LGCVMar 13

Deconstructing the Failure of Ideal Noise Correction: A Three-Pillar Diagnosis

arXiv:2603.1299784.93 citations
AI Analysis

This work addresses a foundational issue in machine learning robustness for researchers and practitioners dealing with noisy data, offering insights to improve method design.

The paper tackled the problem of why theoretically sound noise-correction methods underperform in Learning with Noisy Labels, even with a perfect noise transition matrix, and found that these methods still suffer from performance collapse, revealing a deeper flaw beyond estimation issues.

Statistically consistent methods based on the noise transition matrix ($T$) offer a theoretically grounded solution to Learning with Noisy Labels (LNL), with guarantees of convergence to the optimal clean-data classifier. In practice, however, these methods are often outperformed by empirical approaches such as sample selection, and this gap is usually attributed to the difficulty of accurately estimating $T$. The common assumption is that, given a perfect $T$, noise-correction methods would recover their theoretical advantage. In this work, we put this longstanding hypothesis to a decisive test. We conduct experiments under idealized conditions, providing correction methods with a perfect, oracle transition matrix. Even under these ideal conditions, we observe that these methods still suffer from performance collapse during training. This compellingly demonstrates that the failure is not fundamentally a $T$-estimation problem, but stems from a more deeply rooted flaw. To explain this behaviour, we provide a unified analysis that links three levels: macroscopic convergence states, microscopic optimisation dynamics, and information-theoretic limits on what can be learned from noisy labels. Together, these results give a formal account of why ideal noise correction fails and offer concrete guidance for designing more reliable methods for learning with noisy labels.

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