Bayesian network model for stakeholder management in large scale housing projects: prediction of project success

Stakeholder management in construction projects affects cost, time, quality, and safety which are considered as the success parameters of projects. The aim of this study is to develop a predictive model using a Bayesian Network (BN) approach to measure the likelihood of project success, based on the...

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Main Authors: Almula Köksal, Seher Ersoy Maraş
Format: Article
Language:English
Published: Taylor & Francis Group 2025-03-01
Series:Journal of Asian Architecture and Building Engineering
Subjects:
Online Access:http://dx.doi.org/10.1080/13467581.2025.2474822
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author Almula Köksal
Seher Ersoy Maraş
author_facet Almula Köksal
Seher Ersoy Maraş
author_sort Almula Köksal
collection DOAJ
description Stakeholder management in construction projects affects cost, time, quality, and safety which are considered as the success parameters of projects. The aim of this study is to develop a predictive model using a Bayesian Network (BN) approach to measure the likelihood of project success, based on the general contractor’s stakeholder management framework. This study consists of two stages; in the first stage Key Stakeholder Mapping was created using expert panel. In the second stage, BN Model was developed with 64 large-scale housing project data. BN is formulated as a probabilistic predictive model aiming to assess the impact of key stakeholders on projects. This model enables the main contractor to identify key stakeholders’ position over the project and generate an objective base to develop strategies to decrease their adverse effect over the success of the project. The accuracy rate of the overall model is 63%, prediction on compliance with the project cost is 84% and prediction on safety/accident rate is 80%. The study states that a comprehensive review of the likelihood of success will help in identifying and addressing crucial uncertainties within the project; this will contribute to the development of scenarios to improve the project’s probability of success.
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spelling doaj-art-33f08e022a4346b08fef4299e6302bb92025-08-20T03:06:53ZengTaylor & Francis GroupJournal of Asian Architecture and Building Engineering1347-28522025-03-010011810.1080/13467581.2025.24748222474822Bayesian network model for stakeholder management in large scale housing projects: prediction of project successAlmula Köksal0Seher Ersoy Maraş1Yıldız Technical UniversityYıldız Technical UniversityStakeholder management in construction projects affects cost, time, quality, and safety which are considered as the success parameters of projects. The aim of this study is to develop a predictive model using a Bayesian Network (BN) approach to measure the likelihood of project success, based on the general contractor’s stakeholder management framework. This study consists of two stages; in the first stage Key Stakeholder Mapping was created using expert panel. In the second stage, BN Model was developed with 64 large-scale housing project data. BN is formulated as a probabilistic predictive model aiming to assess the impact of key stakeholders on projects. This model enables the main contractor to identify key stakeholders’ position over the project and generate an objective base to develop strategies to decrease their adverse effect over the success of the project. The accuracy rate of the overall model is 63%, prediction on compliance with the project cost is 84% and prediction on safety/accident rate is 80%. The study states that a comprehensive review of the likelihood of success will help in identifying and addressing crucial uncertainties within the project; this will contribute to the development of scenarios to improve the project’s probability of success.http://dx.doi.org/10.1080/13467581.2025.2474822stakeholder managementbayesian networksstakeholder mappingproject success indicatorsconstruction projects
spellingShingle Almula Köksal
Seher Ersoy Maraş
Bayesian network model for stakeholder management in large scale housing projects: prediction of project success
Journal of Asian Architecture and Building Engineering
stakeholder management
bayesian networks
stakeholder mapping
project success indicators
construction projects
title Bayesian network model for stakeholder management in large scale housing projects: prediction of project success
title_full Bayesian network model for stakeholder management in large scale housing projects: prediction of project success
title_fullStr Bayesian network model for stakeholder management in large scale housing projects: prediction of project success
title_full_unstemmed Bayesian network model for stakeholder management in large scale housing projects: prediction of project success
title_short Bayesian network model for stakeholder management in large scale housing projects: prediction of project success
title_sort bayesian network model for stakeholder management in large scale housing projects prediction of project success
topic stakeholder management
bayesian networks
stakeholder mapping
project success indicators
construction projects
url http://dx.doi.org/10.1080/13467581.2025.2474822
work_keys_str_mv AT almulakoksal bayesiannetworkmodelforstakeholdermanagementinlargescalehousingprojectspredictionofprojectsuccess
AT seherersoymaras bayesiannetworkmodelforstakeholdermanagementinlargescalehousingprojectspredictionofprojectsuccess