MLLGSTSep 14, 2025

Some Robustness Properties of Label Cleaning

arXiv:2509.11379v11 citationsh-index: 2
Originality Incremental advance
AI Analysis

This work addresses robustness in machine learning for scenarios with noisy data, though it appears incremental as it builds on existing label cleaning concepts.

The paper tackles the problem of learning with noisy labels by showing that label aggregation methods achieve stronger risk consistency guarantees than using raw labels, even under model misspecification, and converge to optimal classifiers.

We demonstrate that learning procedures that rely on aggregated labels, e.g., label information distilled from noisy responses, enjoy robustness properties impossible without data cleaning. This robustness appears in several ways. In the context of risk consistency -- when one takes the standard approach in machine learning of minimizing a surrogate (typically convex) loss in place of a desired task loss (such as the zero-one mis-classification error) -- procedures using label aggregation obtain stronger consistency guarantees than those even possible using raw labels. And while classical statistical scenarios of fitting perfectly-specified models suggest that incorporating all possible information -- modeling uncertainty in labels -- is statistically efficient, consistency fails for ``standard'' approaches as soon as a loss to be minimized is even slightly mis-specified. Yet procedures leveraging aggregated information still converge to optimal classifiers, highlighting how incorporating a fuller view of the data analysis pipeline, from collection to model-fitting to prediction time, can yield a more robust methodology by refining noisy signals.

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