首页 | 本学科首页   官方微博 | 高级检索  
     

稀疏限制的增量式鲁棒非负矩阵分解及其应用
引用本文:杨亮东,杨志霞.稀疏限制的增量式鲁棒非负矩阵分解及其应用[J].计算机应用,2019,39(5):1275-1281.
作者姓名:杨亮东  杨志霞
作者单位:新疆大学数学与系统科学学院,乌鲁木齐,830046;新疆大学数学与系统科学学院,乌鲁木齐,830046
基金项目:国家自然科学基金资助项目(11561066)。
摘    要:针对鲁棒非负矩阵分解(RNMF)的运算规模随训练样本数量逐渐增多而不断增大的问题,提出一种稀疏限制的增量式鲁棒非负矩阵分解算法。首先,对初始数据进行鲁棒非负矩阵分解;然后,将其分解结果参与到后续迭代运算;最后,在对系数矩阵增加稀疏限制的情况下与增量式学习相结合,使目标函数值在迭代求解时下降地更快。该算法在节省运算时间的同时提高了分解后数据的稀疏度。在数值实验中,将所提算法与鲁棒非负矩阵分解算法、稀疏限制的鲁棒非负矩阵分解(RNMFSC)算法进行了比较。在ORL和YALE人脸数据库上的实验结果表明,所提算法在运算时间和分解后数据的稀疏度等方面均优于其他两个算法,并且还具有较好的聚类效果,尤其在YALE人脸数据库上当聚类类别数为3时该算法的聚类准确率达到了91.67%。

关 键 词:增量式学习  非负矩阵分解  稀疏限制  聚类  人脸识别
收稿时间:2018-10-09
修稿时间:2018-12-21

Incremental robust non-negative matrix factorization with sparseness constraints and its application
YANG Liangdong,YANG Zhixia.Incremental robust non-negative matrix factorization with sparseness constraints and its application[J].journal of Computer Applications,2019,39(5):1275-1281.
Authors:YANG Liangdong  YANG Zhixia
Affiliation:College of Mathematics and System Science, Xinjiang University, Urumqi Xinjiang 830046, China
Abstract:Aiming at the problem that the operation scale of Robust Non-negative Matrix Factorization (RNMF) increases with the number of training samples, an incremental robust non-negative matrix factorization algorithm with sparseness constraints was proposed. Firstly, robust non-negative matrix factorization was performed on initial data. Then, the factorized result participated in the subsequent iterative operation. Finally, with sparseness constraints, the coefficient matrix was combined with incremental learning, which made the objective function value fall faster in the iterative solution. The cost of computation was reduced and the sparseness of data after factorization was improved. In the numerical experiments, the proposed algorithm was compared with RNMF algorithm and RNMF with Sparseness Constraints (RNMFSC) algorithm. The experimental results on ORL and YALE face databases show that the proposed algorithm is superior to the other two algorithms in terms of operation time and sparseness of factorized data, and has better clustering effect, especially in YALE face database, when the clustering number is 3, the clustering accuracy of the proposed algorithm reaches 91.67%.
Keywords:incremental learning                                                                                                                        Non-negative Matrix Factorization (NMF)                                                                                                                        sparseness constraint                                                                                                                        clustering                                                                                                                        face recognition
本文献已被 维普 万方数据 等数据库收录!
点击此处可从《计算机应用》浏览原始摘要信息
点击此处可从《计算机应用》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