Non-Monetary Mechanism Design without Distributional Information: Using Scarce Audits Wisely (Extended Abstract)

Yan Dai, Moïse Blanchard, Patrick Jaillet
Proceedings of Thirty Eighth Conference on Learning Theory, PMLR 291:1366-1367, 2025.

Abstract

We study a repeated resource allocation problem with strategic agents where monetary transfers are disallowed and the central planner has no prior information on agents’ utility distributions. In light of Arrow’s impossibility theorem, acquiring information about agent preferences through some form of feedback is necessary. We assume that the central planner can request powerful but expensive audits on the winner in any round, revealing the true utility of the winner in that round. We design a mechanism achieving $T$-independent $\mathcal O(K^2)$ regret in social welfare while requesting $\mathcal O(K^3 \log T)$ audits in expectation, where $K$ is the number of agents and $T$ is the number of rounds. We also show an $\Omega(K)$ lower bound on the regret and an $\Omega(1)$ lower bound on the number of audits when having low regret. Algorithmically, we show that incentive-compatibility can be mostly enforced with an accurate estimation of the winning probability of each agent under truthful reporting. To do so, we impose future punishments and introduce a \emph{flagging} component, allowing agents to flag any biased estimate (we show that doing so aligns with individual incentives). On the technical side, without monetary transfers and distributional information, the central planner cannot ensure that truthful reporting is exactly an equilibrium. Instead, we characterize the equilibrium via a reduction to a simpler \emph{auxiliary game}, in which agents cannot strategize until late in the $T$ rounds of the allocation problem. The tools developed therein may be of independent interest for other mechanism design problems in which the revelation principle cannot be readily applied.

Cite this Paper


BibTeX
@InProceedings{pmlr-v291-dai25a, title = {Non-Monetary Mechanism Design without Distributional Information: Using Scarce Audits Wisely (Extended Abstract)}, author = {Dai, Yan and Blanchard, Mo\"ise and Jaillet, Patrick}, booktitle = {Proceedings of Thirty Eighth Conference on Learning Theory}, pages = {1366--1367}, year = {2025}, editor = {Haghtalab, Nika and Moitra, Ankur}, volume = {291}, series = {Proceedings of Machine Learning Research}, month = {30 Jun--04 Jul}, publisher = {PMLR}, pdf = {https://raw.githubusercontent.com/mlresearch/v291/main/assets/dai25a/dai25a.pdf}, url = {https://proceedings.mlr.press/v291/dai25a.html}, abstract = {We study a repeated resource allocation problem with strategic agents where monetary transfers are disallowed and the central planner has no prior information on agents’ utility distributions. In light of Arrow’s impossibility theorem, acquiring information about agent preferences through some form of feedback is necessary. We assume that the central planner can request powerful but expensive audits on the winner in any round, revealing the true utility of the winner in that round. We design a mechanism achieving $T$-independent $\mathcal O(K^2)$ regret in social welfare while requesting $\mathcal O(K^3 \log T)$ audits in expectation, where $K$ is the number of agents and $T$ is the number of rounds. We also show an $\Omega(K)$ lower bound on the regret and an $\Omega(1)$ lower bound on the number of audits when having low regret. Algorithmically, we show that incentive-compatibility can be mostly enforced with an accurate estimation of the winning probability of each agent under truthful reporting. To do so, we impose future punishments and introduce a \emph{flagging} component, allowing agents to flag any biased estimate (we show that doing so aligns with individual incentives). On the technical side, without monetary transfers and distributional information, the central planner cannot ensure that truthful reporting is exactly an equilibrium. Instead, we characterize the equilibrium via a reduction to a simpler \emph{auxiliary game}, in which agents cannot strategize until late in the $T$ rounds of the allocation problem. The tools developed therein may be of independent interest for other mechanism design problems in which the revelation principle cannot be readily applied.} }
Endnote
%0 Conference Paper %T Non-Monetary Mechanism Design without Distributional Information: Using Scarce Audits Wisely (Extended Abstract) %A Yan Dai %A Moïse Blanchard %A Patrick Jaillet %B Proceedings of Thirty Eighth Conference on Learning Theory %C Proceedings of Machine Learning Research %D 2025 %E Nika Haghtalab %E Ankur Moitra %F pmlr-v291-dai25a %I PMLR %P 1366--1367 %U https://proceedings.mlr.press/v291/dai25a.html %V 291 %X We study a repeated resource allocation problem with strategic agents where monetary transfers are disallowed and the central planner has no prior information on agents’ utility distributions. In light of Arrow’s impossibility theorem, acquiring information about agent preferences through some form of feedback is necessary. We assume that the central planner can request powerful but expensive audits on the winner in any round, revealing the true utility of the winner in that round. We design a mechanism achieving $T$-independent $\mathcal O(K^2)$ regret in social welfare while requesting $\mathcal O(K^3 \log T)$ audits in expectation, where $K$ is the number of agents and $T$ is the number of rounds. We also show an $\Omega(K)$ lower bound on the regret and an $\Omega(1)$ lower bound on the number of audits when having low regret. Algorithmically, we show that incentive-compatibility can be mostly enforced with an accurate estimation of the winning probability of each agent under truthful reporting. To do so, we impose future punishments and introduce a \emph{flagging} component, allowing agents to flag any biased estimate (we show that doing so aligns with individual incentives). On the technical side, without monetary transfers and distributional information, the central planner cannot ensure that truthful reporting is exactly an equilibrium. Instead, we characterize the equilibrium via a reduction to a simpler \emph{auxiliary game}, in which agents cannot strategize until late in the $T$ rounds of the allocation problem. The tools developed therein may be of independent interest for other mechanism design problems in which the revelation principle cannot be readily applied.
APA
Dai, Y., Blanchard, M. & Jaillet, P.. (2025). Non-Monetary Mechanism Design without Distributional Information: Using Scarce Audits Wisely (Extended Abstract). Proceedings of Thirty Eighth Conference on Learning Theory, in Proceedings of Machine Learning Research 291:1366-1367 Available from https://proceedings.mlr.press/v291/dai25a.html.

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