Effects of machine learning biases in digital tools–A case of the Nigerian construction industry
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Date
2025
Journal Title
Journal ISSN
Volume Title
Publisher
Technological Sustainability
Abstract
Purpose – This paper aims to explore the effects of machine learning biases in the digital tools used within the
Nigerian construction industry.
Design/methodology/approach – The study adopts a qualitative research design to identify machine learning
biases in digital tools and to evaluate their effects on construction project performance. Construction
professionals with practical experience in the use of digital technologies and good knowledge of machine
learning biases were interviewed online. The data obtained from the interviews were analyzed using ATLAS.ti
software.
Findings – The study analysis shows data bias, model bias, human bias and sensor bias as the most prevalent
biases affecting digital tools in construction. These biases contribute to various challenges in construction
project performance, including increased project costs, safety risks, extended timelines, resource waste, project
delays, flawed decision-making and reduced work quality.
Practical implications – Though digital tools enhance processesin the construction industry, findingsfrom the
study imply that machine learning biases in digital tools and technologies cause inaccuracies that adversely
affect construction project performance. This situation inhibits the competitiveness and sustainability of a
people-centered, highly litigious and complex construction industry.
Originality/value – This study provides empirical evidence of the effect of machine learning biases on digital
tools used in the construction industry. Expanding existing knowledge on machine learning biases can build
greater trust in digital tools and maximize their benefits while minimizing unintended consequences. To achieve
this, it is essential for stakeholders in the construction industry, including manufacturers and users of digital
technologies, to become well-informed about these biases. By working together, they can develop effective
strategies to mitigate these issues and ensure the successful implementation of digital tools.
Description
Keywords
Machine learning, Digital tools, Bias, Project performance, ATLAS.