Mechanism Design via the Interim Relaxation

Abstract

We study revenue maximization for agents with additive preferences, subject to downward-closed constraints on the set of feasible allocations. In seminal work,~\citet{alaei2014bayesian} introduced a powerful multi-to-single agent reduction based on an ex-ante relaxation of the multi-agent problem. This reduction employs a rounding procedure which is an online contention resolution scheme (OCRS) in disguise, a now widely-used method for rounding fractional solutions in online Bayesian and stochastic optimization problems. In this paper, we leverage our vantage point, 10 years after the work of Alaei, with a rich OCRS toolkit and modern approaches to analyzing multi-agent mechanisms; we introduce a general framework for designing non-sequential and sequential multi-agent, revenue-maximizing mechanisms, capturing a wide variety of problems Alaei's framework could not address. Our framework uses an \emph{interim} relaxation, that is rounded to a feasible mechanism using what we call a two-level OCRS, which allows for some structured dependence between the activation of its input elements. For a wide family of constraints, we can construct such schemes using existing OCRSs as a black box; for other constraints, such as knapsack, we construct such schemes from scratch. We demonstrate numerous applications of our framework, including a sequential mechanism that guarantees a $\frac{2e}{e-1} \approx 3.16$ approximation to the optimal revenue for the case of additive agents subject to matroid feasibility constraints. Finally, we show how our framework can be easily extended to multi-parameter procurement auctions, where we provide an OCRS for Stochastic Knapsack that might be of independent interest.

Cite

Text

Bhawalkar et al. "Mechanism Design via the Interim Relaxation." Advances in Neural Information Processing Systems, 2025.

Markdown

[Bhawalkar et al. "Mechanism Design via the Interim Relaxation." Advances in Neural Information Processing Systems, 2025.](https://mlanthology.org/neurips/2025/bhawalkar2025neurips-mechanism/)

BibTeX

@inproceedings{bhawalkar2025neurips-mechanism,
  title     = {{Mechanism Design via the Interim Relaxation}},
  author    = {Bhawalkar, Kshipra and Mertzanidis, Marios and Mohan, Divyarthi and Psomas, Alexandros},
  booktitle = {Advances in Neural Information Processing Systems},
  year      = {2025},
  url       = {https://mlanthology.org/neurips/2025/bhawalkar2025neurips-mechanism/}
}