Adaptive Weighted LSSVM for Multi-View Classification
About
Multi-view learning integrates diverse representations of the same instances to improve performance. Most existing kernel-based multi-view learning methods use fusion techniques without enforcing an explicit collaboration type across views or co-regularization which limits global collaboration. We propose AW-LSSVM, an adaptive weighted LS-SVM that promotes complementary learning by an iterative global coupling to make each view focus on hard samples of others from previous iterations. Experiments demonstrate that AW-LSSVM outperforms existing kernel-based multi-view methods on most datasets, while keeping raw features isolated, making it also suitable for privacy-preserving scenarios.
Farnaz Faramarzi Lighvan, Mehrdad Asadi, Lynn Houthuys• 2025
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Multi-view Classification | ACM (test) | Balanced Accuracy85.44 | 11 | |
| Multi-view Classification | MSRC (test) | Balanced Accuracy99.21 | 11 | |
| Multi-view Classification | Caltech (test) | Balanced Accuracy86.29 | 11 | |
| Multi-view Classification | NUSWIDE (test) | Balanced Accuracy47.22 | 11 | |
| Multi-view Classification | ProteinFold (test) | Balanced Accuracy80.67 | 11 | |
| Multi-view Classification | 3Sources (test) | Balanced Accuracy81.64 | 11 | |
| Multi-view Classification | Cora (test) | Balanced Accuracy58.67 | 11 | |
| Multi-view Classification | Prokaryotic (test) | Balanced Accuracy80.3 | 11 | |
| Multi-view Classification | Flower (test) | Balanced Accuracy0.8633 | 10 |
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