Title of article :
Studying the suitability of different data mining methods for delay analysis in construction projects
Author/Authors :
Movahedi Sobhani ، Farzad - Islamic Azad University, Science and Research Branch , Madadi ، Tahereh - Islamic Azad University, Science and Research Branch
Pages :
19
From page :
15
To page :
33
Abstract :
The main purpose of this paper is to investigate the suitability of diverse data mining techniques for construction delay analysis. Data of this research obtained from 120 Iranian construction projects. The analysis consists of developing and evaluating various data mining models for factor selection, delay classification, and delay prediction. The results of this research indicate that with respect to accuracy and correlation indexes, genetic algorithm with KNN learning model is the most suitable model for factor selection. By conducting the genetic algorithm, eight significant variables causing construction delay are identified as: Changes in project manager, Difficulties in financing project by owner, Number of employees, Project duration, Unforeseen events, Project Location, Number of equipment, How to get the project. This research also revealed that in the case of delay classification and prediction, respectively, bagging decision tree and bagging neural network has the least amount of error in comparison with other techniques. In addition, to compare the diversity of data mining methods, the optimized parameter vectors of the selected models were also identified.
Keywords :
Construction delay , Data mining , evaluation , prediction , Classification , factor selection
Journal title :
Journal of Applied Research on Industrial Engineering
Serial Year :
2015
Journal title :
Journal of Applied Research on Industrial Engineering
Record number :
2478466
Link To Document :
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