PDE-Based Optimal Strategy for Unconstrained Online Learning

Abstract

Unconstrained Online Linear Optimization (OLO) is a practical problem setting to study the training of machine learning models. Existing works proposed a number of potential-based algorithms, but in general the design of these potential functions relies heavily on guessing. To streamline this workflow, we present a framework that generates new potential functions by solving a Partial Differential Equation (PDE). Specifically, when losses are 1-Lipschitz, our framework produces a novel algorithm with anytime regret bound $C\sqrt{T}+||u||\sqrt{2T}[\sqrt{\log(1+||u||/C)}+2]$, where $C$ is a user-specified constant and $u$ is any comparator unknown and unbounded a priori. Such a bound attains an optimal loss-regret trade-off without the impractical doubling trick. Moreover, a matching lower bound shows that the leading order term, including the constant multiplier $\sqrt{2}$, is tight. To our knowledge, the proposed algorithm is the first to achieve such optimalities.

Cite

Text

Zhang et al. "PDE-Based Optimal Strategy for Unconstrained Online Learning." International Conference on Machine Learning, 2022.

Markdown

[Zhang et al. "PDE-Based Optimal Strategy for Unconstrained Online Learning." International Conference on Machine Learning, 2022.](https://mlanthology.org/icml/2022/zhang2022icml-pdebased/)

BibTeX

@inproceedings{zhang2022icml-pdebased,
  title     = {{PDE-Based Optimal Strategy for Unconstrained Online Learning}},
  author    = {Zhang, Zhiyu and Cutkosky, Ashok and Paschalidis, Ioannis},
  booktitle = {International Conference on Machine Learning},
  year      = {2022},
  pages     = {26085-26115},
  volume    = {162},
  url       = {https://mlanthology.org/icml/2022/zhang2022icml-pdebased/}
}