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基于BP和SVM变量筛选的LC技术特征对项目绩效比较研究
引用本文:李书全,胡少培,胡本哲.基于BP和SVM变量筛选的LC技术特征对项目绩效比较研究[J].科技管理研究,2015(7).
作者姓名:李书全  胡少培  胡本哲
作者单位:天津财经大学商学院,天津,300222
基金项目:国家自然科学基金项目“精益建设(LC)技术采纳行为与决策模型研究”(71171140);天津市科委科技发展战略研究计划项目“建筑施工企业安全投资决策模型研究及应用”(12JCZDJC34900)项目来源天津财经大学重点项目“基于社会资本的建筑安全预警研究”
摘    要:为探究精益建设技术与项目绩效之间的内在作用机理,构建基于BP和SVM变量筛选的6S、可视化管理、最后计划者等7种精益建设技术与知识能力、财务、业主等5个项目绩效分项指标和综合指标的耦合模型。仿真结果表明:在精益建设技术特征与项目绩效分项指标的耦合模型仿真分析中,基于GA-BP的预测模型比标准BP神经网络模型精度要高;在精益建设技术特征与项目绩效综合指标的耦合模型仿真分析中,基于SVM的预测模型比GA-BP的预测模型精度要高。另外,利用BP和SVM结合MIV算法进一步探究不同精益建设技术对项目绩效各指标和综合指标的影响程度。研究结果为项目利益相关者提高项目管理绩效提供决策支持。

关 键 词:精益建设技术特征  项目绩效  遗传神经网络(GA-BP)  支持向量机(SVM)  变量筛选
收稿时间:2014/5/14 0:00:00
修稿时间:2015/4/13 0:00:00

Research on GA-BP with SVM for Towards Coupling of Lean Construction Technology and Project Performance
LI Shuquan,HU Shaopei,HU Benzhe.Research on GA-BP with SVM for Towards Coupling of Lean Construction Technology and Project Performance[J].Science and Technology Management Research,2015(7).
Authors:LI Shuquan  HU Shaopei  HU Benzhe
Abstract:as the internal mechanism between inquiry lean construction technology and project performance, constructs the screening of BP and SVM variables 6S, visual management, the last planner and other 7 kinds of lean construction technology and knowledge ability, financial, owners, based on the coupling model of 5 project performance index and comprehensive index. The simulation results show that: in the analysis of coupled model simulation technology characteristics of lean construction and project performance sub index, prediction model of GA-BP is higher than standard BP neural network model based on the analysis of precision; coupled model simulation comprehensive indicators of performance technology characteristics of lean construction and project, the predictive model of SVM is higher than the precision of forecasting model GA-BP based on. In addition, using the BP and SVM combined with MIV algorithm to further explore the influence of different lean construction techniques of each index and comprehensive index of project performance. Research results provide decision support for the project stakeholders to improve the performance of project management.
Keywords:lean construction technical features  project performance  genetic neural network (GA -BP)  support vector machine (SVM)  variable selection
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