Feature-Label Modal Alignment for Robust Partial Multi-Label Learning
About
In partial multi-label learning (PML), each instance is associated with a set of candidate labels containing both ground-truth and noisy labels. The presence of noisy labels disrupts the correspondence between features and labels, degrading classification performance. To address this challenge, we propose a novel PML method based on feature-label modal alignment (PML-MA), which treats features and labels as two complementary modalities and restores their consistency through systematic alignment. Specifically, PML-MA first employs low-rank orthogonal decomposition to generate pseudo-labels that approximate the true label distribution by filtering noisy labels. It then aligns features and pseudo-labels through both global projection into a common subspace and local preservation of neighborhood structures. Finally, a multi-peak class prototype learning mechanism leverages the multi-label nature where instances simultaneously belong to multiple categories, using pseudo-labels as soft membership weights to enhance discriminability. By integrating modal alignment with prototype-guided refinement, PML-MA ensures pseudo-labels better reflect the true distribution while maintaining robustness against label noise. Extensive experiments on both real-world and synthetic datasets demonstrate that PML-MA significantly outperforms state-of-the-art methods, achieving superior classification accuracy and noise robustness.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Partial Multi-Label Learning | EMOTIONS | Average Precision81.4 | 48 | |
| Partial Multi-Label Learning | Birds | Average Precision63.4 | 48 | |
| Partial Multi-Label Learning | Image | Average Precision82 | 48 | |
| Partial Multi-Label Learning | Yeast | Average Precision75.8 | 39 | |
| Partial Multi-Label Learning | Yeast | Ranking Loss0.171 | 37 | |
| Partial Multi-Label Learning | reference | Hamming Loss0.025 | 36 | |
| Partial Multi-Label Learning | Arts | Average Precision60.8 | 36 | |
| Partial Multi-Label Learning | reference | Average Precision69.3 | 36 | |
| Partial Multi-Label Learning | Arts | One-error48.5 | 36 | |
| Partial Multi-Label Learning | reference | One-error37.8 | 36 |