ICLR2026
Resurfacing the Instance-only Dependent Label Noise Model through Loss Correction
Mustafa Enes Aydın, Maarten De Vos, Alexander Bertrand
摘要
We investigate the label noise problem in supervised binary classification settings and resurface the underutilized instance-only dependent noise model through loss correction. On the one hand, based on risk equivalence, the instance-aware loss correction scheme completes the bridge from empirical noisy risk minimization to true clean risk minimization provided the base loss is classification calibrated (e.g., cross-entropy). On the other hand, the instance-only dependent modeling of the label noise at the core of the correction enables us to estimate a single value per instance instead of a matrix. Furthermore, the estimation of the transition rates becomes a very flexible process, for which we offer several computationally efficient ways. Empirical findings over different dataset domains (image, audio, tabular) with different learners (neural networks, gradient-boosted machines) validate the promised generalization ability of the method.