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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.

Jialiang Wang, Xiong Zhou, Xianming Liu, Gangfeng Hu, Deming Zhai, Junjun Jiang, Haoliang Li• 2025

Related benchmarks

TaskDatasetResultRank
3D Semantic Occupancy PredictionOccNL Moderate Noise 1.0 (test)
IoU37.41
6
3D Occupancy PredictionSemanticKITTI OccNL, sequence 08, 90% noise (val)
IoU21.12
6
3D Semantic Occupancy PredictionOccNL Mild Noise 1.0 (test)
Overall IoU37.21
6
3D Semantic Occupancy PredictionOccNL Severe Noise 1.0 (test)
IoU37.27
6
3D Occupancy PredictionSemanticKITTI OccNL sequence 08 70% noise (val)
IoU (Overall)33.2
6
3D Occupancy PredictionSemanticKITTI OccNL sequence 08 50% noise (val)
IoU35.86
6
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