English

Robust descent using smoothed multiplicative noise

Machine Learning 2018-10-16 v1 Machine Learning

Abstract

To improve the off-sample generalization of classical procedures minimizing the empirical risk under potentially heavy-tailed data, new robust learning algorithms have been proposed in recent years, with generalized median-of-means strategies being particularly salient. These procedures enjoy performance guarantees in the form of sharp risk bounds under weak moment assumptions on the underlying loss, but typically suffer from a large computational overhead and substantial bias when the data happens to be sub-Gaussian, limiting their utility. In this work, we propose a novel robust gradient descent procedure which makes use of a smoothed multiplicative noise applied directly to observations before constructing a sum of soft-truncated gradient coordinates. We show that the procedure has competitive theoretical guarantees, with the major advantage of a simple implementation that does not require an iterative sub-routine for robustification. Empirical tests reinforce the theory, showing more efficient generalization over a much wider class of data distributions.

Keywords

Cite

@article{arxiv.1810.06207,
  title  = {Robust descent using smoothed multiplicative noise},
  author = {Matthew J. Holland},
  journal= {arXiv preprint arXiv:1810.06207},
  year   = {2018}
}
R2 v1 2026-06-23T04:39:27.084Z