Fast Rates for Noisy Interpolation Require Rethinking the Effects of Inductive Bias
Abstract
Good generalization performance on high-dimensional data crucially hinges on a simple structure of the ground truth and a corresponding strong inductive bias of the estimator. Even though this intuition is valid for regularized models, in this paper we caution against a strong inductive bias for interpolation in the presence of noise: While a stronger inductive bias encourages a simpler structure that is more aligned with the ground truth, it also increases the detrimental effect of noise. Specifically, for both linear regression and classification with a sparse ground truth, we prove that minimum p-norm and maximum p-margin interpolators achieve fast polynomial rates close to order 1/n for p > 1 compared to a logarithmic rate for p = 1. Finally, we provide preliminary experimental evidence that this trade-off may also play a crucial role in understanding non-linear interpolating models used in practice.
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