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Masked Two-channel Decoupling Framework for Incomplete Multi-view Weak Multi-label Learning

About

Multi-view learning has become a popular research topic in recent years, but research on the cross-application of classic multi-label classification and multi-view learning is still in its early stages. In this paper, we focus on the complex yet highly realistic task of incomplete multi-view weak multi-label learning and propose a masked two-channel decoupling framework based on deep neural networks to solve this problem. The core innovation of our method lies in decoupling the single-channel view-level representation, which is common in deep multi-view learning methods, into a shared representation and a view-proprietary representation. We also design a cross-channel contrastive loss to enhance the semantic property of the two channels. Additionally, we exploit supervised information to design a label-guided graph regularization loss, helping the extracted embedding features preserve the geometric structure among samples. Inspired by the success of masking mechanisms in image and text analysis, we develop a random fragment masking strategy for vector features to improve the learning ability of encoders. Finally, it is important to emphasize that our model is fully adaptable to arbitrary view and label absences while also performing well on the ideal full data. We have conducted sufficient and convincing experiments to confirm the effectiveness and advancement of our model.

Chengliang Liu, Jie Wen, Yabo Liu, Chao Huang, Zhihao Wu, Xiaoling Luo, Yong Xu• 2024

Related benchmarks

TaskDatasetResultRank
Multi-view Multi-label ClassificationCorel5k 50% missing (test)
1-HL98.8
20
Incomplete Multi-view Multi-label Class Incremental LearningMIRFLICKR
Last CF122.34
17
Incomplete Multi-view Multi-label Class Incremental LearningESPGame
Last CF10.95
17
Incomplete Multi-view Multi-label Class Incremental LearningIAPRTC12
Last CF11.23
17
Multi-view Multi-label ClassificationMirflickr 50% missing (test)
1-HL89.3
10
Multi-view Multi-label ClassificationIAPRTC12 50% missing (test)
1-HL0.981
10
Player Potential PredictionNBA FMR=70%, LMR=70%
1-HL Score89.1
10
Player Potential PredictionNBA FMR=50%, LMR=50%
HL (Level 1)0.898
10
Player Potential PredictionNBA FMR=90%, LMR=90%
1-HL87.9
10
Multi-view Multi-label ClassificationESPGame 50% missing (test)
HL (Label 1)0.983
10
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