English

Impartial Selection with Predictions

Computer Science and Game Theory 2025-10-23 v1 Machine Learning Theoretical Economics Optimization and Control

Abstract

We study the selection of agents based on mutual nominations, a theoretical problem with many applications from committee selection to AI alignment. As agents both select and are selected, they may be incentivized to misrepresent their true opinion about the eligibility of others to influence their own chances of selection. Impartial mechanisms circumvent this issue by guaranteeing that the selection of an agent is independent of the nominations cast by that agent. Previous research has established strong bounds on the performance of impartial mechanisms, measured by their ability to approximate the number of nominations for the most highly nominated agents. We study to what extent the performance of impartial mechanisms can be improved if they are given a prediction of a set of agents receiving a maximum number of nominations. Specifically, we provide bounds on the consistency and robustness of such mechanisms, where consistency measures the performance of the mechanisms when the prediction is accurate and robustness its performance when the prediction is inaccurate. For the general setting where up to kk agents are to be selected and agents nominate any number of other agents, we give a mechanism with consistency 1O(1k)1-O\big(\frac{1}{k}\big) and robustness 11eO(1k)1-\frac{1}{e}-O\big(\frac{1}{k}\big). For the special case of selecting a single agent based on a single nomination per agent, we prove that 11-consistency can be achieved while guaranteeing 12\frac{1}{2}-robustness. A close comparison with previous results shows that (asymptotically) optimal consistency can be achieved with little to no sacrifice in terms of robustness.

Keywords

Cite

@article{arxiv.2510.19002,
  title  = {Impartial Selection with Predictions},
  author = {Javier Cembrano and Felix Fischer and Max Klimm},
  journal= {arXiv preprint arXiv:2510.19002},
  year   = {2025}
}