English

Robustly Learning Monotone Generalized Linear Models via Data Augmentation

Machine Learning 2025-08-05 v2 Optimization and Control Statistics Theory Statistics Theory

Abstract

We study the task of learning Generalized Linear models (GLMs) in the agnostic model under the Gaussian distribution. We give the first polynomial-time algorithm that achieves a constant-factor approximation for \textit{any} monotone Lipschitz activation. Prior constant-factor GLM learners succeed for a substantially smaller class of activations. Our work resolves a well-known open problem, by developing a robust counterpart to the classical GLMtron algorithm (Kakade et al., 2011). Our robust learner applies more generally, encompassing all monotone activations with bounded (2+ζ)(2+\zeta)-moments, for any fixed ζ>0\zeta>0 -- a condition that is essentially necessary. To obtain our results, we leverage a novel data augmentation technique with decreasing Gaussian noise injection and prove a number of structural results that may be useful in other settings.

Keywords

Cite

@article{arxiv.2502.08611,
  title  = {Robustly Learning Monotone Generalized Linear Models via Data Augmentation},
  author = {Nikos Zarifis and Puqian Wang and Ilias Diakonikolas and Jelena Diakonikolas},
  journal= {arXiv preprint arXiv:2502.08611},
  year   = {2025}
}
R2 v1 2026-06-28T21:42:01.386Z