Learning the Latent Causal Structure for Modeling Label Noise
–Neural Information Processing Systems
In label-noise learning, the noise transition matrix reveals how an instance transitions from its clean label to its noisy label. Accurately estimating an instance's noise transition matrix is crucial for estimating its clean label.
Neural Information Processing Systems
Oct-10-2025, 18:33:28 GMT
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