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Incomplete Multi-View Multi-Label Classification via Shared Codebook and Fused-Teacher Self-Distillation

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Although multi-view multi-label learning has been extensively studied, research on the dual-missing scenario, where both views and labels are incomplete, remains largely unexplored. Existing methods mainly rely on contrastive learning or information bottleneck theory to learn consistent representations under missing-view conditions, but loss-based alignment without explicit structural constraints limits the ability to capture stable and discriminative shared semantics. To address this issue, we introduce a more structured mechanism for consistent representation learning: we learn discrete consistent representations through a multi-view shared codebook and cross-view reconstruction, which naturally align different views within the limited shared codebook embeddings and reduce feature redundancy. At the decision level, we design a weight estimation method that evaluates the ability of each view to preserve label correlation structures, assigning weights accordingly to enhance the quality of the fused prediction. In addition, we introduce a fused-teacher self-distillation framework, where the fused prediction guides the training of view-specific classifiers and feeds the global knowledge back into the single-view branches, thereby enhancing the generalization ability of the model under missing-label conditions. The effectiveness of our proposed method is thoroughly demonstrated through extensive comparative experiments with advanced methods on five benchmark datasets. Code is available at https://github.com/xuy11/SCSD.

Xu Yan, Jun Yin, Shiliang Sun, Minghua Wan• 2026

Related benchmarks

TaskDatasetResultRank
Multi-view Multi-label ClassificationCorel5k
AP44.7
9
Multi-view Multi-label ClassificationPascal 07
AP57.8
9
Multi-view Multi-label ClassificationESPGame
AP34.5
9
Multi-view Multi-label ClassificationIaprtc 12
AP38.5
9
Multi-view Multi-label ClassificationMIRFLICKR
AP63.4
9
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