Semi-supervised feature selection analysis with structured multi-view sparse regularization

2019 ◽  
Vol 330 ◽  
pp. 412-424 ◽  
Author(s):  
Caijuan Shi ◽  
Changyu Duan ◽  
Zhibin Gu ◽  
Qi Tian ◽  
Gaoyun An ◽  
...  
Author(s):  
Dharmendra Singh Rajput ◽  
Aditya Prakash Singh ◽  
Yukta Agarwal ◽  
Praveen Kumar Reddy ◽  
G Thippa Reddy

2019 ◽  
Vol 340 ◽  
pp. 76-89
Author(s):  
Jiashuai Zhang ◽  
Jianyu Miao ◽  
Kun Zhao ◽  
Yingjie Tian

Author(s):  
Yao Zhang ◽  
Yingcang Ma ◽  
Xiaofei Yang

Like traditional single label learning, multi-label learning is also faced with the problem of dimensional disaster.Feature selection is an effective technique for dimensionality reduction and learning efficiency improvement of high-dimensional data. In this paper, Logistic regression, manifold learning and sparse regularization were combined to construct a joint framework for multi-label feature selection (LMFS). Firstly, the sparsity of the eigenweight matrix is constrained by the $L_{2,1}$-norm. Secondly, the feature manifold and label manifold can constrain the feature weight matrix to make it fit the data information and label information better. An iterative updating algorithm is designed and the convergence of the algorithm is proved.Finally, the LMFS algorithm is compared with DRMFS, SCLS and other algorithms on eight classical multi-label data sets. The experimental results show the effectiveness of LMFS algorithm.


2017 ◽  
Vol 51 ◽  
pp. 39-48 ◽  
Author(s):  
Seyyid Ahmed Medjahed ◽  
Tamazouzt Ait Saadi ◽  
Abdelkader Benyettou ◽  
Mohammed Ouali

Author(s):  
Joyce S. A. Lozano-Aguilar ◽  
Jose M. Celaya-Padilla ◽  
Hamurabi Gamboa-Rosales ◽  
Huizilopoztli Luna-Garcia ◽  
Carlos E. Galvan-Tejada ◽  
...  

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