Optimality of the Subgradient Algorithm in the Stochastic Setting
Statistics Theory
2020-11-30 v7 Data Structures and Algorithms
Machine Learning
Systems and Control
Systems and Control
Optimization and Control
Probability
Machine Learning
Statistics Theory
Abstract
We show that the Subgradient algorithm is universal for online learning on the simplex in the sense that it simultaneously achieves regret for adversarial costs and pseudo-regret for i.i.d costs. To the best of our knowledge this is the first demonstration of a universal algorithm on the simplex that is not a variant of Hedge. Since Subgradient is a popular and widely used algorithm our results have immediate broad application.
Cite
@article{arxiv.1909.05007,
title = {Optimality of the Subgradient Algorithm in the Stochastic Setting},
author = {Daron Anderson and Douglas Leith},
journal= {arXiv preprint arXiv:1909.05007},
year = {2020}
}
Comments
6 figures, Corrected off-by-one errors coming from proof in Appendix A. Replaced with newer Version April 2020