1. Introduction
Multicriteria decision making facilitates the evaluation of alternatives based on a set of criteria. So far, this technique has been used to solve a number of problems in various fields [
1,
2,
3,
4,
5,
6].
Notable advancement in solving complex decision-making problems has been made after Bellman and Zadeh [
7] introduced fuzzy multiple-criteria decision making, based on fuzzy set theory [
8].
In fuzzy set theory, belonging to a set is shown using the membership function
. Nonetheless, in some cases, it is not easy to determine the membership to the set using a single crisp number, particularly when solving complex decision-making problems. Therefore, Atanassov [
9] extended fuzzy set theory by introducing nonmembership to a set
. In Atanassov’s theory, intuitionistic sets’ indeterminacy is, by default,
.
Smarandache [
10,
11] further extended fuzzy sets by proposing a neutrosophic set. The neutrosophic set includes three independent membership functions, named the truth-membership
TA(
x), the falsity-membership
FA(
x) and the indeterminacy-membership
IA(
x) functions. Smarandache [
11] and Wang et al. [
12] further proposed a single-valued neutrosophic set, by modifying the conditions
TA(
x),
IA(
x) and
FA(
x) ∈ [0, 1] and
, which are more suitable for solving scientific and engineering problems [
13].
When solving some kinds of decision-making problems, such as problems related to estimates and predictions, it is not easy to express the ratings of alternatives using crisp values, especially in cases when ratings are collected through surveys. The use of fuzzy sets, intuitionistic fuzzy sets, as well as neutrosophic fuzzy sets can significantly simplify the solving of such types of complex decision-making problems. However, the use of fuzzy sets and intuitionistic fuzzy sets has certain limitations related to the neutrosophic set theory. By using three mutually independent membership functions applied in neutrosophic set theory, the respondent involved in surveys has the possibility of easily expressing their views and preferences. The researchers recognized the potential of the neutrosophic set and involved it in the multiple-criteria decision-making process [
14,
15].
The Evaluation Based on Distance from Average Solution (EDAS) method was introduced by Keshavarz Ghorabaee et al. [
16]. Until now, this method has been applied to solve various problems in different areas, such as: ABC inventory classification [
16], facility location selection [
17], supplier selection [
18,
19,
20], third-party logistics provider selection [
21], prioritization of sustainable development goals [
22], autonomous vehicles selection [
23], evaluation of e-learning materials [
24], renewable energy adoption [
25], safety risk assessment [
26], industrial robot selection [
27], and so forth.
Several extensions are also proposed for the EDAS method, such as: a fuzzy EDAS [
19], an interval type-2 fuzzy extension of the EDAS method [
18], a rough EDAS [
20], Grey EDAS [
28], intuitionistic fuzzy EDAS [
29], interval-valued fuzzy EDAS [
30], an extension of EDAS method in Minkowski space [
23], an extension of the EDAS method under q-rung orthopair fuzzy environment [
31], an extension of the EDAS method based on interval-valued complex fuzzy soft weighted arithmetic averaging (IV-CFSWAA) operator and the interval-valued complex fuzzy soft weighted geometric averaging (IV-CFSWGA) operator with interval-valued complex fuzzy soft information [
32], and an extension of the EDAS equipped with trapezoidal bipolar fuzzy information [
33].
Additionally, part of the EDAS extensions is based on neutrosophic environments, such as refined single-valued neutrosophic EDAS [
34], trapezoidal neutrosophic EDAS [
35], single-valued complex neutrosophic EDAS [
36], single-valued triangular neutrosophic EDAS [
37], neutrosophic EDAS [
38], an extension of the EDAS method based on multivalued neutrosophic sets [
39], a linguistic neutrosophic EDAS [
40], the EDAS method under 2-tuple linguistic neutrosophic environment [
41], interval-valued neutrosophic EDAS [
22,
42], interval neutrosophic [
43].
In order to enable the usage of the EDAS method for solving complex decision-making problems, a novel extension that enables usage of single-valued neutrosophic numbers is proposed in this article. Therefore, the rest of this paper is organized as follows: In
Section 2, some basic definitions related to the single-valued neutrosophic set are given. In
Section 3, the computational procedure of the ordinary EDAS method is presented, whereas in
Section 3.1, the single-valued neutrosophic extension of the EDAS method is proposed. In
Section 4, three illustrative examples are considered with the aim of explaining in detail the proposed methodology. The conclusions are presented in the final section.
3. The EDAS Method
The procedure of solving a decision-making problem with m alternatives and n criteria using the EDAS method can be presented using the following steps:
Step 1. Determine the average solution according to all criteria, as follows:
with:
where:
xij denotes the rating of the alternative
i in relation to the criterion
j.
Step 2. Calculate the positive distance from average (PDA)
and the negative distance from average (NDA)
, as follows:
where:
and
denote the set of the beneficial criteria and the nonbeneficial criteria, respectively.
Step 3. Determine the weighted sum of PDA,
, and the weighted sum of NDS,
, for all alternatives, as follows:
where
wj denotes the weight of the criterion
j.
Step 4. Normalize the values of the weighted sum of the PDA and NDA, respectively, for all alternatives, as follows:
where:
and
denote the normalized weighted sum of the PDA and the NDA, respectively.
Step 5. Calculate the appraisal score
Si for all alternatives, as follows:
Step 6. Rank the alternatives according to the decreasing values of appraisal score. The alternative with the highest Si is the best choice among the candidate alternatives.
3.1. The Extension of the EDAS Method Adopted for the Use of Single-Valued Neutrosophic Numbers in a Group Environment
Let us suppose a decision-making problem that include m alternatives, n criteria and k decision makers, where ratings are given using SVNNs. Then, the computational procedure of the proposed extension of the EDAS method can be expressed concisely through the following steps:
Step 1. Construct the single-valued neutrosophic decision-making matrix for each decision maker, as follows:
whose elements
are SVNNs.
Step2. Construct the single-valued neutrosophic decision making using Equation (8):
Step 3. Determine the single-valued average solution (SVAS)
according to all criteria, as follows:
where:
Step 4. Calculate a single-valued neutrosophic PDA (SVNPDA),
, and a single-valued neutrosophic NDA (SVNNDA),
, as follows:
where:
For a decision-making problem that includes only beneficial criteria, the SVNPDA and SVNNDA can be determined as follows:
Step 5. Determine the weighted sum of the SVNPDA,
, and the weighted sum of the SVNNDA,
, for all alternatives. Based on Equations (5) and (8) the weighted sum of the SVNPDA,
, and the weighted sum of the SVNNDA,
, can be calculated as follows:
Step 6. In order to normalize the values of the weighted sum of the single-valued neutrosophic PDA and the weighted sum of the single-valued neutrosophic NDA, these values should be transformed into crisp values. This transformation can be performed using the score function or similar approaches. After that, the following three steps remain the same as in the ordinary EDAS method.
Step 7. Normalize the values of the weighted sum of the SVNPDA and the single-valued neutrosophic SVNNDA for all alternatives, as follows:
Step 8. Calculate the appraisal score
Si for all alternatives, as follows:
Step 9. Rank the alternatives according to the decreasing values of the appraisal score. The alternative with the highest Si is the best choice among the candidate alternatives.
5. Conclusions
A novel extension of the EDAS method based on the use of single-valued neutrosophic numbers is proposed in this article. Single-valued neutrosophic numbers enable simultaneous use of truth- and falsity-membership functions, and thus enable expressing the level of satisfaction and the level of dissatisfaction about an attitude. At the same time, using the indeterminacy-membership function, decision makers can express their confidence about already-given satisfaction and dissatisfaction levels.
The evaluation process using the ordinary EDAS method can be considered as simple and easy to understand. Therefore, the primary objective of the development of this extension was the formation of an easy-to-use and easily understandable extension of the EDAS method. By integrating the benefits that can be obtained by using single-valued neutrosophic numbers and simple-to-use and understandable computational procedures of the EDAS method, the proposed extension can be successfully used for solving complex decision-making problems, while the evaluation procedure remains easily understood for decision makers who are not familiar with neutrosophy and multiple-criteria decision making.
Finally, the usability and efficiency of the proposed extension is demonstrated on an example of tablet evaluation.