1. Introduction
Building information modeling (BIM) is one of the current architecture, engineering, and construction (AEC) industry innovations, and its proliferation has led to the emergence of a range of new roles and responsibilities [
1,
2]. Nowadays, BIM is usually integrated with other technologies to enhance performance and obtain a greater variety of industry benefits. For instance, integrating extended reality (ER) with a BIM approach assists practitioners to improve their project management processes in a number of ways. These include the location of any design flaws before implementation, the development of a greater understanding of change orders and requests for information, and the delineation of approaches for effectively linking BIM to ER tools, such as virtual reality (VR) cameras [
3,
4]. Reality-capturing tools can also be integrated with BIM models to obtain further industry benefits. Identifying as-is building objects through the application of an image-driven system [
5] and realizing as-built defects in prefabricated components by implementation of a BIM laser scanning system [
6] are two outcomes of this integration. These approaches underpin future education and training of architects and engineers alike [
7].
A deficient BIM-related skill set negatively influences its implementation in projects [
8], therefore, professionals adept across BIM processes are in high demand [
9]. BIM practitioners must ultimately possess competencies such as technological, managerial, and soft skills [
8,
10]. Although the definition of BIM-related roles, skills, and competencies has been disputed among BIM experts, recruiters [
9], and non-BIM experts alike [
11], there is consensus that leadership is an essential skill for BIM practitioners [
12].
Leadership has been studied more than other human behaviors [
13]. It is considered a significant skill and a soft success factor for project managers across a variety of industries [
14,
15,
16], and its competencies are crucial to the successful performance of businesses, projects, and organizations [
17]. Specifically, leadership competencies are directly linked to successful innovation implementation and project success and thereby contribute to providing a better return on investment (ROI) [
18]. According to [
19], “leaders should be able to establish and maintain vision, strategy, and communication throughout the project by influencing, guiding, monitoring, and evaluating the performance of their team”. Though Tett et al. in [
20] associated leadership as one part of managers’ duties, it is nevertheless important to note that leadership itself has its own competencies. Previous studies have endeavored to introduce and categorize leadership styles and competencies from different perspectives such as authentic leadership by [
21] and six leadership schools by [
17]. Dulewicz and Higgs in [
13] presented the last leadership school (the competency school), which encompasses 15 different leadership competencies as well as three leadership styles. Many competencies have been introduced in earlier studies [
13,
17,
22]; however, as Alvarenga et al. suggested in [
14], these should be curtailed to the most crucial selection to assist leaders to focus on the core competencies that improve the innovation implementation and project performances.
BIM leadership competencies refer to the knowledge, skills, abilities, experience, and attributes that a particular BIM leader needs to possess and/or develop for BIM adoption and implementation. However, the lack of a BIM specialist with the required competencies [
9] presents a major challenge to this process. Identifying and assessing BIM competencies produces myriad benefits such as performance improvement, supporting training and professional development as well as certification and accreditation [
12]. Despite extensive research efforts into leadership, little information is available on the importance of leadership competencies and their contribution to the BIM domain. Specific BIM-related roles demand specific competencies [
19], and an improper allocation of skills and competencies can contribute to implementation failure [
17]. As leadership competencies are acquisitive [
17], BIM training centers can include leadership competencies and other BIM-related skills deemed paramount for BIM professionals in their curricula [
9,
18].
Leadership competencies are inevitably dependent and intertwined [
16,
23,
24]. BIM implementation is, moreover, a complex process, and its influential factors are in constant change. Therefore, a dynamic perspective of leadership competencies provides an enhanced understanding of their cause-and-effect relationships and what competencies should be prioritized in a BIM implementation process. Finding substantial leadership competencies and their interrelations can assist BIM governors, organizations, and practitioners to develop their competencies more systematically and decrease the probability of BIM implementation failure.
There are several data analysis approaches, including data analytics techniques, that draw on machine learning mechanisms to analyze different data. As machine learning models are incapable of explaining predictions, and there are issues related to imbalanced data sets [
25], using a method that relies on expert judgments was preferred in this research. As there are different clusters for leadership competencies, a multi-criteria decision-making (MCDM) approach was suitable for their evaluation. MCDM techniques are commonly employed to structure and solve complex decision-making problems when alternatives are available [
26]. Leadership competencies are not completely independent and a combination of various competencies is what ultimately contributes to a leader’s success. Since many competency models do not specifically identify the interactions among leadership competencies [
27] and, further, given the dynamic nature of the BIM implementation process, the DEMATEL method was utilized in this study to examine the relationships among leadership categories and their competencies. In some of the existing research, the interrelationships of competency factors are based on a qualitative approach wherein experts provide descriptions predicated on their past experience and knowledge, which commonly includes some degree of uncertainty. Since the fuzzy set theory can mathematically handle the inherent uncertainty and ambiguity of human judgment, utilizing fuzzy numbers may help researchers improve their decision-making process and achieve more rigorous results [
28,
29].
Knowledge of core leadership competencies can help BIM project practitioners and companies in realizing the benefits of BIM tool and workflow implementations. Hence, the fuzzy analytic network process (ANP) was also utilized to determine the priority weights of leadership competencies. Adopting a deductive approach, this research implements fuzzy DEMATEL and fuzzy ANP to achieve the following objectives:
Identify and evaluate the leadership competencies for BIM implementation,
Examine the relationships among the BIM leadership competencies,
Prioritize the main BIM leadership competencies,
Examine the application of leadership competencies for implementing BIM tools and concepts.
To achieve the abovementioned objectives, this research will answer the following research questions:
What are the main leadership competencies for BIM implementation?
What are the cause-and-effect relations among leadership competencies for BIM professionals using fuzzy DEMATEL?
What are the priority weights of these competencies with fuzzy ANP?
Which leadership style is more applicable in the BIM domain?
The remainder of this paper is organized as follows:
Section 2 reviews the literature on building information modeling (BIM), its required skills, and leadership studies and findings.
Section 3 introduces the research methodology, fuzzy DEMATEL, and fuzzy ANP.
Section 4 and
Section 5 contain the empirical study, discussion of the results, and practical implications. Finally,
Section 6 concludes the paper.
3. Research Methodology
Leadership competencies are interrelated and cannot be analyzed independently. Moreover, these competencies do not necessarily have equal importance, and their application across different circumstances is inconsistent, especially within the context of BIM. Determination of suitable leadership competencies is vital for BIM leaders, managers, and coordinators to help establish a clear framework for evaluation and development. To gather data, a questionnaire was created and distributed among BIM experts. In this questionnaire, respondents were asked to compare the 15 leadership competencies of [
13] in pairs.
Figure 2 illustrates the flowchart of the research methodology.
As depicted in
Figure 2, first the leadership competencies were initially extracted from the related literature, and the best competency set was chosen. In the next step, the panel of decision-makers was selected, which included BIM leaders, coordinators, and managers among whom the questionnaire was distributed. Their results were then used in the DEMATEL approach to develop the fuzzy linguistic scale that was used in the ANP approach afterwards. The main outcome of the DEMATEL phase was the causal diagram, which indicates the cause-and-effect competency groups. Following the ANP approach, the priority weights of the competencies were obtained that would consequently rank them. In the last stage, the implications of the results were suggested to improve the leadership competencies of the involved BIM leaders.
3.1. Fuzzy DEMATEL
Decision-Making Trial and Evaluation Laboratory (DEMATEL) is a well-known method for providing causal relationships between interrelated and complex factors [
57]. DEMATEL can be used to clearly visualize the cause-and-effect relationships between the elements of a system [
58]. Researchers have used this method in a number of diverse applications and concepts, such as transportation and traffic management [
59] and supplier selection [
60,
61,
62]. Chien et al. in [
63] used this method to identify relationships between the critical risk factors at various levels within the context of BIM projects. In this study, Microsoft Excel 2016 was used to perform fuzzy DEMATEL analysis. The findings of the fuzzy DEMATEL method were then used as the main inputs for fuzzy ANP analysis. Fuzzy DEMATEL was performed through the following steps [
28,
64]:
As BIM leadership roles were explained in the previous section, BIM project managers, directors, BIM designers, senior architects, BIM MEP (mechanical, electrical, and plumbing) coordinators, and BIM technicians, as well as BIM academic professionals with over five years of experience answered the survey. The questionnaires were sent to the professionals via email between 4 October and 25 November 2019. Thirty-two BIM experts, including nine academics and twenty-three professional experts, completely answered the questionnaire. The respondents were from the US (6), UK (5), Australia (5), Germany (3), The Netherlands (3), New Zealand (2), Sweden (2), Denmark (2), China (2), Finland (1), and Egypt (1).
To minimize human assessment errors, a linguistic variable should be defined. Linguistic terms, like words or sentences, define a linguistic variable. Let
on
X is a triangular fuzzy number (TFN) where
denote the lower, medium, and upper values of the fuzzy numbers. Its membership function
must follow Equation (1).
The five linguistic terms used in this study were “Very high,” “High,” Low,” “Very low,” and “No” influence.
Table 2 shows the fuzzy scales of these linguistics. Fuzzy linguistic values and their membership function are depicted in
Figure 3.
Pairwise comparisons are obtained using fuzzy linguistic terms, they are then transformed into defuzzified numbers and aggregated as a crisp value [
65]. Let
are n evaluation factors. BIM experts were asked to compare leadership competency factors in pairs to develop
. Equation (2) shows the initial direct-relation fuzzy matrix of decision-maker
k,
, in which
indicates the influence of criterion
i over criterion
j from the viewpoint of decision-maker
k.
where
.
In order to achieve the normalized direct-relation fuzzy matrix from an initial direct-relation matrix, at first,
and
are considered as TFNs with the values:
Linear scale transformation alters the criteria scale into comparable scales [
66]. Accordingly, by normalizing the initial direct-relation fuzzy matrix, the normalized fuzzy direct-relation matrix
is obtained:
where
.
Presumably, there would be at least one
i such that
. For finding the average matrix of
, Equations (6) and (7) are used:
where
.
In this step, the fuzzy total-relation matrix
is acquired by ensuring
. This matrix is shown in the following Equations:
where
.
Vectors
and
are the sum of rows and the sum of columns, respectively, within the total-relation fuzzy matrix
. By adding
to
, the “Prominence” horizontal axis vector
is calculated, which shows the importance of criterion
i. This vector shows how much importance each leadership competency has. By applying Equation (11), the fuzzy numbers of vectors
and
are defuzzified into crisp values.
Equally, the “Relation” vertical axis vector is made by deducting from . The cause-and-effect sets of the criteria are then categorized by this axis. Positive shows that the criterion is a “cause” factor and the negative shows that the criterion is the “effect” factor. Finally, the causal model is mapped by the set of . Cause competencies influence the other competencies of BIM leaders, while effect competencies are more influenced by the cause competencies themselves.
3.2. Fuzzy Analytic Network Process (ANP)
Analytic network process (ANP) was first proposed by Saaty in 1996 [
67,
68]. Fuzzy ANP is a general form of fuzzy analytic hierarchy network (AHP), which is used for solving complex decision-making problems by decomposing them into a limited number of issues [
69]. In an AHP, unidirectional hierarchical structures are used; however, in ANP, all of the elements and relationships are defined as one-way and two-way interactions and loops [
70]. With the application of this method, intangible criteria are transformed into quantitative values that can be weighted by pairwise comparisons [
71]. This method is applicable to both leadership and BIM issues. In the leadership context, Li et al. in [
72] applied this method to evaluate the complex and interrelated indices of strategic leadership. In the BIM discipline, Ghannadpour et al. in [
73] analyzed the influence of BIM on project management knowledge areas using a fuzzy ANP-VIKOR (Vlse Kriterijumska Optimizacija Kompromisno Resenje) approach. MATLAB package version 9.1 (R2016b) was used in this study to perform fuzzy ANP. Weighing leadership competencies by fuzzy ANP was performed through the following steps [
28]:
Like the fuzzy DEMATEL section, the same 32 experts participated in this section.
By reviewing the literature on leadership competencies, as it is shown in
Table 1, three main groups and 15 leadership competencies of [
13] were chosen for this study.
Different criteria and their sub-criteria are interrelated in actual decision-making situations. However, this assumption in the current study added more complexity to the problem. Therefore, the interdependence of sub-criteria was assumed to be the same as their main criteria.
BIM professionals were requested to compare each pair of leadership competencies and their related sub-criteria separately. The relative importance of element
i over element
j by decision-maker
k is represented as
. Each column of
is a local priority vector, which is obtained from the corresponding pairwise comparison and represents the importance of the elements in the cluster
i on an element in the cluster
j; however, if there is no relationship between the clusters, the corresponding matrix is a zero matrix [
72]. The geometric mean is used to aggregate the decision matrices of the committee of BIM professionals.
in which
The extent analysis of [
74] is used for determining the crisp value of criteria and sub-criteria weights [
29]. The extent analysis method uses triangular fuzzy numbers (TFNs) as fuzzy ratios creating fuzzy preference relations and degree of possibility. These relations are used for comparing the TFNs, developing crisp priority vectors that are integrated for the provision of a final ranking [
75]. The steps of this method are as follows:
Step 5.1. Equation (14) defines the value of fuzzy synthetic extent for each element i (i = 1,2,…,n).
shows the synthesis value of criterion
i, and
shows a triangular fuzzy number [
76].
are given by Equation (13).
Step 5.2. The possibility degree ofis defined as Equation (15):
The magnitude of the relation between the pairs of numbers (
x,
y) is shown, which can be equivalently expressed as Equation (16):
d is the ordinate of the highest intersection point between
and
. For a better definition of this value,
Figure 4 depicts this intersection. This figure indicates that both values of
and
are required so as to compare
[
77].
Step 5.3. The degree of possibility for a convex fuzzy number to be greater than all the other n−1 convex fuzzy numberscan be defined by:
Step 5.4. The setis the weights of criteria but is not normal weights. The normalized weight vectoris calculated as Equation (18).
The unweighted super matrix is composed from the computed priority weights of all criteria and sub-criteria from Step 5. After calculating the unweighted super matrix, the weighted super matrix is projected by giving equal weights to the blocks in the same column and making each column sums to unity [
78]. The limit super matrix is the 2K + 1-powered weighted super matrix, where K is a random large number. In this study, 2K + 1 obtains 19.
4. Results and Findings
In order to determine the interdependency between the three leadership competency groups (
Table 1), fuzzy DEMATEL was applied. All of the 32 respondents had at least five years of academic or practical experience in project management (across the fields of construction engineering and management, and building information modeling). Following the steps of fuzzy DEMATEL, after obtaining the aggregated direct-relation fuzzy matrix and normalized direct-relation fuzzy matrix, the total-relation fuzzy matrix (T) was obtained, which is depicted in
Table 3. This table presents the l, m, and u values of each group.
After calculating the total relation fuzzy matrix, the cause-and-effect values of the key competency groups were obtained. These values are represented in
Table 4. The calculated values in this table were then used to draw the causal diagram.
The causal diagram of leadership competency groups, based on
Table 4, is delineated in
Figure 5. For a realization of the cause-and-effect groups, the findings in this figure were used for drawing the relationship map.
From the total-relation fuzzy matrix, the impact relationship map for leadership competency groups was drawn. The threshold value for the influence of criteria was the average of all the influences, which was 0.3724.
Figure 5 shows this map. Inasmuch as the influence of emotional competencies on the intellectual competencies (0.3281) was lower than the threshold value, it was ignored for further analysis. This figure shows that the intellectual and managerial groups both affected each other. The emotional group was affected by the two other groups; however, it had an inconspicuous effect on the managerial group.
Figure 6 is the input of the fuzzy ANP method. BIM professionals were asked to compare competencies and their groups in pairs. The aggregated fuzzy decision matrix (
Table 5) for three competency groups was calculated using Equation (13).
Following Chang’s extent analysis, the priority weights of competency groups were calculated from Equation (14):
After obtaining priority weights of competency groups, the values of
V, non-normalized weights of three competency groups,
d(
), and their normalized weights,
wi, were calculated with Equations (16)–(18), respectively. The results are depicted in
Table 6. The outcome of this table was used to determine the importance of the competency groups and their prioritization.
In terms of the corresponding competency groups, all leadership competencies were compared at the second level and the decision matrices were composed. Like leadership groups, all priority weights of all competencies were calculated. First, the unweighted super matrix was composed (
Table 7). Then, by normalizing it, the weighted super matrix was obtained. Finally, by raising the weighted super matrix to the power of 2K + 1 (in this study, 19), a limited super matrix was calculated (
Table 8). As this super matrix shows the weights of all competencies, considering the interdependence of their corresponding main criteria, it is meaningful for decision-makers.
With the knowledge of the weight of each competency from
Table 8, the most suitable leadership style could be selected for BIM leaders. First, the rate (low/medium/high) of each competency was decided on and compared to the minimum requirements of the competency profiles of the three leadership styles in
Table 1. The highest weight was 0.1564 for I2 (vision and imagination), and the lowest weight was 0.0147 for E4 (sensitivity). By subtracting the lowest weight from the highest one and dividing the result by 3, the ranges of low, medium, and high were separated by 0.0472. Therefore, the ranges were
0.0147 < Low < 0.0619 (0.0147 + 0.0472),
0.0619 < Medium < 0.1092 (0.0619 + 0.0472),
0.1092 < High < 0.1564.
Now, the rate for each competency was obtained. These rates are shown in
Table 9. Following the abovementioned limits, the rate of each competency was calculated and compared to the three main leadership styles. This finding determined the most suitable leadership style of BIM leaders.
6. Conclusions
Determining the necessary leadership competencies for BIM professionals, particularly those leadership roles in their projects and organizations, is fundamental to a project’s overall success. Though previous studies have identified different sets of leadership competencies, the interrelations among and importance of those competencies has been largely neglected. Adopting a deductive approach, this research implemented fuzzy DEMATEL to reveal the mutual interactions among leadership competencies and to illustrate their cause-and-effect relations for BIM leaders. Findings showed that the intellectual competencies have a “cause” nature, which influences the managerial and emotional competencies such as the “effect” ones. Prioritizing those competencies using fuzzy ANP indicated that “vision and imagination”, “critical analysis”, and “strategic perspective” are the most important of all leadership competencies for BIM leaders. Giving priority weight to managerial and intellectual competencies should be conveyed to BIM training centers that focus on the technological aspects of BIM skills, which are not enough for training competent BIM specialists; they should have managerial-related lessons to their curricula as well.
Furthermore, a number of leadership competencies in the BIM domain were identified in this study. The findings recommended that the closest fit in leadership style for BIM professionals is “involving”. This style is associated with transitional changes that stimulate significant but not necessarily fundamental alterations to business processes in an organization or project. Since BIM implementation entails the involvement and contribution of diverse stakeholders in the initial designing and planning stages of a project, this style of leadership seems the most suitable for BIM leaders to adopt. This finding also suggested that BIM leaders can gradually increase their members’ involvement in change initiatives as a result of BIM adoption and implementation. This finding is well aligned with the notion that a series of transitional and evolutionary BIM steps must be followed to enhance BIM capability through gradual changes in structure, people, policies and processes.
Admittedly, an effective BIM leadership style is dependent upon a number of factors, such as the level of team competency, capability and maturity level of BIM projects, and situational factors. Therefore, future research is encouraged to be conducted in a manner that assesses BIM leadership competencies when AEC firms and projects reach higher BIM capability levels. Lastly, when referring to the research findings, caution is advised regarding the limited number of respondents involved. Most of the respondents were from countries such as the US, Australia, and the UK, where BIM implementation maturity levels are higher than in other countries. The abovementioned limitations suggest future studies should be conducted with a larger sample size and from different countries to better compare the results. Leadership competencies can also be studied in other concepts such as virtual teams and leaders and their related issues. Furthermore, a study of the concept of inequality among competent male and female BIM leaders is suggested.