Variation-Bounded Loss for Noise-Tolerant Learning
About
Mitigating the negative impact of noisy labels has been aperennial issue in supervised learning. Robust loss functions have emerged as a prevalent solution to this problem. In this work, we introduce the Variation Ratio as a novel property related to the robustness of loss functions, and propose a new family of robust loss functions, termed Variation-Bounded Loss (VBL), which is characterized by a bounded variation ratio. We provide theoretical analyses of the variation ratio, proving that a smaller variation ratio would lead to better robustness. Furthermore, we reveal that the variation ratio provides a feasible method to relax the symmetric condition and offers a more concise path to achieve the asymmetric condition. Based on the variation ratio, we reformulate several commonly used loss functions into a variation-bounded form for practical applications. Positive experiments on various datasets exhibit the effectiveness and flexibility of our approach.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| 3D Semantic Occupancy Prediction | OccNL Moderate Noise 1.0 (test) | IoU37.41 | 6 | |
| 3D Occupancy Prediction | SemanticKITTI OccNL, sequence 08, 90% noise (val) | IoU21.12 | 6 | |
| 3D Semantic Occupancy Prediction | OccNL Mild Noise 1.0 (test) | Overall IoU37.21 | 6 | |
| 3D Semantic Occupancy Prediction | OccNL Severe Noise 1.0 (test) | IoU37.27 | 6 | |
| 3D Occupancy Prediction | SemanticKITTI OccNL sequence 08 70% noise (val) | IoU (Overall)33.2 | 6 | |
| 3D Occupancy Prediction | SemanticKITTI OccNL sequence 08 50% noise (val) | IoU35.86 | 6 |