首页 | 本学科首页   官方微博 | 高级检索  
     

联合低秩表示与图嵌入的无监督特征选择
引用本文:滕少华,冯镇业,滕璐瑶,房小兆.联合低秩表示与图嵌入的无监督特征选择[J].广东工业大学学报,2019,36(5):7-13.
作者姓名:滕少华  冯镇业  滕璐瑶  房小兆
作者单位:广东工业大学 计算机学院,广东 广州,510006;维多利亚大学 应用信息中心, 维多利亚州 墨尔本 VIC 3011
基金项目:国家自然科学基金资助项目(61702110,61772141);广东省教育厅项目(粤教高函〔2018〕179号);广州市科技计划项目(201802010042)
摘    要:大数据应用带来高维数据急剧增加,数据降维已成为重要问题.特征选择降维方法已广泛应用于模式识别领域,近年来提出了许多基于流形学习的特征选择方法,然而这类方法往往容易受到各种噪声影响.对此,本文提出一种联合低秩表示和图嵌入的高效无监督特征选择方法(JLRRGE).通过低秩表示寻找数据在低秩子空间下的表示,降低噪声的影响从而提高算法的鲁棒性,并通过自适应图嵌入方法,使选择特征保持原有的局部关系.实验结果表明,本文提出算法的分类准确率优于其他对比算法.

关 键 词:无监督学习  低秩表示  图嵌入  特征选择
收稿时间:2019-03-25

Joint Low-Rank Representation and Graph Embedding for Unsupervised Feature Selection
Teng Shao-hua,Feng Zhen-ye,Teng Lu-yao,Fang Xiao-zhao.Joint Low-Rank Representation and Graph Embedding for Unsupervised Feature Selection[J].Journal of Guangdong University of Technology,2019,36(5):7-13.
Authors:Teng Shao-hua  Feng Zhen-ye  Teng Lu-yao  Fang Xiao-zhao
Affiliation:1. School of Computers, Guangdong University of Technology, Guangzhou 510006, China;2. Centre for Applied Informatics, Victoria University, Melbourne VIC 3011, Australia
Abstract:Dimensionality reduction becomes a significant problem due to the proliferation of high dimensional data. For dimensionality reduction, feature selection is more analytical than feature extraction. Therefore feature selection plays an important role in pattern recognition. In recent years, many feature selection methods based on manifold learning have been proposed. However, such methods are susceptible to noise data. Therefore, an efficient unsupervised feature selection method is proposed-joint low-rank representation and graph embedding for unsupervised feature selection (JLRRGE). This method not only finds the low rank structure of the data after selecting feature, which makes the algorithm more robust, but also preserves the local manifold structure of the data through the adaptive graph embedding. The experimental results show that the proposed algorithm is superior to other compared methods.
Keywords:unsupervised learning  low rank representation  graph embedding  feature selection  
本文献已被 万方数据 等数据库收录!
点击此处可从《广东工业大学学报》浏览原始摘要信息
点击此处可从《广东工业大学学报》下载全文
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号