Mechanism Design via the Interim Relaxation
Kshipra Bhawalkar, Marios Mertzanidis, Divyarthi Mohan, Alexandros, Psomas

TL;DR
This paper introduces a versatile framework for designing revenue-maximizing multi-agent mechanisms using an interim relaxation and a novel two-level OCRS, extending previous work and achieving strong approximation guarantees.
Contribution
It develops a general framework leveraging interim relaxations and two-level OCRS for multi-agent mechanism design, addressing limitations of prior approaches and enabling new applications.
Findings
Achieves a 3.16-approximation for revenue with matroid constraints.
Constructs OCRSs for complex constraints like knapsack from scratch.
Extends framework to multi-parameter procurement auctions.
Abstract
We study revenue maximization for agents with additive preferences, subject to downward-closed constraints on the set of feasible allocations. In seminal work, Alaei~\cite{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…
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Taxonomy
TopicsRobotic Mechanisms and Dynamics
