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Batselier, J and Vanhoucke, M (2015) . Journal of Construction Engineering and Management, 141(11).

Liu, K and Golparvar-Fard, M (2015) Crowdsourcing Construction Activity Analysis from Jobsite Video Streams. Journal of Construction Engineering and Management, 141(11).

Love, P E D, Ackermann, F, Teo, P and Morrison, J (2015) From Individual to Collective Learning: A Conceptual Learning Framework for Enacting Rework Prevention. Journal of Construction Engineering and Management, 141(11).

Neuman, Y, Alves, T d C L, Walsh, K D and Needy, K L (2015) Quantitative Analysis of Supplier Quality Surveillance Practices in EPC Projects. Journal of Construction Engineering and Management, 141(11).

Shen, Y, Koh, T Y, Rowlinson, S and Bridge, A J (2015) Empirical Investigation of Factors Contributing to the Psychological Safety Climate on Construction Sites. Journal of Construction Engineering and Management, 141(11).

Sing, M C P, Edwards, D J, Liu, H J X and Love, P E D (2015) Forecasting Private-Sector Construction Works: VAR Model Using Economic Indicators. Journal of Construction Engineering and Management, 141(11).

  • Type: Journal Article
  • Keywords: Construction works; Economic indicators; Granger causality; Vector auto-regression model; Quantitative methods;
  • ISBN/ISSN: 0733-9364
  • URL: https://doi.org/10.1061/(ASCE)CO.1943-7862.0001016
  • Abstract:
    Accurately modeling and forecasting construction works completed by main contractors is pivotal for policymakers, who require reliable market intelligence to adjust or develop optimal labor and housing policies. Yet, despite its importance, limited research has been conducted to systematically develop approaches to investigating future trends of works completed in the private construction sector. Against this backdrop, this paper provides a study of the annual financial value of construction work in the private residential market. A vector auto-regression (VAR) model developed utilizes economic indicators (used by private financiers when making investment decisions) to estimate the value of annual construction work carried out by main contractors. Using data from the Hong Kong private residential market and constructing an accumulated impulse function, the developed model suggests that construction work completions in private residential markets can be explained by changes in economic indicators such as gross domestic product and the property price index. These economic indicators have been identified as having a large and direct effect on forthcoming construction works. The developed model also provides a high degree of accuracy (producing an adjusted R2 value of 0.72) when simulating or forecasting future changes in the value of construction works over a short-term 5-year forecast. The output of this study contributes to the literature by systematically developing a reliable approach using economic indicators that is useful for forecasting private-sector construction completions. Such knowledge is of paramount importance when estimating the industry’s future workload and supply of residential buildings.

Su, Y and Lucko, G (2015) Optimum Present Value Scheduling Based on Synthetic Cash Flow Model with Singularity Functions. Journal of Construction Engineering and Management, 141(11).