Dropout Regularization Versus $\ell_2$-Penalization in the Linear Model
Statistics Theory
2025-03-19 v2 Machine Learning
Statistics Theory
Abstract
We investigate the statistical behavior of gradient descent iterates with dropout in the linear regression model. In particular, non-asymptotic bounds for the convergence of expectations and covariance matrices of the iterates are derived. The results shed more light on the widely cited connection between dropout and l2-regularization in the linear model. We indicate a more subtle relationship, owing to interactions between the gradient descent dynamics and the additional randomness induced by dropout. Further, we study a simplified variant of dropout which does not have a regularizing effect and converges to the least squares estimator
Keywords
Cite
@article{arxiv.2306.10529,
title = {Dropout Regularization Versus $\ell_2$-Penalization in the Linear Model},
author = {Gabriel Clara and Sophie Langer and Johannes Schmidt-Hieber},
journal= {arXiv preprint arXiv:2306.10529},
year = {2025}
}
Comments
52 pages, 2 figures