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A Support Data-Based Core-Set Selection Method for Signal Recognition
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作者 Yang Ying Zhu Lidong Cao Changjie 《China Communications》 SCIE CSCD 2024年第4期151-162,共12页
In recent years,deep learning-based signal recognition technology has gained attention and emerged as an important approach for safeguarding the electromagnetic environment.However,training deep learning-based classif... In recent years,deep learning-based signal recognition technology has gained attention and emerged as an important approach for safeguarding the electromagnetic environment.However,training deep learning-based classifiers on large signal datasets with redundant samples requires significant memory and high costs.This paper proposes a support databased core-set selection method(SD)for signal recognition,aiming to screen a representative subset that approximates the large signal dataset.Specifically,this subset can be identified by employing the labeled information during the early stages of model training,as some training samples are labeled as supporting data frequently.This support data is crucial for model training and can be found using a border sample selector.Simulation results demonstrate that the SD method minimizes the impact on model recognition performance while reducing the dataset size,and outperforms five other state-of-the-art core-set selection methods when the fraction of training sample kept is less than or equal to 0.3 on the RML2016.04C dataset or 0.5 on the RML22 dataset.The SD method is particularly helpful for signal recognition tasks with limited memory and computing resources. 展开更多
关键词 core-set selection deep learning model training signal recognition support data
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Real-Time Data Transmission with Data Carrier Support Value in Neighbor Strategic Collection in WSN
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作者 S.Ponnarasi T.Rajendran 《Computers, Materials & Continua》 SCIE EI 2023年第6期6039-6057,共19页
An efficient trust-aware secure routing and network strategy-based data collection scheme is presented in this paper to enhance the performance and security of wireless sensor networks during data collection.The metho... An efficient trust-aware secure routing and network strategy-based data collection scheme is presented in this paper to enhance the performance and security of wireless sensor networks during data collection.The method first discovers the routes between the data sensors and the sink node.Several factors are considered for each sensor node along the route,including energy,number of neighbours,previous transmissions,and energy depletion ratio.Considering all these variables,the Sink Reachable Support Measure and the Secure Communication Support Measure,the method evaluates two distinct measures.The method calculates the data carrier support value using these two metrics.A single route is chosen to collect data based on the value of data carrier support.It has contributed to the design of Secure Communication Support(SCS)Estimation.This has been measured according to the strategy of each hop of the route.The suggested method improves the security and efficacy of data collection in wireless sensor networks.The second stage uses the two-fish approach to build a trust model for secure data transfer.A sim-ulation exercise was conducted to evaluate the effectiveness of the suggested framework.Metrics,including PDR,end-to-end latency,and average residual energy,were assessed for the proposed model.The efficiency of the suggested route design serves as evidence for the average residual energy for the proposed framework. 展开更多
关键词 data carrier support data collection neighbor strategy secure routing wireless sensor network
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Multi-mode process monitoring based on a novel weighted local standardization strategy and support vector data description 被引量:6
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作者 赵付洲 宋冰 侍洪波 《Journal of Central South University》 SCIE EI CAS CSCD 2016年第11期2896-2905,共10页
There are multiple operating modes in the real industrial process, and the collected data follow the complex multimodal distribution, so most traditional process monitoring methods are no longer applicable because the... There are multiple operating modes in the real industrial process, and the collected data follow the complex multimodal distribution, so most traditional process monitoring methods are no longer applicable because their presumptions are that sampled-data should obey the single Gaussian distribution or non-Gaussian distribution. In order to solve these problems, a novel weighted local standardization(WLS) strategy is proposed to standardize the multimodal data, which can eliminate the multi-mode characteristics of the collected data, and normalize them into unimodal data distribution. After detailed analysis of the raised data preprocessing strategy, a new algorithm using WLS strategy with support vector data description(SVDD) is put forward to apply for multi-mode monitoring process. Unlike the strategy of building multiple local models, the developed method only contains a model without the prior knowledge of multi-mode process. To demonstrate the proposed method's validity, it is applied to a numerical example and a Tennessee Eastman(TE) process. Finally, the simulation results show that the WLS strategy is very effective to standardize multimodal data, and the WLS-SVDD monitoring method has great advantages over the traditional SVDD and PCA combined with a local standardization strategy(LNS-PCA) in multi-mode process monitoring. 展开更多
关键词 multiple operating modes weighted local standardization support vector data description multi-mode monitoring
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Use of Data Mining to Support the Development of Knowledge Intensive CAD
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作者 K H Lau C Y Yip Alvin Wong 《厦门大学学报(自然科学版)》 CAS CSCD 北大核心 2002年第S1期201-,共1页
In order to compete in the global manufacturing mar ke t, agility is the only possible solution to response to the fragmented market se gments and frequently changed customer requirements. However, manufacturing agil ... In order to compete in the global manufacturing mar ke t, agility is the only possible solution to response to the fragmented market se gments and frequently changed customer requirements. However, manufacturing agil ity can only be attained through the deployment of knowledge. To embed knowledge into a CAD system to form a knowledge intensive CAD (KIC) system is one of way to enhance the design compatibility of a manufacturing company. The most difficu lt phase to develop a KIC system is to capitalize a huge amount of legacy data t o form a knowledge database. In the past, such capitalization process could only be done solely manually or semi-automatic. In this paper, a five step model fo r automatic design knowledge capitalization through the use of data mining is pr oposed whilst details of how to select, verify and performance benchmarking an a ppropriate data mining algorithm for a specific design task will also be discuss ed. A case study concerning the design of a plastic toaster casing was used as an illustration for the proposed methodology and it was found that the avera ge absolute error of the predictions for the most appropriate algorithm is withi n 17%. 展开更多
关键词 Use of data Mining to support the Development of Knowledge Intensive CAD In KIC
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A Support Vector Regression Approach for Recursive Simultaneous Data Reconciliation and Gross Error Detection in Nonlinear Dynamical Systems 被引量:3
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作者 MIAO Yu SU Hong-Ye CHU Jian 《自动化学报》 EI CSCD 北大核心 2009年第6期707-716,共10页
关键词 数据分析 自动化系统 智能系统 质量数据
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Weight Data Fusion Based on Mutual Support Applied in Large Diameter Measurement 被引量:1
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作者 WANG Biao YU Xiaofen XU Congyu 《Chinese Journal of Mechanical Engineering》 SCIE EI CAS CSCD 2009年第4期562-566,共5页
The on-line diameter measurement of larger axis workpieces is hard to achieve high precision detection, because of the bad environment of locale, the problem to amend the measuring error by non-uniform temperature fie... The on-line diameter measurement of larger axis workpieces is hard to achieve high precision detection, because of the bad environment of locale, the problem to amend the measuring error by non-uniform temperature field, and the difficulty to collimate and locate by usual method. By improving the measurement accuracy of larger axis accessories, it is useful to raise axis and hole's industry produce level. Because of the influence of complex environment in locale and some influential factors which are hard excluded from the large diameter measurement with multi-rolling-wheels method, the measurement results may not support or even contradict each other. To the situation, this paper puts forward a mutual support deviation distinguish data fusion method, including mutual support deviation detection and weight data fusion. The mutual support deviation detection part can effectively remove or weaken the unexpected impact on the measurement results and the weight data fusion part can get more accurate estimate result to the detected data. So the method can further improve the reliability of measurement results and increase the accuracy of the measurement system. By using the weight data fusion based on the mutual support (DFMS) to the simulation and experiment data, both simulation results and experiment results show that the method can effectively distinguish the data influenced by unexpected impact and improve the stability and reliability of measurement results. The new provided mutual support deviation distinguish method can be used to single sensor measurement and multi-sensor measurement, and can be used as a reference in the data distinguish of other area. The DFMS is helpful to realize the diameter measurement expanded uncertainty in 5 ×10^-6D or even higher when the measured axis workpiece's diameter is 1-5 m ( 1 m ≤ D ≤5 m ). 展开更多
关键词 MULTI-SENSOR mutual support weight factor data fusion rolling-wheel
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Multimode Process Monitoring Based on the Density-Based Support Vector Data Description
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作者 郭红杰 王帆 +2 位作者 宋冰 侍洪波 谭帅 《Journal of Donghua University(English Edition)》 EI CAS 2017年第3期342-348,共7页
Complex industry processes often need multiple operation modes to meet the change of production conditions. In the same mode,there are discrete samples belonging to this mode. Therefore,it is important to consider the... Complex industry processes often need multiple operation modes to meet the change of production conditions. In the same mode,there are discrete samples belonging to this mode. Therefore,it is important to consider the samples which are sparse in the mode.To solve this issue,a new approach called density-based support vector data description( DBSVDD) is proposed. In this article,an algorithm using Gaussian mixture model( GMM) with the DBSVDD technique is proposed for process monitoring. The GMM method is used to obtain the center of each mode and determine the number of the modes. Considering the complexity of the data distribution and discrete samples in monitoring process,the DBSVDD is utilized for process monitoring. Finally,the validity and effectiveness of the DBSVDD method are illustrated through the Tennessee Eastman( TE) process. 展开更多
关键词 multimode process monitoring Gaussian mixture model(GMM) density-based support vector data description(DBSVDD)
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Data assimilation using support vector machines and ensemble Kalman filter for multi-layer soil moisture prediction
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作者 Di LIU Zhong-bo YU Hai-shen LV 《Water Science and Engineering》 EI CAS 2010年第4期361-377,共17页
Hybrid data assimilation (DA) is a method seeing more use in recent hydrology and water resources research. In this study, a DA method coupled with the support vector machines (SVMs) and the ensemble Kalman filter... Hybrid data assimilation (DA) is a method seeing more use in recent hydrology and water resources research. In this study, a DA method coupled with the support vector machines (SVMs) and the ensemble Kalman filter (EnKF) technology was used for the prediction of soil moisture in different soil layers: 0-5 cm, 30 cm, 50 cm, 100 cm, 200 cm, and 300 cm. The SVM methodology was first used to train the ground measurements of soil moisture and meteorological parameters from the Meilin study area, in East China, to construct soil moisture statistical prediction models. Subsequent observations and their statistics were used for predictions, with two approaches: the SVM predictor and the SVM-EnKF model made by coupling the SVM model with the EnKF technique using the DA method. Validation results showed that the proposed SVM-EnKF model can improve the prediction results of soil moisture in different layers, from the surface to the root zone. 展开更多
关键词 data assimilation support vector machines ensemble Kalman filter soil moisture
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Data Selection Using Support Vector Regression
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作者 Michael B.RICHMAN Lance M.LESLIE +1 位作者 Theodore B.TRAFALIS Hicham MANSOURI 《Advances in Atmospheric Sciences》 SCIE CAS CSCD 2015年第3期277-286,共10页
Geophysical data sets are growing at an ever-increasing rate,requiring computationally efficient data selection (thinning) methods to preserve essential information.Satellites,such as WindSat,provide large data sets... Geophysical data sets are growing at an ever-increasing rate,requiring computationally efficient data selection (thinning) methods to preserve essential information.Satellites,such as WindSat,provide large data sets for assessing the accuracy and computational efficiency of data selection techniques.A new data thinning technique,based on support vector regression (SVR),is developed and tested.To manage large on-line satellite data streams,observations from WindSat are formed into subsets by Voronoi tessellation and then each is thinned by SVR (TSVR).Three experiments are performed.The first confirms the viability of TSVR for a relatively small sample,comparing it to several commonly used data thinning methods (random selection,averaging and Barnes filtering),producing a 10% thinning rate (90% data reduction),low mean absolute errors (MAE) and large correlations with the original data.A second experiment,using a larger dataset,shows TSVR retrievals with MAE < 1 m s-1 and correlations ≥ 0.98.TSVR was an order of magnitude faster than the commonly used thinning methods.A third experiment applies a two-stage pipeline to TSVR,to accommodate online data.The pipeline subsets reconstruct the wind field with the same accuracy as the second experiment,is an order of magnitude faster than the nonpipeline TSVR.Therefore,pipeline TSVR is two orders of magnitude faster than commonly used thinning methods that ingest the entire data set.This study demonstrates that TSVR pipeline thinning is an accurate and computationally efficient alternative to commonly used data selection techniques. 展开更多
关键词 data selection data thinning machine learning support vector regression Voronoi tessellation pipeline methods
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Optimization of support vector machine power load forecasting model based on data mining and Lyapunov exponents 被引量:7
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作者 牛东晓 王永利 马小勇 《Journal of Central South University》 SCIE EI CAS 2010年第2期406-412,共7页
According to the chaotic and non-linear characters of power load data,the time series matrix is established with the theory of phase-space reconstruction,and then Lyapunov exponents with chaotic time series are comput... According to the chaotic and non-linear characters of power load data,the time series matrix is established with the theory of phase-space reconstruction,and then Lyapunov exponents with chaotic time series are computed to determine the time delay and the embedding dimension.Due to different features of the data,data mining algorithm is conducted to classify the data into different groups.Redundant information is eliminated by the advantage of data mining technology,and the historical loads that have highly similar features with the forecasting day are searched by the system.As a result,the training data can be decreased and the computing speed can also be improved when constructing support vector machine(SVM) model.Then,SVM algorithm is used to predict power load with parameters that get in pretreatment.In order to prove the effectiveness of the new model,the calculation with data mining SVM algorithm is compared with that of single SVM and back propagation network.It can be seen that the new DSVM algorithm effectively improves the forecast accuracy by 0.75%,1.10% and 1.73% compared with SVM for two random dimensions of 11-dimension,14-dimension and BP network,respectively.This indicates that the DSVM gains perfect improvement effect in the short-term power load forecasting. 展开更多
关键词 LYAPUNOV指数 电力负荷预测 数据挖掘算法 支持向量机 模型 SVM算法 混沌时间序列 相空间重构理论
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Linked Data Based Framework for Tourism Decision Support System: Case Study of Chinese Tourists in Switzerland
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作者 Zhan Liu Anne Le Calvé +3 位作者 Fabian Cretton Nicole Glassey Balet Maria Sokhn Nicolas Délétroz 《Journal of Computer and Communications》 2015年第5期118-126,共9页
Switzerland is one of the most desirable European destinations for Chinese tourists;therefore, a better understanding of Chinese tourists is essential for successful business practices. In China, the largest and leadi... Switzerland is one of the most desirable European destinations for Chinese tourists;therefore, a better understanding of Chinese tourists is essential for successful business practices. In China, the largest and leading social media platform—Sina Weibo, a hybrid of Twitter and Facebook—has more than 600 million users. Weibo’s great market penetration suggests that tourism operators and markets need to understand how to build effective and sustainable communications on Chinese social media platforms. In order to offer a better decision support platform to tourism destination managers as well as Chinese tourists, we proposed a framework using linked data on Sina Weibo. Linked Data is a term referring to using the Internet to connect related data. We will show how it can be used and how ontology can be designed to include the users’ context (e.g., GPS locations). Our framework will provide a good theoretical foundation for further understand Chinese tourists’ expectation, experiences, behaviors and new trends in Switzerland. 展开更多
关键词 Linked data SEMANTIC Web Decision support System Natural Language Processing BEHAVIORS Analysis Social Networks Chinese TOURIST Switzerland New TRENDS SINA Weibo
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基于深度自回归模型的电网异常流量检测算法
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作者 李勇 韩俊飞 +2 位作者 李秀芬 王鹏 王蓓 《沈阳工业大学学报》 CAS 北大核心 2024年第1期24-28,共5页
针对电网中行为种类复杂多样且数量众多的问题,提出了一种基于自回归模型的电网异常流量检测算法。该算法利用深度自编码网络自动提取网络流量数据的特征,降低异常流量检测的分析周期,并自动挖掘数据的层次关系。通过支持向量机对提取... 针对电网中行为种类复杂多样且数量众多的问题,提出了一种基于自回归模型的电网异常流量检测算法。该算法利用深度自编码网络自动提取网络流量数据的特征,降低异常流量检测的分析周期,并自动挖掘数据的层次关系。通过支持向量机对提取的特征进行分类,实现对异常流量的检测。仿真实验结果表明,所提算法可以分析不同攻击向量,避免噪声数据的干扰,进而提高电网异常流量检测的精度,对于流量数据处理具有重要意义。 展开更多
关键词 自回归模型 深度学习 异常检测 海量数据 分析周期 支持向量机
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Data fusion for fault diagnosis using multi-class Support Vector Machines 被引量:1
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作者 胡中辉 蔡云泽 +1 位作者 李远贵 许晓鸣 《Journal of Zhejiang University-Science A(Applied Physics & Engineering)》 SCIE EI CAS CSCD 2005年第10期1030-1039,共10页
Multi-source multi-class classification methods based on multi-class Support Vector Machines and data fusion strategies are proposed in this paper. The centralized and distributed fusion schemes are applied to combine... Multi-source multi-class classification methods based on multi-class Support Vector Machines and data fusion strategies are proposed in this paper. The centralized and distributed fusion schemes are applied to combine information from several data sources. In the centralized scheme, all information from several data sources is centralized to construct an input space. Then a multi-class Support Vector Machine classifier is trained. In the distributed schemes, the individual data sources are proc-essed separately and modelled by using the multi-class Support Vector Machine. Then new data fusion strategies are proposed to combine the information from the individual multi-class Support Vector Machine models. Our proposed fusion strategies take into account that an Support Vector Machine (SVM) classifier achieves classification by finding the optimal classification hyperplane with maximal margin. The proposed methods are applied for fault diagnosis of a diesel engine. The experimental results showed that almost all the proposed approaches can largely improve the diagnostic accuracy. The robustness of diagnosis is also improved because of the implementation of data fusion strategies. The proposed methods can also be applied in other fields. 展开更多
关键词 数据融合 错误诊断 支撑向量 柴油机 输入空间
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基于多元统计分析的小样本数据预测模型设计
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作者 刘俊娟 宋学坤 《计算机仿真》 2024年第4期480-484,共5页
若小样本数据预测误差较大,会直接影响数据应用效果,为提升小样本数据预测精度,提出基于多元统计分析的小样本数据预测模型设计方法。将小样本数据放入SPSS软件中,结合自助法完成小样本数据的经验分布分析。基于样本数据经验分布特征,... 若小样本数据预测误差较大,会直接影响数据应用效果,为提升小样本数据预测精度,提出基于多元统计分析的小样本数据预测模型设计方法。将小样本数据放入SPSS软件中,结合自助法完成小样本数据的经验分布分析。基于样本数据经验分布特征,结合具备学习能力的Fisherface算法对小样本上数据实施预分类,建立测试样本类别标签,实现小样本数据的特征提取。通过多元统计分析数据特征的主元成分,确定模型回归函数,结合支持向量机构建数据预测模型,通过上述模型完成小样本数据的精准预测。实验结果表明,使用上述方法开展小样本数据预测时,预测误差较低,效率较高,说明其预测效果较好。 展开更多
关键词 多元统计分析 小样本数据 预测模型 支持向量机
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期刊论文支撑数据FAIR原则的应用评估与案例分析
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作者 刘桂锋 王清炫 韩牧哲 《现代情报》 北大核心 2024年第2期17-29,共13页
[目的/意义]FAIR原则在科技期刊的应用有助于增强期刊论文支撑数据的可发现、交互、共享与重用。评估FAIR实施情况有利于其推广实施,以期为我国期刊论文的支撑数据共享与重用提供有益参考。[方法/过程]本文在国外FAIR原则评估模型的基础... [目的/意义]FAIR原则在科技期刊的应用有助于增强期刊论文支撑数据的可发现、交互、共享与重用。评估FAIR实施情况有利于其推广实施,以期为我国期刊论文的支撑数据共享与重用提供有益参考。[方法/过程]本文在国外FAIR原则评估模型的基础上,综合考虑各模型的优势和指标设计特点,结合《数据分析与知识发现》期刊论文相关的科学数据特征,构建FAIR原则指标评价体系,基于该体系从4个维度分析调研结果,最后对中文期刊论文的支撑数据FAIR应用提出合理化建议与优化策略。[结果/结论]FAIR原则在期刊论文支撑数据的应用仍需进一步完善,科研人员的数据共享意识及对于FAIR原则的认知度远远不够,建议从宏观和微观两个层面推广FAIR原则及其实施,推动数据更加开放和可重用。 展开更多
关键词 FAIR原则 期刊论文 支撑数据 数据管理 数据科学 应用评估 案例分析
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基于融合模型的联合站能耗优化技术研究
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作者 高岩 《石油石化节能与计量》 CAS 2024年第4期36-40,共5页
联合站是油田集输系统中的耗能大户,为降低生产运行能耗,在收集和整理现场SCADA(数据采集与监视控制系统)数据的基础上,对数据进行完整性、重复值和异常值校验,利用箱线图识别超过工况范畴的异常值,对缺失值采用三次样条曲线进行重构,... 联合站是油田集输系统中的耗能大户,为降低生产运行能耗,在收集和整理现场SCADA(数据采集与监视控制系统)数据的基础上,对数据进行完整性、重复值和异常值校验,利用箱线图识别超过工况范畴的异常值,对缺失值采用三次样条曲线进行重构,再对能耗影响因素进行相关性分析,并代入支持向量机模型建立吨液综合能耗和影响因素之间的非线性关系,最后采用粒子群算法实现联合站能耗的持续优化。结果表明:利用中位数替代异常值和三次样条曲线重构缺失值,对于数据清洗的效果较好,清洗后数据完整性大幅提升;加热炉耗气量和处理液量对吨液综合能耗的影响较大,说明热力消耗在能耗中的占比较大;优化后,联合站的单位液量气耗、单位液量电耗、单位液量综合能耗均有所下降,预计全年节约运行费用26.6万元。研究结果可为联合站运行方案的制定提供实际参考。 展开更多
关键词 清洗数据 数据校验 支持向量机 粒子群算法 单位液量综合能耗
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基于空间投影和聚类划分的SVR加速算法
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作者 王梅 张天时 +1 位作者 王志宝 任怡果 《计算机技术与发展》 2024年第4期24-29,共6页
数据不仅能产生价值,还对统计学的科学发展提供了动力。随着科技的飞速发展,海量数据得以涌现,但大规模的数据会导致很多传统处理方法很难满足各领域对数据分析的需求。面对海量数据时代学习算法的低效性,分治法通常被认为是解决这一问... 数据不仅能产生价值,还对统计学的科学发展提供了动力。随着科技的飞速发展,海量数据得以涌现,但大规模的数据会导致很多传统处理方法很难满足各领域对数据分析的需求。面对海量数据时代学习算法的低效性,分治法通常被认为是解决这一问题最直接、最广泛使用的策略。SVR是一种强大的回归算法,在模式识别和数据挖掘等领域有广泛应用。然而在处理大规模数据时,SVR训练效率低。为此,该文利用分治思想提出一种基于空间投影和聚类划分的SVR加速算法(PKM-SVR)。利用投影向量将数据投影到二维空间;利用聚类方法将数据空间划分为k个互不相交的区域;在每个区域上训练SVR模型;利用每个区域的SVR模型预测落入同一区域的待识别样本。在标准数据集上与传统的数据划分方法进行对比实验,实验结果表明该算法训练速度较快,并表现出更好的预测性能。 展开更多
关键词 大规模数据 分治法 支持向量回归 主成分分析 聚类
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近红外光谱融合电子鼻数据对烟叶产地判别研究
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作者 汪阳忠 张鑫 +6 位作者 蔡振波 黄雯 费婷 吴达 张旭峰 孟祥周 束茹欣 《河南师范大学学报(自然科学版)》 CAS 北大核心 2024年第2期104-110,共7页
基于烟叶近红外光谱、Heracles电子鼻及二者的融合数据,建立了云南、河南、福建和吉林4个省份的烟叶产地识别模型以及河南省内漯河、南阳、平顶山、许昌和驻马店5个地级市的烟叶产地识别模型.对于地理位置相距比较远的不同省份的烟叶,... 基于烟叶近红外光谱、Heracles电子鼻及二者的融合数据,建立了云南、河南、福建和吉林4个省份的烟叶产地识别模型以及河南省内漯河、南阳、平顶山、许昌和驻马店5个地级市的烟叶产地识别模型.对于地理位置相距比较远的不同省份的烟叶,基于单一数据源就可以建立准确率比较高的产地识别模型.对于河南省内5个地级市的烟叶,其地理位置相距近,气候变化小,烟叶相似性高,仅基于单一信息源的数据,该产地识别模型的准确率偏低.为了提高河南省内5个地级市烟叶产地识别的准确率,将烟叶近红外光谱数据与Heracles电子鼻数据进行融合,由于增加了烟叶数据信息量,这5个产地的识别效果明显提升,其留一法内部交叉验证准确率为98.26%,高于数据融合前单一数据源判别模型的86.96%.研究表明Heracles电子鼻数据可以在不同的数据维度上,对近红外光谱数据进行信息量补充,为烟草品种溯源、质量监测、市场监督等方面提供新思路. 展开更多
关键词 近红外光谱 Heracles电子鼻 数据融合 支持向量机
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面向电力设备异常检测的深度自编码支持向量数据描述模型研究
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作者 耿波 潘曙辉 董晓旭 《湖南电力》 2024年第1期119-127,共9页
针对深度自编码支持向量数据描述模型对电力设备部分异常区分能力不足的问题,提出自监督混合专家增强的深度自编码支持向量数据描述模型,构造多种自监督变换数据集模拟潜在未知异常,引入自监督分类和掩码重构任务以学习更具区分性的表... 针对深度自编码支持向量数据描述模型对电力设备部分异常区分能力不足的问题,提出自监督混合专家增强的深度自编码支持向量数据描述模型,构造多种自监督变换数据集模拟潜在未知异常,引入自监督分类和掩码重构任务以学习更具区分性的表示。此外,将编码器部分改造为混合专家模型结构,将数据分配给不同专家子模块进行专业化的学习,使异常决策边界更清晰。在4个公开数据集和3个电厂设备数据集上的实验结果证实了自监督学习和混合专家模型的有效性。 展开更多
关键词 异常检测 深度自编码支持向量数据描述 自监督学习 混合专家模型
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年龄视角下家庭结构转变对农村老人代际支持的影响
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作者 王萍 张楠 +1 位作者 尚锦云 李逸明 《南方人口》 2024年第1期18-32,共15页
本文采用“安徽省农村老年人生活福利状况”2001-2018年7期专项追踪调查数据,聚焦年龄效应构建个体增长模型,深入探究年龄视角下家庭结构转变对农村老人代际支持的动态影响。结果表明,代际支持策略随家庭结构而异,同时该策略会因老人年... 本文采用“安徽省农村老年人生活福利状况”2001-2018年7期专项追踪调查数据,聚焦年龄效应构建个体增长模型,深入探究年龄视角下家庭结构转变对农村老人代际支持的动态影响。结果表明,代际支持策略随家庭结构而异,同时该策略会因老人年龄调节而有所调整。其中,随年龄调节,“变为独居”老人会为子女提供更多经济支持;“一直二代及以上同住”老人与其子女间情感亲密越差;“变为二代及以上同住”老人逐渐获得更多日常照料;“一直隔代同住”与“变为隔代同住”老人会得到子女更高水平经济支持,并减少照料支持提供。结果揭示了在老龄化与城市化并行推进的背景下,家庭养老在农村的主体地位仍牢固,巩固家庭养老的主体地位对缓解农村社会养老压力意义深远;揭示了社会应重视不同家庭结构老人的群体异质性,提倡老人接受符合其养老期待的差异化社会养老服务;揭示了孝道观念深刻根植于子女内心并不断驱使其改进代际支持策略,通过两代人的不同支持行为,利用各自优势实现需求互补,这对促进家庭代际和谐至关重要。 展开更多
关键词 农村老人 家庭结构转变 代际支持 年龄视角 追踪数据
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