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Automated Machine Learning in the Smart Construction Era: Significance and Accessibility for Industrial Classification and Regression Tasks

Author

Listed:
  • Rui Zhao

    (The University of Hong Kong)

  • Zhongze Yang

    (The University of Hong Kong)

  • Dong Liang

    (The University of Hong Kong)

  • Fan Xue

    (The University of Hong Kong)

Abstract

This paper explores the application of automated machine learning (AutoML) techniques to the construction industry, a sector vital to the global economy. Traditional ML model construction methods were complex, time-consuming, reliant on data science expertise, and expensive. AutoML shows the potential to automate many tasks in ML construction and to create outperformed ML models. This paper aims to verify the feasibility of applying AutoML to industrial datasets for the smart construction domain, with a specific case study demonstrating its effectiveness. Two data challenges that were unique to industrial construction datasets are focused on, in addition to the normal steps of dataset preparation, model training, and evaluation. A real-world application case of construction project type prediction is provided to illustrate the accessibility of AutoML. By leveraging AutoML, construction professionals without data science expertise can now utilize software to process industrial data into ML models that assist in project management. The findings in this paper may bridge the gap between data-intensive smart construction practices and the emerging field of AutoML, encouraging its adoption for improved decision-making, project outcomes, and efficiency.

Suggested Citation

  • Rui Zhao & Zhongze Yang & Dong Liang & Fan Xue, 2024. "Automated Machine Learning in the Smart Construction Era: Significance and Accessibility for Industrial Classification and Regression Tasks," Lecture Notes in Operations Research,, Springer.
  • Handle: RePEc:spr:lnopch:978-981-97-1949-5_140
    DOI: 10.1007/978-981-97-1949-5_140
    as

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