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It's Not All Black and White: Degree of Truthfulness for Risk-Avoiding Agents

Abstract

The classic notion of truthfulness requires that no agent has a profitable manipulation -- an untruthful report that, for some combination of reports of the other agents, increases her utility. This strong notion implicitly assumes that the manipulating agent either knows what all other agents are going to report, or is willing to take the risk and act as-if she knows their reports.Without knowledge of the others' reports, most manipulations are risky -- they might decrease the manipulator's utility for some other combinations of reports by the other agents. Accordingly, a recent paper (Bu, Song and Tao, ``On the existence of truthful fair cake cutting mechanisms'', Artificial Intelligence 319 (2023), 103904) suggests a relaxed notion, which we refer to as risk-avoiding truthfulness (RAT), which requires only that no agent can gain from a safe manipulation -- one that is sometimes beneficial and never harmful.Truthfulness and RAT are two extremes: the former considers manipulators with complete knowledge of others, whereas the latter considers manipulators with no knowledge at all. In reality, agents often know about some -- but not all -- of the other agents. This paper introduces the RAT-degree of a mechanism, defined as the smallest number of agents whose reports, if known, may allow another agent to safely manipulate, or nn if there is no such number. This notion interpolates between classic truthfulness (degree nn) and RAT (degree at least 11): a mechanism with a higher RAT-degree is harder to manipulate safely.To illustrate the generality and applicability of this concept, we analyze the RAT-degree of prominent mechanisms across various social choice settings, including auctions, indivisible goods allocations, cake-cutting, voting, and stable matchings.

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@article{hartman2025_2502.18805,
  title={ It's Not All Black and White: Degree of Truthfulness for Risk-Avoiding Agents },
  author={ Eden Hartman and Erel Segal-Halevi and Biaoshuai Tao },
  journal={arXiv preprint arXiv:2502.18805},
  year={ 2025 }
}
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