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Landslide susceptibility zonation method based on C5.0 decision tree and K-means cluster algorithms to improve the efficiency of risk management 被引量:17
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作者 Zizheng Guo Yu Shi +2 位作者 Faming Huang Xuanmei Fan Jinsong Huang 《Geoscience Frontiers》 SCIE CAS CSCD 2021年第6期243-261,共19页
Machine learning algorithms are an important measure with which to perform landslide susceptibility assessments, but most studies use GIS-based classification methods to conduct susceptibility zonation.This study pres... Machine learning algorithms are an important measure with which to perform landslide susceptibility assessments, but most studies use GIS-based classification methods to conduct susceptibility zonation.This study presents a machine learning approach based on the C5.0 decision tree(DT) model and the K-means cluster algorithm to produce a regional landslide susceptibility map. Yanchang County, a typical landslide-prone area located in northwestern China, was taken as the area of interest to introduce the proposed application procedure. A landslide inventory containing 82 landslides was prepared and subsequently randomly partitioned into two subsets: training data(70% landslide pixels) and validation data(30% landslide pixels). Fourteen landslide influencing factors were considered in the input dataset and were used to calculate the landslide occurrence probability based on the C5.0 decision tree model.Susceptibility zonation was implemented according to the cut-off values calculated by the K-means cluster algorithm. The validation results of the model performance analysis showed that the AUC(area under the receiver operating characteristic(ROC) curve) of the proposed model was the highest, reaching 0.88,compared with traditional models(support vector machine(SVM) = 0.85, Bayesian network(BN) = 0.81,frequency ratio(FR) = 0.75, weight of evidence(WOE) = 0.76). The landslide frequency ratio and frequency density of the high susceptibility zones were 6.76/km^(2) and 0.88/km^(2), respectively, which were much higher than those of the low susceptibility zones. The top 20% interval of landslide occurrence probability contained 89% of the historical landslides but only accounted for 10.3% of the total area.Our results indicate that the distribution of high susceptibility zones was more focused without containing more " stable" pixels. Therefore, the obtained susceptibility map is suitable for application to landslide risk management practices. 展开更多
关键词 Landslide susceptibility Frequency ratio c5.0 decision tree K-means cluster Classification Risk management
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FPGA-Based Network Traffic Security: Design and Implementation Using C5.0 Decision Tree Classifier 被引量:2
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作者 Tarek Salah Sobh Mohamed Ibrahiem Amer 《Journal of Electronic Science and Technology》 CAS 2013年第4期393-403,共11页
In this work, a hardware intrusion detection system (IDS) model and its implementation are introduced to perform online real-time traffic monitoring and analysis. The introduced system gathers some advantages of man... In this work, a hardware intrusion detection system (IDS) model and its implementation are introduced to perform online real-time traffic monitoring and analysis. The introduced system gathers some advantages of many IDSs: hardware based from implementation point of view, network based from system type point of view, and anomaly detection from detection approach point of view. In addition, it can detect most of network attacks, such as denial of services (DOS), leakage, etc. from detection behavior point of view and can detect both internal and external intruders from intruder type point of view. Gathering these features in one IDS system gives lots of strengths and advantages of the work. The system is implemented by using field programmable gate array (FPGA), giving a more advantages to the system. A C5.0 decision tree classifier is used as inference engine to the system and gives a high detection ratio of 99.93%. 展开更多
关键词 c5.0 decision tree field programm-able gate array network monitoring network security.
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Effective use of FibroTest to generate decision trees in hepatitis C 被引量:2
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作者 Dana Lau-Corona Luís Alberto Pineda +10 位作者 Héctor Hugo Avilés Gabriela Gutiérrez-Reyes Blanca Eugenia Farfan-Labonne Rafael Núez-Nateras Alan Bonder Rosalinda Martínez-García Clara Corona-Lau Marco Antonio Olivera-Martínez Maria Concepción Gutiérrez-Ruiz Guillermo Robles-Díaz David Kershenobich 《World Journal of Gastroenterology》 SCIE CAS CSCD 2009年第21期2617-2622,共6页
AIM: To assess the usefulness of FibroTest to forecast scores by constructing decision trees in patients with chronic hepatitis C.METHODS: We used the C4.5 classification algorithm to construct decision trees with d... AIM: To assess the usefulness of FibroTest to forecast scores by constructing decision trees in patients with chronic hepatitis C.METHODS: We used the C4.5 classification algorithm to construct decision trees with data from 261 patients with chronic hepatitis C without a liver biopsy. The FibroTest attributes of age, gender, bilirubin, apolipoprotein, haptoglobin, α2 macroglobulin, and γ-glutamyl transpeptidase were used as predictors, and the FibroTest score as the target. For testing, a 10-fold cross validation was used.RESULTS: The overall classification error was 14.9% (accuracy 85.1%). FibroTest's cases with true scores of FO and F4 were classified with very high accuracy (18/20 for FO, 9/9 for FO-1 and 92/96 for F4) and the largest confusion centered on F3. The algorithm produced a set of compound rules out of the ten classification trees and was used to classify the 261 patients. The rules for the classification of patients in FO and F4 were effective in more than 75% of the cases in which they were tested.CONCLUSION: The recognition of clinical subgroups should help to enhance our ability to assess differences in fibrosis scores in clinical studies and improve our understanding of fibrosis progression, 展开更多
关键词 Hepatitis C FibroTest decision trees C4.5algorithm Non-invasive biomarkers
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Forecasting Model of Agro-meteorological Disaster Grade Based on Decision Tree 被引量:2
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作者 司巧梅 《Meteorological and Environmental Research》 CAS 2010年第2期85-87,90,共4页
Based on the discuss of the basic concept of data mining technology and the decision tree method,combining with the data samples of wind and hailstorm disasters in some counties of Mudanjiang region,the forecasting mo... Based on the discuss of the basic concept of data mining technology and the decision tree method,combining with the data samples of wind and hailstorm disasters in some counties of Mudanjiang region,the forecasting model of agro-meteorological disaster grade was established by adopting the C4.5 classification algorithm of decision tree,which can forecast the direct economic loss degree to provide rational data mining model and obtain effective analysis results. 展开更多
关键词 Data mining Agro-meteorology decision tree C4.5 algorithm Classification mining China
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A decision tree based decomposition method for oil refinery scheduling 被引量:2
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作者 Xiaoyong Gao Dexian Huang +1 位作者 Yongheng Jiang Tao Chen 《Chinese Journal of Chemical Engineering》 SCIE EI CAS CSCD 2018年第8期1605-1612,共8页
Refinery scheduling attracts increasing concerns in both academic and industrial communities in recent years.However, due to the complexity of refinery processes, little has been reported for success use in real world... Refinery scheduling attracts increasing concerns in both academic and industrial communities in recent years.However, due to the complexity of refinery processes, little has been reported for success use in real world refineries. In academic studies, refinery scheduling is usually treated as an integrated, large-scale optimization problem,though such complex optimization problems are extremely difficult to solve. In this paper, we proposed a way to exploit the prior knowledge existing in refineries, and developed a decision making system to guide the scheduling process. For a real world fuel oil oriented refinery, ten adjusting process scales are predetermined. A C4.5 decision tree works based on the finished oil demand plan to classify the corresponding category(i.e. adjusting scale). Then,a specific sub-scheduling problem with respect to the determined adjusting scale is solved. The proposed strategy is demonstrated with a scheduling case originated from a real world refinery. 展开更多
关键词 Refinery scheduling decision tree C4.5 Decomposition method
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Research on Scholarship Evaluation System based on Decision Tree Algorithm 被引量:1
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作者 YIN Xiao WANG Ming-yu 《电脑知识与技术》 2015年第3X期11-13,共3页
Under the modern education system of China, the annual scholarship evaluation is a vital thing for many of the collegestudents. This paper adopts the classification algorithm of decision tree C4.5 based on the betteri... Under the modern education system of China, the annual scholarship evaluation is a vital thing for many of the collegestudents. This paper adopts the classification algorithm of decision tree C4.5 based on the bettering of ID3 algorithm and constructa data set of the scholarship evaluation system through the analysis of the related attributes in scholarship evaluation information.And also having found some factors that plays a significant role in the growing up of the college students through analysis and re-search of moral education, intellectural education and culture&PE. 展开更多
关键词 data mining scholarship evaluation system decision tree algorithm C4.5 algorithm
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A New Speculative Execution Algorithm Based on C4.5 Decision Tree for Hadoop
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作者 Yuanzhen Li Qun Yang +1 位作者 Shangqi Lai Bohan Li 《国际计算机前沿大会会议论文集》 2015年第1期83-84,共2页
As a distributed computing platform, Hadoop provides an effective way to handle big data. In Hadoop, the completion time of job will be delayed by a straggler. Although the definitive cause of the straggler is hard to... As a distributed computing platform, Hadoop provides an effective way to handle big data. In Hadoop, the completion time of job will be delayed by a straggler. Although the definitive cause of the straggler is hard to detect, speculative execution is usually used for dealing with this problem, by simply backing up those stragglers on alternative nodes. In this paper, we design a new Speculative Execution algorithm based on C4.5 Decision Tree, SECDT, for Hadoop. In SECDT, we speculate completion time of stragglers and also of backup tasks, based on a kind of decision tree method: C4.5 decision tree. After we speculate the completion time, we compare the completion time of stragglers and of the backup tasks, calculating their differential value, and selecting the straggler with the maximum differential value to start the backup task.Experiment result shows that the SECDT can predict execution time more accurately than other speculative execution methods, hence reduce the job completion time. 展开更多
关键词 SPECULATIVE EXECUTION C4.5 decision TREE HADOOP
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面向乳腺肿瘤的诊前问答系统决策模型构建研究
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作者 王世文 李一凡 +1 位作者 郑群 曹旭晨 《医学信息学杂志》 CAS 2023年第8期54-59,65,共7页
目的/意义运用决策树分类模型模拟专家问诊思路,预测潜在或已有乳腺肿瘤患者的疾病风险。方法/过程采用C 4.5经典分类算法和悲观剪枝法,对调研收集的病例数据进行患者预问诊的结果预测。结果/结论生成一棵以“术后化疗or放疗在院是否结... 目的/意义运用决策树分类模型模拟专家问诊思路,预测潜在或已有乳腺肿瘤患者的疾病风险。方法/过程采用C 4.5经典分类算法和悲观剪枝法,对调研收集的病例数据进行患者预问诊的结果预测。结果/结论生成一棵以“术后化疗or放疗在院是否结束”为根节点、拥有76个叶子节点的C 4.5决策树,预测准确率达95%,并根据分类标签划分为3个风险等级。 展开更多
关键词 乳腺肿瘤 C 4.5算法 决策树 模型构建
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基于模糊C均值聚类和梯度提升决策树的护林员评价方法 被引量:1
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作者 丁鹏 徐爱俊 李义平 《河北农业大学学报》 CAS CSCD 北大核心 2023年第2期125-133,共9页
现有关于基层护林员科学、客观、精准的评价方法的研究十分缺乏,传统的人员绩效评价方法也不适用于护林员巡护情况的评价。本文以中国东南部某县级市的护林员为研究对象,自创1种基于模糊C均值聚类(Fuzzy C-means,FCM)结果和FCM隶属度以... 现有关于基层护林员科学、客观、精准的评价方法的研究十分缺乏,传统的人员绩效评价方法也不适用于护林员巡护情况的评价。本文以中国东南部某县级市的护林员为研究对象,自创1种基于模糊C均值聚类(Fuzzy C-means,FCM)结果和FCM隶属度以及梯度提升决策树相结合的护林员巡护情况评价方法。首先对护林员巡护情况数据集进行Z-Score标准化处理以提高算法的准确率和效率,其次以里程数、考勤率、耗时数和上报事件数为特征变量,使用FCM对巡护情况数据集进行聚类,确定基准月,并使用隶属度评价得分划定法计算基准月护林员评价得分,再通过梯度提升决策树(Gradient boosting decision tree,GBDT)和基准月数据确定研究期内其他月份的护林员评价得分,最后对护林员巡护情况进行综合分析。研究结果表明,该方法可精准、清晰地划定护林员巡护情况评价得分;研究期内护林员整体巡护情况偏差,评价得分≤60分的人数占比较大;常驻护林员在研究期内巡护情况评价得分基本保持不变,偶尔上下波动,毫无提升。本文的方法从实际数据出发,对护林员巡护情况进行针对性的分析,使得护林员管理者可制定科学的管理方案,并以期为护林员巡护情况的评价方法提供新的方向和思路。 展开更多
关键词 护林员 评价方法 得分 模糊C均值聚类 隶属度 梯度提升决策树
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Data mining and well logging interpretation: application to a conglomerate reservoir 被引量:8
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作者 石宁 李洪奇 罗伟平 《Applied Geophysics》 SCIE CSCD 2015年第2期263-272,276,共11页
Data mining is the process of extracting implicit but potentially useful information from incomplete, noisy, and fuzzy data. Data mining offers excellent nonlinear modeling and self-organized learning, and it can play... Data mining is the process of extracting implicit but potentially useful information from incomplete, noisy, and fuzzy data. Data mining offers excellent nonlinear modeling and self-organized learning, and it can play a vital role in the interpretation of well logging data of complex reservoirs. We used data mining to identify the lithologies in a complex reservoir. The reservoir lithologies served as the classification task target and were identified using feature extraction, feature selection, and modeling of data streams. We used independent component analysis to extract information from well curves. We then used the branch-and- bound algorithm to look for the optimal feature subsets and eliminate redundant information. Finally, we used the C5.0 decision-tree algorithm to set up disaggregated models of the well logging curves. The modeling and actual logging data were in good agreement, showing the usefulness of data mining methods in complex reservoirs. 展开更多
关键词 Data mining well logging interpretation independent component analysis branch-and-bound algorithm c5.0 decision tree
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基于ASTER数据的决策树自动构建及分类研究 被引量:19
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作者 李明诗 彭世揆 +1 位作者 周林 马以秀 《国土资源遥感》 CSCD 2006年第3期33-36,42,共5页
在对ASTER原始9个波段数据进行各种变换处理的基础上,采用数量化指标平均可分性方法确定参与分类的最佳特征组合;结合研究区8种主要地物类型训练数据集,分别采用最大似然法、BP神经网络法和基于See 5.0数据挖掘的决策树分类法进行分类,... 在对ASTER原始9个波段数据进行各种变换处理的基础上,采用数量化指标平均可分性方法确定参与分类的最佳特征组合;结合研究区8种主要地物类型训练数据集,分别采用最大似然法、BP神经网络法和基于See 5.0数据挖掘的决策树分类法进行分类,提取主要地物的空间分布专题信息。经过379个野外样点的验证,结果表明:决策树算法分类性能最优,神经网络算法次之,最大似然法效果最差;与ENVI 4.1、ERDAS 8.7提供的传统决策树建立及分类方法比较,基于数据挖掘工具See 5.0和Cart的决策树生成和分类方法具有客观、高效率、分类性能可靠和精度高等优点。 展开更多
关键词 ASTER 杨树 回归树 SEE 5.0 分类
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基于单时相MODIS数据的土地覆盖三种分类方法对比研究 被引量:9
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作者 徐晓桃 韩涛 颉耀文 《干旱地区农业研究》 CSCD 北大核心 2008年第3期253-258,共6页
以甘肃省为试验区,基于单时相MODIS数据,主要利用其可见光多波段光谱信息,分别使用最大似然法、BP神经网络算法以及基于See 5.0数据挖掘的决策树分类方法对土地覆盖进行了自动分类研究,结果验证表明:决策树分类性能最优,总分类精度达到8... 以甘肃省为试验区,基于单时相MODIS数据,主要利用其可见光多波段光谱信息,分别使用最大似然法、BP神经网络算法以及基于See 5.0数据挖掘的决策树分类方法对土地覆盖进行了自动分类研究,结果验证表明:决策树分类性能最优,总分类精度达到82.13%,神经网络算法次之,总分类精度为77.60%,最大似然法最差,总分类精度为73.93%;加入boosting技术的See 5.0数据挖掘决策树方法能够快速地进行决策树的建立且能很好地提高较难识别地物类型的分类精度。 展开更多
关键词 MODIS 最大似然法 BP神经网络 决策树 SEE 5.0 土地覆盖分类
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基于C&R决策树的茶饮料用原料茶初筛方法 被引量:4
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作者 袁海波 邓余良 +6 位作者 滑金杰 李佳 董春旺 杨艳芹 王近近 尹军峰 江用文 《食品科学》 EI CAS CSCD 北大核心 2018年第17期67-72,共6页
对于茶饮料而言,原料茶质量是决定最终产品品质的重要基础。目前对茶饮料用原料茶的筛选,往往需要将其制成产品后进行样本质量的评价,每种原料茶的评价都需要经过茶汤制作、灭菌、感官评价(包括灭菌前、灭菌后、贮藏期等)等一系列复杂... 对于茶饮料而言,原料茶质量是决定最终产品品质的重要基础。目前对茶饮料用原料茶的筛选,往往需要将其制成产品后进行样本质量的评价,每种原料茶的评价都需要经过茶汤制作、灭菌、感官评价(包括灭菌前、灭菌后、贮藏期等)等一系列复杂过程。在进行大规模样本筛选时,此评价需花费大量的时间和精力。为了提升茶饮料用原料茶的筛选效率,本研究分析了不同原料茶制作茶饮料过程中,各阶段的汤色以及与汤色相关的明亮度L、色差-a、b、-a/b值和浊度等指标的变化规律,并结合C&R决策树研究一种利用汤色色度指标针对茶饮料用原料茶的快速初筛方法。利用该方法进行初筛时可将原料茶的筛选范围从62个缩减到44个,减少了29.0%,筛选效率从0.226提高到0.318,提高了40.7%,并且得出灭菌前-a/b>0.475可作为茶饮料用原料茶的一个主要筛选标准。本研究结果能为饮料用原料茶快速筛选方法的建立提供参考。 展开更多
关键词 茶饮料 原料茶 色度 C&R决策树 筛选
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基于决策树的矿产资源潜力制图模型 被引量:5
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作者 戴黎明 陈永良 +2 位作者 周永刚 刘博 楼达 《地球物理学进展》 CSCD 北大核心 2009年第3期1081-1087,共7页
文中提出了一种基于决策树的矿产资源潜力制图模型.应用该模型生成矿产资源潜力分布图分三步完成:第一步,以找矿标志的空间分布图和已知矿点空间分布图为依据,提取训练样本;第二步,根据训练样本构建决策树矿产资源潜力制图模型;第三步,... 文中提出了一种基于决策树的矿产资源潜力制图模型.应用该模型生成矿产资源潜力分布图分三步完成:第一步,以找矿标志的空间分布图和已知矿点空间分布图为依据,提取训练样本;第二步,根据训练样本构建决策树矿产资源潜力制图模型;第三步,生成矿产资源潜力分布图.本文以新疆北部阿尔泰多金属成矿带为研究区,比较了该模型与合成有矿可信度等模型的找矿靶区圈定结果.两种模型的靶区圈定结果基本相同,证明了决策树矿产资源潜力制图模型的有效性. 展开更多
关键词 决策树模型 合成有矿可信度模型 矿产资源潜力制图
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复杂景观环境下土壤厚度分布规则提取与制图 被引量:9
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作者 芦园园 张甘霖 +3 位作者 赵玉国 李德成 杨金玲 刘峰 《农业工程学报》 EI CAS CSCD 北大核心 2014年第18期132-141,共10页
复杂景观环境下,土壤—环境关系知识的获取是预测性土壤制图的基础。为了探究复杂景观下土壤厚度分布与环境条件的关系,该文以黑河上游祁连山区典型小流域为研究区,应用模糊c均值聚类(fuzzy C-means cluster,FCM)和决策树(decision Tree... 复杂景观环境下,土壤—环境关系知识的获取是预测性土壤制图的基础。为了探究复杂景观下土壤厚度分布与环境条件的关系,该文以黑河上游祁连山区典型小流域为研究区,应用模糊c均值聚类(fuzzy C-means cluster,FCM)和决策树(decision Tree,DT)方法,建立了一套获取土壤厚度分布与环境间关系知识的方法。利用2种方法结合获得流域内土壤厚度各分布等级的环境要素关键阈值与土壤-环境关系知识集,将所得环境阈值和知识集进行预测性制图,并通过野外独立样点对制图结果进行精度评价。结果表明:土壤厚度图的总体精度为74.2%,Kappa系数为0.659。该研究将2种方法结合获得了土壤厚度分布对应的土壤环境关键阈值和土壤-环境关系知识集,为复杂景观环境下土壤厚度的预测性制图提供了一种有效的解决方案。 展开更多
关键词 土壤 厚度测定 制图 复杂景观环境 模糊C均值聚类 决策树 土壤环境关键阈值 土壤-环境关系知识
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一种新的支持向量机决策树设计算法 被引量:8
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作者 张先武 郭雷 《火力与指挥控制》 CSCD 北大核心 2010年第10期31-35,共5页
支持向量机决策树的精度和速度取决于树结构。为了获得好的泛化性能,应由可分性强的类为树的上层结点定义分类子任务。提出了一种新的支持向量机决策树设计算法。决策树中每个结点的分类子任务定义规则如下:采用模糊核C-均值将当前训练... 支持向量机决策树的精度和速度取决于树结构。为了获得好的泛化性能,应由可分性强的类为树的上层结点定义分类子任务。提出了一种新的支持向量机决策树设计算法。决策树中每个结点的分类子任务定义规则如下:采用模糊核C-均值将当前训练集粗分为两个子集,然后基于隶属度从各个子集中选择可分性强的子类定义当前结点的分类子任务,并将可分性弱的子类移至下层结点。实验结果表明,该方法的精度和速度都优于其他传统的多类分类方法。 展开更多
关键词 支持向量机 多类分类 模糊核C-均值 决策树
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基于不平衡数据的公司破产预测研究 被引量:3
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作者 周文泳 冯丽霞 段春艳 《同济大学学报(自然科学版)》 EI CAS CSCD 北大核心 2022年第2期283-290,共8页
整合创新数据预处理技术与集成算法利用不平衡数据探讨了公司破产预测问题。首先,运用冗余信息处理方法、不同抽样方法等对不平衡数据进行预处理。其次,以5.0分类器(Classifier 5.0,C5.0)决策树和单隐层前馈神经网络作为基分类器,分别... 整合创新数据预处理技术与集成算法利用不平衡数据探讨了公司破产预测问题。首先,运用冗余信息处理方法、不同抽样方法等对不平衡数据进行预处理。其次,以5.0分类器(Classifier 5.0,C5.0)决策树和单隐层前馈神经网络作为基分类器,分别与三类重抽样数据预处理技术结合,择出最优抽样法。再次,结合自助汇聚法提升分类效果,并运用十折交叉验证的受试者操作特征曲线的下方面积进行评价,对比了两基分类器的集成模型。最后,运用加利福尼亚大学尔湾分校数据库中一万多家波兰制造业公司的实际数据进行实验验证。实验结果表明:欠抽样或人工少数类过采样法与神经网络结合的集成模型分类效果最优,为企业实施破产预测提供积极支撑。 展开更多
关键词 二元分类 不平衡数据 神经网络 c5.0决策树 集成方法
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基于决策树的居民出行模式分析 被引量:2
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作者 李纲 马双 +1 位作者 郭姝娟 左忠义 《大连交通大学学报》 CAS 2016年第5期78-82,共5页
以印度尼西亚首都雅加达都市圈的居民出行调查数据为例,从两方面进行研究:一是研究居民对辅助公共交通的使用情况,二是研究居民对出行模式选择的问题,并对两个子问题分别建立了两个决策树模型.研究结果确定了两个模型的重要影响因素,并... 以印度尼西亚首都雅加达都市圈的居民出行调查数据为例,从两方面进行研究:一是研究居民对辅助公共交通的使用情况,二是研究居民对出行模式选择的问题,并对两个子问题分别建立了两个决策树模型.研究结果确定了两个模型的重要影响因素,并进一步探讨了决策树各节点划分的规律,即揭示了上述各种影响因素的作用规律. 展开更多
关键词 出行模式 决策树 ExhaustiveCHAID 辅助公共交通 雅加达都市圈
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基于决策树的早稻管理专家系统的设计与实现 被引量:1
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作者 傅卓军 黄璜 《计算机与现代化》 2011年第6期139-141,145,共4页
近年来,农业专家系统的迅速发展为水稻生产管理的现代化和信息化提供了新的方法和手段,并在生产中得到了广泛的推广和应用。本文通过使用产生式表示知识规则,并基于决策树的方法进行推理,利用C++Builder实现一个早稻管理专家系统。
关键词 决策树 早稻管理专家系统 知识规则 产生式 C++BUILDER
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基于聚类与决策树的综合入侵检测算法研究 被引量:1
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作者 张会影 《计算机安全》 2010年第9期26-29,共4页
入侵检测是一种通过实时监测目标系统来发现入侵攻击行为的安全技术,传统的入侵检测系统在有效性、适应性和可扩展性方面都存在着不足。为了使模糊聚类算法获得的聚类结果为全局最优解,改进了传统的模糊C-均值算法,并且在每个聚类的数... 入侵检测是一种通过实时监测目标系统来发现入侵攻击行为的安全技术,传统的入侵检测系统在有效性、适应性和可扩展性方面都存在着不足。为了使模糊聚类算法获得的聚类结果为全局最优解,改进了传统的模糊C-均值算法,并且在每个聚类的数据集上建立一棵属于该聚类的C4.5决策树,构造了一种新的综合检测算法来确定是否存在入侵。通过实验结果分析,该检测算法降低了误报率,提高了入侵检测的检测性能以及可靠性。 展开更多
关键词 入侵检测 聚类 模糊C-均值算法 决策树
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