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Poster Session 3 · Thursday, December 4, 2025 11:00 AM → 2:00 PM
#2611 Spotlight

Theory-Driven Label-Specific Representation for Incomplete Multi-View Multi-Label Learning

NeurIPS Poster OpenReview

Abstract

Multi-view multi-label learning typically suffers from dual data incompleteness due to limitations in feature storage and annotation costs. The interplay of heterogeneous features, numerous labels, and missing information significantly degrades model performance.
To tackle the complex yet highly practical challenges, we propose a Theory-Driven Label-Specific Representation (TDLSR) framework. Through constructing the view-specific sample topology and prototype association graph, we develop the proximity-aware imputation mechanism, while deriving class representatives that capture the label correlation semantics.
To obtain semantically distinct view representations, we introduce principles of information shift, interaction and orthogonality, which promotes the disentanglement of representation information, and mitigates message distortion and redundancy. Besides, labelsemantic-guided feature learning is employed to identify the discriminative shared and specific representations and refine the label preference across views.
Moreover, we theoretically investigate the characteristics of representation learning and the generalization performance. Finally, extensive experiments on public datasets and real-world applications validate the effectiveness of TDLSR.
Poster