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A Data Mining Algorithm Based on Distributed Decision-Tree in Grid Computing Environments
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作者 Zhongda Lin Yanfeng Hong Kun Deng 《南昌工程学院学报》 CAS 2006年第2期126-128,共3页
Recently, researches on distributed data mining by making use of grid are in trend. This paper introduces a data mining algorithm by means of distributed decision-tree,which has taken the advantage of conveniences and... Recently, researches on distributed data mining by making use of grid are in trend. This paper introduces a data mining algorithm by means of distributed decision-tree,which has taken the advantage of conveniences and services supplied by the computing platform-grid,and can perform a data mining of distributed classification on grid. 展开更多
关键词 GRID decision-tree distributed data ming system architecture
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基于多时相遥感数据的地表覆被分区研究 被引量:5
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作者 洪军 葛剑平 +1 位作者 蔡体久 寇晓军 《东北林业大学学报》 CAS CSCD 北大核心 2005年第5期38-40,共3页
利用多时相的NOAA-AVHRR8km分辨率的遥感影像,以决策树分类器为基础,辅以数字化地形数据(DTM)、历史资料和野外实地调查资料等辅助分类数据,综合运用非监督分类和基于知识挖掘的信息提取技术,对中国东北地区20世纪80年代的地表覆被类型... 利用多时相的NOAA-AVHRR8km分辨率的遥感影像,以决策树分类器为基础,辅以数字化地形数据(DTM)、历史资料和野外实地调查资料等辅助分类数据,综合运用非监督分类和基于知识挖掘的信息提取技术,对中国东北地区20世纪80年代的地表覆被类型进行了分类,将研究区域最终划定为11种土地覆被类型,揭示了当时研究区域的土地覆被空间分异特征。 展开更多
关键词 归一化差异植被指数 决策树分类法 地表覆被分区 遥感
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基于访问树的属性基签名算法 被引量:6
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作者 马春光 石岚 汪定 《电子科技大学学报》 EI CAS CSCD 北大核心 2013年第3期410-414,共5页
提出了一种基于访问树的属性基签名算法,签名算法采用访问树结构有效地解决了门限属性基签名方案中阈值对签名算法的限制。该算法无需限定属性个数,可以灵活地设定签名策略。算法安全性证明基于标准模型而不是随机预言机模型,在标准模... 提出了一种基于访问树的属性基签名算法,签名算法采用访问树结构有效地解决了门限属性基签名方案中阈值对签名算法的限制。该算法无需限定属性个数,可以灵活地设定签名策略。算法安全性证明基于标准模型而不是随机预言机模型,在标准模型中将算法的安全性归约到判定BDH困难假设。 展开更多
关键词 访问树 属性基 判定BDH 签名 标准模型
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Choices of medical institutions and associated factors in older patients with multimorbidity in stabilization period in China:A study based on logistic regression and decision tree model 被引量:1
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作者 Xiaoran Wang Dan Zhang 《Health Care Science》 2023年第6期359-369,共11页
Background:As China's population ages,its disease spectrum is changing,and the coexistence of multiple chronic diseases has become the norm with respect to the health status of its elderly population.However,the h... Background:As China's population ages,its disease spectrum is changing,and the coexistence of multiple chronic diseases has become the norm with respect to the health status of its elderly population.However,the health institution choices of older patients with multimorbidity in stabilization period remains underresearched.This study investigate the factors influencing the choices of older patients with multimorbidity to provide references for the rational allocation of healthcare resources.Methods:A multistage,stratified,whole-group random-sampling method was used to select eligible older patients from September to December of 2022 who attended the Community Health Service Center of Guangdong Province.We adopted a self-designed questionnaire to collect patients'general,diseaserelated,social-support information,their intention to choose a healthcare provider.A binary logistic regression and decision tree model based on the Chi-squared automatic interaction detector algorithm were implemented to analyze the associated factors involved.Results:A total of 998 patients in stabilization period were included in the study,of which 593(59.42%)chose hospital and 405(40.58%)chose primary care.Our binary logistic regression results revealed that age,sex,individual average annual income,educational level,self-reported health status,activities of daily living,alcohol consumption,family doctor contracting,and family supervision of medication or exercise were the principal factors influencing the choice of medical institutions for older patients with multimorbidity(p<0.05).The decision-tree model reflected three levels and 11 nodes,and we screened a total of four influencing factors:activities of daily living,age,a family doctor contract,and patient sex.The data showed that the logistic regression model possessed an accuracy of 72.9%and that the decision tree model exhibited an accuracy of 68.7%.Prediction using the binary logistic regression was thus statistically superior to the categorical decision-tree model based on the Chisquared automatic interaction detector algorithm(Z=3.238,p=0.001).Conclusion:More than half of older patients with multimorbidity in stabilization period chose hospitals for healthcare.Efforts should be made to improve the quality of healthcare services and increase the medical contracting rate and recognition of family doctors so as to attract older patients with multimorbidity to primary medical institutions. 展开更多
关键词 comorbidity of chronic disease ELDERLY choice of medical institution logistic regression model decision-tree model
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Towards Sustainable Land Uses within the Elbe River Biosphere Reserve in Lower Saxony, Germany by Means of TerraSAR-X Images
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作者 Dalia Farghaly Emad Elba Brigitte Urban 《Journal of Geoscience and Environment Protection》 2016年第3期97-121,共25页
Floods are one of the major hazards worldwide. They are the source of huge risks in rural and urban areas, resulting in severe impacts on the civil society, industry and the economy. The Elbe River has suffered from m... Floods are one of the major hazards worldwide. They are the source of huge risks in rural and urban areas, resulting in severe impacts on the civil society, industry and the economy. The Elbe River has suffered from many severe floods during recent decades. In this study, the zones flooded during 2011 were analyzed using TerraSAR-X images and a digital elevation model for the area in order to identify possible ways to mitigate flood hazards in the future, regarding sustainable land-use. Two study areas are investigated, around the Walmsburg oxbow and the Wehningen oxbow. These are located between Elbe-Kilometer (505-520) and (533-543), respectively, within the Lower Saxonian Elbe River Biosphere Reserve. Those areas are characterized by several types of land use, with agricultural land use being predominant. The study investigated the possibility of using a Decision-Tree object-based classifier for determining the major land uses and the extent of the inundation areas. The inundation areas identify for 2011 submerged some agricultural fields that must be added to existing flood risk maps, and future cultivation activities there prevented to avoid the possible economic losses. Furthermore, part of the residential area is located within the high flood zone, and must be included in risk maps to avoid the possible human and economic losses, to achieve sustainable land use for the areas studied. 展开更多
关键词 Elbe River Floods Land Use SAR TERRASAR-X decision-tree Object-Based Classification Risk Maps
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A study on preterm birth predictions using physiological signals,medical health record information and low-dimensional embedding methods 被引量:1
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作者 Ejay Nsugbe Oluwarotimi William Samuel +2 位作者 Ibrahim Sanusi Mojisola Grace Asogbon Guanglin Li 《IET Cyber-Systems and Robotics》 EI 2021年第3期228-244,共17页
Preterm births have been seen to have psychological and financial implications;current surveys suggest that amongst the various methods of preterm prediction,there is yet to exist a reliable and standard means of pred... Preterm births have been seen to have psychological and financial implications;current surveys suggest that amongst the various methods of preterm prediction,there is yet to exist a reliable and standard means of predicting preterm births.This study investigates the application of electrohysterogram and tocogram signals acquired at various points during the third pregnancy trimester,alongside information from the patients'medical health record regarding the pregnancy,towards preterm prediction and an associated delivery imminency timeline.In addition to this,the impact of both linear and non-linear dimensional embedding methods towards the preterm prediction is explored.The classification exercises were carried out using a support vector machine and decision tree,both of which have a certain degree of model interpretability and have potential to be introduced into a clinical operating framework. 展开更多
关键词 CYBERNETICS DECISION-MAKING decision-tree classifier machine intelligence machine learning sensor fusion
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Application of data science in the prediction of solar energy for the Amazon basin:a study case
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作者 AndréLuis Ferreira Marques Márcio JoséTeixeira +1 位作者 Felipe Valencia de Almeida Pedro Luiz Pizzigatti Corrêa 《Clean Energy》 EI CSCD 2023年第6期1344-1355,共12页
The need for renewable energy sources has challenged most countries to comply with environmental protection actions and to handle climate change.Solar energy figures as a natural option,despite its intermittence.Brazi... The need for renewable energy sources has challenged most countries to comply with environmental protection actions and to handle climate change.Solar energy figures as a natural option,despite its intermittence.Brazil has a green energy matrix with significant expansion of solar form in recent years.To preserve the Amazon basin,the use of solar energy can help communities and cities improve their living standards without new hydroelectric units or even to burn biomass,avoiding harsh environmental consequences.The novelty of this work is using data science with machine-learning tools to predict the solar incidence(W.h/m^(2))in four cities in Amazonas state(north-west Brazil),using data from NASA satellites within the period of 2013-22.Decision-tree-based models and vector autoregressive(time-series)models were used with three time aggregations:day,week and month.The predictor model can aid in the economic assessment of solar energy in the Amazon basin and the use of satellite data was encouraged by the lack of data from ground stations.The mean absolute error was selected as the output indicator,with the lowest values obtained close to 0.20,from the adaptive boosting and light gradient boosting algorithms,in the same order of magnitude of similar references. 展开更多
关键词 solar energy renewable energy Amazon basin machine learning time series data science decision-trees ensemble vector autoregression
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Interpretable machine learning models for predicting Ebus battery consumption rates in cold climates with and without diesel auxiliary heating
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作者 Kareem Othman Diego Da Silva +1 位作者 Amer Shalaby Baher Abdulhai 《Green Energy and Intelligent Transportation》 2025年第2期59-79,共21页
The global shift towards sustainable and environmentally friendly transportation options has led to the increasing adoption of electric buses(Ebuses).To optimize the deployment and operational strategies of Ebuses,it ... The global shift towards sustainable and environmentally friendly transportation options has led to the increasing adoption of electric buses(Ebuses).To optimize the deployment and operational strategies of Ebuses,it is imperative to accurately predict their energy consumption under varying conditions,particularly in cold climates where battery life is typically degraded.The exploration of this aspect within the Canadian context has been limited.In addition,we have found that existing models in the literature perform poorly in the Canadian environment,giving rise to the need for new models using Canadian data.This paper focuses on the development,comparison,and evaluation of various data-driven models designed to predict the energy consumption of different Ebuses with different heating technologies under a wide range of climate conditions.We specifically use Canadian data as a good representative of cold climates in general.The results show that the performance of the different bus types varies substantially under the exact same conditions.In addition,tree-based family of models proves to be the most suitable approach for predicting the Ebus consumption rate.The results indicate that the Random Forest method emerges as the superior choice for predicting the energy consumption rate,with a resulting mean absolute error of 0.09–0.1 kWh/km observed across the different models.Furthermore,SHAP analysis shows that the main variables influencing the energy consumption rate depend on the type of heating system(using the battery for heating or using an auxiliary system that utilizes diesel for heating)adopted. 展开更多
关键词 Battery electric bus Energy consumption model Battery life in cold climates Machine learning decision-trees SHAP analysis Model interpretation
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