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contributor authorKerim Koc
contributor authorCenk Budayan
contributor authorÖmer Ekmekcioğlu
contributor authorOnur Behzat Tokdemir
date accessioned2024-04-27T22:45:37Z
date available2024-04-27T22:45:37Z
date issued2024/01/01
identifier other10.1061-JCEMD4.COENG-13857.pdf
identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4297425
description abstractNonconformance (NCR) has long been a subject of research interest for its potential to extrapolate information leading to a more productive environment in construction projects. Despite a variety of traditional attempts, a systematic understanding of how machine learning (ML) approaches can contribute to proactively detecting the severity of NCRs remains limited. This study aims to develop a data-driven ML framework to predict the cost impacts of NCRs (high severity versus low severity) in construction projects. To accomplish this aim, the random forest (RF) algorithm reinforced with a metaheuristic hyperparameter-tuning strategy, namely the gravitational search algorithm (GSA), is adopted for the binary classification problem. Furthermore, this study incorporates the Shapley additive explanations (SHAP) ensuring transparent interpretations into the GSA-RF predictive framework to tackle the inherent black-box nature of the ML rationale. The results reveal that the proposed model detects the severity of NCRs in terms of their cost impact with an overall AUROC value of 0.776 for the preseparated and blinded testing set. This indicates that the proposed model can be used confidently for newly introduced datasets from real-life cases. In addition, the SHAP analysis results emphasized the role of season, inadequate application procedure, and NCR type in detecting the severity of NCRs. Overall, this research not only makes an important contribution through its novel data-driven approaches but also provides insights for project managers concerning productivity improvements in the sector.
publisherASCE
titlePredicting Cost Impacts of Nonconformances in Construction Projects Using Interpretable Machine Learning
typeJournal Article
journal volume150
journal issue1
journal titleJournal of Construction Engineering and Management
identifier doi10.1061/JCEMD4.COENG-13857
journal fristpage04023143-1
journal lastpage04023143-16
page16
treeJournal of Construction Engineering and Management:;2024:;Volume ( 150 ):;issue: 001
contenttypeFulltext


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