Online Self-Concordant and Relatively Smooth Minimization, with Applications to Online Portfolio Selection and Learning Quantum States

Abstract

Consider an online convex optimization problem where the loss functions are self-concordant barriers, smooth relative to a convex function $h$, and possibly non-Lipschitz. We analyze the regret of online mirror descent with $h$. Then, based on the result, we prove the following in a unified manner. Denote by $T$ the time horizon and $d$ the parameter dimension. - For online portfolio selection, the regret of $\widetilde{\text{EG}}$, a variant of exponentiated gradient due to Helmbold et al., is $\tilde{O} ( T^{2/3} d^{1/3} )$ when $T > 4 d / \log d$. This improves on the original $\tilde{O} ( T^{3/4} d^{1/2} )$ regret bound for $\widetilde{\text{EG}}$. - For online portfolio selection, the regret of online mirror descent with the logarithmic barrier is $\tilde{O}(\sqrt{T d})$. The regret bound is the same as that of Soft-Bayes due to Orseau et al. up to logarithmic terms. - For online learning quantum states with the logarithmic loss, the regret of online mirror descent with the log-determinant function is also $\tilde{O} ( \sqrt{T d} )$. Its per-iteration time is shorter than all existing algorithms we know.

Cite

Text

Tsai et al. "Online Self-Concordant and Relatively Smooth Minimization, with Applications to Online Portfolio Selection and Learning Quantum States." Proceedings of The 34th International Conference on Algorithmic Learning Theory, 2023.

Markdown

[Tsai et al. "Online Self-Concordant and Relatively Smooth Minimization, with Applications to Online Portfolio Selection and Learning Quantum States." Proceedings of The 34th International Conference on Algorithmic Learning Theory, 2023.](https://mlanthology.org/alt/2023/tsai2023alt-online/)

BibTeX

@inproceedings{tsai2023alt-online,
  title     = {{Online Self-Concordant and Relatively Smooth Minimization, with Applications to Online Portfolio Selection and Learning Quantum States}},
  author    = {Tsai, Chung-En and Cheng, Hao-Chung and Li, Yen-Huan},
  booktitle = {Proceedings of The 34th International Conference on Algorithmic Learning Theory},
  year      = {2023},
  pages     = {1481-1483},
  volume    = {201},
  url       = {https://mlanthology.org/alt/2023/tsai2023alt-online/}
}