Risk-Sensitive Online Algorithms (Extended Abstract)
Abstract
We study the design of risk-sensitive online algorithms, in which risk measures are used in the competitive analysis of randomized online algorithms. We introduce the CVaR$_\delta$-competitive ratio ($\delta$-CR) using the conditional value-at-risk of an algorithm’s cost, which measures the expectation of the $(1-\delta)$-fraction of worst outcomes against the offline optimal cost, and use this measure to study three online optimization problems: continuous-time ski rental, discrete-time ski rental, and one-max search. The structure of the optimal $\delta$-CR and algorithm varies significantly between problems: we prove that the optimal $\delta$-CR for continuous-time ski rental is $2-2^{-\Theta(\frac{1}{1-\delta})}$, obtained by an algorithm described by a delay differential equation. In contrast, in discrete-time ski rental with buying cost $B$, there is an abrupt phase transition at $\delta = 1 - \Theta(\frac{1}{\log B})$, after which the classic deterministic strategy is optimal. Similarly, one-max search exhibits a phase transition at $\delta = \frac{1}{2}$, after which the classic deterministic strategy is optimal; we also obtain an algorithm that is asymptotically optimal as $\delta \todown 0$ that arises as the solution to a delay differential equation.
Cite
Text
Christianson et al. "Risk-Sensitive Online Algorithms (Extended Abstract)." Conference on Learning Theory, 2024.Markdown
[Christianson et al. "Risk-Sensitive Online Algorithms (Extended Abstract)." Conference on Learning Theory, 2024.](https://mlanthology.org/colt/2024/christianson2024colt-risksensitive/)BibTeX
@inproceedings{christianson2024colt-risksensitive,
title = {{Risk-Sensitive Online Algorithms (Extended Abstract)}},
author = {Christianson, Nicolas and Sun, Bo and Low, Steven and Wierman, Adam},
booktitle = {Conference on Learning Theory},
year = {2024},
pages = {1140-1141},
volume = {247},
url = {https://mlanthology.org/colt/2024/christianson2024colt-risksensitive/}
}