A machine learning study to improve the reliability of project cost estimates

IF 7 2区 工程技术 Q1 ENGINEERING, INDUSTRIAL International Journal of Production Research Pub Date : 2023-09-25 DOI:10.1080/00207543.2023.2262051
Timur Narbaev, Öncü Hazir, Balzhan Khamitova, Sayazhan Talgat
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Abstract

Project managers need reliable predictive analytics tools to make effective project intervention decisions throughout the project life cycle. This study uses Machine learning (ML) to enhance the reliability in project cost forecasting. A XGBoost forecasting model is developed and computational experiments are conducted using real data of 110 projects representing 1268 cost data points. The developed model performs better than some Earned value management (EVM), ML (Random forest, Support vector regression, LightGBM, and CatBoost), and non-linear growth (Gompertz and Logistic) models. The model produces more accurate estimates at the early, middle, and late stages of the project execution, allowing for early warning signals for more effective cost control. In addition, it shows more accurate estimates in most projects tested, suggesting consistency when repeatedly used in practice. Project forecasting studies mainly used ML to estimate the project duration; a few ML studies estimated the project cost at the project’s conceptual stage. This study uses real data and EVM metrics, proposing an effective XGBoost model for forecasting the cost throughout the project life cycle.
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提高项目成本估算可靠性的机器学习研究
项目经理需要可靠的预测分析工具来在整个项目生命周期中做出有效的项目干预决策。本研究利用机器学习(ML)来提高项目成本预测的可靠性。利用110个项目1268个数据点的实际数据,建立了XGBoost预测模型,并进行了计算实验。开发的模型比一些挣值管理(EVM)、ML(随机森林、支持向量回归、LightGBM和CatBoost)和非线性增长(Gompertz和Logistic)模型表现得更好。该模型在项目执行的早期、中期和后期阶段产生更准确的估计,允许更有效地控制成本的早期预警信号。此外,它在大多数测试的项目中显示出更准确的估计,表明在实践中反复使用时的一致性。项目预测研究主要使用机器学习来估计项目工期;一些机器学习研究在项目的概念阶段估计了项目成本。本研究使用真实数据和EVM指标,提出了一个有效的XGBoost模型,用于预测整个项目生命周期的成本。
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来源期刊
International Journal of Production Research
International Journal of Production Research 管理科学-工程:工业
CiteScore
19.20
自引率
14.10%
发文量
318
审稿时长
6.3 months
期刊介绍: The International Journal of Production Research (IJPR), published since 1961, is a well-established, highly successful and leading journal reporting manufacturing, production and operations management research. IJPR is published 24 times a year and includes papers on innovation management, design of products, manufacturing processes, production and logistics systems. Production economics, the essential behaviour of production resources and systems as well as the complex decision problems that arise in design, management and control of production and logistics systems are considered. IJPR is a journal for researchers and professors in mechanical engineering, industrial and systems engineering, operations research and management science, and business. It is also an informative reference for industrial managers looking to improve the efficiency and effectiveness of their production systems.
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