Due to the asymmetry of project features, it is difficult for project managers to make a reliable prediction of the decision-making process. Big data research can establish more predictions through the results of accurate classification. Machine learning (ML) has been widely applied for big data analytic and processing, which includes model symmetry/asymmetry of various prediction problems. The purpose of this study is to achieve symmetry in the developed decision-making solution based on the optimal classification results. Defects are important metrics of construction management performance. Accordingly, the use of suitable algorithms to comprehend the characteristics of these defects and train and test massive data on defects can conduct ...
Facility management and strategic asset management have become more and more important in constructi...
© 2019 Elsevier Ltd The progress in the field of Machine Learning (ML) has enabled the automation of...
In this paper, a novel machine learning based approach is proposed for automated cost analysis from ...
Construction projects are influenced by interrelated issues that may result in cost and/or time over...
Design engineers working in construction machinery industry face a lot of complexities and uncertain...
The type and number of defects constitute a major indicator of project quality and are thus emphasiz...
Automation of document handling in the construction industries could save large amounts of time, eff...
Machine learning (ML) is a purpose technology already starting to transform the global economy and h...
The capability of various machine learning techniques in predicting construction project profit in r...
© 2021 American Society of Civil Engineers.The construction industry is overwhelmed by an increasing...
The risk of project execution increases due to the enlargement and complexity of Engineering, Procur...
Managing building defects in the residential environment is an important social issue in South Korea...
Application of Building Information Modelling (BIM) within the AEC industry has been evolving. With ...
This paper presents the results of comparative studies on the implementation of machine learning met...
The last half-century has witnessed an astronomical rise in the number of tall building projects in ...
Facility management and strategic asset management have become more and more important in constructi...
© 2019 Elsevier Ltd The progress in the field of Machine Learning (ML) has enabled the automation of...
In this paper, a novel machine learning based approach is proposed for automated cost analysis from ...
Construction projects are influenced by interrelated issues that may result in cost and/or time over...
Design engineers working in construction machinery industry face a lot of complexities and uncertain...
The type and number of defects constitute a major indicator of project quality and are thus emphasiz...
Automation of document handling in the construction industries could save large amounts of time, eff...
Machine learning (ML) is a purpose technology already starting to transform the global economy and h...
The capability of various machine learning techniques in predicting construction project profit in r...
© 2021 American Society of Civil Engineers.The construction industry is overwhelmed by an increasing...
The risk of project execution increases due to the enlargement and complexity of Engineering, Procur...
Managing building defects in the residential environment is an important social issue in South Korea...
Application of Building Information Modelling (BIM) within the AEC industry has been evolving. With ...
This paper presents the results of comparative studies on the implementation of machine learning met...
The last half-century has witnessed an astronomical rise in the number of tall building projects in ...
Facility management and strategic asset management have become more and more important in constructi...
© 2019 Elsevier Ltd The progress in the field of Machine Learning (ML) has enabled the automation of...
In this paper, a novel machine learning based approach is proposed for automated cost analysis from ...