Using Machine Learning to Predict Cost Overruns in Construction Projects

Theingi Aung, Sui Reng Liana, Arkar Htet, Amiya Bhaumik
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引用次数: 2

Abstract

Addressing the persistent issue of cost overruns in construction projects, our study explores the potential of machine learning algorithms for accurately predicting these overruns, utilizing an expansive set of project parameters. We draw a comparison between these innovative techniques and traditional cost estimation methods, unveiling the superior predictive accuracy of machine learning approaches. This research contributes to existing literature by presenting a data-driven, reliable strategy for anticipating and managing construction costs. Our findings have significant implications for project management, offering a path towards more efficient and financially sound practices in the construction industry. The improved prediction capabilities could revolutionize cost management, facilitating better planning, risk mitigation, and stakeholder satisfaction.
利用机器学习预测建筑项目的成本超支
为了解决建筑项目中持续存在的成本超支问题,我们的研究探索了机器学习算法的潜力,利用广泛的项目参数集来准确预测这些超支。我们将这些创新技术与传统成本估算方法进行了比较,揭示了机器学习方法优越的预测准确性。本研究通过提出一个数据驱动的、可靠的预测和管理建筑成本的策略,为现有文献做出了贡献。我们的研究结果对项目管理具有重要意义,为建筑行业提供了一条更有效和财务健全的实践之路。改进的预测能力可以彻底改变成本管理,促进更好的计划、风险缓解和利益相关者满意度。
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Journal of Technology Innovations and Energy
Journal of Technology Innovations and Energy Social Sciences and Management Studies-
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期刊介绍: Journal of Technology Innovations and Energy aims to report the latest developments and share knowledge on the various topics related to innovative technologies in energy and environment.
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