English

A Regularization-Sharpness Tradeoff for Linear Interpolators

Machine Learning 2026-02-16 v1 Machine Learning

Abstract

The rule of thumb regarding the relationship between the bias-variance tradeoff and model size plays a key role in classical machine learning, but is now well-known to break down in the overparameterized setting as per the double descent curve. In particular, minimum-norm interpolating estimators can perform well, suggesting the need for new tradeoff in these settings. Accordingly, we propose a regularization-sharpness tradeoff for overparameterized linear regression with an p\ell^p penalty. Inspired by the interpolating information criterion, our framework decomposes the selection penalty into a regularization term (quantifying the alignment of the regularizer and the interpolator) and a geometric sharpness term on the interpolating manifold (quantifying the effect of local perturbations), yielding a tradeoff analogous to bias-variance. Building on prior analyses that established this information criterion for ridge regularizers, this work first provides a general expression of the interpolating information criterion for p\ell^p regularizers where p2p \ge 2. Subsequently, we extend this to the LASSO interpolator with 1\ell^1 regularizer, which induces stronger sparsity. Empirical results on real-world datasets with random Fourier features and polynomials validate our theory, demonstrating how the tradeoff terms can distinguish performant linear interpolators from weaker ones.

Keywords

Cite

@article{arxiv.2602.12680,
  title  = {A Regularization-Sharpness Tradeoff for Linear Interpolators},
  author = {Qingyi Hu and Liam Hodgkinson},
  journal= {arXiv preprint arXiv:2602.12680},
  year   = {2026}
}

Comments

29 pages, 4 figures

R2 v1 2026-07-01T10:34:55.404Z