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Tight bounds for minimum l1-norm interpolation of noisy data

10 November 2021
Guillaume Wang
Konstantin Donhauser
Fanny Yang
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Abstract

We provide matching upper and lower bounds of order σ2/log⁡(d/n)\sigma^2/\log(d/n)σ2/log(d/n) for the prediction error of the minimum ℓ1\ell_1ℓ1​-norm interpolator, a.k.a. basis pursuit. Our result is tight up to negligible terms when d≫nd \gg nd≫n, and is the first to imply asymptotic consistency of noisy minimum-norm interpolation for isotropic features and sparse ground truths. Our work complements the literature on "benign overfitting" for minimum ℓ2\ell_2ℓ2​-norm interpolation, where asymptotic consistency can be achieved only when the features are effectively low-dimensional.

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