|国家预印本平台
首页|Robustly Learning Single-Index Models via Alignment Sharpness

Robustly Learning Single-Index Models via Alignment Sharpness

Robustly Learning Single-Index Models via Alignment Sharpness

来源:Arxiv_logoArxiv
英文摘要

We study the problem of learning Single-Index Models under the $L_2^2$ loss in the agnostic model. We give an efficient learning algorithm, achieving a constant factor approximation to the optimal loss, that succeeds under a range of distributions (including log-concave distributions) and a broad class of monotone and Lipschitz link functions. This is the first efficient constant factor approximate agnostic learner, even for Gaussian data and for any nontrivial class of link functions. Prior work for the case of unknown link function either works in the realizable setting or does not attain constant factor approximation. The main technical ingredient enabling our algorithm and analysis is a novel notion of a local error bound in optimization that we term alignment sharpness and that may be of broader interest.

Ilias Diakonikolas、Jelena Diakonikolas、Puqian Wang、Nikos Zarifis

计算技术、计算机技术

Ilias Diakonikolas,Jelena Diakonikolas,Puqian Wang,Nikos Zarifis.Robustly Learning Single-Index Models via Alignment Sharpness[EB/OL].(2024-02-27)[2025-08-23].https://arxiv.org/abs/2402.17756.点此复制

评论