Learning with incremental iterative regularization
Machine Learning
2015-06-16 v2 Machine Learning
Optimization and Control
Probability
Abstract
Within a statistical learning setting, we propose and study an iterative regularization algorithm for least squares defined by an incremental gradient method. In particular, we show that, if all other parameters are fixed a priori, the number of passes over the data (epochs) acts as a regularization parameter, and prove strong universal consistency, i.e. almost sure convergence of the risk, as well as sharp finite sample bounds for the iterates. Our results are a step towards understanding the effect of multiple epochs in stochastic gradient techniques in machine learning and rely on integrating statistical and optimization results.
Cite
@article{arxiv.1405.0042,
title = {Learning with incremental iterative regularization},
author = {Lorenzo Rosasco and Silvia Villa},
journal= {arXiv preprint arXiv:1405.0042},
year = {2015}
}
Comments
30 pages