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Article

Regret Theory and Fuzzy-DEMATEL-Based Model for Construction Program Manager Selection in China

1
School of Construction Management, Hunan University of Finance and Economics, Changsha 510000, China
2
SWJTU-LEEDS Joint School, Southwest Jiaotong University, Chengdu 610000, China
3
School of Civil Engineering, Guangzhou University, Guangzhou 510000, China
4
School of Civil Engineering and Architecture, Guangzhou City Construction College, Guangzhou 510000, China
*
Author to whom correspondence should be addressed.
Buildings 2023, 13(4), 838; https://doi.org/10.3390/buildings13040838
Submission received: 7 February 2023 / Revised: 19 March 2023 / Accepted: 20 March 2023 / Published: 23 March 2023
(This article belongs to the Special Issue Tradition and Innovation in Construction Project Management)

Abstract

:
During the drastic changing process of the construction industry in China, construction program management has been given significant attention. Due to the complexity of construction programs, selecting competent managers is crucially important to its success. Therefore, based on a comprehensive literature review, this paper combines regret theory and the Fuzzy-DEMATEL method to develop a multi-attribute model for construction program manager selection. Firstly, six competence elements are extracted, then the manager selection and evaluation index system are constructed. Secondly, the regret theory is used to simulate the psychological characteristics of the decision makers, combined with Fuzzy-DEMATEL, the comprehensive weights for each element are calculated. Lastly, all alternatives for the selection are sorted and the competent ones are selected. A case study is provided to exam the effectiveness of the developed model. Results shows that the proposed model adopted multi-attribute evaluation and group decision making and took into account the psychological behavior of decision makers as well as influences from the relationships between different attributes. Such results indicate that the proposed model is able to provide more comprehensive and scientific construction program manager selections, which can further improve the management of construction programs.

1. Introduction

In the new journey of the construction industry’s development, construction program management, which manages construction projects in groups has gradually become a trend in China [1]. Construction program is more presented in the form of large-scale, complex and groups of “giant projects”, such as the West-East Gas Transmission Project, the Yangtze River Three Gorges Project, the Beijing Olympic venues construction project, the South China Sea Petrochemical Project, etc. Construction program management is conducive to enhancing the core competitiveness of enterprises, expanding the market of construction enterprises and realizing enterprises’ organization strategy [2]. However, the complexity and uncertainty of different construction projects, especially large-scale projects, has brought great challenges to construction program management, which requires the construction program managers being able to handle rapidly changing programs. As the core personnel in the management process, the construction program manager has a huge impact on the success of the project [3]. Therefore, selecting a competent construction program manager is one of the key factors of the construction program.
However, the current process of selecting and hiring project managers usually uses simple factors in the decision-making process. Such process has significant cognitive limitations while psychological factors and preferences of the decision makers will affect the decision results, thus potentially causing regrets. In such cases, the decision made based on expectation theory is often unable to explain the actual decision-making behavior, and most of the decision makers evaluate alternative construction project managers not in precise numbers, but in fuzzy language, and there are defects such as information loss and poor accuracy of results in the quantification process.
Thus, based on the limitations of currently used construction project manager selection process, this paper combined regret theory, Fuzzy-DEMATEL method, disparity minimization, and multi-attribute group decision making method to quantify, rank, and selects the optimal construction program manager. The proposed model can further improve the scientific nature of the selection of construction program managers for construction enterprises, thus, to improve the overall management effectiveness and efficiency of the programs.
The rest of the paper is organized as follows: (1) a literature review regarding related topics is provided; (2) the data collection process of this study is explained; (3) the competency model of construction program manager is explained; (4) the construction program manager selection model’s development process is provided; (5) a case study is provided to prove the feasibility of the proposed model, and (6) the results of the case study as well as main conclusions and future works are presented.

2. Literature Review

The literature review of this paper mainly covered literatures related to methods for construction program (project) manager selection, construction project manager’s evaluation indices, language assessment methods, and regret theory.

2.1. Construction Program (Project) Manager Selection

After a comprehensive literature review, only a few studies were found that focused on the selection of construction program managers while most of the documents were aimed at the selection of single project managers. The traditional methods for selecting construction managers in China are mainly achieved through recruitment and open competition [4]. Although organized recruitment method is easy to apply, it is not conducive to innovation and may lead to lack of vitality [5]. Open competition, on the other hand not only selects the best option, but also enhances the competition awareness and the sense of responsibility of the program manager. For open competition, most scholars mainly study the competency of construction project managers [6,7,8]. In the selection of construction project managers, binary semantic analysis [9], vector angle cosine method [10], analytic hierarchy process [11], support vector basis method [12] are used for selection.
Related research overseas is more in-depth than that in China. Overseas, the selection often requires the application of multi-criteria decision-making (MCDM) methods for robust recruitment [13]. Most foreign scholars also studied the competency of construction managers [14,15], using comprehensive mathematics method [16], analytic hierarchy process [17], Delphi and fuzzy language evaluation method, target programming and topsis [18,19], and other methods. Their main objective was to establish the selection model index system, ranking the alternative construction managers, then selecting the optimal construction managers.

2.2. Construction Project Manager’S Evaluation Indices

For construction project manager’s evaluation indices, Skulmoski and Hartman considered that excellent personality charm is one of the strengths of construction project managers to ensure the trust and support of project team members and smooth cooperation with other stakeholders [20]; Krchová’s study showed that as the leader of a construction project, the manager must have a convincing personality charm, which plays an important role in mobilizing the team’s motivation, uniting the team’s fighting force, and successfully implementing the project. Therefore, developing and demonstrating personal charm has become an important challenge for project team managers. Management skills are considered to be a direct reflection of the high level of working ability of project team managers and one of the key hard skills they must master [21]. Considering the characteristics of construction progam managers in practice, most of the time is spent on communication and emotional connection between the program’s stakeholders. Therefore, effective communication can help with reducing conflicts between the construction program organization and stakeholders and support the manager to make the right decisions [22]. As a construction program manager, having excellent professional skills is necessary to ensure the program’s success [21]. The managers should have the ability to control the risks and discover potential risks of the construction program, to propose effective solutions in a timely manner, and to adopt effective ways to achieve the management goal of the construction program [23]. Furthermore, strategic vision and stress resistance ability are also emphasized as key characteristics of the managers considering the uncertainty and high stress environment of construction program management [22,24,25].

2.3. Language Assessment Methods

Language assessment scale is a prerequisite for group decision making that generally required to select appropriate assessment scale. Levrat and Bordogna et al. [26] used linguistic terms such as “very high”, “high”, “general”, “low”, and “very low” to evaluate the scheme. Herrera and Martinez (2000) transformed the evaluation terms into binary groups formed by the values in [−0.5, 0.5]. Dai et al. [27] conducted comparative analysis on the commonly used uniform scale and non-uniform scale. The research shows that the non-uniform language scale is more consistent with people’s expression habits as well as the conclusions.

2.4. Regret Theory

For regret theory, it was firstly applied to the choice between two schemes, and Quiggin (1994) extended it to the field of multiple schemes. Bleiehrodt et al. [28] constructed regret-happy function based on exact number and provided its calculation method. On this basis, Zhang, Fan, and Chen [29] used interval number to express the uncertainty of information, while Zhang, Zhu, and Liu [30] used fuzzy number concept to describe it. However, in practice, decision makers tend to use language to evaluate a scheme. Therefore, Zhang and Wang [31] designed a regret-happy function based on language information which shows advantages in language identification.

3. Construction Program Manager Selection Evaluation Index System Based on Grounded Theory

Grounded Theory is a bottom-up qualitative research method based on research questions from field observations by collecting and analyzing data to refine concepts and categories, thus rising to the theoretical level [32]. Grounded theory is able to resolve the differences between traditional quantitative research and qualitative research. At present, academic research on the selection and evaluation index of construction program manager is still in its infancy. Therefore, this paper chooses grounded theory method to construct the selection and evaluation index system of construction program manager selection.

3.1. Data Collection

Considering the number of interviewees available and the purpose of this research, purposive sample is used to select proper interviewees in the data collection process. Purposive sampling, as known as judgment sampling, is typically used to identify and select the information-rich cases for the most proper utilization of available resources [33]. So, managers who have rich experience in construction project/program management and have high credibility in constructing the selection evaluation index system for construction program managers are selected. Based on the literature analysis, this paper prepared a preliminary interview outline. To ensure that the interviewees could accurately understand the purpose of the interview and that the recovered interview data could fully support the study, experts were invited to make preliminary modifications to the interview outline. On this basis, the first two interviewees were interviewed using the preliminary revised interview outline, and the outline was revised again based on the suggestions of the interviewees to obtain a final interview outline that met the requirements of the study. The interviews were conducted by telephone from January 2021 to March 2021 with 15 interviewees and nearly 20,000 pieces of information were collected, as shown in Figure 1.
Most of the interviewees were males aged between 30 and 50 with considerable experiences. In terms of academic qualifications, the majority of the interviewees had master’s degrees or PhDs, reflecting that the interviewees had high level education and social perspective, and could understand the interview questions to give credible responses. In terms of gender, males were significantly more numerous than females in this study’s sample. This is mainly caused by the fact that, on the whole, males are more frequently hired in construction project manager positions due to the working condition and intensities. For the employers of the interviewees, the number of state-owned enterprises and private enterprises was equal, reflecting that the work environment was selected in a more balanced manner in this study.

3.2. Development of Construction Program Manager Selection Evaluation Index System Based on Grounded Theory

In this paper, the interview data of 13 construction program manager are used for theoretical modeling, and the rest are used to validate the model. Firstly, the collected raw data are imported into qualitative analysis software, Nvivo11, for spindle and selective coding to identify the characteristic indices and structural dimensions of the managers. Based on the software analysis results and the conducted literature review presented in the previous section, the construction program manager competency model use in this study is shown in Table 1.
Based on grounded theory, this paper constructs the selection and evaluation indices of construction program managers, namely C = {C1 = Personality charm, C2 = Management ability, C3 = Communication and coordination, C4 = Professional skills, C5 = Risk control, C6 = Strategic vision}.

4. Construction Program Manager Selection Model

4.1. Method Selection

Due to the complexity of construction programs, the competent construction program manager should have multi-factor competencies. In reality, due to the limitation of personal knowledge and experiences, it is often difficult to achieve optimal decisions only judging personal abilities. Therefore, the selection of construction program managers should be a multi-attribute group decision-making process.
In this process, due to the “bounded rationality” characteristics of the decision makers, the psychological factors and preferences will affect the results. When decision makers have the choice to compare the selected results with other alternatives, it may result in regret, which most decision makers prefer to avoid. Considering the cognitive limitations and subjective psychological preferences of the decision makers, “complete rational” decision-making based on expectation theory is often unable to explain the actual decision-making behavior. To solve such problems, Kahneman and Tversk [34], Bell [35], and Loomes and Sugden [36] proposed prospect theory and regret theory, respectively. Prospect theory considers a series of factors such as reference point dependence, loss dependence and subjective probability of the decision makers, while regret theory focuses on the influence of “regret” of decision makers on decision effectiveness. Compared with prospect theory, regret theory has fewer assumptions which can better describe and explain the paradoxes such as Alai paradox and preference reversal effect in actual decision-making behavior, so it is more widely used in decision-making problems. Therefore, this paper chooses regret theory to take the psychological characteristics of decision makers into consideration and obtains the multi-attribute evaluation matrix to calculate the perceived utility value of each alternative construction program manager.
In the multi-attribute group decision-making of construction project group manager selection, determining the weight of the evaluation attributes is the basis for the ranking and selection process. The current methods for attribute weight determination include MCDM (Multi-criteria decision-making) proposed by Linett Montano Guzman [37], and DEMATEL proposed by Gabus and Fontela [38,39] of Geneva Research Center. MCDM refers to an analytical method for making decisions under multiple decision criteria or objectives, and commonly used methods include hierarchical analysis (AHP), fuzzy comprehensive evaluation (FCE), grey correlation analysis (GRA), and entropy weighting. These methods mostly try to obtain the best decision result by assigning weights to decision factors and evaluating them comprehensively. DEMATEL was originally used to solve complex social events, based on graph theory and matrix to construct structural models through analysis to study the causal relationships between attributes of complex events and identify key attributes for better analysis of events. Therefore, MCDM and DEMATEL are slightly different in their scope of application. MCDM is more suitable for scenarios that require selection from multiple decision criteria or objectives, while DEMATEL is more suitable for scenarios that require understanding the interactions between factors in complex systems [40,41,42]. With the advancement of related techniques, multi-criteria decision analysis method like Ordinal Priority Approach (OPA) have also emerged. The core idea of OPA is to compare the relative importance of different attributes to determine the best decision. The method usually involves assigning different attributes to different importance levels, such as high, medium and low, and scoring and weighting each attribute to calculate a composite score [43]. Compared to DEMATEL, OPA places more emphasis on the comparison and ranking between attributes, instead of the interdependence between the attributes. For the above considerations, DEMATEL is chosen in this paper.
The key to the application of group decision making is the aggregation of decision makers’ judgment information. Due to the differences in professional background, knowledge and ability, the evaluation quality and level of each decision maker, the application in this study should be a heterogeneous decision group. The closer the attribute evaluation result of a decision-maker is to the group attribute evaluation result, the more credible the decision-maker is, and the greater its weight. Therefore, this paper uses deviation minimization and attribute weights to obtain the weights of the decision makers. By comparing the attribute weights determined by each decision maker based on Fuzzy-DEMATEL, smaller weights were given to decision makers with larger difference values. Therefore, this paper selects the regret theory to consider the psychological characteristics of decision makers to obtain the perceived utility matrix. The algorithm flow of linguistic multi-attribute selection of construction program managers based on regret theory and Fuzzy-DEMATEL is shown in Figure 2.

4.2. Construction Program Manager Selection

4.2.1. Model Preparation

Assuming the alternative construction program manager set A = {A1, A2, A3, …, An}, where Ai denotes the ith program manager, i ∈ N, N = {1, 2, 3, …, n}. Property (index) set C = {C1, C2, C3, …, Cm}, where Cj denotes the j property, j ∈ M, M = {1, 2, 3, …, m}. The decision maker (expert) set D = {D1, D2, D3, …, Dp}, where Dt denotes the tth decision maker, t ∈ P, P = {1, 2, 3, …, p}. The linguistic multi-attribute evaluation matrix Xt = (xijt)n×m, where xijt denotes the linguistic evaluation value of decision maker Dt on the selection attribute Cj of construction program manager Ai.
In order to make better use of the knowledge and personal experience of the decision makers, let the decision makers to evaluate the degree of the interaction between the attributes, and then construct an attribute correlation matrix, so the direct correlation matrix Yt = (yklt)m×m, where yklt represents the impact assessment value of the t decision maker on the kth attribute and the lth attribute.

4.2.2. Evaluation Language Based on Regret Theory

(1) Basic definition
This paper uses the non-uniform language scale and are defined as follows:
The linguistic term set of a on the right side of numerical zero is
S + = { S a | a = 2 ( i 1 ) σ + 2 i ,   i = 2   ,   ,   σ 1 ,   σ }
The linguistic term set of a on the left side of numerical zero is
S = { S a | a = 2 ( i 1 ) σ + 2 i , i = σ , σ 1 , ,   2 }
Therefore, the language assessment scale is
S = { S a | α = ( σ 1 ) , 2 ( σ 2 ) 3 , ,   0 ,   ,   2 ( σ 2 ) 3 , ( σ 1 ) }
In particular, S ( σ 1 ) and S ( σ 1 ) denote the lower and upper limits of the linguistic terms actually used by decision makers, σ is a positive integer, and the number of linguistic terms ( 2 σ 1 ) is called the granularity of the term set, and S a satisfies the following properties: If α   > β , then S α > S β ; there exists a negative operator neg( S a ) = S a .
For example, when σ is 5, the granularity of the linguistic term set is 9, and then
S = {S−4 = extremely poor, S−2 = very poor, S−1 = poor, S−0.4 = slightly poor, S0 = general, S0.4 = slightly good, S1 = good, S2 = very good, S4 = extremely good}.
(2) Utility perception value based on language information
The language identification process used in this study is as follows:
Definition 1. 
Let   S a S   be a term for a language evaluation set, then, a subscript conversion function that converts any language assessment into an exact number is used as shown in function (4).
H ( S a ) = a
Definition 2. 
Let   V ( X )   be a classical utility function, which is a monotone increasing concave function, namely   V ( X ) > 0 ,   V ( X ) < 0 , indicating that the decision makers are risk aversion, then, a language utility function is formed as shown in function (5), in which, σ − 1 is called the cardinality and satisfies 0 ≤ (a + σ − 1)/(2(σ − 1)) ≤ 1.
UV ( S a ) = V ( H ( S a ) + σ 1 2 ( σ 1 ) ) = V ( a + σ 1 2 ( σ 1 ) )
From Definition 2, when S a takes the maximum value, the language utility function is also the largest. When S a takes the minimum value, the language utility function is the smallest. Therefore, it will ensure the accuracy of the results without information loss.
Definition 3. 
Let   S a ,   S a * ,   S a ,   S a +   be the current selected construction program manager, the ideal construction program manager, the negative ideal construction program manager and the positive ideal construction program manager, respectively. R(y) is a classical regret-happy function, which is also a monotone increasing concave function, where R′(y) > 0, R″(y) < 0, and to meet the intuitive judgment result R(0) = 0, then, there is function (6) that helps the decision maker to chooses the current project construction program manager Ai and abandons the ideal construction program manager A*.
TR i = R ( V ( a + σ 1 2 ( σ 1 ) ) V ( a * + σ 1 2 ( σ 1 ) ) )
When   S a * = S a , expressed as the negative ideal construction program manager language evaluation value, namely
TR i = R ( V ( a + σ 1 2 ( σ 1 ) ) V ( a + σ 1 2 ( σ 1 ) ) )
When   S a * = S a + , expressed as the positive ideal construction program manager language evaluation value, namely
TR i + = R ( V ( a + σ 1 2 ( σ 1 ) ) V ( a + + σ 1 2 ( σ 1 ) ) )
Definition 4. 
Suppose that the language utility function of decision maker Dt for the evaluation value   S a   of Ai of the selected project construction group manager is   U V ( S a ) , and the language regret-happiness function is TR i, then, decision maker Dt chooses the language perception utility function of the construction program manager Ai.
TF i t = UV ( S a ) + TR i = UV ( S a ) + TR i + TR i + = V ( a + σ 1 2 ( σ 1 ) ) + R ( V ( a + σ 1 2 ( σ 1 ) ) V ( a + σ 1 2 ( σ 1 ) ) ) + R ( V ( a + σ 1 2 ( σ 1 ) ) V ( a + + σ 1 2 ( σ 1 ) ) )
Through the function   T F i t , the language perception utility value of any construction program manager of any decision maker can be obtained.
In this paper, we take the function R(y) = 1 − exp(δ·y), where the parameter δ∈ [0, +] is the regret aversion coefficient of the decision makers. The greater the parameter δ, the greater the regret aversion degree of the decision makers, and vice versa. In addition, the power function V(x) = Xμ(0 < μ < 1) is used as the utility function, where μ denotes the risk aversion coefficient of decision makers, and the greater the μ, the smaller the degree of risk aversion of decision makers.

4.2.3. Determination of Index Weights Based on Fuzzy-DEMATEL

The key to traditional DEMATEL method is to invite experts to evaluate the mutual influence of each attribute based on their knowledge and experience to form a direct correlation matrix. Due to the uncertainty of practical problems, the complexity of evaluation and the differences between invited experts, most of the evaluations given by experts are not accurate but are similar to fuzzy semantic expressions such as “important” or “satisfied”. Therefore, this paper introduces the triangular fuzzy number method to process the initial matrix to improve the accuracy and the steps are as follows [44]:
Step 1: The construction program manager influencing factors system is constructed, denoted as F1, F2, …, F6. The semantic scale assessed by experts is designed and divided into five levels according to the degree of influence, namely: no influence “0”, very weak influence “1”, weak influence “2”, strong influence “3” and very strong influence “4”, as shown in Table 2.
Step 2: Invite experts to use language operators to evaluate the influencing factors of the construction program manager, and convert the evaluation semantics into the corresponding triangular fuzzy number Wijt = (β1ijt, β2ijt, β3ijt) according to the semantic transformation table, which means that the t experts believe that the factor i has an effect on the factor j, where β1ijt is a conservative value, β2ijt is the closest to the reality value, and β3ijt is an optimistic value.
Step 3: Using the CFCS method to de-fuzzify the triangular fuzzy number, the direct influence matrix Z is obtained. Z reflects the direct effect between factors, and the steps are the following three steps.
(1) Standardization of triangular fuzzy numbers:
x β 1 ij t = ( β 1 ij t min β 1 ij t ) / Δ max min
x β 2 ij t = ( β 2 ij t min β 1 ij t ) / Δ max min
x β 3 ij t = ( β 3 ij t min β 1 ij t ) / Δ max min
where Δ max min = maxβ3ijt − minβ1ijt, and xβ1ijt, xβ2ijt, xβ3ijt are calculated in turn.
(2) Standardize left (ls) and right (rs) values:
xls ij t = x β 2 ij t / ( 1 + x β 2 ij t x β 1 ij t )
xrs ij t = x β 3 ij t / ( 1 + x β 3 ij t x β 1 ij t )
(3) Calculate the clarity value after defuzzification:
x ij t = [ xls ij t ( 1 xls ij t ) + xrs ij t × xrs ij t ] / [ 1 xls ij t + xrs ij t ]
Z ij t = min β 1 ij t + x ij t × Δ max min
Step 4: Standardize the direct impact matrix Zt to get the standardized direct impact matrix G t = ( g k l ) m × m , where
g kl t = z kl / max 1 i m j = 1 m z kl
Step 5: Measure the comprehensive influence matrix Tt, namely
T t = lim m ( G 1 + G 2 + + G m ) = Z ( E Z ) 1
where E is the unit matrix, when m ,   G m = 0 is satisfied.
Step 6: Calculate the importance of influencing factors ε j t .
Note that each row of the elements in Tt is added to the influence degree r k t , indicating the combined influence value. The addition of each column element in Tt is the affected degree d i t , indicating the comprehensive influence value of this element by other elements. Let k = l = j, then the importance of the influencing factor of ε j t is
ε j t = ( r k t + d i t ) 2 + ( r k t d i t ) 2
Step 7: Determine the attribute weight w j ( t ) . Normalize the importance of the influencing factor ε j t in step 6 to obtain the index weight as
w j ( t ) = ε j t / j = 1 m ε j t
In the formula, 0 < w j ( t ) < 1, and satisfy j = 1 m w j ( t )   = 1, for generality, let w j ( t ) = (w1(t), w2(t), , wm(t))T, wj(t) represents the attribute weight of the t-th decision maker based on Fuzzy-DEMATEL on the j-th attribute.

4.2.4. Weight Determination of Decision Makers Based on Deviation Minimization

The attribute weights are obtained by Fuzzy-DEMATEL based on the attribute evaluation of each decision maker. Based on the idea that smaller differences mean larger weights, this paper uses the deviation minimization to obtain the weight of decision makers [45]. For attribute weight wj(t), the difference value of attribute weight between decision maker Dt and other decision makers is E j ( t ) :
E j ( t ) = t = 1 P { w j ( t ) w j ( t ) } 2   ( t   =   1 ,   2 ,   ,   P )
Then define the attribute weight difference E ( t ) of the decision maker Dt with respect to all attributes compared to other decision makers as:
E ( t ) = j = 1 m t = 1 p { w j t w j ( t ) } 2   ( t   =   1 ,   2 ,   ,   P )
The selection of decision maker’s weighting vector φ(t) should minimize the difference value of the total attribute weight of all decision makers for all attributes. Therefore, an objective weighting model for decision makers is constructed:
min E = t = 1 p φ ( t ) 2 E ( t )
s   . t t = 1 p φ ( t ) = 1   ,   φ ( t ) > 0 , t = 0 ,   1 , , p
Introduce the Lagrange function to solve the above model:
L ( φ ( t ) , θ ) = t = 1 p φ ( t ) 2 E ( t ) + 2 θ [ t = 1 p φ ( t ) 1 ]
The derivations of φ(t) and θ are obtained:
{ L φ ( t ) = 2 φ ( t ) E ( t ) + 2 θ = 0 t = 1 P φ ( t ) = 1
Thus:
φ ( t ) = 1 E ( t ) 1 t = 1 p 1 E ( t )
The decision maker weight vector φ(t) is normalized to get the decision maker weight:
W ( t ) = φ ( t ) / t = 1 p φ ( t )
In the formula, 0 < w(t) < 1, and satisfies t = 1 p w ( t ) = 1, for generality, let w(t) = (w(1), w(2), , w(p))T, w(t) represents decision maker Dt is based on the weight of decision maker with minimum deviation.

4.2.5. Comprehensive Perceived Utility Value Calculation and Decision-Making

Let that p ij t (i ∈ N, j ∈ M, t ∈ P) is the perceptual utility value calculated by decision maker Dt for the linguistic assessment value xij of alternative construction program manager Ai for attribute Cj, w j ( t ) is the attribute weight of decision maker Dt to attribute Cj based on Fuzzy-DEMATEL, w j ( t ) is the decision maker Dt’s decision maker weight based on deviation minimization, then the comprehensive perceptual utility value of alternative construction program manager Ai is:
p i * = t = 1 p j = 1 m [ τ w j ( t ) + ( 1 τ ) w(t) ] p ij ( t )
In the formula, the parameter τ ∈ [0, 1] is the weight preference adjustment coefficient, the larger the value of τ, indicating that the group decision makers pay more attention to the attribute weight based on Fuzzy-DEMATEL.

5. Case Study

5.1. Background

In this case of selecting construction program manager, there are five candidates A = {A1, A2, A3, A4, A5}, and three decision makers D = {D1, D2, D3}. According to the selection attribute system in this paper, C = {C1 = Personality charm, C2 = Management ability, C3 = Communication and coordination, C4 = Professional skills, C5 = Risk control, C6 = Strategic vision}. Using the language assessment scale S = {S−4 = Extreme poor, S−2 = Very poor, S−1 = Poor, S−0.4 = Slightly poor, S0 = General, S0.4 = Slightly good, S1 = Good, S2 = Very good, S4 = Extreme good} to evaluate the five candidates, the linguistic evaluation matrix for the group decision makers can be obtained as shown in Table 3, Table 4 and Table 5. The significant impact between different attributes, such as personality charm, having a significant impact on communication and coordination, has also been taken into consideration. Then, the three decision makers used {no influence “0”, very weak influence “1”, weak influence “2”, strong influence “3”, very strong influence “4”} to analyze the influence relationship between the attributes and use the language assessment scale to get the direct correlation matrix between attributes as shown in Table 6, Table 7 and Table 8.

5.2. Decision-Making Steps

(1) Given the parameters μ = 0.88 and δ = 0.3 [17,18], Formulas (4)–(9) are used to process the linguistic multi-attribute evaluation matrix X given by each decision maker to obtain the perceived utility function p ij t , as shown in Table 9, Table 10 and Table 11.
(2) The direct correlation matrix Y between indicators is processed according to Formulas (10)–(20), and the attribute weights are obtained as follows.
wj(1) = (0.1737, 0.2083, 0.1950, 0.1118, 0.1647, 0.1464)T
wj(2) = (0.1778, 0.2076, 0.1751, 0.1108, 0.1727, 0.1559)T
wj(3) = (0.1689, 0.2112, 0.1886, 0.0970, 0.1823, 0.1519)T
(3) According to Formulas (21)–(27), the attribute weight wj(t) is processed, and the weight of decision makers is obtained as follows.
W(t) = (0.3287, 0.3448, 0.3265)
(4) According to Formula (28), the preference coefficient τ = 0, which means the process only focus on the weight of decision makers based on the minimization of deviation. So, the perceived utility value of each alternative construction program manager is p i * = (5.3858, 5.1525, 5.4812, 5.3175, 5.2502)T. Thus, the order of construction program managers is A3 > A1 > A4 > A5 > A2, that is, the construction unit chooses A3 as the optimal construction program manager.

5.3. Parameter Sensitivity Analysis

When calculating the comprehensive weight, there is a preference adjustment parameter τ. Therefore, in the process of ranking the candidate construction program managers, the comprehensive perceived utility value p i * of the construction program managers will be different. This will ultimately affect the ranking of the candidates. The following change parameter τ values τ = 0, τ = 0.2, τ = 0.4, τ = 0.6, τ = 0.8, τ = 1, resulted in different alternative rankings as shown in Figure 3.
It can be seen from the sensitivity analysis results that large preference adjustment parameter gives larger weight wj(t) based on Fuzzy-DEMATEL.
When τ = 1, only attribute weights are considered, the first and second rankings in the ranking result will be switched. When τ < 1, it can be found from the figure that as τ decreases to zero, the ranking results of the candidate construction program managers are consistent and do not change. Based on the above results, on the one hand, when τ = 1, due to ignoring the weight of decision makers, the ranking results change greatly, this indicates that the model may have some instability when only attribute weights are considered, suggesting that decision maker weights should be considered in a comprehensive manner in practical applications. For example, in a construction program, an optimal manager candidate needs to be selected from several alternatives. However, different decision makers may have different views on the importance of the characteristics, so the decision maker weights need to be considered together when ranking. If we only consider the attribute weights and ignore the decision maker weights, it may lead to instability in the ranking results and thus bring negative impact to the selection process. Therefore, in practical application, we need to consider both attribute weights and decision maker weights according to the context in order to better stabilize the ranking results and provide a more credible basis for the selection of construction program managers.
On the other hand, the ranking results did not change when τ < 1. Although, theoretically the different values of the parameter may have an impact on the ranking of the alternative construction program managers. However, if sensitivity analysis of the parameters reveals that the ranking results of the alternatives did not change significantly, this indicates that the model is stable when the parameter changes. This stability may enable decision makers to use the model with more confidence. It is important to note that although the model performs well in such cases, in practical applications, decision makers still need to choose the parameters carefully to ensure reliable results.

6. Conclusions and Contributions

Construction program managers are the core personnel in the management process. They need to respond and handle various events flexibly to promote the success of the program. This paper proposed a multi-attribute manager evaluation and selection model based on grounded theory, regret theory and Fuzzy-DEMATEL methods. During the course of completing this study, the following conclusions and contributions were made:
(1)
By using grounded theory and semi-structured interview, this paper proposed a construction program managers selection and evaluation index system that is able to take various attribute into consideration, including personality charm, management ability, communication and coordination, professional skills, risk control, and strategic vision, which comprehensively reflects the competency requirements for construction program managers.
(2)
In the process of decision-making, this study identified that the decision makers have “bounded rationality”, and their psychological factors and preferences will have an impact on the decision results. Therefore, this paper introduces the idea of “regret theory” to make the decisions more practical.
(3)
The method based on Fuzzy-DEMATEL attribute weight determination method used in this paper is found more efficient for complex situations as it considered both fuzzy language evaluation and the mutual influence between attributes.
(4)
Based on the analysis of attribute weights, the decision makers’ weights are analyzed using deviation minimization method. Their weights and attribute weights are effectively combined to propose more comprehensive and reasonable weights compared to traditional single weight methods.
(5)
The case study shows that the construction program manager selection model proposed in this paper takes into account the psychological behavior of decision makers and group rationality and considers the mutual influence relationship between attributes. This provides a new effective way to solve the problem of construction program manager selection.
(6)
Compared to past studies, the proposed study took into account the “limited rationality” of decision makers, which is different from the traditional assumption of “perfect rationality”. In order to reflect the actual decision-making situation more accurately, this paper introduces “regret theory” to consider the risk attitude and decision preferences of decision makers. This approach makes up for the shortcomings of past studies, and also helps to improve the accuracy and practicality of the selection model of construction program managers.

7. Future Works

This paper used fuzzy numbers to construct the construction program manager evaluation and selection model. In the future, the use of other data forms such as interval numbers and incomplete information can be attempted. In addition, hybrid approaches have been used frequently in personnel, supplier, and key factor selection problems in different industries, so combining different methods such as ANP, TOPSIS, MCDM, and MEMATEL can also be attempted in the future.

Author Contributions

Conceptualization, H.Y.; Software, W.H.; Investigation, Y.Y.; Data curation, C.G.; Writing—original draft, X.L. and Q.Y.; Writing—review & editing, H.Y.; Supervision, H.Y. and C.G. All authors have read and agreed to the published version of the manuscript.

Funding

The present study was supported by the Social Sciences Fund of Hunan Province (22ZDB089, 22JD076) and the National University Student Innovation and Entrepreneurship Project (202111532010).

Data Availability Statement

Some or all data, models, or code that support the findings of this study are available from the corresponding author upon reasonable request.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Basic information of interviewees.
Figure 1. Basic information of interviewees.
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Figure 2. Linguistic Multi-attribute selection of construction program managers based on Regret Theory and Fuzzy-DEMATEL.
Figure 2. Linguistic Multi-attribute selection of construction program managers based on Regret Theory and Fuzzy-DEMATEL.
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Figure 3. Ranking of alternative construction program managers.
Figure 3. Ranking of alternative construction program managers.
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Table 1. Competency model of construction program manager.
Table 1. Competency model of construction program manager.
Serial NumberIndexSecondary IndexIndex Connotation
C1Personality charmB1 Boldness, decisivePersonality charm refers to the manager’s ability to attract people in terms of temperament, personality, ideology and morality. In specific work, managers can make decisive decisions and seize key opportunities; managers can communicate with others sincerely and consider problems from the other side’s standpoint; managers can solve problems impartially and deal with matters fairly; managers can take responsibility courageously.
B2 Sincerity
B3 Responsibility
B4Transpositional consideration
B5 Act fairly
C2Management abilityB6 Whole process managementManagement ability refers to the ability of managers to formulate a good plan in advance and execute it according to the plan. Managers can tap the maximum potential of members in team management, build a team culture actively, have rich management experience, and establish a suitable management system to manage the whole process.
B8 Team management
B20 Experience in management
B21 Establishing management system
C3Communication and coordinationB7 Arouse the enthusiasmCommunication and coordination means that managers can coordinate and communicate well with all participants in the construction program, and reach a unified strategy, purpose, and path; managers can actively use their own subjective initiative to coordinate well the relationship between the participants in the construction program.
B9 Path unification
B18 Flexible adaptation
B19 Participant management
C4Professional skillsB1 Professional knowledgeVocational skills refer to managers who have a certain level of professional skills, and have sufficient depth and breadth in professional knowledge, so as to be able to guide the team directionally.
B17 Information technology
C5Risk controlB13 Policy risk controlRisk control means that managers can predict and control possible risks and establish risk prevention measures.
B14 Market risk control
B15 Employee turnover risk control
C6Strategic visionB10 Strategic objectiveStrategic perspective means that managers have forward-looking strategic thinking based on system thinking and starting from long-term interests. The program manager needs to maintain the sensitivity and attention to the organizational strategy at all times to serve the realization of the long-term organizational strategic goals.
B11 Prospective
B12 Systematic thinking
Table 2. Semantic transformation table.
Table 2. Semantic transformation table.
Semantic VariableNumerical ValueCorresponding Triangular Fuzzy Number
No influence0(0, 0, 0.2)
Very weak influence1(0, 0.2, 0.4)
Weak influence2(0.2, 0.4, 0.6)
Strong influence3(0.4, 0.6, 0.8)
Very strong influence4(0.8, 1, 1)
Table 3. Linguistic Multi-attribute Evaluation Matrix X1 of decision maker D1.
Table 3. Linguistic Multi-attribute Evaluation Matrix X1 of decision maker D1.
Alternative Construction Program ManagerEvaluation Index
C1C2C3C4C5C6
A1S4S1S4S2S0.4S2
A2S2S1S0.4S4S4S1
A3S1S4S4S0.4S0.4S4
A4S2S0.4S4S2S0.4S4
A5S4S4S1S1S4S0
Table 4. Linguistic Multi-attribute Evaluation Matrix X2 of decision maker D2.
Table 4. Linguistic Multi-attribute Evaluation Matrix X2 of decision maker D2.
Alternative Construction Program ManagerEvaluation Index
C1C2C3C4C5C6
A1S2S4S0.4S1S0.4S2
A2S4S2S4S0.4S4S1
A3S4S1S0.4S4S0.4S4
A4S1S4S0S4S0.4S4
A5S0.4S2S2S1S4S0
Table 5. Linguistic Multi-attribute Evaluation Matrix X3 of decision maker D3.
Table 5. Linguistic Multi-attribute Evaluation Matrix X3 of decision maker D3.
Alternative Construction Program ManagerEvaluation Index
C1C2C3C4C5C6
A1S0.4S1S4S2S4S4
A2S2S0.4S4S1S4S1
A3S1S1S4S4S1S4
A4S0.4S4S4S2S2S1
A5S2S4S0.4S4S1S2
Table 6. Direct correlation matrix Y1 between indicators of decision maker D1.
Table 6. Direct correlation matrix Y1 between indicators of decision maker D1.
Evaluation IndexC1C2C3C4C5C6
C1023012
C2204232
C3330121
C4121010
C5131102
C6311120
Table 7. Direct correlation matrix Y2 between indicators of decision maker D2.
Table 7. Direct correlation matrix Y2 between indicators of decision maker D2.
Evaluation IndexC1C2C3C4C5C6
C1032011
C2203242
C3430121
C4221011
C5131002
C6421120
Table 8. Direct correlation matrix Y3 between indicators of decision maker D3.
Table 8. Direct correlation matrix Y3 between indicators of decision maker D3.
Evaluation IndexC1C2C3C4C5C6
C1033012
C2304243
C3440031
C4132010
C5142003
C6321030
Table 9. Perceived utility value of decision maker D1.
Table 9. Perceived utility value of decision maker D1.
Alternative Construction Program ManagerEvaluation Index
C1C2C3C4C5C6
A11.09660.57521.11550.74500.46030.7644
A20.74090.57520.46031.11551.11550.5891
A30.55431.11551.11550.46030.46031.1280
A40.74090.46031.11550.74500.46031.1280
A51.09661.11550.57520.57521.11550.3966
Table 10. Perceived utility value of decision maker D2.
Table 10. Perceived utility value of decision maker D2.
Alternative Construction Program ManagerEvaluation Index
C1C2C3C4C5C6
A10.74501.09660.47440.57521.09660.5752
A21.11550.74091.12800.46030.74090.4603
A31.11550.55430.47441.11551.09660.4603
A40.57521.09660.39661.11550.55431.1155
A50.46030.74090.476440.57520.74091.1155
Table 11. Perceived utility value of decision maker D3.
Table 11. Perceived utility value of decision maker D3.
Alternative Construction Program ManagerEvaluation Index
C1C2C3C4C5C6
A10.53690.57521.11550.74091.09661.0966
A20.81760.46031.11550.55431.09660.5543
A30.65020.57521.11551.09660.55431.0966
A40.53691.11551.11550.74090.74090.5543
A50.81761.11550.46031.09660.55430.7409
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Yan, H.; Yang, Y.; Lei, X.; Ye, Q.; Huang, W.; Gao, C. Regret Theory and Fuzzy-DEMATEL-Based Model for Construction Program Manager Selection in China. Buildings 2023, 13, 838. https://doi.org/10.3390/buildings13040838

AMA Style

Yan H, Yang Y, Lei X, Ye Q, Huang W, Gao C. Regret Theory and Fuzzy-DEMATEL-Based Model for Construction Program Manager Selection in China. Buildings. 2023; 13(4):838. https://doi.org/10.3390/buildings13040838

Chicago/Turabian Style

Yan, Hongyan, Yuxuan Yang, Xi Lei, Qing Ye, Wenzhen Huang, and Ce Gao. 2023. "Regret Theory and Fuzzy-DEMATEL-Based Model for Construction Program Manager Selection in China" Buildings 13, no. 4: 838. https://doi.org/10.3390/buildings13040838

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