Determining Attribute Weights in a Cbr Model for Early Cost Prediction of Structural Systems
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BRONZE
Green Open Access
Yes
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Abstract
This paper compares the performance of three optimization techniques, namely feature counting, gradient descent, and genetic algorithms (GA) in generating attribute weights that were used in a spreadsheet-based case based reasoning (CBR) prediction model. The generation of the attribute weights by using the three optimization techniques and the development of the procedure used in the CBR model are described in this paper in detail. The model was tested by using data pertaining to the early design parameters and unit cost of the structural system of 29 residential building projects. The results indicated that GA-augmented CBR performed better than CBR used in association with the other two optimization techniques. The study is of benefit primarily to researchers as it compares the impact attribute weights generated by three different optimization techniques on the performance of a CBR prediction tool.
Description
Keywords
Structural design, Construction costs, Cost estimates, Decision making, Construction costs, Structural design, Decision making, Cost estimates
Fields of Science
0211 other engineering and technologies, 0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology
Citation
Doğan, S. Z., Arditi, D., and Günaydın, H. M. (2006). Determining attribute weights in a CBR model for early cost prediction of structural systems. Journal of Construction Engineering and Management, 132(10), 1092-1098. doi:10.1061/(ASCE)0733-9364(2006)132:10(1092)
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OpenCitations Citation Count
90
Volume
132
Issue
10
Start Page
1092
End Page
1098
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1122
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843
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