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Application of Boosting Regression Trees to Preliminary Cost Estimation in Building Construction Projects

机译:升压回归树在建设项目中初步成本估算的应用

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摘要

Among the recent data mining techniques available, the boosting approach has attracted a great deal of attention because of its effective learning algorithm and strong boundaries in terms of its generalization performance. However, the boosting approach has yet to be used in regression problems within the construction domain, including cost estimations, but has been actively utilized in other domains. Therefore, a boosting regression tree (BRT) is applied to cost estimations at the early stage of a construction project to examine the applicability of the boosting approach to a regression problem within the construction domain. To evaluate the performance of the BRT model, its performance was compared with that of a neural network (NN) model, which has been proven to have a high performance in cost estimation domains. The BRT model has shown results similar to those of NN model using 234 actual cost datasets of a building construction project. In addition, the BRT model can provide additional information such as the importance plot and structure model, which can support estimators in comprehending the decision making process. Consequently, the boosting approach has potential applicability in preliminary cost estimations in a building construction project.
机译:在最近的数据挖掘技术中,升压方法由于其有效的学习算法和泛型界限而言,引起了大量的关注。然而,升级方法尚未用于建筑领域内的回归问题,包括成本估计,但已在其他域中积极使用。因此,将升压回归树(BRT)应用于建筑项目的早期阶段的成本估计,以检查升压方法对建筑结构域内的回归问题的适用性。为了评估BRT模型的性能,将其性能与神经网络(NN)模型进行了比较,这已被证明在成本估计域中具有高性能。 BRT模型示出了使用建筑施工项目的234实际成本数据集的NN模型类似的结果。另外,BRT模型可以提供诸如重要地图和结构模型之类的附加信息,这可以支持理解决策过程的估计。因此,升压方法具有初步成本估算的潜在适用性。

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