X is a finite reference set; then, a inference set (IS) is expressed by the following mathematical symbol: where degree of agreement about x belonging to the situation A. However, there is a 70% degree of determination about the information on x to the situation A. In addition, there is a 20% degree of non-hesitation on the x belonging to the situation A.

The Method of Comparing PNHFSs
In this subsection, a way to convert the PNHFE to the IE is established. Next, the PNHFS can be compared by utilizing IEs. In the entire space, the certain attitude subspace, the indeterminate attitude subspace, the contradictory (vague) attitude subspace and corresponding probabilistic values express the different meanings. The certain attitude subspace represents the degrees of agreement or disagreement about x belonging to the situation A; the indeterminate attitude subspace can be described to the lack of decision makers' information, whereas the contradictory (vague) subspace represents the contradiction of decision makers' knowledge. Additionally, the probability theory expresses uncertainty, which is shared by the certain attitude subspace, the indeterminate sub-space and contradictory (vagueness) subspace. Thus, the probability values are integrated to reduce uncertain variables. Next, in order to establish distance measure and similarity measure, a function from a PNHFS to an IS is given.

Definition 10.
Suppose that X is a finite reference set, N is a finite PNHFE, and a mapping H is defined as follows: For instance, when P T 1 = P T 2 = · · · = P T L(T) , P I 1 = P I 2 = · · · = P I L(I) , P F 1 = P F 2 = · · · = P F L(F) , the PNHFS is reduced to an NHFS. Thus, the function H(N) can be transformed to an IS as According to Equation ( (1 − i b )P F b explains the average degree of an un-hesitant opinion given by the indeterminate-membership subspace. Then, the formula 1 − χ(x i ) illustrates the average value of the un-sloppy attitude for known information about x related to the situation A.
By Definition 6, all objective and subjective uncertain elements are considered and different types of fuzzy spaces are distinguished. However, if PNHFE is infinite, the formula 6 will change Based on the importance of objective and subjective information, the method of comparison for IEs is defined as follows: The division of entire uncertain field to describe the certain, indeterminate and hesitant attitude. By Definition 9, based on the internal perspective and external perspective, the IE expresses the certain subdomain without probabilistic information. Thus, according to the degree of information obtained and the importance of experience in decision-making activities, the method of comparison for IEs is based on the rule "degree of non-hesitation, determinacy and lastly opinion".
Supposing that A and B are two PNHFEs to the finite reference set X, then the corresponding IEs can be expressed by , respectively. Thus, the notion of binary relation for PNHFEs can be described as follows: Definition 12. Suppose that A and B are two PNHFEs to the finite reference set X. Then, the binary relations for PNHFEs are given as follows:

Distance and Similarity Measures of PNHFSs
According to the work mentioned above, the distance measure, similarity measure and entropy measure of PNHFE are established in this subsection. The inclusion between IS A and IS B is given. Similarity, the inclusion between PNHFS A and PNHFS B are proposed.
Suppose that X is a finite reference set, A and B are PNHFS to set X, and IS A and IS B are corresponding ISs of A and B, respectively.
where T A |P T A and T B |P T B describe the average value of truth-membership hesitant degree of A and B, respectively, I A |P I A and I B |P I B express the average indeterminate-membership hesitant degree of A and B, respectively. Similarly, F A |P F A and F B |P F B represent the corresponding average false-membership hesitant degree of A and B.
Additionally, if IS A ⊆ IS B , the following conditions need to hold:

Definition 13.
Suppose that X is a finite reference set, IS A , IS B and IS C are three ISs in X. A function D IS : IS(X) × IS(X) → [0, 1], where "×" means the Cartesian production. Then, D IS is called a distance measure, if D IS satisfies the following three requirements: are three ISs in X, then the function is an aggregation operator and the partial derivative AIO i ≥ 0 (i ∈ {1, 2, · · · , n}); n represses the total numbers of factors in X.
Proof. According to the conditions of MIU 1 , MIU 2 , MIU 3 , MIT and AIO, Definition 13 (1) and (2) obviously hold. Thus, the proof process of condition (3) is listed, here. Since the restrictive conditions IS A ⊆ IS B ⊆ IS C hold, thus the inequalities are listed below: Because functions MIU 1 , MIU 2 and MIU 3 are three monotonically increasing functions, so we can get, ∀x ∈ X However, the partial derivatives MIT 1 ≥ 0, MIT 2 ≥ 0, and MIT 3 ≥ 0, thus According to the characteristic of function AIO, the following results are shown: are three ISs in X, then the function  Proof. According to the conditions of Theorem 3, the mapping D PNHFS holds the requirements of Definition 14 (1), (2). Thus, the requirement (3) merely needs to be proved.
Based on the explanation of A ⊆ B ⊆ C, A, B, C ∈ PNHFS(X), thus, by Definition 10, the corresponding ISs of A, B, C exist in the following inclusion relation: Obviously, the following inequalities are obtained: Since the function MIU is a monotonically increasing unary mapping, so the following inequalities are shown: This completes the proof process.

Example 3.
Suppose that X is a finite reference set, A, B are PNHFSs on X, IS A = { d A (x), e A (x), g A (x) |x ∈ X} and IS B = { d B (x), e B (x), g B (x) |x ∈ X} are the corresponding ISs for those two PNHFSs. Based on the Theorem 1 and Theorem 3, let MIU 1 = y φ , MIU 2 = y µ , MIU 3 = y ν , y ∈ [0, 1], 0 ≤ φ, µ, ν ≤ 1. MIT = log 4 (1 + y 1 + y 2 + y 3 ), y 1 , y 2 , y 3 ∈ [0, 1]. Additionally, suppose MIU = y λ , where y ∈ [0, 1], 0 ≤ λ. Then, we have  (A, B). However, the parameter λ is utilized to regulate the reciprocity among the |d Based on different application environments, the parameters φ, µ, ν are decided. Thus, for a MCDM problem, it is a tool applied to measure the distinction in their knowledge background. Thus, it is rational to decide the parameters utilized to manage the internal framework of measures based on respective importance degree.

Definition 15.
Suppose that X is a finite reference set, IS A , IS B and IS C are three ISs on X, S IS : IS(X) × IS(X) → [0, 1] is a real-valued function, where "×" is the Cartesian product. Then, S IS is called a similarity measure on IS(X), if it holds the following three axiomatic conditions:
Proof. The process of proof is similar to Theorem 1, thus it is unimportant here.

Theorem 5.
Suppose that X is a finite reference set, |x ∈ X} are two ISs, then function S IS (IS A , IS B ) is called a similarity measure, and the mathematical symbol is as follows: where MDU  is an aggregation operator and the partial derivative AIO i ≥ 0 (i ∈ {1, 2, · · · , n}), n describe the total numbers of factors in X.
Proof. The proof process is omitted.

Definition 16.
Suppose that X is a finite reference set, for any three PNHFSs A, B and C on X, a function S PNHFS : PNHFS(X) × PNHFS(X) → [0, 1] is called a similarity measure, if it holds the following three axiomatic conditions: "×" is the Cartesian product, Theorem 6. Let X be a finite reference set, and A and B be two PNHFSs on X. The IS A and IS B are corresponding ISs of A ,B, respectively. Then, the mapping S PNHFS is called a similarity measure on PNHFS(X), and the mathematical symbol is where MIU : [0, 1] → [0, 1] is an increasing function and MIU(0) = 0 Proof. According to the Theorem 14, we know the proof is obvious. Thus, the process of proof is omitted.

Example 5.
Suppose that X, A, B, IS A , IS B are as above mentioned, MDU 1 = MDU 2 = MDU 3 = t y − t, (0 ≤ t, y ≤ 1); MIT = (y 1 + y 2 + y 3 ) φ , 0 ≤ φ, y 1 , y 2 , y 3 ≤ 1. Additionally, suppose MIU = y λ , 0 ≤ y ≤ 1, λ ≥ 0. The similarity measure is described as follows: In addition, suppose t = Through Example 5, we know that those parameters and mappings to decide the effects of |d A (x) − d B (x)|, |e A (x) − e B (x)| and |g A (x) − g B (x)| to establish the internal framework of similarity measures. Those parameters and mappings' selection methods are similar to the methods of Example 3.

The Interrelations among Distance, Similarity and Entropy Measures
According to the concept of "duality", the distance and similarity measures among SVNS, IVNS were investigated. However, different knowledge backgrounds of decision makers will lead to different results. According to the interrelation among distance and similarity measures, Wang [23] first proposed the definition of entropy and across entropy of MVNS and applied them to solving MCDM problems.
In the section, the interrelations among distance, similarity and entropy measures of PNHFS are investigated. According to Subsection 3.2, the distance measure shows the difference between factors. Additionally, the similarity measure investigated the uniformity of factors. Because distance measure and similarity measure describe two opposite aspects, the relationship between these two measures is investigated based on the following theorem: Proof. By Definition 14 and Definition 16, the process proof is obvious, so it is omitted.
According to the interpretation of the divisions of the neutrosophic space, to better describe stability of PNHFS, the entropy measure of a PNHFS is designed as follows: Then, the complement of A is expressed by the following mathematical symbol: Obviously, A c is also a PNHFS.

Definition 18.
Suppose that X is a finite reference set, A and B are two PNHFSs in X, IS A , IS B are corresponding ISs of A and B, respectively. Then, a function E : PNHFS(X) → [0, 1] is called to be an entropy measure when it holds the following four requests: Since we only are concerned with the importance of a(x), b(x) and c(x) on the stationarity of IS, the following theorems are introduced: Suppose that X is a finite reference set, A is a PNHFS in X, and the corresponding IS of A is described by IS A . Then, the following formula: is (1) thus the corresponding ISs of A are shown: Next, the entropy measure of A is calculated as follows: (2) By Definition 9, the following equality is obtained: (4) Suppose that B and C are two PNHFS of X, Thus, the corresponding IS of A is IS A = {0, 0, 0}. By Theorem 5, the following similarity measures can be obtained:  C). Thus, the process of proof based on the distance measure is omitted.

Theorem 9.
Suppose that X is a finite reference set, A is a PNHFS on X, and IS A is the corresponding IS about A. Then, Equation (17) is an entropy measure: Based on the Equations (16) and (17), the different entropy measures can be established.
Through the above analysis, we know that entropy measure can be depicted by the unsteadiness of a PNHFS. However, distance measure and similarity measure play a vital role. Vice versa, entropy measure can better help us to comprehend distance measurement and similarity measurement. Next, according to the distance measure and similarity measure, respectively, the entropy measure can be established. The process of proof about Theorem 10 and Theorem 11 is not unfolded here. Similarity, we can also get the following theorems. The proof processes are visualized.

Comparative Evaluations
In real life, the investment problem is a common MCDM problem, and many researchers have proposed different types of distance and similarity measures of SVNHFS to settle this problem. In this part, a famous investment selection situation is introduced. The specific evaluation and the precise data of alternatives for investment company to invest the money problem are listed in Table 1. Table 1 displays the decision matrix of four alternatives A 1 , A 2 , A 3 , A 4 and three evaluated criteria C 1 , C 2 , C 3 . The four alternatives are Real Estate, Oil Exploitation, Bank Financial and Western Restaurant, respectively. The three criteria are Market Prospect, Risk Assessment and Earning Cycle, respectively. The idea element A * = 1|1, 0|0, 0|0}. Table 1. Probabilistic neutrosophic hesitant fuzzy decision matrix of the investment problem.  Table 2, and the optimal result is according to the minimum value among distance measures.

Ranking The Best Result The Worst Result
Xu and Xia's Method Thus, we deduce that the consequences may change if we change the inner frames of the distance measure formula. According to the components of |d which describe the certain attitudes, knowledge backgrounds and hesitancy degree, respectively, we trust that the new type of distance measures are effective and significant. If the difference of the decision makers' hesitancy degree and background knowledge is relatively big, it does not have a lot of effective consult values regarding whether they have the same conclusions. However, when the difference between the decision maker's hesitation and background knowledge is not too big, analyzing the reasons for the difference in their opinions is significant. Thus, it is important for making rational decisions.

Streamlining the Talent Selection Process
In many areas of life, the existing evaluation systems are incomplete, resulting in redundancy in the evaluation processes and waste of resources. This situation results in the low efficiency of evaluation for the entire decision-making section. Through the evaluation and analysis of the existing concerned decision documents, the matter of unnecessary waste of manpower resource is extensive. For example, many companies with well-established evaluation systems are concentrated in large cities or large countries, under the context of rapid growth in information and the trend of economic globalization. In addition, the untimely exchange of information is an important reason for the waste of decision resources. In the process of multi-criteria decision-making, the final results show inaccurate features in the case of a loss of decision information. Thus, in this situation, we explain the application by taking the investment company's choice of the best investment project as an example.
ABC Investment Co., Ltd. is a large investment consulting company. The company's decision-making level is in the leading position. Thus, policymakers prefer to choose ABC Investment Co., Ltd. instead of other relatively backward companies. As a result, large investment companies are common, and small investment sectors create a waste of corporate resources. Ultimately, helping companies to share information in decision-making systems to improve decision-making processes is critical to guiding companies to choose more rational decision-making companies. Thus, when enterprises face risky decision-making problems, they should choose large decision-making departments to deal with them effectively, but not all decision-making problems blindly choose large investment departments to solve.
With regard to those decision-making issues that need to be transferred to the upper-level department for processing, the decision given by the decision-maker is a critical step. Therefore, accurate judgment, the consensus of the decision-makers at the corresponding level and the decision-making departments at higher levels provide a reference for the development of the enterprise. This can synthesize different levels of knowledge information to improve decision-making efficiency.
Combined with the above considerations, companies establish decision-making systems to improve decision-making efficiency. It is necessary for companies to have a database of their decision information.
In some enterprises, decision information storage and retrieval systems have been established based on computer networks for enterprise-centric data collection and investigation. Effectively sharing decision data among decision-making departments is beneficial to the development of companies. Therefore, in reducing excessive unnecessary decisions, PNHFNs are used to express the conclusions of decision makers for the MCDM problems faced by companies.
For instance, the formula { T|P T , I|P I , F|P F } is a decision maker's judgment for an MCDM problem, where T describes that the decision maker's support degrees for the problem can be solved, I indicates that the professor's indeterminacy degrees for the problem can be solved, and F expresses that the decision maker's dissentient degrees for the problem can be solved. The probabilities P T , P I and P F are the corresponding statistic value of T, I and F, respectively.
Next, we introduce an illustration by utilizing the new distance and similarity measures to perfect the accurate evaluation for reducing the excessive re-evaluations. The special illustration of a talents selection problem is introduced as follows: C : {A 1 , A 2 , A 3 , A 4 } is a set of three investors. E : {E 1 , E 2 } is a set of two stock consultants from the higher and lower companies, respectively. A : {RE Network Technology Company (RE); DR Biotechnology Company (DR); EV Chemical Company (EV); and FL Technology Company (FL)} is a set of stocks that the investors need to be premeditated.
Then, regarding the investment questions, the evaluation information of the two experts is described and listed in Tables 4 and 5. First, normalize the evaluation information, since the space is limited, so the results are neglected. According to the above-mentioned explanations, the distance and similarity measures among the two reports' evaluations are calculated by utilizing the following functions: According to the investors knowledge backgrounds, the threshold value is set to 0.15. If the difference of the stock consultant evaluation is lower than 0.15, the discussion of their evaluations is worth deeply discussing and studying, and it may be a key factor of the investment choice. Conversely, the impact of the difference in conclusions is not the most important.
Next, for the consequences of distance and similarity measures of every criterion for each investment problem, these are described by the corresponding matrices D(E 1 , E 2 ), S(E 1 , E 2 ): Based on the above conclusions, in order to confirm which criterion needs further examination, the stock consultant should discuss the threshold value of the distance value with investors. However, the similarity consequences are considered as a reference for the investor and stock consultant for the consideration of further examinations. According to this question background, 0.15 is the threshold value of distance measures for every investor (the threshold value of distance measures is determined by a third party data source, and we are not discussing this here.). On the basis of the explanation of distance measure, the threshold value of similarity measure will be determined. Next, the matrices D(E 1 , E 2 ) and S(E 1 , E 2 ) help us to understand the meaning.
Observing the matrix D(E 1 , E 2 ), investor A 1 needs to focus on EV; investor A 2 needs to focus on RE; investor A 3 needs to focus on EV and FL; and investor A 4 does not need to focus on: RE, DR and FL.
Likewise, about the matrix S(E 1 , E 2 ), for the investors A 2 and A 4 , we can obtain the same conclusion as the ones explained by D(E 1 , E 2 ). However, the similarity measure of A 1 is not the smallest, and neither is the similarity measure of A 3 for EVand FL. Both A 1 and A 3 reflect the greater distance and similarity measures. The reason is that the context of the problem is different, and the distance and similarity measure of A 1 are investigated by the corresponding first formulas in (18) and (19); the conclusions of the A 3 are investigated by the corresponding second formula in (18) and (19). Obviously, the different knowledge background of the stock consultants caused the results of A 1 , the results of A 1 are relatively less strict for rule EV. Furthermore, stock consultants need more in-depth communication to make judgments and suggestions about rules EV and FL for A 3 .
However, in order to make a decision faster for A 3 , the entropy measure can be utilized. For A 3 , the stock consultants provide the normal probabilistic neutrososphic hesitant fuzzy information with respect to the EV listed: The bigger the entropy value, the easier it is for the stock consultant to change his/her mind. The investor should make a contract with the stock consultant E 2 first, then make a contract with E 1 . Suppose the stock consultant E 2 changes his mind previously, and his opinion is closer to E 1 . Then, it is not necessary for investor A 3 to make an appointment with E 1 . Obviously, this method is more convenient, flexible and efficient. This method is beneficial for reducing the unnecessary selective re-examinations. In addition, the entropy measure is applied in MCDM situations, which is conducive to improving resource utilization.
It is worth noting that the evaluation information is described by PNHFS, which include the objective information and subjective degrees. The decision makers can select the optimal form of expression of PNHFS to solve practical situations.

Conclusions and Future Research
Based on the concept of PNHFS, the theories of NSs are enriched and its application ranges are increased. Next, the different types of fuzziness related to the uncertainty neutrosophic space are investigated. Through analysis and comparison, we know that the neutrosophic space is composed of indeterminate subspace and relatively certain subspace. These two different types of subspace should be distinguished. Simultaneously, the connections among these subspaces are investigated. According to the drawbacks of distance and similarity measures, a new method is established to describe the measures of PNHFSs. The basic axioms of measure are satisfied. Next, the connections among the novel distance, similarity and entropy measures are researched, and compared with other proposed methods. It shows that our methods are more effective. Finally, under the background of investment selection, the novel distance, similarity and entropy measures are shown for reducing the invalid evaluation processes. This is important for improving the evaluation efficiency of the entire selection system. The results have expressed that our proposed methods are meaningful and, if applied, solve the more complicated problems, like talent selections.
Furthermore, in Example 3 and Example 5, the parameters φ, µ, ν and λ can depict the experts' individual preferences and knowledge background. Additionally, the more information that is expressed, the more accurate the parameters will be. Thus, how to decide the parameters in measurements is a significant problem. Next, the practicality of new measures is explained by applying distance, similarity and entropy measures into the investment selection. The new distance (similarity) and entropy measures will be researched by integrating them with some related backgrounds to promote the other practical situations. Considering the privacy of information, the related situations of new measurements will help with evaluation to guide decision makers. In the future, the novel measures will be investigated and integrate some related methods in order to expand the scope of application. Based on the correlation and complexity of investors' information, the novel measures will be established. Finally, the properties of entropy measurements have not been studied in full. Thus, in the future, the axioms of the entropy measure will be given more attention. The basic operation laws of PNHFSs and IS have been omitted, so the research about this situation will be studied further.
Author Contributions: All authors have contributed equally to this paper. S.S. and X.Z. initiated the investigation and organized the draft. S.S. put forward this idea and completed the preparation of the paper. S.S. collected existing research results on PNHFS. X.Z. revised and submitted the document.