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基于机器学习算法的工程造价估算准确性提升研究
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作者 孙倩倩 《中文科技期刊数据库(引文版)工程技术》 2025年第1期184-187,共4页
本次研究的目的是探索基于机器学习算法的工程造价估算精度增强方法与效果。通过特征选择及降维技术,集成学习算法的运用以及深度学习模型的优化,该模型预测精度及鲁棒性得到显着提升。实证分析结果表明:机器学习算法对工程造价估算的... 本次研究的目的是探索基于机器学习算法的工程造价估算精度增强方法与效果。通过特征选择及降维技术,集成学习算法的运用以及深度学习模型的优化,该模型预测精度及鲁棒性得到显着提升。实证分析结果表明:机器学习算法对工程造价估算的精度与效率都有显著提高,为建筑行业的估算提供了一种科学有效的工具。希望本文的研究成果能为读者提供一定的参考价值。 展开更多
关键词 机器学习 工程造价估算 特征选择 集成学习 深度学习模型优化
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Construction and optimization of traditional Chinese medicine constitution prediction models based on deep learning
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作者 ZHANG Xinge XU Qiang +1 位作者 WEN Chuanbiao LUO Yue 《Digital Chinese Medicine》 CAS CSCD 2024年第3期241-255,共15页
Objective To cater to the demands for personalized health services from a deep learning per-spective by investigating the characteristics of traditional Chinese medicine(TCM)constitu-tion data and constructing models ... Objective To cater to the demands for personalized health services from a deep learning per-spective by investigating the characteristics of traditional Chinese medicine(TCM)constitu-tion data and constructing models to explore new prediction methods.Methods Data from students at Chengdu University of Traditional Chinese Medicine were collected and organized according to the 24 solar terms from January 21,2020,to April 6,2022.The data were used to identify nine TCM constitutions,including balanced constitution,Qi deficiency constitution,Yang deficiency constitution,Yin deficiency constitution,phlegm dampness constitution,damp heat constitution,stagnant blood constitution,Qi stagnation constitution,and specific-inherited predisposition constitution.Deep learning algorithms were employed to construct multi-layer perceptron(MLP),long short-term memory(LSTM),and deep belief network(DBN)models for the prediction of TCM constitutions based on the nine constitution types.To optimize these TCM constitution prediction models,this study in-troduced the attention mechanism(AM),grey wolf optimizer(GWO),and particle swarm op-timization(PSO).The models’performance was evaluated before and after optimization us-ing the F1-score,accuracy,precision,and recall.Results The research analyzed a total of 31655 pieces of data.(i)Before optimization,the MLP model achieved more than 90%prediction accuracy for all constitution types except the balanced and Qi deficiency constitutions.The LSTM model's prediction accuracies exceeded 60%,indicating that their potential in TCM constitutional prediction may not have been fully realized due to the absence of pronounced temporal features in the data.Regarding the DBN model,the binary classification analysis showed that,apart from slightly underperforming in predicting the Qi deficiency constitution and damp heat constitution,with accuracies of 65%and 60%,respectively.The DBN model demonstrated considerable discriminative power for other constitution types,achieving prediction accuracy rates and area under the receiver op-erating characteristic(ROC)curve(AUC)values exceeding 70%and 0.78,respectively.This indicates that while the model possesses a certain level of constitutional differentiation abili-ty,it encounters limitations in processing specific constitutional features,leaving room for further improvement in its performance.For multi-class classification problem,the DBN model’s prediction accuracy rate fell short of 50%.(ii)After optimization,the LSTM model,enhanced with the AM,typically achieved a prediction accuracy rate above 75%,with lower performance for the Qi deficiency constitution,stagnant blood constitution,and Qi stagna-tion constitution.The GWO-optimized DBN model for multi-class classification showed an increased prediction accuracy rate of 56%,while the PSO-optimized model had a decreased accuracy rate to 37%.The GWO-PSO-DBN model,optimized with both algorithms,demon-strated an improved prediction accuracy rate of 54%.Conclusion This study constructed MLP,LSTM,and DBN models for predicting TCM consti-tution and improved them based on different optimisation algorithms.The results showed that the MLP model performs well,the LSTM and DBN models were effective in prediction but with certain limitations.This study also provided a new technology reference for the es-tablishment and optimisation strategies of TCM constitution prediction models,and a novel idea for the treatment of non-disease. 展开更多
关键词 Traditional Chinese medicine(TCM) CONSTITUTION Deep learning Constitution classification Prediction model Optimization research
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