Feature selection for label distribution learning via feature similarity and label correlation

2022 ◽  
Vol 582 ◽  
pp. 38-59
Author(s):  
Wenbin Qian ◽  
Yinsong Xiong ◽  
Jun Yang ◽  
Wenhao Shu
2021 ◽  
Vol 128 ◽  
pp. 32-55
Author(s):  
Wenbin Qian ◽  
Jintao Huang ◽  
Yinglong Wang ◽  
Yonghong Xie

Author(s):  
Tingting Ren ◽  
Xiuyi Jia ◽  
Weiwei Li ◽  
Shu Zhao

Label distribution learning (LDL) can be viewed as the generalization of multi-label learning. This novel paradigm focuses on the relative importance of different labels to a particular instance. Most previous LDL methods either ignore the correlation among labels, or only exploit the label correlations in a global way. In this paper, we utilize both the global and local relevance among labels to provide more information for training model and propose a novel label distribution learning algorithm. In particular, a label correlation matrix based on low-rank approximation is applied to capture the global label correlations. In addition, the label correlation among local samples are adopted to modify the label correlation matrix. The experimental results on real-world data sets show that the proposed algorithm outperforms state-of-the-art LDL methods.


2020 ◽  
Vol 195 ◽  
pp. 105684
Author(s):  
Wenbin Qian ◽  
Jintao Huang ◽  
Yinglong Wang ◽  
Wenhao Shu

2020 ◽  
Vol 34 (04) ◽  
pp. 5932-5939
Author(s):  
Haoyu Tang ◽  
Jihua Zhu ◽  
Qinghai Zheng ◽  
Jun Wang ◽  
Shanmin Pang ◽  
...  

Compared with single-label and multi-label annotations, label distribution describes the instance by multiple labels with different intensities and accommodates to more-general conditions. Nevertheless, label distribution learning is unavailable in many real-world applications because most existing datasets merely provide logical labels. To handle this problem, a novel label enhancement method, Label Enhancement with Sample Correlations via low-rank representation, is proposed in this paper. Unlike most existing methods, a low-rank representation method is employed so as to capture the global relationships of samples and predict implicit label correlation to achieve label enhancement. Extensive experiments on 14 datasets demonstrate that the algorithm accomplishes state-of-the-art results as compared to previous label enhancement baselines.


2019 ◽  
pp. 389
Author(s):  
زينب عبدالأمير ◽  
علياء كريم عبدالحسن

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