A short note about the learning-augmented secretary problem
Data Structures and Algorithms
2024-11-05 v2
Abstract
We consider the secretary problem through the lens of learning-augmented algorithms. As it is known that the best possible expected competitive ratio is in the classic setting without predictions, a natural goal is to design algorithms that are 1-consistent and -robust. Unfortunately, [FY24] provided hardness constructions showing that such a goal is not attainable when the candidates' true values are allowed to scale with . Here, we provide a simple and explicit alternative hardness construction showing that such a goal is not achievable even when the candidates' true values are constants that do not scale with .
Cite
@article{arxiv.2410.06583,
title = {A short note about the learning-augmented secretary problem},
author = {Davin Choo and Chun Kai Ling},
journal= {arXiv preprint arXiv:2410.06583},
year = {2024}
}