Random Features Model with General Convex Regularization: A Fine Grained Analysis with Precise Asymptotic Learning Curves
Paper i proceeding, 2023

We compute precise asymptotic expressions for the learning curves of least squares random feature (RF) models with either a separable strongly convex regularization or the ℓ1 regularization. We propose a novel multi-level application of the convex Gaussian min max theorem (CGMT) to overcome the traditional difficulty of finding computable expressions for random features models with correlated data. Our result takes the form of a computable 4-dimensional scalar optimization. In contrast to previous results, our approach does not require solving an often intractable proximal operator, which scales with the number of model parameters. Furthermore, we extend the universality results for the training and generalization errors for RF models to ℓ1 regularization. In particular, we demonstrate that under mild conditions, random feature models with elastic net or ℓ1 regularization are asymptotically equivalent to a surrogate Gaussian model with the same first and second moments. We numerically demonstrate the predictive capacity of our results, and show experimentally that the predicted test error is accurate even in the nonasymptotic regime.

Författare

David Bosch

Chalmers, Data- och informationsteknik, Data Science och AI

Ashkan Panahi

Chalmers, Data- och informationsteknik, Data Science och AI

Ayca Ozcelikkale

Uppsala universitet

Devdatt Dubhashi

Chalmers, Data- och informationsteknik, Data Science och AI

Proceedings of Machine Learning Research

26403498 (eISSN)

Vol. 206 11371-11414

26th International Conference on Artificial Intelligence and Statistics, AISTATS 2023
Valencia, Spain,

Ämneskategorier

Sannolikhetsteori och statistik

Matematisk analys

Mer information

Senast uppdaterat

2023-12-14