Dynamic Online Gradient Descent with Improved Query Complexity: A Theoretical Revisit
Machine Learning
2019-01-10 v3 Machine Learning
Abstract
We provide a new theoretical analysis framework to investigate online gradient descent in the dynamic environment. Comparing with the previous work, the new framework recovers the state-of-the-art dynamic regret, but does not require extra gradient queries for every iteration. Specifically, when functions are strongly convex and smooth, to achieve the state-of-the-art dynamic regret, the previous work requires with queries of gradients at every iteration. But, our framework shows that the query complexity can be improved to be , which does not depend on . The improvement is significant for ill-conditioned problems because that their objective function usually has a large .
Cite
@article{arxiv.1812.10186,
title = {Dynamic Online Gradient Descent with Improved Query Complexity: A Theoretical Revisit},
author = {Yawei Zhao and En Zhu and Xinwang Liu and Jianping Yin},
journal= {arXiv preprint arXiv:1812.10186},
year = {2019}
}