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Keywords: Multiple regression
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Journal Articles
Engineering, Construction and Architectural Management (2026) 33 (15): 653–676.
Published: 10 July 2026
.../methodology/approach We surveyed 258 employees with relevant experience in SMU within the construction industry in Australia and analyzed the data using the SPSS PROCESS macro. Specifically, we employed multiple regression analyses and tested a moderated mediation model to examine the proposed hypotheses...
Journal Articles
Engineering, Construction and Architectural Management (2020) 27 (5): 1169–1190.
Published: 29 January 2020
... (ANOVA) was conducted to identify the significant risk variables, and factor analysis was performed on the results to categorize the underlying dimensions of those variables as risk factors. Finally, the critical risk factors were identified via multiple regression analysis. In this study, ANOVA...
Journal Articles
Engineering, Construction and Architectural Management (2002) 9 (5-6): 446–452.
Published: 01 May 2002
...C.M. TAM; THOMAS K.L. TONG; SHARON L. TSE This paper aims to develop a quantitative model for predicting the productivity of excavators using artificial neural networks (ANN), which is then compared with the multiple regression model developed by Edwards & Holt (2000). A neural network using...
