Predicting communication quality in construction projects: A fully-connected deep neural network approach

Establishing high-quality communication in construction projects is essential to securing successful collaboration and maintaining understanding among project stakeholders. Indeed, poor communication results in low productivity, poor efficiency, and substandard deliverables. While high-quality commu...

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Veröffentlicht in:Automation in construction 2022-07, Vol.139, p.104268, Article 104268
Hauptverfasser: Rahimian, Ali, Hosseini, M. Reza, Martek, Igor, Taroun, Abdulmaten, Alvanchi, Amin, Odeh, Ibrahim
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container_end_page
container_issue
container_start_page 104268
container_title Automation in construction
container_volume 139
creator Rahimian, Ali
Hosseini, M. Reza
Martek, Igor
Taroun, Abdulmaten
Alvanchi, Amin
Odeh, Ibrahim
description Establishing high-quality communication in construction projects is essential to securing successful collaboration and maintaining understanding among project stakeholders. Indeed, poor communication results in low productivity, poor efficiency, and substandard deliverables. While high-quality communication is recognized as contingent on the interpersonal skills of workers, the impacts of communication quality on job performance remain unknown. This study addresses this deficiency by developing a method to evaluate construction workers' communication quality. A literature review is undertaken to capture salient interpersonal skills. Leadership style, listening, team building, and clarifying expectations are identified. A questionnaire survey is drafted to capture construction practitioners' perception of these skills' effects on communication quality, returning 180 responses. Next, an artificial neural network model, or communication quality predictor (CQP), is developed, able to predict the quality of workers' interpersonal communication. The model accuracy on training is 87%; for testing, 79%. Finally, CQP is deployed in a real-time context in order to validate the reliability, returning an 80% prediction accuracy. This study is the first of its kind in offering a quantified, predictive model associating interpersonal skills with quality of communications in the context of the construction sector. In practical terms, the CQP can flag interpersonal conflicts before they escalate, while also guiding construction managers in the design of interpersonal skills training •No previous research exists on developing methods to predict the quality of communications.•A method to evaluate construction workers' communication quality according to their interpersonal skills is presented.•An artificial neural network model supports the Communication Quality Predictor (CQP).•CQP's predictions showed 80% accuracy on real-life cases.
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subjects Artificial neural networks
Communication
Communication quality
Construction
Construction industry
Construction management
Context
Interpersonal skills
Leadership
Literature reviews
Model accuracy
Neural networks
Personal communication
Prediction models
Predictive modeling
Skills
Training
title Predicting communication quality in construction projects: A fully-connected deep neural network approach
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