Article ID Journal Published Year Pages File Type
385907 Expert Systems with Applications 2011 5 Pages PDF
Abstract

Modeling of construction costs is a challenging task, as it requires representation of complex relations between factors and project costs with sparse and noisy data. In this paper, neural networks with bootstrap prediction intervals are presented for range estimation of construction costs. In the integrated approach, neural networks are used for modeling the mapping function between the factors and costs, and bootstrap method is used to quantify the level of variability included in the estimated costs. The integrated method is applied to range estimation of building projects. Two techniques; elimination of the input variables, and Bayesian regularization were implemented to improve generalization capabilities of the neural network models. The proposed modeling approach enables identification of parsimonious mapping function between the factors and cost and, provides a tool to quantify the prediction variability of the neural network models. Hence, the integrated approach presents a robust and pragmatic alternative for conceptual estimation of costs.

Research highlights► A combination of neural networks and bootstrap is presented for range cost estimation. ► Elimination of the unimportant factors improved model generalization. ► Bootstrap method enabled quantification of the prediction variability.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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