With the development of the concepts of carbon peak and carbon neutrality, several professional rating agencies and social organizations have emerged around the world. They measure companies’ performance in ESG from three aspects: environmental, social, and governance. In some cases, the ESG score can be a guiding signal for investors in the financial market. However, ESG analysts or decision-makers have different sets of information and/or different interpretations of information, resulting in ESG scores for the same company often varying significantly across rating agencies. Differential ratings hinder the development and application of ESG, so it is important and significant to assess ESG with the preferences of analysts or decision-makers [
26]. In this paper, we propose an ESG group decision method that takes into account the preferences of multiple subjects.
3.1. Group Decision-Making
ESG is a value concept and assessment tool that focuses on environmental, social, and governance, initiated and promoted by the United Nations Principles for Responsible Investment (UNPRI). Environmental (E) concerns carbon and greenhouse gas emissions, environmental policies, waste pollution, etc.; social (S) concerns employee health and safety, management training, labor practices, etc.; governance (G) concerns corruption and bribery policies, anti-unfair competition, risk management, etc.
Due to differences in knowledge background and investment needs, etc., subjects give different personal judgments on the important order of the three dimensions, and there are six (
) scenarios, i.e.,
,
,
,
,
,
, respectively [
27]. The first scenario (
) is selected for analysis here, and the analysis of the other scenarios is consistent with this. Let
,
,
denote the importance of E, S, and G (i.e., indicator weights) given by the subject, and then the ESG score of the
ith company measured by
can be expressed as follows:
here,
denotes the ESG value of
given by
.
is a normalized value, which can be calculated by Equation (2).
where,
denotes the score of
on
,
,
.
Theorem 1. According to Song’s study [28], subjects can perform a closed assessment of a company’s ESG, and this assessment does not require the determination of precise weights. Based on this, the ESG score of given by can be expressed as follows. The method does not require the exact weights of each indicator, thus making the results more objective and the process simpler. Based on the above, the six scenarios are analyzed to form a group decision-making matrix.
where,
denotes the ESG score of
pth subject on the production operation of
ith company,
,
.
3.2. Preference Information Measurement
The group decision-making matrix derived based on Equation (4) responds to the preferences of heterogeneous subjects. However, the attribute characteristics of the exact values make the preference information of the subject hidden. To further explore the preference information of the subjects, this paper adopts the fuzzy inference system (FIS) to fuzzify the exact numbers and derive the complete preference information. FIS is a widely used method for sustainability assessment [
29,
30]. The main steps are shown in
Figure 1.
Figure 1 shows the inference process from fuzzification to defuzzification of the fuzzy inference system. The first is the fuzzification process. In this paper, the exact values are fuzzified using an affiliation function. Through the fuzzification process, a clear (non-fuzzy) value is transformed into an affiliation level for each linguistic term in the fuzzy set. Linguistics are an effective way for decision-makers to express preference information in complex decision problems [
31]. In this paper, the triangular fuzzy number is chosen to fuzzify the exact value. Let
is a triangular fuzzy number, and its corresponding affiliation function formula is shown in Equation (5).
In this paper, the five-level linguistic variables are selected to fuzzify their exact values, and their relevant information is shown in
Table 1. From this, the preferences of subjects for each company can be derived. Taking
as an example, the affiliation of an
ith company (
) can be expressed as Equation (6).
where the “+” does not represent a summation, but rather a generalization of the set. “
” is also not a point, it indicates
the affiliation to the fuzzy set PS.
Next, we need to analyze the fuzzy rule base. The obtained affiliation is usually analyzed using the “if-then” inference rule. Here, the fuzzy values are aggregated using fuzzy operators. Currently, there are four types of fuzzy operators, namely “Min-Max” fuzzy operator (
), “Min-product” fuzzy operator (
), “Max-product” fuzzy operator (
), and “product-sum” fuzzy operator (
) [
32]. We choose
to perform information aggregation in this paper, which can be expressed as Equation (7).
Here, denotes the fuzzy assessment value; denotes the degree of importance.
Further, we need to process the inference unit. The evaluation object is fuzzified using the above method. Here, firstly, an exact number is converted into a triangular fuzzy number by the affiliation function, and then the fuzzy output of TA, HS, MS, LS, and PS will be generated according to fuzzy rules.
The denotes the initial evaluation results of each enterprise given by . A new fuzzy matrix is formed by associating linguistic terms with rating levels through an affiliation function, as expressed in Equation (8).
Next, the “product-sum” fuzzy operator (
) is used to assemble the fuzzy matrix, and this paper uses the affiliation function to represent the importance preference of the evaluation subject. The assessment results (
) are presented in Equation (9).
The initial group decision-making is modified based on the fuzzy evaluation values derived from Equations (8) and (9). The new fuzzy group decision-making matrix with preference information is shown below.
where,
denotes the modified fuzzy value of
,
.
Finally, the fuzzy numbers are defuzzified. By utilizing the defuzzification process, the fuzzy values are transformed and output. In this paper, the fuzzy values are defuzzified using Equation (11) and the group decision matrix is modified in a close step [
33].
3.3. Evaluation Information Integration
A fuzzy inference system is used to revise the initial group decision-making matrix, which results in a new group decision matrix with complete preference information,
. In this section, TOPSIS is used to aggregate the group decision-making information. The ESG evaluation obtained here is the closest to the positive ideal solution and the farthest from the negative ideal solution.
where
denotes the bigger ESG value given by
;
denotes the smallest ESG value given by
.
Based on Equations (13) and (14), the distance from
to the positive ideal solution and the negative ideal solution can be expressed in Equations (15) and (16).
where,
and
denote the distances
to the positive and negative ideal solutions, respectively. Nearly, Equation (17) is applied to calculate the relative proximity coefficient, which is the final evaluation value of the ESG.
The use of integrated multi-subject preference information is more appropriate to the actual evaluation situation so that the results can be accepted by the majority or all subjects and thus reach a group consensus.
3.4. Methodological Steps
In this paper, we propose an ESG assessment method that considers the preferences of multiple subjects based on group decision-making and fuzzy inference methods. This method fully considers the preferences of heterogeneous subjects for ESG assessment and the problem of information integrity, which adopts group decision-making for ESG assessment, so that the final ranking results can maximize the differential demands of heterogeneous subjects and thus reach group consensus. Fuzzy inference can reflect the hidden preferences of the subjects by fuzzifying the evaluation information, which makes the results more consistent with the real assessment results. The specific steps of the method are as follows:
Step 1: The initial group decision-making matrix is established. The decision-makers with different preferences are identified by a specific judgment of the important order among E, S, and G. There are six scenarios of preference decision-makers. Based on this, an initial group decision-making matrix with preference information is developed in this paper, , .
Step 2: Heterogeneous subject preference information is analyzed. Due to the complexity and diversity of ESG evaluation indexes, as well as the attribute characteristics of the precise value itself, some preferences of analysts and investors are hidden. In this regard, this paper proposes a method to fuzzify the initial assessment values by using a fuzzy inference system to derive the following distribution of linguistic preference relations among subjects.
Next, a fuzzy group decision-making matrix with preferences is obtained by using the “product-sum” fuzzy operator to assemble the preferences, . Further, the fuzzy group decision-making matrix is modified by using the defuzzification operator, and the new group evaluation matrix is .
Step 3: ESG evaluation value and ranking are calculated. The TOPSIS method is selected to aggregate the preference evaluation information of six heterogeneous subjects to obtain the final ESG evaluation value of each evaluation subject. Based on the final ESG scores of the companies, they are ranked according to the idea of descending order.
The higher the final ESG score, the higher the ranking, and the more outstanding the comprehensive performance of the company in terms of society, environment, and corporate governance.