ABSTRACT

Various machine learning algorithms such as Artificial neural networks (ANNs), Support vector machine (SVM) and Bayesian neural network have been used to improve the accuracy performance of real estate price forecasting. But little research and practice has focused on estimating the price of housing from the construction perspective. Building information modeling (BIM), as a new technology for project information exchange and information management, has been developed for many different industry-specific applications such as automated code checking, energy performance analysis, collaborative design, lifecycle management in the Architecture, Engineering, Construction and Facility Management domain. By integrating BIM and machine learning technologies, this paper proposes a smart comprehensive model which can be used to forecast the price of a new building at the design stage. Furthermore, the smart price estimation engine could be integrated in the whole lifecycle of the building industry.