A machine learning approach for predicting critical factors determining adoption of offsite construction in Nigeria

IF 3.5 Q3 GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY
G. Wusu, H. Alaka, W. Yusuf, Iofis Mporas, L. Toriola-Coker, Raphael Oseghale
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引用次数: 0

Abstract

PurposeSeveral factors influence OSC adoption, but extant literature did not articulate the dominant barriers or drivers influencing adoption. Therefore, this research has not only ventured into analyzing the core influencing factors but has also employed one of the best-known predictive means, Machine Learning, to identify the most influencing OSC adoption factors.Design/methodology/approachThe research approach is deductive in nature, focusing on finding out the most critical factors through literature review and reinforcing — the factors through a 5- point Likert scale survey questionnaire. The responses received were tested for reliability before being run through Machine Learning algorithms to determine the most influencing OSC factors within the Nigerian Construction Industry (NCI).FindingsThe research outcome identifies seven (7) best-performing algorithms for predicting OSC adoption: Decision Tree, Random Forest, K-Nearest Neighbour, Extra-Trees, AdaBoost, Support Vector Machine and Artificial Neural Network. It also reported finance, awareness, use of Building Information Modeling (BIM) and belief in OSC as the main influencing factors.Research limitations/implicationsData were primarily collected among the NCI professionals/workers and the whole exercise was Nigeria region-based. The research outcome, however, provides a foundation for OSC adoption potential within Nigeria, Africa and beyond.Practical implicationsThe research concluded that with detailed attention paid to the identified factors, OSC usage could find its footing in Nigeria and, consequently, Africa. The models can also serve as a template for other regions where OSC adoption is being considered.Originality/valueThe research establishes the most effective algorithms for the prediction of OSC adoption possibilities as well as critical influencing factors to successfully adopting OSC within the NCI as a means to surmount its housing shortage.
用于预测尼日利亚采用非现场施工的关键因素的机器学习方法
有几个因素影响OSC的采用,但现有文献并没有阐明影响采用的主要障碍或驱动因素。因此,本研究不仅大胆地分析了核心影响因素,而且还采用了最著名的预测手段之一——机器学习,来确定最具影响力的OSC采用因素。设计/方法/方法研究方法本质上是演绎法,重点是通过文献综述找出最关键的因素,并通过5分李克特量表调查问卷加强这些因素。在通过机器学习算法确定尼日利亚建筑业(NCI)中最具影响力的OSC因素之前,对收到的回复进行了可靠性测试。研究结果确定了7种预测OSC采用的最佳算法:决策树、随机森林、k近邻、Extra-Trees、AdaBoost、支持向量机和人工神经网络。它还报告了财务、意识、建筑信息模型(BIM)的使用和对OSC的信念是主要的影响因素。研究的局限性/意义数据主要是在NCI专业人员/工作人员中收集的,整个工作是基于尼日利亚地区的。然而,研究结果为尼日利亚、非洲和其他地区采用OSC的潜力提供了基础。实际意义研究的结论是,通过对已确定的因素进行详细关注,OSC的使用可以在尼日利亚乃至非洲找到立足点。这些模型还可以作为正在考虑采用OSC的其他区域的模板。独创性/价值本研究建立了最有效的预测OSC采用可能性的算法,以及在NCI内成功采用OSC作为克服住房短缺的手段的关键影响因素。
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来源期刊
Smart and Sustainable Built Environment
Smart and Sustainable Built Environment GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY-
CiteScore
9.20
自引率
8.30%
发文量
53
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