4.2. Descriptive Analysis Findings
Table 3 presents findings from the descriptive analysis using mean scores (MS) and standard deviation (SD) rankings of the barriers to applying cost-reduction techniques in delivering HEB in southwestern Nigeria. For factors with the same MS, SD was used to determine the most significant factor; this is in accordance with the study of [
97], which noted that when factors have the same mean values, the factor with the lowest SD is given the highest ranking. The respondents ranked their level of agreement with the 31 identified barriers to using cost-reduction techniques on a five-point Likert scale with 1 = strongly disagree, 2 = disagree, 3 = neither agree or disagree, 4 = agree, and 5 = strongly agree. Deficiencies in cost estimates prepared by public agencies ranked first with SD = 1.152 and MS = 4.11; contractors lacking experience in project type ranked second with SD = 1.094 and MS = 4.03; HEI’s management lacks support and commitment ranked third with SD = 1.074 and MS = 43.69; excessive design errors ranked fourth with SD = 1.033 and MS = 3.68. Contractors’ incorrect planning and scheduling with SD = 1.001 and MS = 3.65 and disputes from enforcement of contract provisions with SD = 1.053 and MS = 3.65 ranked fifth. The seventh-ranked barriers are HEI’s management lacks control, with SD = 1.003 and MS = 3.64, and the inexperience of project stakeholders, with SD = 1.124 and MS = 3.64. Likewise, fixed price imposition for contracts exceeding one year ranked ninth with SD = 1.045 and MS = 3.59. In contrast, lack of communication among parties with SD = 1.123 and MS = 3.57, non-adherence to professionalism and ethical practice with SD = 1.227 and MS = 3.57, and ambiguity in contract documentation with SD = 1.361 and MS = 3.57 were ranked tenth, respectively. Influence of political party in power in governance ranked thirteenth with SD = 1.126 and MS = 3.53; cash inflow problems ranked fourteenth with SD = 1.265 and MS = 3.47; while utilization of poor procurement strategies with SD = 1.158 and MS = 3.46 and budget padding on educational projects with SD = 1.294 and MS = 3.46 ranked fifteenth.
Inaccurate estimation ranked seventeenth with SD = 1.236 and MS = 3.39; stakeholders’ corrupt practices ranked eighteenth with SD = 1.209 and MS = 3.37; practices of assigning contracts to the lowest bidder ranked nineteenth with SD = 1.169 and MS = 3.31; materials shortage ranked twentieth with SD = 1.268 and MS = 3.27; complexity of tertiary education projects ranked twenty-first with SD = 1.165 and MS = 3.23. Consequently, high construction claims ranked twenty-second with SD = 1.153 and MS = 3.20; variation order ranked twenty-third with SD = 1.072 and MS = 3.14; insufficient time for estimation ranked twenty-fourth with SD = 1.041 and MS = 3.01; while lack of automation integration with SD = 1.077 and MS = 3.01 and continuous cycle of payment failure with SD = 1.111 and MS = 3.01 ranked twenty-fifth. The project team lacks technical competency ranked twenty-seventh with SD = 1.090 and MS = 2.98; high cost of building materials with SD = 0.903 and MS = 2.95 and acceptance of meager bidding rates with SD = 0.915 and MS = 2.95 ranked twenty-eighth, while high construction changes on HEB projects with SD = 0.938 and MS = 2.92 and unrealistic contract requirements and duration with SD = 0.930 and MS = 2.86 ranked thirtieth and thirty-first, respectively.
Looking through the SD column in
Table 3, the result shows that out of the 31 barriers assessed, only 4 have an SD less than 1.0, which implies that there is little variability in the data and more consistency in agreement among the respondents concerning these 4 barriers. However, the remaining 27 barriers with a SD greater than 1.0 indicate greater dispersion or spread of the data points around the mean. As recommended by [
48], an MS value of 3.00 suggests the importance of the identified barriers to the application of cost-reduction techniques, while a MS value of < 3.00 is an insignificant barrier to the application of cost-reduction techniques. The result shows that 27 out of 31 of the assessed barriers have a mean value above average 3.0, which implies they are significant and thus adequate attention should be paid to these barriers to encourage the application of cost-reduction techniques, thereby improving cost performance of HEBs. This result is consistent with the study of [
4] who discovered that the most significant factors affecting building cost are inadequate planning, inadequate financial control, disputes, inaccurate cost estimates, the relationship between management and labor, and lack of consultants and contractors. Likewise, Aboelmagd [
19] concluded that change orders, design errors, materials rising in prices, and lowest bidding procurement methods were the top factors affecting cost reduction for mega projects.
Furthermore, as indicated in
Table 3, a Kruskal–Wallis non-parametric test was conducted to compare the perspectives of the stakeholders involved in the survey depending on their professional designation (architects, builders, quantity surveyors, electrical engineers, civil/structural engineers, mechanical engineers, and others).
Table 3 indicates that 18 out of the 31 identified barriers had a significant
p-value ranging from 0.001 to 0.05, below the recommended 0.05
p-value and Chi-Square range of 12.601–24.207 [
94,
95], indicating a statistically significant difference in the perception of respondents on the barriers to the application of cost-reduction techniques in public higher educational buildings in Nigeria. They included HEI’s management lacking support and commitment with a
p-value of 0.017; excessive design errors,
p-value of 0.004; disputes from enforcement of contract provisions, with a
p-value of 0.032; HEI’s management lacks control, with a
p-value of 0.014; fixed price imposition for contracts exceeding one-year,
p-value of 0.001; lack of communication among parties,
p-value of 0.009; non-adherence to professionalism and ethical practice, with a
p-value of 0.010; ambiguity in contract documentation,
p-value of 0.050; influence of the political party in power, with
p-value of 0.004; cash inflow problems,
p-value of 0.004; utilization of poor procurement strategies,
p-value of 0.033; stakeholders corrupt practices, with a
p-value of 0.012; materials shortage,
p-value of 0.018; high construction claims,
p-value of 0.048; continuous cycle of payment failure,
p-value of 0.039; variation order, with a
p-value of 0.013; high construction changes on HEBs projects,
p-value of 0.015; and unrealistic contract requirements and duration, with a
p-value of 0.006.
4.4. Discussion of Extracted Factors
Component 1: Ambiguity in HEBs contracts awards and project executions.
As indicated in
Table 7, ambiguity in HEB’s contracts awards and project executions clustered 22.113% of the variance explained with the highest loading factors of 10 variables. These factors include ambiguity in contract documentation (87%), cash inflow problems (85%), non-adherence to professionalism and ethical practice (84%), budget padding on educational projects (82%), the inexperience of project stakeholders (81%), practices of assigning contracts to the lowest bidder (87%), materials shortage (74%), stakeholders’ corrupt practices (67%), excessive design errors (66%), and lack of communication among parties (61%). The variables in this component explain various ambiguities in HEB’s contract awards and project executions, which prevented the application of cost-reduction techniques in delivering educational buildings in Nigeria. The study findings align with the conclusion of [
51], which admitted that the delivery of educational buildings is characterized by ambiguity in contract documentation, lack of adequate funds and budgetary allocation, various corruption practices, and non-release of government white papers on abandoned projects that compromise the integrity of the project’s delivery. Various contributing barriers to the non-application of cost-reduction techniques in educational building delivery in HEIs are ambiguities in contract awards and project delivery. These are due to practices of assigning contracts to the lowest bidder, excessive design errors, cash inflow problems, and non-adherence to professionalism and ethical practices. The study findings align with the submissions by [
47] that the non-availability of finance, equity, efficiency, equality, and governance has frequently slowed down the infrastructural development of HEIs in developing countries, particularly in the Nigerian education sector. These factors negatively affect the funding of educational buildings and their infrastructural facilities by government intervention, private donors, and internally generated revenue (IGR). In addition to the findings of [
33,
35,
49], these barriers led to infrastructure deficit, delay, cost and time overrun, and abandonment in delivering education institutions in Nigeria. The study findings are also in line with [
66,
68], who noted that excessive errors, inconsistencies at the design stage, practices of assigning contracts to the lowest bidder, and communication hurdles affected the application of cost-reduction techniques in educational building delivery.
Component 2: Lack of control from the HEIs management over HEB project delivery.
In all, 19.110% of the total variance was clustered in the second component, as indicated in
Table 7. The underlying variables correlation in this component was named lack of control from the HEI’s management over educational building project delivery with five variables, loaded as follows: disputes from enforcement of contract provisions (89%), contractors’ incorrect planning and scheduling (89%), HEI’s management lacks support and commitment (87%), HEI’s management lacks control (85%), and fixed price imposition for contracts exceeding one year (81%). This component’s name informs us about the HEI’s management’s lack of control over HEB project delivery. The study findings are in collaboration with [
62,
63], who attributed barriers to applying cost-reduction techniques in delivering educational buildings to HEI’s management lacking control, support, and commitment over the project delivery and the project team lacking technical competency. Nonetheless, the process and procedures in the awarding of contracts and project delivery should be able to balance HEI’s management project consultant inclusiveness. The findings are consistent with the studies of [
64], who reported that more than 80% of higher education institutions’ funding comes from the federal government, making it difficult for each institution to control the cost of delivering educational building projects in Nigeria. Likewise, in agreement with [
61], the study findings emphasized the imposition of unrealistic contract duration and requirements and fixed price contracts for contracts exceeding one year, often escalating the educational building projects’ final cost. Therefore, the HEI’s management consultant team, having control over the delivery of educational buildings and establishing a project monitoring team involving independent consultants, is needed to oversee stakeholders’ activities in delivery quality within the cost estimate.
Component 3: Perceived political influence in HEB procurement.
This component’s name was based on the perceived political influence in HEB procurement, which negatively affects the application of cost-reduction techniques. The five variables clustered in this component accounted for 11.997% of the total variance explained. They include inaccurate estimates (91%), the influence of the political party in power (90%), utilization of poor procurement strategies (89%), high construction claims (87%), and complexity of tertiary education projects (82%). The study results show that the perceived political influence in HEB procurement processes limits the application of cost-reduction techniques in delivering educational buildings, particularly in southwestern Nigeria. These findings collaborated with the barriers identified by [
65,
66], who noted that barriers to applying cost-reduction techniques in educational buildings are due to communication gaps among contract parties, resulting in cost underestimation and excessive change orders. Likewise, Love et al. [
65] maintained that stakeholders involved in delivering educational buildings purposefully break established rules to obtain payment documentation, even when specific qualities in the condition of the contract are not met. Nonetheless, politicizing educational buildings’ procurement processes is a significant barrier to controlling final costs, often giving contracting firms a strong backup for excessive claims for variation orders. Hence, the contract must be awarded on merit and not politicized to improve the delivery of educational building projects and other infrastructure needed in public tertiary institutions.
Component 4: Unrealistic contract requirements and change orders.
The four variables loaded in this fourth component include the high cost of building materials (80%), high construction changes on HEB projects (80%), unrealistic contract requirements and duration (71%), and acceptance of meager bidding rates (61%). This fourth component gathered 7.456% of the total variance. Generally, unrealistic contract requirements and change orders are dominant when addressing barriers to applying cost-reduction techniques in educational building delivery. As noted in this study’s results, [
71] affirms that barriers to applying cost-reduction techniques in the HEBs could be attributed to high construction changes on educational building projects and change orders to alter or modify the original design or scope of work throughout construction. Likewise, aligning the study findings with [
73,
74,
75,
76], the fluctuation in the price of building materials, the high cost of building materials, payment challenges, and materials shortage have negative consequences on the final construction sum. Hatoum et al. [
12], also agree that changes in design, and fluctuations in prices of raw materials were significant problems in HEB projects. As indicated in the study findings, inaccuracies estimated during the pre-contract stage led to the acceptance of meager bidding rates, which often led to misinformation about construction project funding and constituted a significant source of cost overruns for clients and contractors [
66]. Hence, standardizing contract requirements in delivering educational buildings is essential in attracting qualified contractors to reduce excessive change orders. Furthermore, contract requirements in providing educational buildings will also help solve the escalation of the final contract sum.
Component 5: Non-prioritized automation integration in HEB delivery.
The fifth component was named non-prioritized automation integration in HEB delivery based on the five loading variables in this component. The variables include the project team’s lack of technical competency (87%), continuous cycle of payment failure (81%), lack of automation integration (80%), variation order (79%), and insufficient time for estimation (75%). This factor amounted to 5.963% of the total variance, directly influencing the application of cost-reduction techniques in educational building delivery in Nigeria. The non-prioritized automation integration gives room for excessive foul play from the design phase to the delivery phase in the delivery of educational buildings in Nigeria. In Refs. [
25,
26,
27], the authors mentioned various automation technologies that can be employed in the construction industry throughout the project’s lifecycle to improve delivery. However, [
98] submits that the digital twin method offers a comprehensive and integrated utilization of these technologies. The findings agree with [
20,
82], who maintained that barriers such as lack of automation integration in the construction process of delivery educational buildings are attributed to barriers influencing the adoption of cost-reduction techniques in Nigeria. In addition, this study’s findings align with [
67] that the continuous cycle of payment failure, uncertainties surrounding payment for work performed, and lack of enforcement of contract provisions by all parties significantly affect the adoption of cost-reduction techniques in Nigerian HEB delivery. Furthermore, Alsuliman et al. [
71] further establishes that barriers to applying cost-reduction techniques in educational building delivery could be attributed to high construction changes and change orders to modify the original design or scope of work throughout construction. Therefore, delivering educational buildings using cost-reduction techniques will require prioritizing automation integration in all processes.
Component 6: Deficiencies in contract documents and costing.
The two variables in the sixth component have the least loading factors, with 3.490% of the variance explained. Deficiencies in cost estimates prepared by public agencies (92%) and contractors lacking experience in project type (92%). Deficiencies in contract documents and costing prepared by public agencies often affect cost control in educational building projects. This is in line with the findings of [
51], who noted that deficiencies in contract documents in contract documentation affect delivery. Also, the findings support [
62,
63] submission on barriers to applying cost-reduction techniques in HEB delivery due to the project team’s lack of technical competency.