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首页> 外文期刊>International Journal of Project Management >Predicting construction cost and schedule success using artificial neural networks ensemble and support vector machines classification models
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Predicting construction cost and schedule success using artificial neural networks ensemble and support vector machines classification models

机译:使用人工神经网络集成和支持向量机分类模型预测建筑成本和进度成功

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摘要

It is commonly perceived that how well the planning is performed during the early stage will have significant impact on final project outcome. This paper outlines the development of artificial neural networks ensemble and support vector machines classification models to predict project cost and schedule success, using status of early planning as the model inputs. Through industry survey, early planning and project performance information from a total of 92 building projects is collected. The results show that early planning status can be effectively used to predict project success and the proposed artificial intelligence models produce satisfactory prediction results.
机译:通常认为,在早期阶段执行计划的效果如何会对最终项目的结果产生重大影响。本文概述了人工神经网络集成和支持向量机分类模型的发展,该模型使用早期计划的状态作为模型输入来预测项目成本和进度成功。通过行业调查,从总共92个建筑项目中收集了早期规划和项目绩效信息。结果表明,早期计划状态可以有效地用于预测项目成功,所提出的人工智能模型产生令人满意的预测结果。

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