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Development of Cost Estimation Models Based on ANN Ensembles and the SVM Method

机译:基于ANN合奏的成本估算模型和SVM方法的开发

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Cost estimation, as one of the key processes in construction projects, provides the basis for a number of project-related decisions. This paper presents some results of studies on the application of artificial intelligence and machine learning in cost estimation. The research developed three original models based either on ensembles of neural networks or on support vector machines for the cost prediction of the floor structural frames of buildings. According to the criteria of general metrics ( RMSE , MAPE ), the three models demonstrate similar predictive performance. MAPE values computed for the training and testing of the three developed models range between 5% and 6%. The accuracy of cost predictions given by the three developed models is acceptable for the cost estimates of the floor structural frames of buildings in the early design stage of the construction project. Analysis of error distribution revealed a degree of superiority for the model based on support vector machines.
机译:成本估算是建设项目中的关键流程之一,为许多项目相关的决定提供了基础。 本文介绍了人工智能和机器学习在成本估算中的应用研究结果。 该研究开发了三种原创模型,基于神经网络的集合或支撑向量机,用于建筑物的地板结构框架的成本预测。 根据一般指标的标准(RMSE,MAPE),三种模型表现出类似的预测性能。 为培训和测试计算的MAPE值,三个开发型号的范围在5%和6%之间。 三个开发模型给出的成本预测的准确性对于建筑项目的早期设计阶段建筑物的地板结构框架的成本估计是可以接受的。 误差分布的分析显示了基于支持向量机的模型的优越感。

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