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Development and comparative of a new meta-ensemble machine learning model in predicting construction labor productivity

Ibrahim Karatas (Department of Civil Engineering, Osmaniye Korkut Ata Universitesi, Osmaniye, Turkey)
Abdulkadir Budak (Department of Civil Engineering, Osmaniye Korkut Ata Universitesi, Osmaniye, Turkey)

Engineering, Construction and Architectural Management

ISSN: 0969-9988

Article publication date: 23 November 2022

Issue publication date: 1 March 2024

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Abstract

Purpose

The study is aimed to compare the prediction success of basic machine learning and ensemble machine learning models and accordingly create novel prediction models by combining machine learning models to increase the prediction success in construction labor productivity prediction models.

Design/methodology/approach

Categorical and numerical data used in prediction models in many studies in the literature for the prediction of construction labor productivity were made ready for analysis by preprocessing. The Python programming language was used to develop machine learning models. As a result of many variation trials, the models were combined and the proposed novel voting and stacking meta-ensemble machine learning models were constituted. Finally, the models were compared to Target and Taylor diagram.

Findings

Meta-ensemble models have been developed for labor productivity prediction by combining machine learning models. Voting ensemble by combining et, gbm, xgboost, lightgbm, catboost and mlp models and stacking ensemble by combining et, gbm, xgboost, catboost and mlp models were created and finally the Et model as meta-learner was selected. Considering the prediction success, it has been determined that the voting and stacking meta-ensemble algorithms have higher prediction success than other machine learning algorithms. Model evaluation metrics, namely MAE, MSE, RMSE and R2, were selected to measure the prediction success. For the voting meta-ensemble algorithm, the values of the model evaluation metrics MAE, MSE, RMSE and R2 are 0.0499, 0.0045, 0.0671 and 0.7886, respectively. For the stacking meta-ensemble algorithm, the values of the model evaluation metrics MAE, MSE, RMSE and R2 are 0.0469, 0.0043, 0.0658 and 0.7967, respectively.

Research limitations/implications

The study shows the comparison between machine learning algorithms and created novel meta-ensemble machine learning algorithms to predict the labor productivity of construction formwork activity. The practitioners and project planners can use this model as reliable and accurate tool for predicting the labor productivity of construction formwork activity prior to construction planning.

Originality/value

The study provides insight into the application of ensemble machine learning algorithms in predicting construction labor productivity. Additionally, novel meta-ensemble algorithms have been used and proposed. Therefore, it is hoped that predicting the labor productivity of construction formwork activity with high accuracy will make a great contribution to construction project management.

Keywords

Citation

Karatas, I. and Budak, A. (2024), "Development and comparative of a new meta-ensemble machine learning model in predicting construction labor productivity", Engineering, Construction and Architectural Management, Vol. 31 No. 3, pp. 1123-1144. https://doi.org/10.1108/ECAM-08-2021-0692

Publisher

:

Emerald Publishing Limited

Copyright © 2022, Emerald Publishing Limited

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