Impartial Selection with Predictions
Javier Cembrano, Felix Fischer, Max Klimm

TL;DR
This paper explores how predictions about highly nominated agents can improve impartial selection mechanisms, balancing accuracy and robustness in various selection scenarios.
Contribution
It introduces mechanisms that leverage predictions to enhance the performance of impartial selection, achieving near-optimal consistency with minimal robustness loss.
Findings
Mechanisms with high consistency and robustness bounds for general settings.
Optimal consistency achieved in single-agent, single-nomination case.
Asymptotic optimality with minimal robustness trade-offs.
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…
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Taxonomy
TopicsGame Theory and Voting Systems · Auction Theory and Applications · Mobile Crowdsensing and Crowdsourcing
