Revisiting Agnostic Boosting
Abstract
Boosting is a key method in statistical learning, allowing for converting weak learners into strong ones. While well studied in the realizable case, the statistical properties of weak-to-strong learning remain less understood in the agnostic setting, where there are no assumptions on the distribution of the labels. In this work, we propose a new agnostic boosting algorithm with substantially improved sample complexity compared to prior works under very general assumptions. Our approach is based on a reduction to the realizable case, followed by a margin-based filtering of high-quality hypotheses. Furthermore, we show a nearly-matching lower bound, settling the sample complexity of agnostic boosting up to logarithmic factors.
Cite
@article{arxiv.2503.09384,
title = {Revisiting Agnostic Boosting},
author = {Arthur da Cunha and Mikael Møller Høgsgaard and Andrea Paudice and Yuxin Sun},
journal= {arXiv preprint arXiv:2503.09384},
year = {2026}
}
Comments
Camera-ready version: NeurIPS 2025