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Robust data envelopment analysis based MCDM with the consideration of uncertain data 被引量:2
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作者 Ke Wang Fajie Wei 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2010年第6期981-989,共9页
The application of data envelopment analysis (DEA) as a multiple criteria decision making (MCDM) technique has been gaining more and more attention in recent research. In the practice of applying DEA approach, the... The application of data envelopment analysis (DEA) as a multiple criteria decision making (MCDM) technique has been gaining more and more attention in recent research. In the practice of applying DEA approach, the appearance of uncertainties on input and output data of decision making unit (DMU) might make the nominal solution infeasible and lead to the efficiency scores meaningless from practical view. This paper analyzes the impact of data uncertainty on the evaluation results of DEA, and proposes several robust DEA models based on the adaptation of recently developed robust optimization approaches, which would be immune against input and output data uncertainties. The robust DEA models developed are based on input-oriented and outputoriented CCR model, respectively, when the uncertainties appear in output data and input data separately. Furthermore, the robust DEA models could deal with random symmetric uncertainty and unknown-but-bounded uncertainty, in both of which the distributions of the random data entries are permitted to be unknown. The robust DEA models are implemented in a numerical example and the efficiency scores and rankings of these models are compared. The results indicate that the robust DEA approach could be a more reliable method for efficiency evaluation and ranking in MCDM problems. 展开更多
关键词 data envelopment analysis (DEA) multiple criteria decision making (MCDM) robust optimization uncertain data EFFICIENCY ranking.
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Top-k Outlier Detection from Uncertain Data 被引量:2
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作者 Salman Ahmed Shaikh Hiroyuki Kitagawa 《International Journal of Automation and computing》 EI CSCD 2014年第2期128-142,共15页
Uncertain data are common due to the increasing usage of sensors, radio frequency identification(RFID), GPS and similar devices for data collection. The causes of uncertainty include limitations of measurements, inclu... Uncertain data are common due to the increasing usage of sensors, radio frequency identification(RFID), GPS and similar devices for data collection. The causes of uncertainty include limitations of measurements, inclusion of noise, inconsistent supply voltage and delay or loss of data in transfer. In order to manage, query or mine such data, data uncertainty needs to be considered. Hence,this paper studies the problem of top-k distance-based outlier detection from uncertain data objects. In this work, an uncertain object is modelled by a probability density function of a Gaussian distribution. The naive approach of distance-based outlier detection makes use of nested loop. This approach is very costly due to the expensive distance function between two uncertain objects. Therefore,a populated-cells list(PC-list) approach of outlier detection is proposed. Using the PC-list, the proposed top-k outlier detection algorithm needs to consider only a fraction of dataset objects and hence quickly identifies candidate objects for top-k outliers. Two approximate top-k outlier detection algorithms are presented to further increase the efficiency of the top-k outlier detection algorithm.An extensive empirical study on synthetic and real datasets is also presented to prove the accuracy, efficiency and scalability of the proposed algorithms. 展开更多
关键词 Top-k distance-based outlier detection uncertain data Gaussian uncertainty cell-based approach PC-list based approach
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Scheduling for Uncertain Data Broadcast in Mobile Networks 被引量:1
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作者 许华杰 李国徽 +1 位作者 胡小明 余艳玮 《Journal of Southwest Jiaotong University(English Edition)》 2009年第3期192-198,共7页
With the increasing popularity of wireless sensor network and GPS ( global positioning system), uncertain data as a new type of data brings a new challenge for the traditional data processing methods. Data broadcast... With the increasing popularity of wireless sensor network and GPS ( global positioning system), uncertain data as a new type of data brings a new challenge for the traditional data processing methods. Data broadcast is an effective means for data dissemination in mobile networks. In this paper, the def'mition of the mean uncertainty ratio of data is presented and a broadcasting scheme is proposed for uncertain data dissemination. Simulation results show that the scheme can reduce the uncertainty of the broadcasted uncertain data effectively at the cost of a minor increase in data access time, in the case of no transmission error and presence of transmission errors. As a result, lower uncertainty of data benefits the qualifies of the query results based on the data. 展开更多
关键词 Mobile networks uncertain data BROADCAST SCHEDULING
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Attribute Level Lineage in Uncertain Data with Dependencies
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作者 WANG Liang WANG Liwei PENG Zhiyong 《Wuhan University Journal of Natural Sciences》 CAS CSCD 2016年第5期376-386,共11页
In uncertain data management, lineages are often used for probability computation of result tuples. However, most of existing works focus on tuple level lineage, which results in imprecise data derivation. Besides, co... In uncertain data management, lineages are often used for probability computation of result tuples. However, most of existing works focus on tuple level lineage, which results in imprecise data derivation. Besides, correlations among attributes cannot be captured. In this paper, for base tuples with multiple uncertain attributes, we define attribute level annotation to annotate each attribute. Utilizing these annotations to generate lineages of result tuples can realize more precise derivation. Simultaneously,they can be used for dependency graph construction. Utilizing dependency graph, we can represent not only constraints on schemas but also correlations among attributes. Combining the dependency graph and attribute level lineage, we can correctly compute probabilities of result tuples and precisely derivate data. In experiments, comparing lineage on tuple level and attribute level, it shows that our method has advantages on derivation precision and storage cost. 展开更多
关键词 uncertain data attribute level lineage DEPENDENCY
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Supporting Various Top-k Queries over Uncertain Datasets
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作者 LI Wenfeng FU Zufa +2 位作者 WANG Liwei LI Deyi PENG Zhiyong 《Wuhan University Journal of Natural Sciences》 CAS 2014年第1期84-92,共9页
There have been many researches and semantics in answering top-k queries on uncertain data in various applications. However, most of these semantics must consume much of their time in computing position probability. O... There have been many researches and semantics in answering top-k queries on uncertain data in various applications. However, most of these semantics must consume much of their time in computing position probability. Our approach to support various top-k queries is based on position probability distribution (PPD) sharing. In this paper, a PPD-tree structure and several basic operations on it are proposed to support various top-k queries. In addition, we proposed an approximation method to improve the efficiency of PPD generation. We also verify the effectiveness and efficiency of our approach by both theoretical analysis and experiments. 展开更多
关键词 top-k queries uncertain data position probability distribution
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Estimation of Parameters of Boundary Value Problems for Linear Ordinary Differential Equations with Uncertain Data
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作者 Yury Shestopalov Yury Podlipenko Olexandr Nakonechnyi 《Advances in Pure Mathematics》 2014年第4期118-146,共29页
In this paper we construct optimal, in certain sense, estimates of values of linear functionals on solutions to two-point boundary value problems (BVPs) for systems of linear first-order ordinary differential equation... In this paper we construct optimal, in certain sense, estimates of values of linear functionals on solutions to two-point boundary value problems (BVPs) for systems of linear first-order ordinary differential equations from observations which are linear transformations of the same solutions perturbed by additive random noises. It is assumed here that right-hand sides of equations and boundary data as well as statistical characteristics of random noises in observations are not known and belong to certain given sets in corresponding functional spaces. This leads to the necessity of introducing minimax statement of an estimation problem when optimal estimates are defined as linear, with respect to observations, estimates for which the maximum of mean square error of estimation taken over the above-mentioned sets attains minimal value. Such estimates are called minimax mean square or guaranteed estimates. We establish that the minimax mean square estimates are expressed via solutions of some systems of differential equations of special type and determine estimation errors. 展开更多
关键词 Optimal Minimax Mean Square Estimates uncertain data Two-Point Boundary Value Problems Random Noises Observations
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Top-k probabilistic prevalent co-location mining in spatially uncertain data sets 被引量:5
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作者 Lizhen WANG Jun HAN +1 位作者 Hongmei CHEN Junli LU 《Frontiers of Computer Science》 SCIE EI CSCD 2016年第3期488-503,共16页
A co-location pattern is a set of spatial features whose instances frequently appear in a spatial neighborhood. This paper efficiently mines the top-k probabilistic prevalent co-locations over spatially uncertain data... A co-location pattern is a set of spatial features whose instances frequently appear in a spatial neighborhood. This paper efficiently mines the top-k probabilistic prevalent co-locations over spatially uncertain data sets and makes the following contributions: 1) the concept of the top-k prob- abilistic prevalent co-locations based on a possible world model is defined; 2) a framework for discovering the top- k probabilistic prevalent co-locations is set up; 3) a matrix method is proposed to improve the computation of the preva- lence probability of a top-k candidate, and two pruning rules of the matrix block are given to accelerate the search for ex- act solutions; 4) a polynomial matrix is developed to further speed up the top-k candidate refinement process; 5) an ap- proximate algorithm with compensation factor is introduced so that relatively large quantity of data can be processed quickly. The efficiency of our proposed algorithms as well as the accuracy of the approximation algorithms is evaluated with an extensive set of experiments using both synthetic and real uncertain data sets. 展开更多
关键词 spatial co-location mining top-k probabilistic prevalent co-location mining spatially uncertain data sets matrix methods
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Continuous Outlier Monitoring on Uncertain Data Streams 被引量:1
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作者 曹科研 王国仁 +3 位作者 韩东红 丁国辉 王爱侠 石凌旭 《Journal of Computer Science & Technology》 SCIE EI CSCD 2014年第3期436-448,共13页
Outlier detection on data streams is an important task in data mining. The challenges become even larger when considering uncertain data. This paper studies the problem of outlier detection on uncertain data streams. ... Outlier detection on data streams is an important task in data mining. The challenges become even larger when considering uncertain data. This paper studies the problem of outlier detection on uncertain data streams. We propose Continuous Uncertain Outlier Detection (CUOD), which can quickly determine the nature of the uncertain elements by pruning to improve the efficiency. Furthermore, we propose a pruning approach -- Probability Pruning for Continuous Uncertain Outlier Detection (PCUOD) to reduce the detection cost. It is an estimated outlier probability method which can effectively reduce the amount of calculations. The cost of PCUOD incremental algorithm can satisfy the demand of uncertain data streams. Finally, a new method for parameter variable queries to CUOD is proposed, enabling the concurrent execution of different queries. To the best of our knowledge, this paper is the first work to perform outlier detection on uncertain data streams which can handle parameter variable queries simultaneously. Our methods are verified using both real data and synthetic data. The results show that they are able to reduce the required storage and running time. 展开更多
关键词 outlier detection uncertain data stream data mining parameter variable query
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Mining Frequent Itemsets in Correlated Uncertain Databases 被引量:1
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作者 童咏昕 陈雷 余洁莹 《Journal of Computer Science & Technology》 SCIE EI CSCD 2015年第4期696-712,共17页
Recently, with the growing popularity of Internet of Things (IoT) and pervasive computing, a large amount of uncertain data, e.g., RFID data, sensor data, real-time video data, has been collected. As one of the most... Recently, with the growing popularity of Internet of Things (IoT) and pervasive computing, a large amount of uncertain data, e.g., RFID data, sensor data, real-time video data, has been collected. As one of the most fundamental issues of uncertain data mining, uncertain frequent pattern mining has attracted much attention in database and data mining communities. Although there have been some solutions for uncertain frequent pattern mining, most of them assume that the data is independent, which is not true in most real-world scenarios. Therefore, current methods that are based on the independent assumption may generate inaccurate results for correlated uncertain data. In this paper, we focus on the problem of mining frequent itemsets over correlated uncertain data, where correlation can exist in any pair of uncertain data objects (transactions). We propose a novel probabilistic model, called Correlated Frequent Probability model (CFP model) to represent the probability distribution of support in a given correlated uncertain dataset. Based on the distribution of support derived from the CFP model, we observe that some probabilistic frequent itemsets are only frequent in several transactions with high positive correlation. In particular, the itemsets, which are global probabilistic frequent, have more significance in eliminating the influence of the existing noise and correlation in data. In order to reduce redundant frequent itemsets, we further propose a new type of patterns, called global probabilistic frequent itemsets, to identify itemsets that are always frequent in each group of transactions if the whole correlated uncertain database is divided into disjoint groups based on their correlation. To speed up the mining process, we also design a dynamic programming solution, as well as two pruning and bounding techniques. Extensive experiments on both real and synthetic datasets verify the effectiveness and e?ciency of the proposed model and algorithms. 展开更多
关键词 CORRELATION uncertain data probabilistic frequent itemset
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Robust H_∞ controller design for sampled-data systems with parametric uncertainties
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作者 Liu Fuchun Yao Yu He Fenahua 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2009年第2期371-378,共8页
This article investigates the problem of robust H∞ controller design for sampled-data systems with time-varying norm-bounded parameter uncertainties in the state matrices. Attention is focused on the design of a caus... This article investigates the problem of robust H∞ controller design for sampled-data systems with time-varying norm-bounded parameter uncertainties in the state matrices. Attention is focused on the design of a causal sampled-data controller, which guarantees the asymptotical stability of the closed-loop system and reduces the effect of the disturbance input on the controlled output to a prescribed H∞ performance bound for all admissible uncertainties. Sufficient condition for the solvability of the problem is established in terms of linear matrix inequalities (LMIs). It is shown that the desired H∞ controller can be constructed by solving certain LMIs. An illustrative example is given to demonstrate the effectiveness of the proposed method. 展开更多
关键词 H∞ control sampled-data systems uncertain systems linear matrix inequality
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Robust H_2 control for uncertain sampled-data systems
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作者 Xie Weinan Ma Guangcheng Wang Changhong 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2009年第1期172-177,共6页
A new approach is proposed for robust H2 problem of uncertain sampled-data systems. Through introducing a free variable, a new Lyapunov asymptotical stability criterion with less conservativeness is established. Based... A new approach is proposed for robust H2 problem of uncertain sampled-data systems. Through introducing a free variable, a new Lyapunov asymptotical stability criterion with less conservativeness is established. Based on this criterion, some sufficient conditions on two classes of robust H2 problems for uncertain sampled-data control systems axe presented through a set of coupled linear matrix inequalities. Finally, the less conservatism and potential of the developed results are illustrated via a numerical example. 展开更多
关键词 sampled-data systems H2 performance uncertain systems LMI optimization.
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ROBUST CONTROL WITH COVARIANCE CONSTRAINT FOR UNCERTAIN SAMPLED-DATA FEEDBACK CONTROL SYSTEMS
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作者 霍沛军 王子栋 《Journal of Shanghai Jiaotong university(Science)》 EI 1999年第1期32-38,44,共8页
The problem of robust controller design with covariance constraint for uncertain sampled data feedback control systems was considered in this paper. The goal of this problem is to design controllers such that the clo... The problem of robust controller design with covariance constraint for uncertain sampled data feedback control systems was considered in this paper. The goal of this problem is to design controllers such that the closed loop system meets the prespecified covariance constraint. This problem can be reduced to a controller design problem for an equivalent uncertain discrete time system. Sufficient conditions were given for the existence of the desired controllers. The analytical expression of the set of desired controllers was also presented. An illustrative example was given to show the applicability of the proposed design procedure. 展开更多
关键词 ROBUST CONTROL uncertain SYSTEMS continuous time SYSTEMS sampled data FEEDBACK CONTROL system COVARIANCE CONTROL intersample behaviour
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ROBUST FILTERS WITH SAMPLED-DATA ESTIMATION COVARANCE CONSTRAINT FOR UNCERTAIN CONTINUOUS-TIME SYSTEMS
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作者 霍沛军 王子栋 郭治 《Journal of Shanghai Jiaotong university(Science)》 EI 1999年第1期39-44,共6页
This paper was concerned with the problem of robust sampled data state estimation for uncertain continuous time systems. A sampled data estimation covariance is given by taking intersample behaviour into account. T... This paper was concerned with the problem of robust sampled data state estimation for uncertain continuous time systems. A sampled data estimation covariance is given by taking intersample behaviour into account. The primary purpose of this paper is to design robust discrete time Kalman filters such that the sampled data estimation covariance is not more than a prespecified value, and therefore the error variances achieve the desired constraints. It is shown that the addressed problem can be converted into a similar problem for a fictitious discrete time system. The existence conditions and the explicit expression of desired filters were both derived. Finally, a simple example was presented to demonstrate the effectiveness of the proposed design procedure. 展开更多
关键词 uncertain SYSTEMS continuous time SYSTEMS ROBUST FILTERS sampled data ESTIMATION covariance intersample behaviour
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数据与知识协同驱动的知识发现:概念、机理与模型
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作者 姚苏梅 陆泉 《情报学报》 北大核心 2025年第3期282-295,共14页
知识发现是应对海量数据和复杂问题挑战,促进科学研究和技术进步,并提高决策支持能力的重要情报理论。“数据”和“知识”是图书馆学、情报学和档案学的核心命题,数据驱动或知识驱动的知识发现是数据密集型或知识密集型情境下解决情报... 知识发现是应对海量数据和复杂问题挑战,促进科学研究和技术进步,并提高决策支持能力的重要情报理论。“数据”和“知识”是图书馆学、情报学和档案学的核心命题,数据驱动或知识驱动的知识发现是数据密集型或知识密集型情境下解决情报学研究问题的重要手段,但普遍存在的缺陷数据和不确定性知识降低了上述方法的有效性。协同驱动则通过数据和知识的交叉互补,为实现新知识发现提供了创新性的解决途径。当前,对于协同驱动方法的全面和深入分析尚显不足。本文主要目的是按照“是什么”“为什么”和“怎么做”的认知逻辑,梳理数据与知识协同驱动知识发现的基本概念、机理和模型3个方面。首先,提出数据与知识协同驱动知识发现的基本概念,剖析作为该概念重要组成部分的缺陷数据和不确定性知识新概念的含义。其次,机理部分探讨了数据融入知识驱动知识发现和知识融入数据驱动知识发现双视角下协同驱动的多途径和多目的,从数据与知识的交叉互补解释协同驱动知识发现功能实现的本质原因与运作机理。最后,提出问题和场景导向的数据与知识协同驱动知识发现基本模型,并从知识驱动为主(构建模式、纠错模式)、数据驱动为主(嵌入模式、纠正模式和引导模式)和其他协同驱动知识发现(混合模式和并发模式)3类重点阐述了协同驱动内部建模的典型模式。数据与知识协同驱动的知识发现和多种协同驱动的模式兼顾了数据与知识的相互补充和协同作用,为知识发现提供了更全面的框架和流程,为信息资源管理学科拓展了方法创新与问题解决思路。 展开更多
关键词 数据与知识协同驱动 缺陷数据 不确定知识 知识发现 协同机理 协同模式
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基于双缓冲区的概念漂移检测方法
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作者 李盟 温伍正宏 潘甦 《计算机技术与发展》 2025年第3期103-108,共6页
在数据分析中概念漂移问题是经常发生的,这导致了模型不能适应数据分布的动态变化。针对如何处理流数据中的概念漂移这一问题进行了研究,以提高数据分析性能。为此,在在线序列极限学习机(OS-ELM)与漂移检测方法(DDM)结合(DDM-OS-ELM)的... 在数据分析中概念漂移问题是经常发生的,这导致了模型不能适应数据分布的动态变化。针对如何处理流数据中的概念漂移这一问题进行了研究,以提高数据分析性能。为此,在在线序列极限学习机(OS-ELM)与漂移检测方法(DDM)结合(DDM-OS-ELM)的基础上,提出了双缓冲区(缓冲区A和缓冲区B)方法。DDM-OS-ELM通过结合漂移检测机制和在线序列极限学习机来处理概念漂移,这种方法在检测到概念漂移时就会触发模型更新,在检测过程中,通过双缓冲区解决概念漂移的问题。缓冲区A是解决发生概念漂移后数据量不足导致无法重新训练模型这一问题;缓冲区B收集发生概念漂移后的数据,使模型适应概念漂移后的数据分布。实验结果表明,利用双缓冲区不仅可以减少模型更新次数,还提高了模型预测的精度。 展开更多
关键词 概念漂移 双缓冲区 在线序列极限学习机 漂移检测机制 不确定数据流
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采样数据系统稳定性分析的采样周期划分方法
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作者 陈飞鹏 陈刚 +1 位作者 殷大鑫 李昌新 《湖南工业大学学报》 2026年第1期40-47,共8页
针对通信时延不确定环境下网络化采样控制系统的稳定性问题,提出将采样区间分割为两个子区间,并利用双边闭环函数方法在两个子区间内分别用独特的双边闭环循环泛函,然后加入几个考虑系统状态向量内在关系的零等式,并利用自由矩阵积分不... 针对通信时延不确定环境下网络化采样控制系统的稳定性问题,提出将采样区间分割为两个子区间,并利用双边闭环函数方法在两个子区间内分别用独特的双边闭环循环泛函,然后加入几个考虑系统状态向量内在关系的零等式,并利用自由矩阵积分不等式技术,以线性矩阵不等式(LMI)的形式得到了保守性较低的稳定性判据。最后,通过数值算例对得到的稳定性判据进行验证,仿真结果表明了该方法的有效性和优越性。 展开更多
关键词 采样系统 采样区间分割 不确定数据传输时滞 自由矩阵积分不等式
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基于不确定性时延感知的配电网云边卸载方法 被引量:1
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作者 文艳 李立生 +4 位作者 刘明林 李帅 文祥宇 房牧 李建修 《电网与清洁能源》 北大核心 2025年第1期82-88,共7页
在新型电力系统场景下,边缘计算与云计算互为补充,有效实现了配电网多业务数据的高效传输与处理。有效的云边卸载策略能够进一步提升网络服务质量,但由于云边卸载过程中突发干扰、紧急任务处理等因素所引起的时延不确定性,导致现有技术... 在新型电力系统场景下,边缘计算与云计算互为补充,有效实现了配电网多业务数据的高效传输与处理。有效的云边卸载策略能够进一步提升网络服务质量,但由于云边卸载过程中突发干扰、紧急任务处理等因素所引起的时延不确定性,导致现有技术在实际场景中不适用。提出了一种配电网多业务数据云边卸载框架以及系统模型;基于该系统模型,以最小化不确定性的卸载总时延为目标,将问题描述为随机组合优化问题,并提出基于不确定性时延感知的配电网云边协同数据卸载策略。实验结果表明,与现有的两种数据卸载方法相比,所提方法的时延分别降低了38.47%和23.87%。 展开更多
关键词 配电网 云边卸载 不确定性时延感知 多业务差异化需求
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大数据背景下培养拓扑专业研究生从“打实专业基础”到“引领交叉研究”的探索
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作者 马利文 《首都师范大学学报(自然科学版)》 2025年第5期83-90,共8页
针对理论数学专业,以拓扑学专业的研究生培养为例,旨在探讨在大数据背景下,如何构建一套既能巩固拓扑学专业基础,又能引领在当前大数据时代信息领域进行交叉学科研究的研究生培养模式。通过回顾拓扑学的历史发展及其在现代科学中的地位... 针对理论数学专业,以拓扑学专业的研究生培养为例,旨在探讨在大数据背景下,如何构建一套既能巩固拓扑学专业基础,又能引领在当前大数据时代信息领域进行交叉学科研究的研究生培养模式。通过回顾拓扑学的历史发展及其在现代科学中的地位,分析目前拓扑学研究生教育的现状及存在的问题,结合传统与创新的教学方法,提出了一套从“打实专业基础”到“引领交叉研究”的研究生培养模式;阐述了相关交叉学科研究在拓扑学领域的重要性,以及目前开展交叉研究的各个方向和成功案例;最后,通过总结研究经验和不足之处,对未来的拓扑学研究生教育提出了建议和展望。希冀对于指导拓扑学及相关理论数学领域的研究生教育者具有借鉴价值。 展开更多
关键词 拓扑学 交叉研究 不确定集理论 拓扑数据分析 最优化理论
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不确定大数据流分类的决策树模型构建仿真 被引量:1
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作者 杨知玲 谭树杰 《计算机仿真》 2024年第5期532-535,542,共5页
在不确定大数据流分类过程中,受噪声和孤立点的干扰,导致处理效果和分类精度无法达到预期要求。为解决上述问题,提出一种基于决策树模型的不确定大数据流分类算法。通过采用在线字典学习算法,对不确定大数据流去噪处理,消除噪声对分类... 在不确定大数据流分类过程中,受噪声和孤立点的干扰,导致处理效果和分类精度无法达到预期要求。为解决上述问题,提出一种基于决策树模型的不确定大数据流分类算法。通过采用在线字典学习算法,对不确定大数据流去噪处理,消除噪声对分类过程产生的干扰。构建决策树,在剪枝过程中通过特征过滤算法,滤除不确定大数据流中掺杂的孤立点。将去噪后的不确定大数据流,输入决策树模型中,完成分类工作。实验结果表明,所提算法处理后的不确定大数据流振幅明显减小,且分类精度高,具有一定的应用价值。 展开更多
关键词 决策树模型 在线字典学习算法 特征过滤 不确定大数据流 数据分类
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海战场环境影响评估方法
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作者 李明 张韧 +2 位作者 陈希 刘宇航 王波 《指挥控制与仿真》 2024年第5期155-160,共6页
海战场环境是制约海上武器装备效能发挥和遂行海上军事行动的重要条件。准确的海战场环境影响评估是提升海上作战能力和战场建设的重要“软实力”。首先对海战场环境及其影响评估进行简要介绍;随后综述了海战场环境影响评估方法和建模技... 海战场环境是制约海上武器装备效能发挥和遂行海上军事行动的重要条件。准确的海战场环境影响评估是提升海上作战能力和战场建设的重要“软实力”。首先对海战场环境及其影响评估进行简要介绍;随后综述了海战场环境影响评估方法和建模技术,梳理为四类:基于动力学仿真的评估方法、基于决策科学的评估方法、基于数据科学的评估方法和基于不确定性人工智能的评估方法,并对上述方法进行了详细阐述;最后对不同方法进行了对比分析和应用展望。 展开更多
关键词 海战场环境 影响评估方法 决策科学 数据科学 不确定性人工智能
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