Review of Supervised Machine learning cost estimation techniques for building projects
Abstract
Cost is considered a vital parameter in determining the success of a construction project. Project costs control and monitoring prevent budget overruns and safeguard expected profits, regardless of the project's size, scope, or complexity. Traditional methods for estimating project costs are facing growing challenges as demand for more accurate, adaptable strategies that respond to evolving market dynamics and technological progress increases. This study offers insight into supervised ML-based cost estimation techniques, highlighting the models employed, the geographical area of the studies, sample sizes, input and output variables, and property types. The findings indicate that there has been some progress in applying supervised ML for cost estimation. Asia accounts for the most studies (65.96%), followed by Africa (10.64%) and Europe (14.89%). Oceania and North America each account for 4.26%, indicating a restricted research scope in these areas. Additionally, 62% of the studies employed multiple algorithms to enhance the reliability of the results. Moreover, most studies focused on construction costs rather than total project costs or total capital investment (project investment) and on residential and educational property types. The findings suggest that extensive testing and applications are necessary to gain a comprehensive understanding of global perspectives, particularly outside Asia, and in commercial properties such as retail and office buildings.
Keywords: Supervised Machine Learning, Building Projects, Property Types, Cost Estimation, Construction Costs, Project Costs
DOI: 10.54941/ahfe1007320
Cite this paper
More from this volume
- Values-Driven AI Framework for Preschool and Elderly Learning in Bulgaria
- History and Historians in the Age of AI
- Deliver cross-process automation across Finance, HR, Procurement by orchestrating actions across diverse systems -powered by AI & governed workflows
- AI With and Within User Research Across the Product Lifecycle
- Governing the Transition to Action: An Agentic Architecture for Situation-Aware LLMs
- Multi-source Food Names Mapping Using OpenAI vision, Manual Dictionary and Fuzzy Matching Techniques
- Product Design with Human-Machine Collaboration and AI Integration into Design Process
- Trust and Calibration in AI-mediated Decision Support under Conditions of Risk
- Identification of Influential Nodes and Discourse Features within Synthetical Hierarchical Communities in Online Social Networks
- A social media site for social well-being? The curious case of BeReal
- Methods and Tool Optimization for Similarity Avoidance in AI-Generated Graphic Design Content
- Understanding Individual Differences in Adolescents’ Emotional Responses to Social Media Through Human-Centered Causal and Dynamic Modeling


AHFE Open Access