Negative-capable ridge regression uses controlled negative regularization as anti-shrinkage to increase effective complexity along weak eigendirections and mitigate underfitting in small-data regression.
Making deep neural networks robust to label noise: A loss correction approach
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EBOMLC applies dynamic barrier gradient descent with one-step inner loop, mixture upper loss, and alignment-aware barrier to make meta label correction faster and more robust on noisy data, outperforming baselines on CIFAR-10/100 especially at high noise rates.
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A Ridge Too Far: Correcting Over-Shrinkage via Negative Regularization
Negative-capable ridge regression uses controlled negative regularization as anti-shrinkage to increase effective complexity along weak eigendirections and mitigate underfitting in small-data regression.
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Efficient Bilevel Optimization for Meta Label Correction in Noisy Label Learning
EBOMLC applies dynamic barrier gradient descent with one-step inner loop, mixture upper loss, and alignment-aware barrier to make meta label correction faster and more robust on noisy data, outperforming baselines on CIFAR-10/100 especially at high noise rates.