期刊文献+
共找到5篇文章
< 1 >
每页显示 20 50 100
Non-iterative image reconstruction from sparse magnetic resonance imaging radial data without priors
1
作者 Gengsheng L.Zeng Edward V.DiBella 《Visual Computing for Industry,Biomedicine,and Art》 2020年第1期84-91,共8页
The state-of-the-art approaches for image reconstruction using under-sampled k-space data are compressed sensing based.They are iterative algorithms that optimize objective functions with spatial and/or temporal const... The state-of-the-art approaches for image reconstruction using under-sampled k-space data are compressed sensing based.They are iterative algorithms that optimize objective functions with spatial and/or temporal constraints.This paper proposes a non-iterative algorithm to estimate the un-measured data and then to reconstruct the image with the efficient filtered backprojection algorithm.The feasibility of the proposed method is demonstrated with a patient magnetic resonance imaging study.The proposed method is also compared with the state-of-the-art iterative compressed-sensing image reconstruction method using the total-variation optimization norm. 展开更多
关键词 Tomographic image reconstruction under-sampled measurements Fast magnetic resonance imaging Analytics reconstruction
下载PDF
一种基于Under-sampling的BGP异常流量检测方法
2
作者 孙红艳 张红玉 《电子技术(上海)》 2011年第1期10-12,共3页
针对BGP数据中两类样本在分布上的非平衡性,本文引入Under-sampling算法对训练数据集进行预处理,结合SVM学习过程,通过改变SVM中训练集的样本分布来消除非平衡分布带来的不良影响。实验结果表明:引入Under-sampling算法,SVM有更好的分... 针对BGP数据中两类样本在分布上的非平衡性,本文引入Under-sampling算法对训练数据集进行预处理,结合SVM学习过程,通过改变SVM中训练集的样本分布来消除非平衡分布带来的不良影响。实验结果表明:引入Under-sampling算法,SVM有更好的分类效果,能更有效地检测出BGP异常流量。 展开更多
关键词 支持向量机 边界网关协议 异常流量检测 under-samplING
原文传递
Evolutionary under-sampling based bagging ensemble method for imbalanced data classification 被引量:9
3
作者 Bo SUN Haiyan CHEN +1 位作者 Jiandong WANG Hua XIE 《Frontiers of Computer Science》 SCIE EI CSCD 2018年第2期331-350,共20页
In the class imbalanced learning scenario, traditional machine learning algorithms focusing on optimizing the overall accuracy tend to achieve poor classification performance especially for the minority class in which... In the class imbalanced learning scenario, traditional machine learning algorithms focusing on optimizing the overall accuracy tend to achieve poor classification performance especially for the minority class in which we are most interested. To solve this problem, many effective approaches have been proposed. Among them, the bagging ensemble methods with integration of the under-sampling techniques have demonstrated better performance than some other ones including the bagging ensemble methods integrated with the over-sampling techniques, the cost-sensitive methods, etc. Although these under-sampling techniques promote the diversity among the generated base classifiers with the help of random partition or sampling for the majority class, they do not take any measure to ensure the individual classification performance, consequently affecting the achievability of better ensemble performance. On the other hand, evolutionary under-sampling EUS as a novel under- sampling technique has been successfully applied in searching for the best majority class subset for training a good- performance nearest neighbor classifier. Inspired by EUS, in this paper, we try to introduce it into the under-sampling bagging framework and propose an EUS based bagging ensemble method EUS-Bag by designing a new fitness function considering three factors to make EUS better suited to the framework. With our fitness function, EUS-Bag could generate a set of accurate and diverse base classifiers. To verify the effectiveness of EUS-Bag, we conduct a series of comparison experiments on 22 two-class imbalanced classification problems. Experimental results measured using recall, geometric mean and AUC all demonstrate its superior performance. 展开更多
关键词 class imbalanced problem under-samplING BAGGING evolutionary under-sampling ensemble learning machine learning data mining
原文传递
A Hybrid Evolutionary Under-sampling Method for Handling the Class Imbalance Problem with Overlap in Credit Classification
4
作者 Ping Gong Junguang Gao Li Wang 《Journal of Systems Science and Systems Engineering》 SCIE EI CSCD 2022年第6期728-752,共25页
Credit risk assessment is an important task of risk management for financial institutions.Machine learning-based approaches have made promising progress in credit risk assessment by treating it as imbalanced binary cl... Credit risk assessment is an important task of risk management for financial institutions.Machine learning-based approaches have made promising progress in credit risk assessment by treating it as imbalanced binary classification tasks.However,few efforts have been made to deal with the class overlap problem that accompanies imbalances simultaneously.To this end,this study proposes a Tomek link and genetic algorithm(GA)-based under-sampling framework(TEUS)to address the class imbalance and overlap issues in binary credit classification by eliminating majority class instances with considering multi-perspective factors.TEUS first determines boundary majority instances with Tomek link,then take the distance from each majority instance to its nearest boundary as the radius and assigns the density of opposite class samples within the radius as the overlap potential of that majority instance.Second,TEUS weighs each non-borderline majority instance based on its information contribution in estimating class labels.After partitioning non-borderline majority instances into subgroups according to overlap potential and information contribution,TEUS applies GA to select samples from subgroups and merge them with the minority samples into a new training set.Innovatively,the design of the fitness function in GA and the grouping of the non-borderline majority not only trade off the multi-perspective characteristics of instances but also help reduce the computational complexity of the sampling optimization search.Numerical experiments on real-world credit data sets demonstrate the effectiveness of the proposed TEUS. 展开更多
关键词 Imbalance classification credit classification class overlap evolutionary under-sampling genetic algorithm
原文传递
Improved hybrid resampling and ensemble model for imbalance learning and credit evaluation
5
作者 Gang Kou Hao Chen Mohammed A.Hefni 《Journal of Management Science and Engineering》 2022年第4期511-529,共19页
A clustering-based undersampling (CUS) and distance-based near-miss method are widely used in current imbalanced learning algorithms, but this method has certain drawbacks. In particular, the CUS does not consider the... A clustering-based undersampling (CUS) and distance-based near-miss method are widely used in current imbalanced learning algorithms, but this method has certain drawbacks. In particular, the CUS does not consider the influence of the distance factor on the majority of instances, and the near-miss method omits the inter-class(es) within the majority of samples. To overcome these drawbacks, this study proposes an undersampling method combining distance measurement and majority class clustering. Resampling methods are used to develop an ensemble-based imbalanced-learning algorithm called the clustering and distance-based imbalance learning model (CDEILM). This algorithm combines distance-based undersampling, feature selection, and ensemble learning. In addition, a cluster size-based resampling (CSBR) method is proposed for preserving the original distribution of the majority class, and a hybrid imbalanced learning framework is constructed by fusing various types of resampling methods. The combination of CDEILM and CSBR can be considered as a specific case of this hybrid framework. The experimental results show that the CDEILM and CSBR methods can achieve better performance than the benchmark methods, and that the hybrid model provides the best results under most circumstances. Therefore, the proposed model can be used as an alternative imbalanced learning method under specific circumstances, e.g., for providing a solution to credit evaluation problems in financial applications. 展开更多
关键词 Imbalanced learning Clustering-based under-sampling Ensemble methods Hybrid methods Credit risk evaluation
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部