Jan. 1, 2023, midnight | Ohad Shamir

JMLR www.jmlr.org

The phenomenon of benign overfitting, where a predictor perfectly fits noisy training data while attaining near-optimal expected loss, has received much attention in recent years, but still remains not fully understood beyond well-specified linear regression setups. In this paper, we provide several new results on when one can or cannot expect benign overfitting to occur, for both regression and classification tasks. We consider a prototypical and rather generic data model for benign overfitting of linear predictors, where an arbitrary input …

attention beyond bias classification data data model distribution linear linear regression loss near overfitting paper regression training training data

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