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Two-level and hybrid ensembles of decision trees for high performance concrete compressive strength prediction

机译:高性能混凝土抗压强度预测的决策树两级和混合集成

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摘要

Accurate prediction of high performance concrete (HPC) compressive strength is very important issue. In the last decade, a variety of modeling approaches have been developed and applied to predict HPC compressive strength from a wide range of variables, with varying success. The selection, application and comparison of decent modeling methods remain therefore a crucial task, subject to ongoing researches and debates. This study proposes three different ensemble approaches: (ⅰ) single ensembles of decision trees (DT) (ⅱ) two-level ensemble approach which employs same ensemble learning method twice in building ensemble models (ⅲ) hybrid ensemble approach which is an integration of attribute-base ensemble method (random sub-spaces RS) and instance-base ensemble methods (bagging Bag, stochastic gradient boosting GB). A decision tree is used as the base learner of ensembles and its results are benchmarked to proposed ensemble models. The obtained results show that the proposed ensemble models could noticeably advance the prediction accuracy of the single DT model and for determining average determination of correlation, the best models for HPC compressive strength forecasting are GB-RS DT, RS-GB DT and GB-GB DT among the eleven proposed predictive models, respectively. The obtained results show that the proposed ensemble models could noticeably advance the prediction accuracy of the single DT model and for determining determination of correlation (R_(max)~2). the best models for HPC compressive strength forecasting are GB-RS DT(R~2 = 0.9520), GB-GB DT (R~2 = 0.9456) and Bag-Bag DT (R~2=0.9368) among the eleven proposed predictive models, respectively.
机译:高性能混凝土(HPC)抗压强度的准确预测是非常重要的问题。在过去的十年中,已经开发出了多种建模方法,并将其用于预测来自各种变量的HPC抗压强度,并取得了不同的成功。因此,有待进行的研究和辩论,选择,应用和比较体面的建模方法仍然是一项至关重要的任务。本研究提出了三种不同的集成方法:(ⅰ)决策树(DT)单个集成(ⅱ)在构建集成模型中两次采用相同的集成学习方法的两级集成方法(ⅲ)集成属性的混合集成方法基本合奏方法(随机子空间RS)和基于实例的合奏方法(装袋Bag,随机梯度提升GB)。决策树被用作集成的基础学习者,其结果将以所提出的集成模型为基准。获得的结果表明,所提出的集成模型可以显着提高单个DT模型的预测精度,并且在确定相关性的平均值时,HPC抗压强度预测的最佳模型是GB-RS DT,RS-GB DT和GB-GB DT分别在十一个提出的预测模型中。获得的结果表明,所提出的集成模型可以显着提高单个DT模型的预测精度,并可以确定相关性的确定(R_(max)〜2)。在11种建议的预测模型中,用于HPC抗压强度预测的最佳模型是GB-RS DT(R〜2 = 0.9520),GB-GB DT(R〜2 = 0.9456)和Bag-Bag DT(R〜2 = 0.9368) , 分别。

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