Dynamic feature selection for accurately predicting construction productivity using symbiotic organisms search-optimized least square support vector machine

Productivity is one of the crucial elements for managing construction operations effectively which directly impacts on general cost and time of a project. The accurate prediction of productivity is thus of paramount importance to help construction manager give decision-making timely for avoiding cos...

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Bibliographic Details
Published inJournal of Building Engineering Vol. 35; p. 101973
Main Authors Cheng, Min-Yuan, Cao, Minh-Tu, Jaya Mendrofa, Aris Yan
Format Journal Article
LanguageEnglish
Published Elsevier Ltd 01.03.2021
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Summary:Productivity is one of the crucial elements for managing construction operations effectively which directly impacts on general cost and time of a project. The accurate prediction of productivity is thus of paramount importance to help construction manager give decision-making timely for avoiding cost overrun and project falling behind schedule. This study introduces an artificial intelligence (AI)-based inference model to accurately forecast productivity of a construction project. The model is a hybridization of least square support vector machine (LSSVM), symbiotic organisms search (SOS), and a feature selection (FS) method in which SOS proceeds the optimization process to achieve the greatest performance of LSSVM by simultaneously determining hyperparameter of LSSVM model and set of highly relevant attributes of construction productivity. The performance of the proposed model, SOS-LSSVM-FS, is validated based on productivity dataset of two real projects located in Montreal, Canada constructed from September 2001 to June 2004. The statistical results of a 10-fold cross validation method indicate that SOS-LSSVM-FS achieves the highest accuracy of productivity prediction with 3.67% mean absolute percentage error (MAPE) which is at least 19.6% better than that of other comparative AI models. In addition, with the support of SOS, the model can run without human intervention of trial-and-error to tune control parameters. Therefore, this study contributes to core body of knowledge a novel model to deal with construction productivity-related problem. The SOS-LSSVM-FS model is strongly recommended as a promising tool for helping construction manager manage/control site productivity. •The SOS-LSSVM-FS model was proposed for boosting the prediction accuracy of construction productivity (CP).•The performance of SOS-LSSVM-FS was evaluated on 221 data collected from two real projects located in Montreal, Canada.•The statistical results demonstrated SOS-LSSVM-FS as the greatest model in predicting CP by yielding the lowest MAPE (3.67%).•The SOS-LSSVM-FS achieved over 18% reductions of RMSE and MAPE, respectively, comparing with other AI techniques.•The SOS-LSSVM-FS can automatically exclude redundant variables that deteriorate the accuracy of predicting the CP.
ISSN:2352-7102
2352-7102
DOI:10.1016/j.jobe.2020.101973