The Secretary Problem with a Stochastic Precursor
Abstract
In learning-augmented online algorithms, predictions are usually valued for what they say: a value estimate, a solution, or an algorithmic recommendation. This paper shows that predictions can also be valuable solely due to their arrival time. We study the fundamental secretary problem augmented with a stochastic precursor: a content-free signal that is guaranteed to arrive no later than the best item, but is otherwise stochastically timed. The signal does not carry any additional information; nevertheless, its timing alone changes the structure of optimal stopping. We characterize optimal policies in the random-order and adversarial-order models. In random order, a single uniformly timed precursor already gives success probability at least , improving on the classic benchmark. With increasingly late precursors, the success probability approaches . In adversarial order, for which traditional models do not admit strong guarantees, sufficiently concentrated precursors recover constant success guarantees. Our results show that such novel forms of asynchronous temporal information are a distinct and powerful form of advice in online decision making and may also be effective for other problems.
Cite
@article{arxiv.2605.22653,
title = {The Secretary Problem with a Stochastic Precursor},
author = {Franziska Eberle and Alexander Lindermayr},
journal= {arXiv preprint arXiv:2605.22653},
year = {2026}
}