Comparing univariate techniques for tender price index forecasting: Box-Jenkins and neural network model

Olalekan Shamsideen Oshodi*, Obuks Augustine Ejohwomu, Ibukun Oluwadara Famakin, Paulo Cortez

*Corresponding author for this work

    Research output: Contribution to journalArticlepeer-review

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    Abstract

    The poor performance of projects is a reoccurring event in the construction sector. Information gleaned from literature shows that uncertainty in project cost is one of the significant causes of this problem. Reliable forecast of construction cost is useful in mitigating the adverse effect of its fluctuation. However, the availability of data for the development of multivariate models for construction cost forecasting remains a challenge. The study seeks to investigate the reliability of using univariate models for tender price index forecasting. Box-Jenkins and neural network are the modelling techniques applied in this study. The results show that the neural network model outperforms the Box-Jenkins model, in terms of accuracy. In addition, the neural network model provides a reliable forecast of tender price index over a period of 12 quarters ahead. The limitations of using the univariate models are elaborated. The developed neural network model can be used by stakeholders as a tool for predicting the movements in tender price index. In addition, the univariate models developed in the present study are particularly useful in countries, where limited data reduces the possibility of applying multivariate models.
    Original languageEnglish
    Pages (from-to)109-123
    Number of pages15
    JournalConstruction Economics and Building
    Volume17
    Issue number3
    DOIs
    Publication statusPublished - 21 Sept 2017

    Keywords

    • Box-Jenkins
    • Forecast
    • Model
    • Neural network
    • Tender price index

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